a16z Podcast - a16z Podcast: Fintech for Startups and Incumbents

Episode Date: April 4, 2019

In this episode of the a16z Podcast -- which originally aired as a video on YouTube -- general partner Alex Rampell (and former fintech entrepreneur as the CEO and co-founder of TrialPay) talks with o...perating partner Frank Chen about the quickly changing fintech landscape and, even more importantly, why the landscape is changing now. Should the incumbents be nervous? About what, exactly? And most importantly, what should big companies do about all of this change? But the conversation from both sides of the table begins from the perspective of the hungry and fast fintech startup sharing lessons learned, and then moves to more concrete advice for the execs in the hot seat at established companies. The views expressed here are those of the individual AH Capital Management, L.L.C. (“a16z”) personnel quoted and are not the views of a16z or its affiliates. This content is provided for informational purposes only, and should not be relied upon as legal, business, investment, or tax advice. You should consult your own advisers as to those matters. References to any securities or digital assets are for illustrative purposes only and do not constitute an investment recommendation or offer to provide investment advisory services. Furthermore, this content is not directed at nor intended for use by any investor or prospective investor, and may not under any circumstances be relied upon when making a decision to invest in any fund managed by a16z. (An offering to invest in an a16z fund will be made only by the private placement memorandum, subscription agreement, and other relevant documentation of any such fund which should be read in their entirety.) Past performance is not indicative of future results. Any charts and graphs provided within are for informational purposes solely and should not be relied upon when making any investment decision. Please see https://a16z.com/disclosures for additional important information.

Transcript
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Starting point is 00:00:00 Hi, this is Frank Chen. Welcome to the A16Z podcast. Today's episode is titled Three Ways Startups Are Coming for Established Fintech Companies and What to Do About It. It originated as a YouTube video. You can watch all of our videos at YouTube.com slash A16Z videos. Hope you enjoy. Well, hi, welcome to the A16Z YouTube channel.
Starting point is 00:00:22 I'm Frank Chen. And today I am here with one of our general partners, Alex Randpell. I'm super excited that Alex is here. So first fact, we both have sons named Cameron, so affinity there. And then two, one of the things that I really appreciate about Alex, and you can sort of see this from his young chess playing days, is he understands fintech and incentives and pricing backwards and forwards. And so fintech has this hidden infrastructure on how do credit card transactions work, how do bonds get sold, how are insurance policies priced? And there's deep economic theory behind all of these, and Alex understands them all. So you're going to have a fun time as Alex takes you through his encyclopedia knowledge of how these things are put together.
Starting point is 00:01:10 And so I'm so excited to have you. Yeah, it's great to be here. So what I wanted to talk to you about is I'm going to pretend to be in the seat of a, let's call it an incumbent fintech company. Right. So I'm a product manager and Visa or a GEICO. and I am looking in my rearview mirror and there are startups in the rearview mirror and I'm very nervous that the startup in the rearview mirror
Starting point is 00:01:36 exactly as the mirror says objects in mirror maybe closer than they appear is like wow they are catching up to me faster than I really want and so I want to understand like what are startups doing like how would they mount an attack on me the incumbent and we're going to talk about sort of wedges they can use
Starting point is 00:01:56 And then that's sort of the first half, like, how are they coming after me? And then the second half, let's talk about, like, and what should I do about it? So that's sort of the premise for our... So why don't we start with the attacks? Like, how would a startup come for me? And one way they come for me is they come after my best customers. Right. So...
Starting point is 00:02:17 Well, so this is the interesting thing about financial services in general, because, you know, there's a sharp television hanging on the wall. and Sharp knows that they make more money every time they sell an incremental television. So more customers equals more money. Cause effect. And the interesting thing is that for many kinds of financial services, that is not true. Because what you're really trying to do is assemble a risk pool. And the best example of this is insurance.
Starting point is 00:02:43 So what is car insurance? Car insurance has good drivers, okay drivers, and bad drivers. And effectively, your good drivers and your okay drivers are paying you every month to subsidize the bad drivers. The same thing goes for health insurance. You have people that are always sick. You have people that are always healthy. And if you were an insurance company that only provided insurance for very, very sick people, or if you're a car insurance company that only insures people that get into accidents every day, there's no economic model to sustain that. You actually have to accumulate the good customers and use them to pay for the bad customers.
Starting point is 00:03:18 And the interesting thing about this is that from the perspective of the good customer, it's not fair. And I'm not talking morally or philosophically, but just from a capitalist or economic viewpoint, it's like, okay, I want life insurance. And I eat five donuts a day. I just had a donut today. I don't need five a day. But I have one donut every Friday, as you can testify. And then I have a friend who goes to the gym five times a day, never eats a donut. That guy is probably going to live longer than me. Hopefully not. But probabilistically, he's probably going to have a better time than I am in terms of. life expectancy. So why is it that we both pay the same rate? And that just seems unfair to him. It seems great to me. Right. Because he's subsidizing me. Yep. Jim guy, subsidizing donut guy. Exactly. Exactly. And that seems unfair. And then the startups can sometimes exploit that psychological unfairness, like that feeling of unfairness. And it kind of does two things. Because from the big company perspective, if you were to take away, think of it as a normal distribution. So most people are in the middle, and they're just going to live whatever, to the average of 79.6 years or whatever it is right now.
Starting point is 00:04:30 Some people are going to live forever. They're the ones that have the olive oil go to the gym and do whatever it is that they do that makes them live a long time. Great genes. And then some people are going to die early. And from the perspective of the startup, if you can get all of the people that are going to live much, much longer, you're going to be more profitable. The same thing for car insurance. If you can get all the people on the good end of that distribution curve, you're going to make money. And then the nice thing is that if you're starting a brand new company and saying, hey, I give you a loan if you can't get a loan, who's going to sound up for that people who might be bad?
Starting point is 00:05:04 If I say, I'm going to give you insurance if you can't get insurance, who's going to sign up for that, the people that are eating all the donuts. And that might not be very good. So it actually has this nice kind of symbiosis between if you do it correctly, you get positive selection bias. that you establish a new criteria. Part of that new criteria is based on data, but part of it is based on psychology. The psychology is, I'm treated unfairly. I want to be treated more fairly. That yields a lower price for people for a pretty demand-elastic product. So I say, I can get life insurance at half the rate because I'm going to the gym. That sounds great. That sounds fair. But to answer your question, what the incumbent might be left with is not half of the number of
Starting point is 00:05:46 customers. That could be the case. It could be half the number of customers. But it could be half the customers, and all of them are, like, entirely unprofitable. Right. See, it took all the profits. They didn't have to take all your customers. They just had to take the good ones. Right. So, actually, if you just take, and the funny thing is that because not, it's not like
Starting point is 00:06:03 I want to get, oh, GEICO has X million customers. I want X plus one million customers. You actually might want one-tenth as many customers as GEICO. Because if you can just get the good ones, I mean, what if you give people a 50% discount, not a 15% discount, like GEICO always advertises about, but a 50% discount on their car insurance. And these are the absolute best drivers in the country. How many claims do you have to pay out on the best drivers? You might have to pay out nothing, literally nothing.
Starting point is 00:06:29 And if you have to pay out nothing, and there are these mandatory loss ratios for different insurance industries, so I don't want to get into that. But imagine that unregulated, you can pay out nothing. Consumers feel like they're treated very fairly. They're rewarded for better behavior. This begets positive selection and not adverse selection. then you're going to have the most profitable lending company or insurance company in the world because it really is a unique industry
Starting point is 00:06:55 where more customers is actually worse than less but more profitable customers because each incremental customer is like a coin flip of profit or loss. Might generate profit, might generate loss. And that's not true for the vast majority of industries. Like Ford never sells a car saying maybe we'll lose money on this customer.
Starting point is 00:07:13 Right, right. They just like, I need everybody to buy a Ford F-150. And if you don't buy an F-150, I need you to buy. This other thing that said, the expedition or whatever. They might lose money on the marginal customer until they hit their fixed costs. But they're never going to have a coin flip of when they sell the car, hmm, maybe we shouldn't have sold that car. But that's what every insurance company has when they underwrite a policy. That's what every bank has when they underwrite a loan.
Starting point is 00:07:37 Yeah. So auto insurance companies need to find people like me. I have this old Prius, right? First, it's, you know, hugely reliable car. And, you know, and then I drive like a grandma. because I'm optimizing for fuel efficiency. So, like, you know, I rarely go above 65. And so, like, rarely safe.
Starting point is 00:07:53 I've never filed a claim. They need more customers like me. Right. And that's what drives the profits. Yes. Because there's no payouts. Well, not only does it drive the profits, it actually subsidizes the losses.
Starting point is 00:08:05 Because there are a lot of people who are the inverse of you, and you're paying for those people, and the transfer mechanism is through GEICO. Yeah. I saw an ad in my Facebook feed recently for Health IQ, and I think they're doing some. something like this too, right? So I think the proposition was, hey, can you run a mile on less than nine minutes? Can you bench press your own weight or something like that? There's all these like,
Starting point is 00:08:24 ooh, healthy people. And is that the mechanism they're exploiting? It's exactly that. I would say the first company to probably do this on a widespread basis in fintech land was SOFI. And SOFI said, hey, you're really smart. They actually coined this term. They called it the Henry. High earning, not rich yet. Because if you look at how student loans work, it's like everybody gets the same price on their student loan. It doesn't matter what your major is. It doesn't matter what your employment prospects. Thank you. What your employment prospects are. Everybody gets the same rate. You get this rate. You get this rate. Because a lot of it is effectively underwritten by the U.S. government. And that's not. So think about it again from the twin pillars of psychology
Starting point is 00:09:06 where, I mean, psychology of the borrower. Like, how come I'm paying the same rate as that person who's going to default? That's just not fair. I'm never going to default. In fact, I'm going to pay back my student loans early. So that helped. And then, again, positive selection versus adverse selection, because, and actually, refinance has this concept in general, because I would say if you're planning on declaring bankruptcy, or if you're saying, I'm going to, I'm going to join Occupy Wall Street and never pay back my loans, and I hate capitalism, why would you go refinance? It just doesn't make sense. Right. Because you're just going to default. Right. So if you raise your hand, and actually,
Starting point is 00:09:45 It's interesting, even on the other side, there are a lot of companies in what I would call the debt settlement space, and this is something that most people don't know about. But if you listen to some interesting talk radio, you'll hear all these ads for debt settlement. And what is debt settlement? It's saying, hey, do you have too much debt? If you call us, we will negotiate on your behalf and pay off your debts, and then you just owe us. And you kind of need this intermediary layer, because imagine that you owe $10,000 to Capital One, and you can't pay it back. And you call a capital. 1. It says press 1 for your balance. Press 2 to get a new card mail to you. Press 3 if you don't want to pay us the full amount and want to pay us less. Everybody's going to push 3. This is why they don't offer that option. They don't offer that option. Nor will they ever. However, on talk radio, and this is very big in the Midwest, like you'll hear freedom financial. Go call freedom financial and we will settle your debts for you. So they call Capital 1 and say, look, Alex can't pay you back. We'll pay you $2,000 right now. And then you're going to get rid of the loan.
Starting point is 00:10:47 And you're like, well, we're not happy taking 20 cents on the dollar, but it's better than zero cents in the dollar. Fine. We'll take it. And then you owe Freedom Financial the 20 cents. But why do they feel comfortable underwriting that? Because you rose your hand. You said, I want to get out of debt. And that's positive selection bias right there. Because people who are just deadbeats, because behind every credit score, if you think about how that works, it's willingness and ability to repay. and the psychological trait of the willingness is, in many cases, as important as the financial constraint of the ability. If I owe a million dollars to somebody and I only make $100 a year, it doesn't matter how honest I am, I can never pay that back.
Starting point is 00:11:30 It doesn't matter how long. I mean, I could live 10,000 years and I guess I could pay it back. But otherwise, I can't pay that back. But the willingness to repay is interesting. And that's very important. And that's, again, this kind of psychological trait that's captured in this idea of positive selection. So what did Sofi do? They kind of, again, hit this twin pillar, which is, I want to only get the good customers. I'm going to reprice them and steal them from the giant pool that, again,
Starting point is 00:11:57 normal distribution, these are the losers, these are the whatever's, and these are the people that you have no risk on whatsoever. Let's steal all of these people over here. Yeah. And it makes them feel good. It's a better marketing message because it's differentiated. Like, how do you compete with everybody? it's like, hey, we're just like Chase, but smaller and a startup and not profitable and you probably shouldn't trust us, bad marketing message. Good marketing message is you're getting ripped off. We're going to price you fairly. Come to us. Yeah. So if I did this for lending. Yeah. And what a health IQ do? So health IQ did this for health, really for life insurance. So they started off with the health quiz. Because it seems almost self-evident that healthy people are healthy. I mean, it's a
Starting point is 00:12:41 totology. Healthy people are healthier than not healthy people, but can you actually prove this from a life expectancy perspective? So they started off with just recording data and then building a mortality table. And it turned out that what I would assume is a prima facie case turned out to actually be correct, which is these healthier people do live longer than not healthy people. And then they turn that into both a positive selection advertising campaign, which differentiated them from a brand perspective, but also left them more profitable.
Starting point is 00:13:11 So what they do is they say, yeah, can you run a nine or an eight-minute mile? Can you do these things to prove that you're better than everybody else? And why is that important? Well, from their own balance sheet or profitability perspective, they want to get these good customers versus a brand-new life insurance company that said, hey, life insurance takes too long to get, it's a big pain and it's expensive, we'll underwrite you on the spot in one minute, no blood test, that's going to be adverse selection. That's like, ooh, I think I'm going to die soon.
Starting point is 00:13:41 Right. I want to get, and everybody rejected me for life insurance, I'm going to that company. Right. As opposed to here, they're only getting the customers that kind of hit, um, that think they're going to hit the underwriting standard, which is great. Um, they think it's fair. Yeah. So it's a differentiator from a brand perspective.
Starting point is 00:13:57 And then it turns out that, again, each marginal customer in insurance is kind of a coin flip. They're getting a weighted coin because they're only getting people on the far right side of this normal distribution. So wedge number one. is exploit psychology, positive selection, rather than negative selection, and what you'll end up with because of this sort of unique dynamic of the fintech industry is you'll end up with the most profitable customers.
Starting point is 00:14:24 What's wedge number two? We're going to talk about sort of new data sources and what startups can do to sort of price their products smarter than incumbents. Right. So imagine that you have a group of 100 people, and of the 100 people, half of them are not going to pay you back. So think of this as the old combinatorics problem of, you know, bins and balls. You've got this giant ball pit.
Starting point is 00:14:46 You scoop up 100 balls in your bin, and half of them are going to be bad. Half of them are going to be good. So what's a fair rate of interest if you're a lender that you have to charge this whole bin if half of them are going to default and you assume that you can't lose money? The answer is going to be 100%. Oh, right, because half of them you have to make up for all the deadbeats. you lose all of your money, half of them, you double your money, so you're back to square one. Now you're even. Now you're even. So the problem is that that's not good. Yeah. Because, well, in the
Starting point is 00:15:19 United States, you can't charge 100% interest. It's illegal. It's called usury. There are other parts of the world. Again, illegal, step one. Europe, so that's a problem. But what if you can use different data sources to, again, it's not positive versus adverse selection, as in some of the insurance companies, but it's saying, can I collect more forms of data so that instead of saying the only way that I can make my operation work is to charge an interest rate, which actually turns out to be illegal, can I come up with more data sources that effectively, even though discrimination sounds like a terrible word, and it's normally used in that construct, if you discriminate against criminals, that's fine.
Starting point is 00:15:59 I mean, some of the people that try to take advantage of lenders are actual, like, organized crime. You don't want them in your bin. You want to throw them out. how do you take more data sources and actually start measuring this? And the interesting thing here, and it's somewhat unfortunate, but you have a giant market failure happening in many different regions of the world, because in the United States, like the top interest rate that you can charge, it's regulated on a skate-by-state basis,
Starting point is 00:16:22 but Utah has a 36% usury cap, so a lot of people export that cap. That's a lot less than the 100% that I was mentioning. And there are lots of ways of kind of gaming that system, and you charge late fees, and you charge this fee, so it actually might end up looking more like 100 or 200%. So you can't charge more than 36%. And then you actually can't use certain types of data if they are prone to having an adverse impact.
Starting point is 00:16:44 So if you think about how machine learning works, I always kind of describe it somewhat over simplistically as linear algebra, where I have, here's every user that I've ever seen, here's every attribute that I've ever measured. And what I'm looking for is like strange correlations that I can't even explain. So I'm going to ask you, well, I'm not even to ask you a lot of these things. It's like, how long did you fill out this field for on my loan application?
Starting point is 00:17:05 Right. Did you enter all caps or not all caps? Just all of these different things. Did you take the slider on how much do you want and jam it all the way to the right? Right. All of these things. I can ask you, do you have a pet or not? That might be interesting. I don't know if that's a leading indicator of default or not. And then at the end of the day, I'm going to see default or not default. That's the output. And then I'm going to see what's correlated with that. And it's a little bit of this. It's a little bit of that. I can't explain it, but the computer can't. Now, the problem is that in the United States, you actually can't do this, because it might have. have an adverse impact. And what does an adverse impact mean? There actually was outright in terrible discrimination in lending in the United States. Well, there's unfortunately terrible discrimination in many things in the United States, but lending was one of several, or one of many. So imagine that I said, are you married or not? Oh, you're not married? I'm not going to make you alone. Well, that's illegal now. Are you this race? Oh, I'm not going to make you alone. Well, that's illegal now. So what did people do to get around, the people that were actual racists? or actual, like, maybe they weren't racist or discriminatory at heart, but they were picking
Starting point is 00:18:10 up on cues. They'd say, oh, what part of town do you live in? Oh, you live on that part of town? Well, that's like 100% correlated with this race or this gender or this, that. I'm not going to make you the loan. So the law was strengthened. So there's a law called fair lending in the United States. And then one of the components of it is this idea of called adverse impact. And it's different than adverse selection. It's saying, I don't care what you said you did for why you rejected Frank for a loan. If it turns out that everybody in your reject pile has a disproportionate gender ratio, race ratio, something like that, I'm going to assume that your underwriting standards are having an adverse impact. So you as a bank couldn't say, hey, look, I asked him
Starting point is 00:18:54 if he had cats. And I'm using that to make the loan decision. If it turned out that having cats was correlated with being in particular race, they couldn't use the cat's answer to deny you a loan. Correct, because that was, and in all fairness to the law, this is what people used with your geography. What zip code do you live in? Oh, you live in that zip code? Right.
Starting point is 00:19:18 100% you were a member of this particular race, and the intent all along was to discriminate against people of that particular race. But now, instead of using loan officers that use, God knows what to decide, do I want to make you the loan or not? You're using a computer. You can look at the code. So I think there is a lot of, there are some anachronistic laws that have to catch up here. But let's take an area outside of the U.S. to answer your question where perhaps you don't have interest rate caps. Because the thing that a lot of people say, oh, you know, 200 percent interest is terrible. 500 percent. That sounds awful. You should go to jail for that. But what does APR mean? APR stands for annual percentage rate. And what if I'm giving you a four-day loan? So I say, okay, I'm going to loan you $9 right now. You don't look very trustworthy. I want you to pay me back $10 on Monday. Yeah. That doesn't sound so bad. Yeah. It's like you're going to pay me a dollar. But what is that on an APR basis? That's like 9,000 percent. I made that up. But it's probably
Starting point is 00:20:19 about that, right? Because it's 10% every four days or every three days, 10% every three days. and that accumulates, like, that's a lot of money or a lot of interest on an APR basis, but it's the wrong metric because effectively it's like trying to figure out what your marathon time is based on your 100 meter dash. Like, the winning marathon time would be an hour, and that's not true. We know that nobody can run under a two-hour marathon right now. Yeah, so maybe Angela can. Maybe Angela.
Starting point is 00:20:46 So there's a company that we invested in called Branch, and what they're doing is they just collect every form of data possible, and they look for these strange correlations, and the interest rates on an APR basis might be high, but they're really charging like a dollar. And these are small loans, right? Very, very small loans. So I loan you, and actually the other interesting, like one of the nice data points that they're accumulating over time, that is a really interesting idea, I think. It's not new.
Starting point is 00:21:16 In fact, it's almost back to the future old, where they loan you a dollar. If you pay it back, they loan you $2. If you pay it back, they loan you $4. If you pay it back, they loan you $10. And they ladder up your credit, and they keep that information proprietary to them. Because induction turns out to be a pretty good formula for figuring out not so much the ability to repay, but the willingness to repay. You've established a pattern of willingness to repay. But they also look at where were you today?
Starting point is 00:21:43 And again, you provide all of this information in order for them to crunch this, in order for them to give you a loan at ideally a lower rate. because the more information, because it's kind of twin pillars, right? The less information we have, the higher the rate that we have to charge. Not because we're evil, but because otherwise you're going to have a market failure, like you have in lots of people. You have the bin ball problem, right? Because you have no idea how many dead beats. Exactly. And if I don't have any idea, I either have to charge a high rate or not charge anything at all.
Starting point is 00:22:10 And not charge anything at all doesn't mean like everybody gets a 0% loan. It means I don't make any loans. And like both of those are bad outcomes. The better outcome is you accumulate more data and you figure out here are the good people. people, let me not accept the bad people. Because again, the way that the good people end up paying more money is if the company starts accepting more bad people, because it goes back to what I said at the beginning, which is more customers in this unique industry often is bad if you don't understand how to select them correctly. And for many of these newfangled lending and insurance
Starting point is 00:22:43 companies, the default customer is going to be adversely selected. Because if you're a new lender and you have no underwriting standards, you're advertising free money never pay us back. Yeah. And those are the people that will be attracted to you, both the criminals and the non-criminals, in droves. Yeah. So this is sort of startup attack wedge number two,
Starting point is 00:23:01 which is I'm going to generate a new data source that allows me to price my product in a way or reach a customer that a traditional company would never even try, or they don't have the data source, or they have the band-in-ball problem. So what are the types of data that branch went to go get to try to figure out,
Starting point is 00:23:17 I give you a loan of a dollar or two. Well, the other type of data, so Branch was somewhat unique in that they said we're going to get data from your phone. And it seems odd. He's like most lenders in the developed world, or not developed versus undeveloped, it's really like with developed credit infrastructure. Yeah, if there's a credit bureau. They look up your credit report.
Starting point is 00:23:41 If it's good, they make you a loan. If it's bad, they don't make you alone. It's actually not that hard. And there are all sorts of nuances that you can layer on top. is how it's been working for a long time in the United States as an example. Whereas there, it was like, okay, where did you work today? Did it look like you work today? Right. So it was stuff like that and even like how many apps do you have on your phone. Like weird stuff that you would never assume actually has any kind of indication of willingness or ability to
Starting point is 00:24:08 repay, but in many cases it does. Like are you gambling? Well, if you have a gambling app on your phone, you're probably gambling. Maybe that's good. Yeah. Maybe it's bad. It's actually not making human judgments. And it's also not looking at any one of these unique variables as a unique variable. It's looking at them in concert and then correlating them with these outcomes, or really observing the outcomes and then linking them back to all of these different inputs. Yeah, I remember talking to the team when I was researching my last machine learning presentation and the fascinating things that I found were if you got more texts than you sent, you were more creditworthy. If you had the gambling app,
Starting point is 00:24:47 You were more credit worthy rather than less, which is not kind of what you would expect. If you burn through your battery, you were more likely to default. Right. So, like, all of these things where human alone officers would never really guess, and they probably would guess the wrong way. Right, because many of them are counterintuitive. Right. And then many of them are not, they're not unilateral. Like, so it's not just, I mean, I don't know, but it's not just the battery thing.
Starting point is 00:25:12 It's the battery thing with this, with that, with that. Right. And it's like, you know, humans can only really observe. are three dimensions plus times, I guess four, and these are, you know, 9,000 dimensional problems. So it's just, it's much, much more challenging for humans to really grok. Yeah. Got it. So that's sort of the second category of attack, which is you generate a new data source, and then that allows you to price or find customers in sort of a more cost-effective way. Let's talk about the third, which is around sort of fundamentally changing behavior.
Starting point is 00:25:45 So why don't you talk about maybe Earning is a good example of this? Yeah, so if you assume that humans are static, so they're born, both of our Camerons were born, and their DNA is set upon birth, maybe it changes a little bit with some mutations from some gamma rays here and there, but it's set upon birth, and then human behavior never changes. And that's one way of looking at things, and then you think about adverse selection versus positive selection. Good drivers are always good drivers, bad drivers are always bad drivers, let's just get the good drivers. So the other category, and it's not to say that these other two groups don't do this, but if I look at a company like Ehrnan, most payday lenders are reviled because they charge
Starting point is 00:26:24 high fees, they don't educate their borrower very well. Now, it actually provides a valuable service because if I'm getting paid next Friday, but my rent is due today and I don't have money, do I want to get evicted? No. I want to get paid right now, and the only person that does this is the payday lender. but the payday lender is competing with other payday lenders for advertising in the local newspaper or something. And if they're able to rip me off more, not because they're evil, but because they have
Starting point is 00:26:53 to afford the advertising spot, they're now insented to do so. So it's just, it's a, it's a vicious cycle. So let's talk about Earnon. So what Ehrnan does is they say, okay, we know that you've worked this long. So again, new data source, because the phone's in your pocket and you work at Starbucks and you're getting paid hourly, and we've seen the phone in your pocket. or in your locker in the Starbucks office and nearby the barista counter
Starting point is 00:27:17 for eight hours. So you worked. We saw your last paycheck, hit your bank account. We know that that's where you work. We're not taking your word for it. We have real-time streaming information about this. And now we will give you your money whenever you want. Not money that you haven't earned yet, but money that you have earned,
Starting point is 00:27:36 but you actually haven't gotten paid for yet. And then you can tip us. There's no cost. If you want, you can give us. No interest, no fee, no... No. If you want to pay us nothing, that's fine. I mean, we would appreciate if you pay us something, because obviously we're providing a valuable service for you. And then you can even give tips for your friends. There's this community that's really emerged of people on
Starting point is 00:27:54 Ehrnan. And actually, if you look back, a different business model, but this idea of microfinance in general, so if you think about Mohammed Yunus and what he did, this idea of can you encourage people to pay back loans using social pressure. So again, not adverse selection versus positive selection, but actually trying to force everybody down positive behavior. Let's get the community to encourage repayment. Right. Because then saying, or like let's get the community to encourage people actually driving safely.
Starting point is 00:28:28 Because there's underwriting at the time of admission. There's underwriting based on ongoing behaviors. So like many of the car insurance companies that are brand new are saying, we will re-underwrite you. Yeah, if you drive like Frank when you signed up, great, but now you switched into like race car driver mode and you were trying to hack us, but we're actually monitoring your speedometer at all times. So guess what? You got a higher rate now. So that might encourage you to drive safely. If I'm Frank and I drive safely in my Prius. Yep. But then I decide, and then I got a really good rate on my car insurance as a result. And now I'm like, aha, I game the system. Now I'm going to drive like a maniac. Right. Well, the nice thing is that you can make underwriting dynamic, and you can say, all right, we're actually going to re-underwrite you every day.
Starting point is 00:29:16 Right. So we have the positive selection to try to attract the Franks. We have the continuous evaluation to try to encourage the right behavior post-Frank sign-up, and also to stop the gamification of it's like, I'm going to pretend to be safe and then be like a maniac. But then how do you actually get, what if Frank was a bad driver initially, doesn't fall into my positive selection loop, but I still want to try to make Frank a better driver. If I could turn him into a good driver, he'd be profitable.
Starting point is 00:29:49 Right. So what can I do? Because that's the flaw with kind of wedge one and wedge two of like creaming the crop, really wedge one, which is we're going to cream the crop, we're going to do what SOFA I did, we're going to do with health IQ. I mean, it's a great strategy. But the rest, again, if you assume that it's all nature
Starting point is 00:30:07 and there's no nurture, then perhaps there's nothing you can do. But if you can actually try to nurture better behavior, you do see better behavior. And then the profitability goes up. And the interesting thing there is that you're still finding misprice customers, but you're actually helping turn them into correctly priced customers. So, you know, somebody like a bank would turn away that customer and say, we don't want them because they have a 500 FICO, which is really bad.
Starting point is 00:30:37 and then you have to figure out, and as with all of the new startups that are saying, we only want the best customers, we want to leave the banks with the bad customers. But it's kind of the twin pillars of can you identify something that's below that credit score or below that driving score or something, and then can you encourage positive change? And if you can, then you can start actually creaming the crop of the bottom half of the customers. Right. Right, not even the bottom half. It's the customers that are just neglected because nobody wants to underwrite them.
Starting point is 00:31:06 And then you do that. You take them on because you have a secret to change their behavior. You're seeing a lot of companies that sort of are using behavioral economics research to figure out how do I nudge people into better behavior. Right. And so this would be an example of how you're trying to change behavior to get the profitable customer. Right. So, you know, there was one company in the lending space a while ago called Vouch. I think ultimately it didn't work. But when you apply for a loan, it actually kind of taps your social network and it requires that they do a reference for you. Either a reference in terms of like, yes, Frank is a good customer. You can trust him. And even kind of a co-commit. So I'm getting a loan for $1,000 and you say, yeah, Alex is okay. Or I'm saying Frank is okay. And if he doesn't pay you back, I will put $100 in. Because that's how confident I am.
Starting point is 00:32:05 And it's not all thousand, but it's 100. And then you're my friend. I go bowling with you. We go take our cameras out together. And if you don't pay back this $1,000 to this kind of faceless, large, evil corporate entity, not really, but if you don't pay that back, I'm on the hook for $100. I'm not going bowling with you anymore. So there are other things that are really interesting to try to encourage the correct form of behavior. And actually, part of it is just making it personal.
Starting point is 00:32:33 This was the whole Unis theory, which is if you are kind of held accountable by your peers, that is so much more powerful than getting a collections call from Citibank. Like, you're like, ooh, that's the collections never, iPhone block. Right. Done. Right. But how am I going to block my friends out? Right. If Alex calls me and says, you'd really got to pay that loan back, otherwise I'm out 100 bucks, right?
Starting point is 00:32:55 That's much more powerful. I mean, this has worked great for a lot of health in a different domain, right? which is the, if you are trying to get a pre-diabetic patient, not to get diabetes, the most effective thing to do is lose something like 6 or 7% of your body mass. And the way they do it is they get you into a group. They mail everybody a scale. Everybody sees your weight in the morning. Right. Like that's a powerful motivator. Yeah. I mean, this stuff, psychology is very powerful. So there are a lot of tricks that you can use here. And if you understand the impact of them, you actually have to reassess your entire branding
Starting point is 00:33:29 and customer acquisition strategy. Right. All right. So remember, I opened up pretending to be the product manager at Visa. And now we've gone through all of these three categories of how the startups are coming for me. And like, I'm starting to sweat here, right? They can come get my best customers.
Starting point is 00:33:47 They can generate new data sources that, like, I would have a hard time doing. They can actually even go after sort of worse customers, change their behavior, turn them into profitable customers. I'm scared now. Like, what in the world should I do? Like, you're in my seat, you're the head of innovation or head of strategy or head of digital at one of these big fintech companies.
Starting point is 00:34:06 What should I do with respect to startups? Well, I think it's actually very hard for a company that's trying to be all things to all customers. Because if you look at what SoFi is, look at SoFi's brand. Brand is, you know, we are the high, like, if you're great, you're good enough for us. If you're a Henry, right? If you're a Henry, you're good enough for us. Health IQ, if you're healthy, you're good enough for us. So on that sector of the curve, how does GEICO say, hey, if you're a good driver, go to this special part of GEICO.
Starting point is 00:34:35 If you're a regular driver, you still save 15%. If you're a bad driver and you had a DUI, well, we can cover you over here. It's just, it's lost in this kind of giant GEICO marketing message. So in many cases, it actually helps to have sub-brands and divide this up, which is somewhat anathema to a lot of companies that want to say, how do we get as much? efficiency and synergy as possible, we're going to have one overarching brand. And, you know, one of my favorite examples of this, kind of different industry, but the highest end of the highest end of jewelry is Tiffany and Co. Or one of the highest end of the highest end. And for a long time, it was owned by Avon. No, really? You know, the Avon Lady Avon. Huh. So, and if Avon
Starting point is 00:35:18 bought Tiffany, which they did, and they said, okay, we're going to rebrand Tiffany and Co. is Avon, like, that doesn't work. Yeah, yeah. Like, you're not going to get, you know, 80% gross margins on whatever they sell at Tiffany & Co. Right. Breakfast at Avon just doesn't have quite the right ring. It doesn't work.
Starting point is 00:35:33 And then for Avon to say, okay, you know, the door-to-door salesperson or a sales lady with the pink catalog that's going around, like, we're now going to have her push, you know, $2,000 bracelets as opposed to the normal $10 fare. Like, that's not going to work either. Yeah. But it actually can make sense if,
Starting point is 00:35:52 you want to just appeal to more customers, you have different brands and you don't want to all suck them together. So you can imagine instead of having, you know, Geico could be your generic brand, but then you could have, I think I mentioned this to you once before, a friend of mine is Mormon, doesn't drink alcohol, and says we should have Mormon insurance for cars, because it's just totally unfair. Again, going back to the psychology point, like, why is it that I'm paying for the drunk idiot that goes through the stop sign? I don't drink. I can prove that. I will never drink. I have a million friends just like me that will never drink. We should all get car insurance. We should all get a 40% lower rate. Do they think of GEICO when they go there? Maybe they could, but it could be like
Starting point is 00:36:30 Mormon car insurance. I'm not good at branding. But you can have a separate brand for all of these separate subgroups and have the same underlying infrastructure behind all of them. But again, part of this is just how do you brand and how do you market effectively? Because if you look at the efficacy of health IQ ads or the efficacy of SOFI ads, there's much higher because, again, you have this large group of people, or many cases, small but valuable groups of people, that feel like they're being treated unfairly. So, yeah, GEICO is, save 15% on auto insurance, click here. Mormon car insurance advertised to LDS members in Utah, shooting fish in a barrel.
Starting point is 00:37:11 That's going to have a dramatically higher click rate. And then many of these products are also very demand elastic. So I'm not saying save 15% on car insurance. I'm saying save 80% on car insurance. It's very easy to do. Click here, positive selection bias. That's going to work better than, like, Geico, but we also have something for Mormons, too.
Starting point is 00:37:30 Right. Yeah. The goal is to find the LDSers and the hyper-milers who are really safe, et cetera, et cetera, right? And so it's very counterintuitive because if you're at a big company, you're thinking, scale. How do I get the next increment of revenue growth or profit?
Starting point is 00:37:44 And you're saying, actually go the other way. Don't try to make your single brand bigger. try to think about a dozen sub-brands, each going after sort of the perfect market for them. How do you positively select into a sub-market? Well, the other side effect of this
Starting point is 00:37:59 is that part of the asymmetric warfare that some of the startups have is that if you wanted to kill GEICO, you wouldn't steal 100% of their customers. Because if you did that, that would almost be too obvious. You'd steal 20% of their customers, but only the good ones. So imagine that GEICO could actually devolve
Starting point is 00:38:16 or evolve, depending in your point of view, into 10 sub-brands. There's no more Geico, but it's just like the 10 sub-brands basically select for the right types of customers or even help judge and improve behavior from other subsets of customers and then expel the 30% that are just bad news. And if you can expel the 30% that are bad news, you might say, okay, well, all of this dis-snergy of going from one brand into 10 sub-brands, well, that was idiotic. Because now I have fewer customers, but actually no, it isn't.
Starting point is 00:38:47 because you might have fewer customers, but it's not like selling widgets. You're selling probabilistic widgets where, in many cases, you have negative gross margin when you sell a widget. So it's important to figure out how do I get the good ones, keep the good ones, and then get rid of the bad ones. So that's one strategy, which is sort of sub-brands and sort of customer segmentation. What if I've been told by the management team, go find a bunch of startups to work with, right? sort of somehow figure out a marketing or co-selling relationship so that we can start experimenting with some of these new models, and we can keep an eye on the startup community so that maybe we can put ourselves in the best place to buy them if it turns out working. Is there a way to do that?
Starting point is 00:39:33 Well, there are many ways to do that. Probably the easiest way that is often counterintuitive for a lot of big companies is I call this the Turndown Traffic Strategy. So Chase turns down a lot of people for loans, either because, again, it's the bin and ball problem where it's like, well, you might be good, you might be bad. Sometimes it's not even that. It's like, we think you're good, but we just can't profitably underwrite a $400 loan. But Chase has all the traffic. So what is turned down traffic? It's saying, okay, we rejected you. Hey, here's a friend that you might like. So this is not cream of the crop. This is the bottom tier on the ingestion point for a big financial institution saying, And we don't want you, which kind of is kind of a mean thing to say, a way to ameliorate that
Starting point is 00:40:16 potentially is saying we don't want you because we're not smart enough to, hey, it's sorry, we're working on it. All our systems are down, but here's a great startup that does. Now, why would you send customers to a startup? Well, the number one thing, Geico spends $1.2 billion a year on advertising. It's really hard to compete with that from a – so if I could not spend a dollar of advertising but give 90% of my net income to get. as a startup, I still might make that trade. I mean, we don't always like this because we want
Starting point is 00:40:45 to see, do you have your own acquisition strategies, your own acquisition channels? You're not dependent on the big company. But from the big company's perspective, turn down traffic is often brilliant. Because it's saying, here's somebody that knows how to underwrite better than we do or more profitably than we do. We're going to send our customers, you know, otherwise what happens? And this is what I think Amazon got right in an era where everybody else got this wrong. Amazon said, okay, you're on Amazon's website, and you're looking at the Harry Potter book. And then right next to our Harry Potter book is an ad for Barnes & Noble for the Harry Potter book. Barnes & Noble is like, this is amazing. We can buy ads on Amazon's website. They're so stupid.
Starting point is 00:41:24 We're buying ads and stealing their customers. But every time you click on that Barnes & Noble ad, Amazon made a dollar, and it's a hundred percent gross margin. They share that with nobody. There's no cogs on that. And then they can use that dollar of pure profit to lower the cost of their Harry Potter book, which, actually made more people want to go to Harry Potter. We'll go to Amazon to look for Harry Potter then go to Barnes & Noble that said, we're locking within our walls. It's like a casino with no clocks, and we're going to pump oxygen in. So, because what a lot of big companies don't get is that Google is just one click away. Like, why give all the excess profits to Google? When I go to Chase, I get turned down for a loan, and then I go back to Google and I say, where else can I get a loan? Well, Chase should be sending you there. And actually, they're starting to do this.
Starting point is 00:42:06 So that's one strategy that I think has a lot of legs. Yeah, so turn down traffic. That's super interesting. Look, you spend all the money to bring them to your site, and otherwise you would have just lost them, right? That's sort of sunk cost. So you get something out of it. That's fantastic. Well, why don't we finish this segment out? I want to do a lightning round with you, which is I want sort of, you know, instant advice for somebody in this seat. I'm an executive visa or a Geico. And so I'm going to name a category and you sort of just of how to deal with startups and you can react to it. All right. So category one is you should. should always invest super early as early as you can into a startup. So again, remember adverse selection versus positive selection. So I would say the company, so this is what you have to get right, which is if you take nine weeks to make a decision and like, you know, we'll decide within a day or Sequoia or benchmark or some other great venture capital firm, we'll decide within a day. Like, you're not going to get good deals if you take nine weeks.
Starting point is 00:43:02 So it can be very, very important to invest really, but like the best things always seem overpriced. Like, this is something that we've learned, and it's the same thing with underwriting your own customers, which is, like, if something's too good to be true, it probably is. So some of the best things are actually very expensive. Yeah. All right. Just given those dynamics, just wait for the later rounds. Let all the venture guys take all the risk, and then, like, you plow in late. That should be my strategy. I think in general, that's probably a better strategy. But again, saying, like, ooh, we're getting a great deal on this one. That's probably, then you know that you're the
Starting point is 00:43:35 adverse selection, a source of capital, as opposed to, okay, here's something, I can't believe we're paying this much money for it. We have to fight our way in. There are 10 other people that want it. You probably know you're on to a good customer, if you will, or a good investment. All right. Partner with as many possible startups as you can, because you don't know who's going to win, so let's open up a marketplace. Let's 100 startups that I have either turned down traffic relationships or something. I think that actually that does make sense. I mean, there should be some kind of gating item to make sure, like, maybe not 100, but how do we stay close to different models that are working well? Because the main advantage that the incumbents have, again, depends on like lending or insurance, but it's typically something around cost of capital and something around distribution.
Starting point is 00:44:24 So if you have both of those and you're not using it to the fullest extent, like you turn down a lot of customers. is like you should try to find an intelligent way of using this and using that's your unique thing. Like venture capital firms don't have that. I can't fund somebody and send them a million customers tomorrow, but GEICO could. But you can't do that a hundred times. You can probably do that some sub-segment of times according to how much additional traffic or whatever it is that the unique advantage that you want to bring to bear. All right.
Starting point is 00:44:55 Now on M&A Strategy. M&A strategy, one, buy super early before it's proven to work because presumably the prices are lower. So, M&A strategy early. Focus on early stage companies. I'm a big fan of what Facebook's done with M&A, and I encourage everybody in pretty much every other industry to do this. So Facebook has two formats for M&A. One is we buy the existential threat that could kill us, and we price it probabilistically. So surrender 1% of our market capitalization. to buy Instagram.
Starting point is 00:45:28 That was way over price. But everybody said now, but one percent, like there's a one in the hundred chance that this is going to be bigger than Facebook. We should probably surrender 1% of our market cap. WhatsApp, 7% chance, or whatever it was, I think it was 7% of Facebook's fully diluted market cap was spent on WhatsApp. These were brilliant acquisitions. Oculus, I mean, Oculus hasn't turned out the same way that WhatsApp has, perhaps.
Starting point is 00:45:50 But like, same idea. It's like, this could be the new platform. If we don't buy this, and Apple does, we are subject to their random whims and fans. So that's, that's category one. Category two, and this is super counterintuitive for a lot of companies, by the guys that failed trying. Because they had the courage and the tenacity to try to go and build something new. And that's what you want in your company as well. And then this is the most counterintuitive part. It's like take the person that failed and put them in charge of the person that was successful. Yeah. And that's the part that's breaking glass. For a big company, that's so hard. You reward your execs on success, not on failure.
Starting point is 00:46:28 Right. But in many cases, it's like you have a big company. It's been trying to build this thing for 10 years. And if they build it, they will get 1 billion customers. Because they are making that up. They have the distribution. Then you have the startup that actually built the thing in like a week. And they built it for a million dollars.
Starting point is 00:46:42 And that would take the big company like a billion dollars in 10 years to do. But like, oh, the company failed. Oh, that's a bad company. These are bad managers. But actually, you want to take them and put them in charge. And the joke that I would always make is like, if Amtrak buys Tesla, the worst thing that Amtrak could do, because Amtrak is probably more profitable than Tesla at this point. But if Amtrak were to buy Tesla, the worst thing they could do is say, okay, all of you, Tesla bozos, you work for us. But the whole point of a lot of this other form of M&A is you're really trying to buy products that you can push into your distribution.
Starting point is 00:47:16 And you're trying to buy talent that wrote the products, that built the products, that understand that. and the only thing that they needed, the only gap between them and actual huge success is distribution, which these big companies have in droves. Yeah. So that makes perfect sense. Maybe just a piece of advice on how to actually make that happen because you have this dynamic where you're a big company.
Starting point is 00:47:36 You just bought a failing startup, right? You have all of the execs inside that have earned bonuses consistently over a year for awesome performance, right? You've rewarded success. And now you're going to say, I'm going to take this guy that kind of failed. And, like, you work for them. Right. Like, that's hard to do inside a big company.
Starting point is 00:47:55 It's very hard, but, I mean, in some cases, you just want to do it early. I mean, I think it actually, where it works best is where you say, we need this product. Yeah. We need this product to exist. We don't have it right now. We haven't spent eight years trying. Rather than saying, let's go assemble a team and I'm going to rely on something that's just not in our core DNA, here's how we're going to go shopping. We're not going to go shopping and value this.
Starting point is 00:48:16 And again, we don't, this is not a self-serving comment because if somebody buys, one of our failing companies for $10 million and we have a billion dollar fund, it doesn't matter, right? Like, we want the companies that actually beat the incumbents. But the incumbents, the way that they can actually do great is to adopt more of this Facebook mentality. And, like, the key thing is that many of these acquisitions, these kind of aqua hire, that's the portmanteau of acquire and hire,
Starting point is 00:48:38 these aquaher acquisitions that Facebook made, these people now run big swaths of Facebook. So I agree, it's hard to do if you already have a leader in place, In that case, it just requires a very strong-willed leadership team and an actual overt strategy that this is what we do. It becomes easier if it's like, okay, we're trying to do this new thing, rather than assemble our own team and they don't know what they're doing, but they're well-intentioned, let's go buy a company, but let's buy a company that hasn't already done the thing, but a company
Starting point is 00:49:07 that tried and failed to do the thing, but we're pretty sure that these are the best triers and failures in the business. That's the hard thing to really measure, because most people are used to measuring. outcomes and not process. Exactly. And the key thing to make this strategy work is you actually want to over allocate on process and you want to wait outcome to almost zero because you're buying the outcomes that were in fact zero. Yep. The mark is about to interview Andy Duke, the thinking and bets. Right. Right. And this is sort of the essential thinking and bets motion. Right. Right. Right. Right. Right. Right. Right. Exactly. Awesome. Well, thank you so much, Alex,
Starting point is 00:49:46 for coming in and sharing your thoughts. For those of you in YouTube land, please like and subscribe. And for the comments thread on this, I'd love to get your input on what you thought of Alex's idea that what you really should do is not go after more customers, but instead go after only the best customers. So what are examples that you've been trying in your own startup
Starting point is 00:50:10 where you're trying to implement that idea? So see you next time. go ahead and subscribe to the channel if you like it and see you next episode

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