黑天鹅养殖

Paul Graham 2012-09-01

黑天鹅养殖

2012年9月

这些年来我做过几种类型的工作,但我不知道有哪种像创业投资那样违反直觉。

作为一项业务,关于创业投资需要理解的两件最重要的事情是(1)实际上所有回报都集中在几个大赢家身上,(2)最好的想法最初看起来像坏想法。

第一条规则我在智力上知道,但直到它发生在我们身上才真正掌握。我们资助的公司总价值大约100亿,上下几亿。但只有两家公司,Dropbox和Airbnb,占了大约四分之三。

在创业公司中,大赢家的程度违反了我们对变化的期望。我不知道这些期望是天生的还是习得的,但无论原因是什么,我们就是没有为创业投资中发现的1000倍结果变化做好准备。

这产生了各种奇怪的后果。例如,在纯粹财务方面,每个YC批次中可能最多只有一家公司会对我们的回报有重大影响,其余的只是做生意的成本。[1] 我还没有真正吸收这个事实,部分原因是它是如此违反直觉,部分原因是我们这样做不仅仅是出于财务原因;如果我们每批次只有一家公司,YC将是一个相当孤独的地方。然而这是真的。

要在违反你直觉的领域取得成功,你需要能够像飞行员在云中飞行时那样关闭它们。[2] 你需要做你智力上知道是正确的事情,即使它感觉是错的。

这对我们来说是一场持续的战斗。我们很难让自己承担足够的风险。当你面试一家创业公司并认为”他们似乎可能成功”时,很难不资助他们。然而,至少在财务上,只有一种成功:他们要么成为真正的大赢家之一,要么不是,如果不是,资助他们并不重要,因为即使他们成功,对你的回报的影响也是微不足道的。在同一天面试中,你可能会遇到一些聪明的19岁孩子,他们甚至不确定想要做什么。他们成功的机会似乎很小。但再次,重要的不是他们成功的机会,而是他们真正成功的机会。任何群体真正成功的机会是微小的,但那些19岁孩子的机会可能比其他更安全群体的机会高。

创业公司真正成功的概率不仅仅是它们完全成功概率的恒定分数。如果是这样,你可以资助每个看起来可能成功的人,你会得到那个分数的大赢家。不幸的是,挑选赢家比那更难。你必须忽略面前的大象,他们成功的可能性,而是专注于另一个几乎无形无形的问题:他们是否会真正成功。

更难

最好的创业想法最初似乎像坏想法这一事实使这更加困难。我以前写过这个:如果一个好想法明显好,其他人已经做了。所以最成功的创始人倾向于做除了他们以外很少有人意识到是好的想法。这离疯狂不远了,直到你看到结果。

Peter Thiel第一次在YC演讲时画了一个维恩图,完美地说明了这种情况。他画了两个相交的圆,一个标记为”似乎像坏想法”,另一个”是好想法”。交集是创业公司的最佳点。

这个概念很简单,但将其视为维恩图是有启发性的。它提醒你有一个交集——有看似坏的好主意。它也提醒你,绝大多数看似坏的想法确实是坏的。

最好想法看起来像坏想法的事实使得识别大赢家更加困难。这意味着创业公司真正成功的概率不仅仅是成功概率的恒定分数,而且高概率有前者的创业公司似乎有不成比例的低概率有后者。

历史往往被大成功重写,所以回想起来,它们似乎明显会变得很大。因此,我最宝贵的记忆之一是当我第一次听说Facebook时它听起来多么蹩脚。一个让大学生浪费时间的地方?它似乎是一个完美的坏主意:一个(1)针对小众市场(2)没有钱(3)做不重要事情的地方。

人们可以用完全相同的术语描述微软和苹果。[3]

更难了

等等,情况更糟。你不仅要解决这个难题,而且要在没有任何成功迹象的情况下这样做。当你挑选一个大赢家时,你两年内都不会知道。

与此同时,唯一你能衡量的东西是危险的误导。我们能够精确跟踪的唯一事情是每批次创业公司在演示日后融资做得如何。但我们知道那是错误的指标。能够融资的创业公司百分比与财务上重要的指标之间没有相关性,即该批次创业公司是否包含大赢家。

除了一个反相关的。那是可怕的事情:融资不仅是一个无用的指标,而且是积极的误导。我们从事的业务需要挑选看起来没有希望的异常者,成功的巨大规模意味着我们可以非常广泛地撒网。大赢家可以产生10,000倍的回报。这意味着每个大赢家我们可以挑选1000家回报为零的公司,仍然最终领先10倍。

如果我们达到资助的创业公司100%能够在演示日后融资的程度,那几乎肯定意味着我们太保守了。[4]

有意识的努力不要这样做。在15个为投资者准备创业公司然后观察它们表现周期后,我现在可以通过演示日投资者的眼睛看待我们正在面试的群体。但那些是错误的眼睛!

我们能够承担至少比演示日投资者多10倍的风险。由于风险通常与回报成比例,如果你能承担更多风险,你应该。承担比演示日投资者多10倍的风险意味着什么?我们不得不愿意资助比他们多10倍的创业公司。这意味着即使我们对自己慷慨,假设YC平均可以三倍创业公司的期望价值,如果只有30%的创业公司能够在演示日后获得重要融资,我们将承担正确数量的风险。

我不知道目前它们中多少在演示日后融资更多。我故意避免计算那个数字,因为如果你开始测量某物,你开始优化它,而我知道这是错误的东西。[5] 但百分比肯定远高于30%。坦率地说,30%的融资成功率想法让我胃部收缩。只有30%的创业公司可融资的演示日将是混乱的。每个人都会同意YC已经 jumped the shark。我们自己也会觉得YC已经 jumped the shark。然而我们都错了。

无论好坏,这永远只是一个思想实验。我们永远无法忍受。这违反直觉怎么样?我可以列出我知道是正确的事情,但仍然不做。我可以编造各种看似合理的理由。如果我们投资大量失败的有风险创业公司,会伤害YC的品牌(至少在数学不好的人中)。它可能稀释校友网络的价值。也许最有说服力的是,对我们来说一直失败到下巴是令人沮丧的。但我知道我们如此保守的真正原因是我们还没有吸收回报1000倍变化的事实。

我们可能永远无法让自己承担与这个业务中回报成比例的风险。我们最好的希望是,当我们面试一个群体并发现自己认为”他们似乎像好创始人,但投资者会认为这个疯狂想法怎么样?“时,我们将能够继续说”谁在乎投资者怎么想?“这就是我们对Airbnb的想法,如果我们想资助更多Airbnbs,我们必须保持擅长这样思考。

注释

[1] 我不是说大赢家是唯一重要的事情,只是说它们对投资者来说财务上是唯一重要的事情。由于我们做YC主要不是出于财务原因,大赢家对我们来说不是唯一重要的事情。例如,我们很高兴资助了Reddit。尽管我们从中赚得相对较少,Reddit对世界有很大影响,它向我们介绍了Steve Huffman和Alexis Ohanian,两人都成为了好朋友。

我们也不会强迫创始人试图成为大赢家,如果他们不想的话。我们在自己的创业公司(Viaweb,以5000万美元被收购)中没有” swing for the fences”,强迫创始人做我们没有做的事情会感觉相当虚假。我们的规则是这取决于创始人。有些人想要接管世界,有些人只想要前几百万。但我们投资这么多公司,我们不必为任何一个结果出汗。事实上,我们不必担心创业公司是否有退出。财务上唯一重要的是最大的退出,那些是有保证的,因为如果公司变得足够大,其股票市场将不可避免地出现。由于剩余结果对回报没有重大影响,如果创始人想以少量早期出售,或缓慢增长从不出售(即成为所谓的生活方式业务),甚至关闭公司,对我们来说都可以。当我们有很高期望的创业公司做得不好时,我们有时会失望,但这种失望主要是任何人发生这种情况时感到的普通类型。

[2] 没有视觉线索(例如地平线)你无法区分重力和加速度。这意味着如果你在云中飞行,你无法告诉飞机的姿态是什么。你可能觉得你在直线水平飞行,而实际上你在螺旋下降。解决方案是忽略你身体告诉你的,只听你的仪器。但结果证明忽略你身体告诉你的非常困难。每个飞行员都知道这个问题,但它仍然是事故的主要原因。

[3] 并不是所有大赢家都遵循这个模式。Google似乎是个坏主意的原因是已经有大量搜索引擎,似乎没有另一个的空间。

[4] 创业公司融资成功是两件事的函数:他们在卖什么以及他们卖得多好。虽然我们可以教创业公司很多关于如何吸引投资者,但即使最有说服力的推销也不能卖出投资者不喜欢的想法。我确实担心Airbnb,例如,无法在演示日后融资。我无法说服Fred Wilson资助他们。他们可能根本没有融到钱,但巧合的是,我们在Sequoia的联系Greg McAdoo是少数理解度假租赁业务的风险投资家之一,他在过去两年中大部分时间调查它。

[5] 我在2010年夏季一组投资者开始自动向我们资助的每个创业公司提供投资之前的上一批计算过一次。当时是94%(35家尝试融资的公司中有33家成功,一家没有尝试,因为他们已经盈利)。现在可能更低,因为那个投资;过去是演示日后融资或死亡。

感谢Sam Altman、Paul Buchheit、Patrick Collison、Jessica Livingston、Geoff Ralston和Harj Taggar阅读本文的草稿。

Black Swan Farming

September 2012

I’ve done several types of work over the years but I don’t know another as counterintuitive as startup investing.

The two most important things to understand about startup investing, as a business, are (1) that effectively all the returns are concentrated in a few big winners, and (2) that the best ideas look initially like bad ideas.

The first rule I knew intellectually, but didn’t really grasp till it happened to us. The total value of the companies we’ve funded is around 10 billion, give or take a few. But just two companies, Dropbox and Airbnb, account for about three quarters of it.

In startups, the big winners are big to a degree that violates our expectations about variation. I don’t know whether these expectations are innate or learned, but whatever the cause, we are just not prepared for the 1000x variation in outcomes that one finds in startup investing.

That yields all sorts of strange consequences. For example, in purely financial terms, there is probably at most one company in each YC batch that will have a significant effect on our returns, and the rest are just a cost of doing business. [1] I haven’t really assimilated that fact, partly because it’s so counterintuitive, and partly because we’re not doing this just for financial reasons; YC would be a pretty lonely place if we only had one company per batch. And yet it’s true.

To succeed in a domain that violates your intuitions, you need to be able to turn them off the way a pilot does when flying through clouds. [2] You need to do what you know intellectually to be right, even though it feels wrong.

It’s a constant battle for us. It’s hard to make ourselves take enough risks. When you interview a startup and think “they seem likely to succeed,” it’s hard not to fund them. And yet, financially at least, there is only one kind of success: they’re either going to be one of the really big winners or not, and if not it doesn’t matter whether you fund them, because even if they succeed the effect on your returns will be insignificant. In the same day of interviews you might meet some smart 19 year olds who aren’t even sure what they want to work on. Their chances of succeeding seem small. But again, it’s not their chances of succeeding that matter but their chances of succeeding really big. The probability that any group will succeed really big is microscopically small, but the probability that those 19 year olds will might be higher than that of the other, safer group.

The probability that a startup will make it big is not simply a constant fraction of the probability that they will succeed at all. If it were, you could fund everyone who seemed likely to succeed at all, and you’d get that fraction of big hits. Unfortunately picking winners is harder than that. You have to ignore the elephant in front of you, the likelihood they’ll succeed, and focus instead on the separate and almost invisibly intangible question of whether they’ll succeed really big.

Harder

That’s made harder by the fact that the best startup ideas seem at first like bad ideas. I’ve written about this before: if a good idea were obviously good, someone else would already have done it. So the most successful founders tend to work on ideas that few beside them realize are good. Which is not that far from a description of insanity, till you reach the point where you see results.

The first time Peter Thiel spoke at YC he drew a Venn diagram that illustrates the situation perfectly. He drew two intersecting circles, one labelled “seems like a bad idea” and the other “is a good idea.” The intersection is the sweet spot for startups.

This concept is a simple one and yet seeing it as a Venn diagram is illuminating. It reminds you that there is an intersection—that there are good ideas that seem bad. It also reminds you that the vast majority of ideas that seem bad are bad.

The fact that the best ideas seem like bad ideas makes it even harder to recognize the big winners. It means the probability of a startup making it really big is not merely not a constant fraction of the probability that it will succeed, but that the startups with a high probability of the former will seem to have a disproportionately low probability of the latter.

History tends to get rewritten by big successes, so that in retrospect it seems obvious they were going to make it big. For that reason one of my most valuable memories is how lame Facebook sounded to me when I first heard about it. A site for college students to waste time? It seemed the perfect bad idea: a site (1) for a niche market (2) with no money (3) to do something that didn’t matter.

One could have described Microsoft and Apple in exactly the same terms. [3]

Harder Still

Wait, it gets worse. You not only have to solve this hard problem, but you have to do it with no indication of whether you’re succeeding. When you pick a big winner, you won’t know it for two years.

Meanwhile, the one thing you can measure is dangerously misleading. The one thing we can track precisely is how well the startups in each batch do at fundraising after Demo Day. But we know that’s the wrong metric. There’s no correlation between the percentage of startups that raise money and the metric that does matter financially, whether that batch of startups contains a big winner or not.

Except an inverse one. That’s the scary thing: fundraising is not merely a useless metric, but positively misleading. We’re in a business where we need to pick unpromising-looking outliers, and the huge scale of the successes means we can afford to spread our net very widely. The big winners could generate 10,000x returns. That means for each big winner we could pick a thousand companies that returned nothing and still end up 10x ahead.

If we ever got to the point where 100% of the startups we funded were able to raise money after Demo Day, it would almost certainly mean we were being too conservative. [4]

It takes a conscious effort not to do that too. After 15 cycles of preparing startups for investors and then watching how they do, I can now look at a group we’re interviewing through Demo Day investors’ eyes. But those are the wrong eyes to look through!

We can afford to take at least 10x as much risk as Demo Day investors. And since risk is usually proportionate to reward, if you can afford to take more risk you should. What would it mean to take 10x more risk than Demo Day investors? We’d have to be willing to fund 10x more startups than they would. Which means that even if we’re generous to ourselves and assume that YC can on average triple a startup’s expected value, we’d be taking the right amount of risk if only 30% of the startups were able to raise significant funding after Demo Day.

I don’t know what fraction of them currently raise more after Demo Day. I deliberately avoid calculating that number, because if you start measuring something you start optimizing it, and I know it’s the wrong thing to optimize. [5] But the percentage is certainly way over 30%. And frankly the thought of a 30% success rate at fundraising makes my stomach clench. A Demo Day where only 30% of the startups were fundable would be a shambles. Everyone would agree that YC had jumped the shark. We ourselves would feel that YC had jumped the shark. And yet we’d all be wrong.

For better or worse that’s never going to be more than a thought experiment. We could never stand it. How about that for counterintuitive? I can lay out what I know to be the right thing to do, and still not do it. I can make up all sorts of plausible justifications. It would hurt YC’s brand (at least among the innumerate) if we invested in huge numbers of risky startups that flamed out. It might dilute the value of the alumni network. Perhaps most convincingly, it would be demoralizing for us to be up to our chins in failure all the time. But I know the real reason we’re so conservative is that we just haven’t assimilated the fact of 1000x variation in returns.

We’ll probably never be able to bring ourselves to take risks proportionate to the returns in this business. The best we can hope for is that when we interview a group and find ourselves thinking “they seem like good founders, but what are investors going to think of this crazy idea?” we’ll continue to be able to say “who cares what investors think?” That’s what we thought about Airbnb, and if we want to fund more Airbnbs we have to stay good at thinking it.

Notes

[1] I’m not saying that the big winners are all that matters, just that they’re all that matters financially for investors. Since we’re not doing YC mainly for financial reasons, the big winners aren’t all that matters to us. We’re delighted to have funded Reddit, for example. Even though we made comparatively little from it, Reddit has had a big effect on the world, and it introduced us to Steve Huffman and Alexis Ohanian, both of whom have become good friends.

Nor do we push founders to try to become one of the big winners if they don’t want to. We didn’t “swing for the fences” in our own startup (Viaweb, which was acquired for $50 million), and it would feel pretty bogus to press founders to do something we didn’t do. Our rule is that it’s up to the founders. Some want to take over the world, and some just want that first few million. But we invest in so many companies that we don’t have to sweat any one outcome. In fact, we don’t have to sweat whether startups have exits at all. The biggest exits are the only ones that matter financially, and those are guaranteed in the sense that if a company becomes big enough, a market for its shares will inevitably arise. Since the remaining outcomes don’t have a significant effect on returns, it’s cool with us if the founders want to sell early for a small amount, or grow slowly and never sell (i.e. become a so-called lifestyle business), or even shut the company down. We’re sometimes disappointed when a startup we had high hopes for doesn’t do well, but this disappointment is mostly the ordinary variety that anyone feels when that happens.

[2] Without visual cues (e.g. the horizon) you can’t distinguish between gravity and acceleration. Which means if you’re flying through clouds you can’t tell what the attitude of the aircraft is. You could feel like you’re flying straight and level while in fact you’re descending in a spiral. The solution is to ignore what your body is telling you and listen only to your instruments. But it turns out to be very hard to ignore what your body is telling you. Every pilot knows about this problem and yet it is still a leading cause of accidents.

[3] Not all big hits follow this pattern though. The reason Google seemed a bad idea was that there were already lots of search engines and there didn’t seem to be room for another.

[4] A startup’s success at fundraising is a function of two things: what they’re selling and how good they are at selling it. And while we can teach startups a lot about how to appeal to investors, even the most convincing pitch can’t sell an idea that investors don’t like. I was genuinely worried that Airbnb, for example, would not be able to raise money after Demo Day. I couldn’t convince Fred Wilson to fund them. They might not have raised money at all but for the coincidence that Greg McAdoo, our contact at Sequoia, was one of a handful of VCs who understood the vacation rental business, having spent much of the previous two years investigating it.

[5] I calculated it once for the last batch before a consortium of investors started offering investment automatically to every startup we funded, summer 2010. At the time it was 94% (33 of 35 companies that tried to raise money succeeded, and one didn’t try because they were already profitable). Presumably it’s lower now because of that investment; in the old days it was raise after Demo Day or die.

Thanks to Sam Altman, Paul Buchheit, Patrick Collison, Jessica Livingston, Geoff Ralston, and Harj Taggar for reading drafts of this.