# Kelly Criteria and Two Envelopes

post by Wei_Dai · 2012-08-16T21:57:41.809Z · score: 11 (8 votes) · LW · GW · Legacy · 1 comments(This post is motivated by recent discussions here of the two titular topics.)

Suppose someone hands you two envelopes and gives you some information that allows you to conclude either:

- The expected ratio of amount of money in the red envelope to the amount in the blue is >1, or
- With probability close to 1 (say 0.999) the amount of money in the red envelope is greater than the amount in the blue.

- Suppose red envelope has $5 and blue envelope has even chance of $1 and $100. E(R/B) = .5(5/1)+.5(5/100) = 2.525 but one would want to choose the blue envelope assuming utility linear in money.
- Red envelope has $100, blue envelope has $99 with probability 0.999 and $1 million with probability 0.001.

Notice that it's not sufficient to establish both conclusions at once either (my second example above actually satisfies both).

A common argument for the Kelly Criteria being "optimal" (see page 10 of this review paper recommended by Robin Hanson) is to mathematically establish conclusions 1 and 2, with Kelly Criteria in place of the red envelope and "any other strategy" in place of the blue envelope. However it turns out that "optimal" is not supposed to be normative, as the paper later explains:

In essence the critique is that you should maximize your utility function rather than to base your investment decision on some other criterion. This is certainly correct, but fails to appreciate that Kelly's results are not necessarily normative but rather descriptive.

So the upshot here is that unless your utility function is actually log in money and not, say, linear (or even superlinear) in the amount of resources under your control, you may not want to adopt the Kelly Criteria even when the other commonly mentioned assumptions are satisfied.

## 1 comments

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Yeah. To head off a possible objection, Kelly betting doesn't necessarily maximize expected utility even over a long sequence of bets, even though Kelly investors become richest with certainty (see page 2 of this paper).

Your second example could be slightly tweaked to fit better with the rest of the post, because it doesn't really contrast Kelly against expected utility maximization. In the Kelly setup that can be inferred from those payoffs, the Kelly bet is 10 cents rather than zero, while a linear utility function would tell you to bet all your money and lose it with probability 0.999. So maximizing expected money isn't a good recommendation for regular folks either, and it might be a better idea to keep closer to Kelly :-)