Kelly Criterion
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In
probability theory Probability theory or probability calculus is the branch of mathematics concerned with probability. Although there are several different probability interpretations, probability theory treats the concept in a rigorous mathematical manner by expre ...
, the Kelly criterion (or Kelly strategy or Kelly bet) is a
formula In science, a formula is a concise way of expressing information symbolically, as in a mathematical formula or a ''chemical formula''. The informal use of the term ''formula'' in science refers to the general construct of a relationship betwe ...
for sizing a sequence of bets by maximizing the long-term
expected value In probability theory, the expected value (also called expectation, expectancy, expectation operator, mathematical expectation, mean, expectation value, or first Moment (mathematics), moment) is a generalization of the weighted average. Informa ...
of the logarithm of wealth, which is equivalent to maximizing the long-term expected geometric growth rate. John Larry Kelly Jr., a researcher at
Bell Labs Nokia Bell Labs, commonly referred to as ''Bell Labs'', is an American industrial research and development company owned by Finnish technology company Nokia. With headquarters located in Murray Hill, New Jersey, Murray Hill, New Jersey, the compa ...
, described the criterion in 1956. The practical use of the formula has been demonstrated for
gambling Gambling (also known as betting or gaming) is the wagering of something of Value (economics), value ("the stakes") on a Event (probability theory), random event with the intent of winning something else of value, where instances of strategy (ga ...
, and the same idea was used to explain diversification in
investment management Investment management (sometimes referred to more generally as financial asset management) is the professional asset management of various Security (finance), securities, including shareholdings, Bond (finance), bonds, and other assets, such as r ...
., page 184f. In the 2000s, Kelly-style analysis became a part of mainstream investment theory and the claim has been made that well-known successful investors including
Warren Buffett Warren Edward Buffett ( ; born August 30, 1930) is an American investor and philanthropist who currently serves as the chairman and CEO of the conglomerate holding company Berkshire Hathaway. As a result of his investment success, Buffett is ...
and Bill Gross use Kelly methods. Also see
intertemporal portfolio choice Intertemporal portfolio choice is the process of allocating one's investable wealth to various assets, especially financial assets, repeatedly over time, in such a way as to optimize some criterion. The set of asset proportions at any time defines ...
. It is also the standard replacement of
statistical power In frequentist statistics, power is the probability of detecting a given effect (if that effect actually exists) using a given test in a given context. In typical use, it is a function of the specific test that is used (including the choice of tes ...
in anytime-valid statistical tests and confidence intervals, based on e-values and e-processes.


Kelly criterion for binary return rates

In a system where the return on an investment or a bet is binary, so an interested party either wins or loses a fixed percentage of their bet, the expected growth rate coefficient yields a very specific solution for an optimal betting percentage.


Gambling Formula

Where losing the bet involves losing the entire wager, the Kelly bet is: : f^* = p-\frac = p - \frac where: * f^ is the fraction of the current bankroll to wager. * p is the probability of a win. * q=1-p is the probability of a loss. * b is the proportion of the bet gained with a win. E.g., if betting $10 on a 2-to-1
odds In probability theory, odds provide a measure of the probability of a particular outcome. Odds are commonly used in gambling and statistics. For example for an event that is 40% probable, one could say that the odds are or When gambling, o ...
bet (upon win you are returned $30, winning you $20), then b = \$20/\$10 = 2.0. As an example, if a gamble has a 60% chance of winning (p = 0.6, q = 0.4), and the gambler receives 1-to-1 odds on a winning bet (b=1), then to maximize the long-run growth rate of the bankroll, the gambler should bet 20% of the bankroll at each opportunity (f^ = 0.6-\frac = 0.2). If the gambler has zero edge (i.e., if b = q / p), then the criterion recommends the gambler bet nothing. If the edge is negative (b < q / p), the formula gives a negative result, indicating that the gambler should take the other side of the bet.


Investment formula

A more general form of the Kelly formula allows for partial losses, which is relevant for investments: : f^ = \frac-\frac where: * f^ is the fraction of the assets to apply to the security. * p is the probability that the investment increases in value. * q is the probability that the investment decreases in value ( q = 1 - p). * g is the fraction that is gained in a positive outcome. If the security price rises 10%, then g = \frac = \frac = 0.1. * l is the fraction that is lost in a negative outcome. If the security price falls 10%, then l = \frac = \frac = 0.1 Note that the Kelly criterion is perfectly valid only for ''fully known'' outcome probabilities, which is almost never the case with investments. In addition,
risk-averse In economics and finance, risk aversion is the tendency of people to prefer outcomes with low uncertainty to those outcomes with high uncertainty, even if the average outcome of the latter is equal to or higher in monetary value than the more c ...
strategies invest less than the full Kelly fraction. The general form can be rewritten as follows : f^ = \frac \left( 1 -\frac \frac \right) = \frac \left( 1 -\frac \frac \right) where: * WLP=\frac is the win-loss probability (WLP) ratio, which is the ratio of winning to losing bets. * WLR=\frac is the win-loss ratio (WLR) of bet outcomes, which is the ''winning skew''. It is clear that, at least, one of the factors WLP or WLR needs to be larger than 1 for having an edge (so f^> 0 ). It is even possible that the win-loss probability ratio is unfavorable WLP < 1, but one has an edge as long as WLP * WLR > 1. The Kelly formula can easily result in a fraction higher than 1, such as with losing size l \ll 1 (see the above expression with factors of WLR and WLP). This happens somewhat counterintuitively, because the Kelly fraction formula compensates for a small losing size with a larger bet. However, in most real situations, there is high uncertainty about all parameters entering the Kelly formula. In the case of a Kelly fraction higher than 1, it is theoretically advantageous to use leverage to purchase additional securities on
margin Margin may refer to: Physical or graphical edges *Margin (typography), the white space that surrounds the content of a page * Continental margin, the zone of the ocean floor that separates the thin oceanic crust from thick continental crust *Leaf ...
.


Betting example – behavioural experiment

In a study, each participant was given $25 and asked to place even-money bets on a coin that would land heads 60% of the time. Participants had 30 minutes to play, so could place about 300 bets, and the prizes were capped at $250. But the behavior of the test subjects was far from optimal: Using the Kelly criterion and based on the odds in the experiment (ignoring the cap of $250 and the finite duration of the test), the right approach would be to bet 20% of one's bankroll on each toss of the coin, which works out to a 2.034% average gain each round. This is a
geometric mean In mathematics, the geometric mean is a mean or average which indicates a central tendency of a finite collection of positive real numbers by using the product of their values (as opposed to the arithmetic mean which uses their sum). The geometri ...
, not the arithmetic rate of 4% (r = 0.2 x (0.6 - 0.4) = 0.04). The theoretical expected wealth after 300 rounds works out to $10,505 (= 25 \cdot (1.02034) ^ ) if it were not capped. In this particular game, because of the cap, a strategy of betting only 12% of the pot on each toss would have even better results (a 95% probability of reaching the cap and an average payout of $242.03).


Proof

Heuristic proofs of the Kelly criterion are straightforward. The Kelly criterion maximizes the
expected value In probability theory, the expected value (also called expectation, expectancy, expectation operator, mathematical expectation, mean, expectation value, or first Moment (mathematics), moment) is a generalization of the weighted average. Informa ...
of the logarithm of wealth (the expectation value of a function is given by the sum, over all possible outcomes, of the probability of each particular outcome multiplied by the value of the function in the event of that outcome). We start with 1 unit of wealth and bet a fraction f of that wealth on an outcome that occurs with probability p and offers odds of b. The probability of winning is p, and in that case the resulting wealth is equal to 1+fb. The probability of losing is q=1-p and the odds of a negative outcome is a. In that case the resulting wealth is equal to 1-fa. Therefore, the geometric growth rate r is: : r=(1+fb)^p\cdot(1-fa)^ We want to find the
maximum In mathematical analysis, the maximum and minimum of a function (mathematics), function are, respectively, the greatest and least value taken by the function. Known generically as extremum, they may be defined either within a given Interval (ma ...
''r'' of this curve (as a function of ''f''), which involves finding the
derivative In mathematics, the derivative is a fundamental tool that quantifies the sensitivity to change of a function's output with respect to its input. The derivative of a function of a single variable at a chosen input value, when it exists, is t ...
of the equation. This is more easily accomplished by taking the
logarithm In mathematics, the logarithm of a number is the exponent by which another fixed value, the base, must be raised to produce that number. For example, the logarithm of to base is , because is to the rd power: . More generally, if , the ...
of each side first; because the logarithm is
monotonic In mathematics, a monotonic function (or monotone function) is a function between ordered sets that preserves or reverses the given order. This concept first arose in calculus, and was later generalized to the more abstract setting of ord ...
, it does not change the locations of function extrema. The resulting equation is: : E = \log(r) = p \log(1+fb)+q\log(1-fa) with E denoting logarithmic wealth growth. To find the value of f for which the growth rate is maximized, denoted as f^, we differentiate the above expression and set this equal to zero. This gives: : \left.\frac\_=\frac+\frac=0 Rearranging this equation to solve for the value of f^ gives the Kelly criterion: : f^ = \frac-\frac Notice that this expression reduces to the simple gambling formula when a=1=100\%, when a loss results in full loss of the wager.


Kelly criterion for non-binary return rates

If the return rates on an investment or a bet are continuous in nature the optimal growth rate coefficient must take all possible events into account.


Application to the stock market

In mathematical finance, if security weights maximize the expected geometric growth rate (which is equivalent to maximizing log wealth), then a portfolio is ''growth optimal.'' The Kelly Criterion shows that for a given volatile security this is satisfied when f^* = \frac where f^* is the fraction of available capital invested that maximizes the expected geometric growth rate, \mu is the expected growth rate coefficient, \sigma^2 is the
variance In probability theory and statistics, variance is the expected value of the squared deviation from the mean of a random variable. The standard deviation (SD) is obtained as the square root of the variance. Variance is a measure of dispersion ...
of the growth rate coefficient and r is the risk-free rate of return. Note that a symmetric
probability density function In probability theory, a probability density function (PDF), density function, or density of an absolutely continuous random variable, is a Function (mathematics), function whose value at any given sample (or point) in the sample space (the s ...
was assumed here. Computations of growth optimal portfolios can suffer tremendous garbage in, garbage out problems. For example, the cases below take as given the expected return and covariance structure of assets, but these parameters are at best estimates or models that have significant uncertainty. If portfolio weights are largely a function of estimation errors, then ''Ex-post'' performance of a growth-optimal portfolio may differ fantastically from the ''ex-ante'' prediction. Parameter uncertainty and estimation errors are a large topic in portfolio theory. An approach to counteract the unknown risk is to invest less than the Kelly criterion. Rough estimates are still useful. If we take excess return 4% and volatility 16%, then yearly Sharpe ratio and Kelly ratio are calculated to be 25% and 150%. Daily Sharpe ratio and Kelly ratio are 1.7% and 150%. Sharpe ratio implies daily win probability of p=(50% + 1.7%/4), where we assumed that probability bandwidth is 4 \sigma = 4\% . Now we can apply discrete Kelly formula for f^ above with p=50.425\%, a=b=1\% , and we get another rough estimate for Kelly fraction f^ = 85\% . Both of these estimates of Kelly fraction appear quite reasonable, yet a prudent approach suggest a further multiplication of Kelly ratio by 50% (i.e. half-Kelly). A detailed paper by
Edward O. Thorp Edward Oakley Thorp (born August 14, 1932) is an American mathematics professor, author, hedge fund manager, and blackjack researcher. He pioneered the modern applications of probability theory, including the harnessing of very small correlatio ...
and a co-author estimates Kelly fraction to be 117% for the American stock market SP500 index. Significant downside tail-risk for equity markets is another reason to reduce Kelly fraction from naive estimate (for instance, to reduce to half-Kelly).


Proof

A rigorous and general proof can be found in Kelly's original paper or in some of the other references listed below. Some corrections have been published. We give the following non-rigorous argument for the case with b = 1 (a 50:50 "even money" bet) to show the general idea and provide some insights. When b = 1, a Kelly bettor bets 2p - 1 times their initial wealth W, as shown above. If they win, they have 2pW after one bet. If they lose, they have 2(1 - p)W. Suppose they make N bets like this, and win K times out of this series of N bets. The resulting wealth will be: : 2^Np^K(1-p)^W \! . The ordering of the wins and losses does not affect the resulting wealth. Suppose another bettor bets a different amount, (2p - 1 + \Delta)W for some value of \Delta (where \Delta may be positive or negative). They will have (2p + \Delta)W after a win and (1-p)-\Delta after a loss. After the same series of wins and losses as the Kelly bettor, they will have: : (2p+\Delta)^K (1-p)-\DeltaW Take the derivative of this with respect to \Delta and get: : K(2p+\Delta)^ (1-p)-\DeltaW-(N-K)(2p+\Delta)^K (1-p)-\DeltaW The function is maximized when this derivative is equal to zero, which occurs at: : K (1-p)-\Delta(N-K)(2p+\Delta) which implies that : \Delta=2\left(\frac-p\right) but the proportion of winning bets will eventually converge to: : \lim_\frac=p according to the
weak law of large numbers In probability theory, the law of large numbers is a mathematical law that states that the average of the results obtained from a large number of independent random samples converges to the true value, if it exists. More formally, the law o ...
. So in the long run, final wealth is maximized by setting \Delta to zero, which means following the Kelly strategy. This illustrates that Kelly has both a deterministic and a stochastic component. If one knows K and N and wishes to pick a constant fraction of wealth to bet each time (otherwise one could cheat and, for example, bet zero after the Kth win knowing that the rest of the bets will lose), one will end up with the most money if one bets: : \left(2\frac-1\right)W each time. This is true whether N is small or large. The "long run" part of Kelly is necessary because K is not known in advance, just that as N gets large, K will approach pN. Someone who bets more than Kelly can do better if K > pN for a stretch; someone who bets less than Kelly can do better if K for a stretch, but in the long run, Kelly always wins. The heuristic proof for the general case proceeds as follows. In a single trial, if one invests the fraction f of their capital, if the strategy succeeds, the capital at the end of the trial increases by the factor 1-f + f(1+b) = 1+fb, and, likewise, if the strategy fails, the capital is decreased by the factor 1-fa. Thus at the end of N trials (with pN successes and qN failures), the starting capital of $1 yields : C_N=(1+fb)^(1-fa)^. Maximizing \log(C_N)/N, and consequently C_N, with respect to f leads to the desired result : f^=p/a-q/b .
Edward O. Thorp Edward Oakley Thorp (born August 14, 1932) is an American mathematics professor, author, hedge fund manager, and blackjack researcher. He pioneered the modern applications of probability theory, including the harnessing of very small correlatio ...
provided a more detailed discussion of this formula for the general case. There, it can be seen that the substitution of p for the ratio of the number of "successes" to the number of trials implies that the number of trials must be very large, since p is defined as the limit of this ratio as the number of trials goes to infinity. In brief, betting f^ each time will likely maximize the wealth growth rate only in the case where the number of trials is very large, and p and b are the same for each trial. In practice, this is a matter of playing the same game over and over, where the probability of winning and the payoff odds are always the same. In the heuristic proof above, pN successes and qN failures are highly likely only for very large N.


Multiple outcomes

Kelly's criterion may be generalized on gambling on many mutually exclusive outcomes, such as in horse races. Suppose there are several mutually exclusive outcomes. The probability that the k-th horse wins the race is p_k, the total amount of bets placed on k-th horse is B_k, and : \beta_k=\frac=\frac , where Q_k are the pay-off odds. D=1-tt, is the dividend rate where tt is the track take or tax, \frac is the revenue rate after deduction of the track take when k-th horse wins. The fraction of the bettor's funds to bet on k-th horse is f_k. Kelly's criterion for gambling with multiple mutually exclusive outcomes gives an algorithm for finding the optimal set S^o of outcomes on which it is reasonable to bet and it gives explicit formula for finding the optimal fractions f^o_k of bettor's wealth to be bet on the outcomes included in the optimal set S^o. The algorithm for the optimal set of outcomes consists of four steps: # Calculate the expected revenue rate for all possible (or only for several of the most promising) outcomes: er_i = \frac = p_i(Q_i + 1) # Reorder the outcomes so that the new sequence er_k is non-increasing. Thus er_1 will be the best bet. # Set S = \varnothing (the empty set), k = 1, R(S)=1. Thus the best bet er_k = er_1 will be considered first. # Repeat: #:If er_k=\fracp_k > R(S) then insert k-th outcome into the set: S = S \cup \, recalculate R(S) according to the formula: R(S) = \frac and then set k = k+1 , Otherwise, set S^o=S and stop the repetition. If the optimal set S^o is empty then do not bet at all. If the set S^o of optimal outcomes is not empty, then the optimal fraction f^o_k to bet on k-th outcome may be calculated from this formula: : f_i = p_i - \beta_i \frac. One may prove that : R(S^o)=1-\sum_ where the right hand-side is the reserve rate. Therefore, the requirement er_k=\fracp_k > R(S) may be interpreted as follows: k-th outcome is included in the set S^o of optimal outcomes if and only if its expected revenue rate is greater than the reserve rate. The formula for the optimal fraction f^o_k may be interpreted as the excess of the expected revenue rate of k-th horse over the reserve rate divided by the revenue after deduction of the track take when k-th horse wins or as the excess of the probability of k-th horse winning over the reserve rate divided by revenue after deduction of the track take when k-th horse wins. The binary growth exponent is : G^o=\sum_ + \left(1-\sum_\right)\log_2(R(S^o)) , and the doubling time is : T_d=\frac. This method of selection of optimal bets may be applied also when probabilities p_k are known only for several most promising outcomes, while the remaining outcomes have no chance to win. In this case it must be that : \sum_i < 1 , and : \sum_i < 1.


Stock investments

The second-order
Taylor polynomial In mathematics, the Taylor series or Taylor expansion of a function is an infinite sum of terms that are expressed in terms of the function's derivatives at a single point. For most common functions, the function and the sum of its Taylor ser ...
can be used as a good approximation of the main criterion. Primarily, it is useful for stock investment, where the fraction devoted to investment is based on simple characteristics that can be easily estimated from existing historical data –
expected value In probability theory, the expected value (also called expectation, expectancy, expectation operator, mathematical expectation, mean, expectation value, or first Moment (mathematics), moment) is a generalization of the weighted average. Informa ...
and
variance In probability theory and statistics, variance is the expected value of the squared deviation from the mean of a random variable. The standard deviation (SD) is obtained as the square root of the variance. Variance is a measure of dispersion ...
. This approximation may offer similar results as the original criterion, but in some cases the solution obtained may be infeasible. For single assets (stock, index fund, etc.), and a risk-free rate, it is easy to obtain the optimal fraction to invest through
geometric Brownian motion A geometric Brownian motion (GBM) (also known as exponential Brownian motion) is a continuous-time stochastic process in which the logarithm of the randomly varying quantity follows a Brownian motion (also called a Wiener process) with drift. It ...
. The stochastic differential equation governing the evolution of a lognormally distributed asset S at time t (S_t) is : dS_t/S_t=\mu dt+\sigma dW_t whose solution is : S_t = S_0\exp\left( \left(\mu - \frac \right)t + \sigma W_t\right) where W_t is a
Wiener process In mathematics, the Wiener process (or Brownian motion, due to its historical connection with Brownian motion, the physical process of the same name) is a real-valued continuous-time stochastic process discovered by Norbert Wiener. It is one o ...
, and \mu (percentage drift) and \sigma (the percentage volatility) are constants. Taking expectations of the logarithm: : \mathbb \log(S_t)=\log(S_0)+\left(\mu- \frac \right)t. Then the expected log return R_s is : R_s = \left(\mu -\frac\,\right). Consider a portfolio made of an asset S and a bond paying risk-free rate r, with fraction f invested in S and (1-f) in the bond. The aforementioned equation for dS_t must be modified by this fraction, ie dS_t'=fdS_t, with associated solution : S'_t = S'_0\exp\left( \left(f\mu - \frac \right)t + f\sigma W_t\right) the expected one-period return is given by : \mathbb = \mathbb + (1 - f) r For small \mu, \sigma, and W_t, the solution can be expanded to first order to yield an approximate increase in wealth : G(f) = f\mu - \frac + (1-f)\ r. Solving \max (G(f)) we obtain : f^* = \frac . f^* is the fraction that maximizes the expected logarithmic return, and so, is the Kelly fraction. Thorp arrived at the same result but through a different derivation. Remember that \mu is different from the asset log return R_s. Confusing this is a common mistake made by websites and articles talking about the Kelly Criterion. For multiple assets, consider a market with n correlated stocks S_k with stochastic returns r_k, k= 1, \dots, n, and a riskless bond with return r. An investor puts a fraction u_k of their capital in S_k and the rest is invested in the bond. Without loss of generality, assume that investor's starting capital is equal to 1. According to the Kelly criterion one should maximize : \mathbb\left \ln\left((1 + r) + \sum\limits_^n u_k(r_k -r) \right) \right Expanding this with a
Taylor series In mathematics, the Taylor series or Taylor expansion of a function is an infinite sum of terms that are expressed in terms of the function's derivatives at a single point. For most common functions, the function and the sum of its Taylor ser ...
around \vec = (0, \ldots , 0) we obtain : \mathbb \left \ln(1+r) + \sum\limits_^ \frac - \frac\sum\limits_^\sum\limits_^ u_k u_j \frac \right Thus we reduce the optimization problem to
quadratic programming Quadratic programming (QP) is the process of solving certain mathematical optimization problems involving quadratic functions. Specifically, one seeks to optimize (minimize or maximize) a multivariate quadratic function subject to linear constr ...
and the unconstrained solution is : \vec = (1+r) ( \widehat )^ ( \widehat - r ) where \widehat and \widehat are the vector of means and the matrix of second mixed noncentral moments of the excess returns. There is also a numerical algorithm for the fractional Kelly strategies and for the optimal solution under no leverage and no short selling constraints.


Bernoulli

In a 1738 article,
Daniel Bernoulli Daniel Bernoulli ( ; ; – 27 March 1782) was a Swiss people, Swiss-France, French mathematician and physicist and was one of the many prominent mathematicians in the Bernoulli family from Basel. He is particularly remembered for his applicati ...
suggested that, when one has a choice of bets or investments, one should choose that with the highest
geometric mean In mathematics, the geometric mean is a mean or average which indicates a central tendency of a finite collection of positive real numbers by using the product of their values (as opposed to the arithmetic mean which uses their sum). The geometri ...
of outcomes. This is mathematically equivalent to the Kelly criterion, although the motivation is different (Bernoulli wanted to resolve the St. Petersburg paradox). An English translation of the Bernoulli article was not published until 1954, English translation of 1738 paper. but the work was well known among mathematicians and economists.


Criticism

Although the Kelly strategy's promise of doing better than any other strategy in the long run seems compelling, some economists have argued strenuously against it, mainly because an individual's specific investing constraints may override the desire for optimal growth rate. The conventional alternative is
expected utility The expected utility hypothesis is a foundational assumption in mathematical economics concerning decision making under uncertainty. It postulates that rational agents maximize utility, meaning the subjective desirability of their actions. Ratio ...
theory which says bets should be sized to
maximize In mathematical analysis, the maximum and minimum of a function are, respectively, the greatest and least value taken by the function. Known generically as extremum, they may be defined either within a given range (the ''local'' or ''relative' ...
the expected utility of the outcome (to an individual with
logarithm In mathematics, the logarithm of a number is the exponent by which another fixed value, the base, must be raised to produce that number. For example, the logarithm of to base is , because is to the rd power: . More generally, if , the ...
ic utility, the Kelly bet maximizes expected utility, so there is no conflict; moreover, Kelly's original paper clearly states the need for a utility function in the case of gambling games which are played finitely many times). Even Kelly supporters usually argue for fractional Kelly (betting a fixed fraction of the amount recommended by Kelly) for a variety of practical reasons, such as wishing to reduce volatility, or protecting against non-deterministic errors in their advantage (edge) calculations. In colloquial terms, the Kelly criterion requires accurate probability values, which isn't always possible for real-world event outcomes. When a gambler overestimates their true probability of winning, the criterion value calculated will diverge from the optimal, increasing the risk of ruin. Kelly formula can be thought as 'time diversification', which is taking equal risk during different sequential time periods (as opposed to taking equal risk in different assets for asset diversification). There is clearly a difference between ''time diversification'' and asset diversification, which was raised by Paul A. Samuelson. There is also a difference between ensemble-averaging (utility calculation) and time-averaging (Kelly multi-period betting over a single time path in real life). The debate was renewed by evoking
ergodicity In mathematics, ergodicity expresses the idea that a point of a moving system, either a dynamical system or a stochastic process, will eventually visit all parts of the space that the system moves in, in a uniform and random sense. This implies th ...
breaking. Yet the difference between
ergodicity In mathematics, ergodicity expresses the idea that a point of a moving system, either a dynamical system or a stochastic process, will eventually visit all parts of the space that the system moves in, in a uniform and random sense. This implies th ...
breaking and
Knightian uncertainty In economics, Knightian uncertainty is a lack of any quantifiable knowledge about some possible occurrence, as opposed to the presence of quantifiable risk (e.g., that in statistical noise or a parameter's confidence interval). The concept acknow ...
should be recognized.


See also

* Gambling and information theory *
Merton's portfolio problem Merton's portfolio problem is a problem in continuous-time finance and in particular intertemporal portfolio choice. An investor must choose how much to consume and must allocate their wealth between stocks and a risk-free asset so as to maximiz ...
*
Proebsting's paradox In probability theory, Proebsting's paradox is an argument that appears to show that the Kelly criterion can lead to ruin. Although it can be resolved mathematically, it raises some interesting issues about the practical application of Kelly, esp ...
*
Risk of ruin Risk of ruin is a concept in gambling, insurance, and finance relating to the likelihood of losing all one's investment capital or extinguishing one's bankroll below the minimum for further play. For instance, if someone bets all their money on a s ...


References


External links

* {{Authority control 1956 introductions Articles containing proofs Formulas Gambling mathematics Information theory Optimal decisions Portfolio theories Wagering