Stochastic dominance explained
Stochastic dominance is a partial order between random variables.[1] [2] It is a form of stochastic ordering. The concept arises in decision theory and decision analysis in situations where one gamble (a probability distribution over possible outcomes, also known as prospects) can be ranked as superior to another gamble for a broad class of decision-makers. It is based on shared preferences regarding sets of possible outcomes and their associated probabilities. Only limited knowledge of preferences is required for determining dominance. Risk aversion is a factor only in second order stochastic dominance.
Stochastic dominance does not give a total order, but rather only a partial order: for some pairs of gambles, neither one stochastically dominates the other, since different members of the broad class of decision-makers will differ regarding which gamble is preferable without them generally being considered to be equally attractive.
Throughout the article,
stand for probability distributions on
, while
stand for particular random variables on
. The notation
means that
has distribution
.
There are a sequence of stochastic dominance orderings, from first
, to second
, to higher orders
. The sequence is increasingly more inclusive. That is, if
, then
for all
. Further, there exists
such that
but not
.
Stochastic dominance could trace back to (Blackwell, 1953),[3] but it was not developed until 1969–1970.
Statewise dominance (Zeroth-Order)
The simplest case of stochastic dominance is statewise dominance (also known as state-by-state dominance), defined as follows:
Random variable A is statewise dominant over random variable B if A gives at least as good a result in every state (every possible set of outcomes), and a strictly better result in at least one state.
For example, if a dollar is added to one or more prizes in a lottery, the new lottery statewise dominates the old one because it yields a better payout regardless of the specific numbers realized by the lottery. Similarly, if a risk insurance policy has a lower premium and a better coverage than another policy, then with or without damage, the outcome is better. Anyone who prefers more to less (in the standard terminology, anyone who has monotonically increasing preferences) will always prefer a statewise dominant gamble.
First-order
Statewise dominance implies first-order stochastic dominance (FSD),[4] which is defined as:
Random variable A has first-order stochastic dominance over random variable B if for any outcome x, A gives at least as high a probability of receiving at least x as does B, and for some x, A gives a higher probability of receiving at least x. In notation form,
for all
x, and for some
x,
.
In terms of the cumulative distribution functions of the two random variables, A dominating B means that
for all
x, with strict inequality at some
x.
In the case of non-intersecting distribution functions, the Wilcoxon rank-sum test tests for first-order stochastic dominance.[5]
Equivalent definitions
Let
be two probability distributions on
, such that
are both finite, then the following conditions are equivalent, thus they may all serve as the definition of first-order stochastic dominance:
that is non-decreasing,
EX\sim[u(X)]\geqEX\sim[u(X)]
F\rho(t)\leqF\nu(t), \forallt\in\R.
- There exists two random variables
, such that
, where
.The first definition states that a gamble
first-order stochastically dominates gamble
if and only if every
expected utility maximizer with an increasing
utility function prefers gamble
over gamble
.
The third definition states that we can construct a pair of gambles
with distributions
, such that gamble
always pays at least as much as gamble
. More concretely, construct first a uniformly distributed
, then use the
inverse transform sampling to get
, then
for any
.
Pictorially, the second and third definition are equivalent, because we can go from the graphed density function of A to that of B both by pushing it upwards and pushing it leftwards.
Extended example
Consider three gambles over a single toss of a fair six-sided die:
\begin{array}{rcccccc}
State(dieresult)&1&2&3&4&5&6\\
\hline
gambleAwins\$&1&1&2&2&2&2\\
gambleBwins\$&1&1&1&2&2&2\\
gambleCwins\$&3&3&3&1&1&1\\
\hline
\end{array}
Gamble A statewise dominates gamble B because A gives at least as good a yield in all possible states (outcomes of the die roll) and gives a strictly better yield in one of them (state 3). Since A statewise dominates B, it also first-order dominates B.
Gamble C does not statewise dominate B because B gives a better yield in states 4 through 6, but C first-order stochastically dominates B because Pr(B ≥ 1) = Pr(C ≥ 1) = 1, Pr(B ≥ 2) = Pr(C ≥ 2) = 3/6, and Pr(B ≥ 3) = 0 while Pr(C ≥ 3) = 3/6 > Pr(B ≥ 3).
Gambles A and C cannot be ordered relative to each other on the basis of first-order stochastic dominance because Pr(A ≥ 2) = 4/6 > Pr(C ≥ 2) = 3/6 while on the other hand Pr(C ≥ 3) = 3/6 > Pr(A ≥ 3) = 0.
In general, although when one gamble first-order stochastically dominates a second gamble, the expected value of the payoff under the first will be greater than the expected value of the payoff under the second, the converse is not true: one cannot order lotteries with regard to stochastic dominance simply by comparing the means of their probability distributions. For instance, in the above example C has a higher mean (2) than does A (5/3), yet C does not first-order dominate A.
Second-order
The other commonly used type of stochastic dominance is second-order stochastic dominance.[6] [7] Roughly speaking, for two gambles
and
, gamble
has second-order stochastic dominance over gamble
if the former is more predictable (i.e. involves less risk) and has at least as high a mean. All
risk-averse expected-utility maximizers (that is, those with increasing and concave utility functions) prefer a second-order stochastically dominant gamble to a dominated one. Second-order dominance describes the shared preferences of a smaller class of decision-makers (those for whom more is better
and who are averse to risk, rather than
all those for whom more is better) than does first-order dominance.
In terms of cumulative distribution functions
and
,
is second-order stochastically dominant over
if and only if
[F\nu(t)-F\rho(t)]dt\geq0
for all
, with strict inequality at some
. Equivalently,
dominates
in the second order if and only if
EX\sim[u(X)]\geqEX\sim[u(X)]
for all nondecreasing and
concave utility functions
.
Second-order stochastic dominance can also be expressed as follows: Gamble
second-order stochastically dominates
if and only if there exist some gambles
and
such that
x\nu\overset{d}{=}(x\rho+y+z)
, with
always less than or equal to zero, and with
for all values of
. Here the introduction of random variable
makes
first-order stochastically dominated by
(making
disliked by those with an increasing utility function), and the introduction of random variable
introduces a
mean-preserving spread in
which is disliked by those with concave utility. Note that if
and
have the same mean (so that the random variable
degenerates to the fixed number 0), then
is a mean-preserving spread of
.
Equivalent definitions
Let
be two probability distributions on
, such that
are both finite, then the following conditions are equivalent, thus they may all serve as the definition of second-order stochastic dominance:
[8]
that is non-decreasing, and (not necessarily strictly) concave,
EX\sim[u(X)]\geqEX\sim[u(X)]
F\rho(x)dx\leq
F\nu(x)dx, \forallt\in\R.
- There exists two random variables
, such that
, where
and
.These are analogous with the equivalent definitions of first-order stochastic dominance, given above.
Sufficient conditions
- First-order stochastic dominance of A over B is a sufficient condition for second-order dominance of A over B.
- If B is a mean-preserving spread of A, then A second-order stochastically dominates B.
Necessary conditions
is a necessary condition for
A to second-order stochastically dominate
B.
is a necessary condition for
A to second-order dominate
B. The condition implies that the left tail of
must be thicker than the left tail of
.
Third-order
Let
and
be the cumulative distribution functions of two distinct investments
and
.
dominates
in
the third order if and only if both
[F\nu(t)-F\rho(t)]dt\right)dz\geq0forallx,
.
Equivalently,
dominates
in the third order if and only if
for all
.
The set
has two equivalent definitions:
- the set of nondecreasing, concave utility functions that are positively skewed (that is, have a nonnegative third derivative throughout).[9]
- the set of nondecreasing, concave utility functions, such that for any random variable
, the
risk-premium function
is a monotonically nonincreasing function of
.
[10] Here,
is defined as the solution to the problem
See more details at
risk premium page.
Sufficient condition
- Second-order dominance is a sufficient condition.
Necessary conditions
E\rho(log(x))\geqE\nu(log(x))
is a necessary condition. The condition implies that the geometric mean of
must be greater than or equal to the geometric mean of
.
is a necessary condition. The condition implies that the left tail of
must be thicker than the left tail of
.
Higher-order
Higher orders of stochastic dominance have also been analyzed, as have generalizations of the dual relationship between stochastic dominance orderings and classes of preference functions.[11] Arguably the most powerful dominance criterion relies on the accepted economic assumption of decreasing absolute risk aversion.[12] [13] This involves several analytical challenges and a research effort is on its way to address those.[14]
Formally, the n-th-order stochastic dominance is defined as [15]
- For any probability distribution
on
, define the functions inductively:
- For any two probability distributions
on
, non-strict and strict n-th-order stochastic dominance is defined as
, then
Constraints
Stochastic dominance relations may be used as constraints in problems of mathematical optimization, in particular stochastic programming.[16] [17] [18] In a problem of maximizing a real functional
over random variables
in a set
we may additionally require that
stochastically dominates a fixed random
benchmark
. In these problems,
utility functions play the role of
Lagrange multipliers associated with stochastic dominance constraints. Under appropriate conditions, the solution of the problem is also a (possibly local) solution of the problem to maximize
over
in
, where
is a certain utility function. If thefirst order stochastic dominance constraint is employed, the utility function
is
nondecreasing; if the second order stochastic dominance constraint is used,
is
nondecreasing and
concave. A system of linear equations can test whether a given solution if efficient for any such utility function.
[19] Third-order stochastic dominance constraints can be dealt with using convex quadratically constrained programming (QCP).
[20] See also
Notes and References
- Hadar . J. . Russell . W. . Rules for Ordering Uncertain Prospects . . 59 . 1 . 1969 . 25–34 . 1811090 .
- Bawa . Vijay S. . Optimal Rules for Ordering Uncertain Prospects . Journal of Financial Economics . 2 . 1 . 1975 . 95–121 . 10.1016/0304-405X(75)90025-2 .
- Blackwell . David . June 1953 . Equivalent Comparisons of Experiments . The Annals of Mathematical Statistics . 24 . 2 . 265–272 . 10.1214/aoms/1177729032 . 0003-4851. free .
- Quirk . J. P. . Saposnik . R. . 1962 . Admissibility and Measurable Utility Functions . . 29 . 2 . 140–146 . 10.2307/2295819. 2295819 .
- Seifert, S. (2006). Posted Price Offers in Internet Auction Markets. Deutschland: Physica-Verlag. Page 85, ISBN 9783540352686, https://books.google.de/books?id=a-ngTxeSLakC&pg=PA85
- Hanoch . G. . Levy . H. . 1969 . The Efficiency Analysis of Choices Involving Risk . Review of Economic Studies . 36 . 3. 335–346 . 10.2307/2296431. 2296431 .
- Rothschild . M. . Michael Rothschild . Stiglitz . J. E. . Joseph Stiglitz . 1970 . Increasing Risk: I. A Definition . . 2 . 3 . 225–243 . 10.1016/0022-0531(70)90038-4 .
- Book: Mas-Colell . Andreu. Whinston . Michael Dennis. Green . Jerry R.. Microeconomic theory. 1995. 0-19-507340-1. New York. Proposition 6.D.1. 32430901.
- Web site: Chan . Raymond H. . Clark . Ephraim . Wong . Wing-Keung . 2012-11-16 . On the Third Order Stochastic Dominance for Risk-Averse and Risk-Seeking Investors . 2022-12-25 . mpra.ub.uni-muenchen.de . en.
- Whitmore . G. A. . 1970 . Third-Degree Stochastic Dominance . The American Economic Review . 60 . 3 . 457–459 . 1817999 . 0002-8282.
- Ekern . Steinar . Increasing Nth Degree Risk . Economics Letters . 1980 . 6 . 4 . 329–333 . 10.1016/0165-1765(80)90005-1.
- Vickson . R.G. . 1975 . Stochastic Dominance Tests for Decreasing Absolute Risk Aversion. I. Discrete Random Variables . Management Science . 21 . 12. 1438–1446 . 10.1287/mnsc.21.12.1438.
- Vickson . R.G. . 1977 . Stochastic Dominance Tests for Decreasing Absolute Risk Aversion. II. General random Variables . Management Science . 23 . 5. 478–489 . 10.1287/mnsc.23.5.478.
- See, e.g. Post . Th. . Fang . Y. . Kopa . M. . 2015 . Linear Tests for DARA Stochastic Dominance . Management Science . 61 . 7. 1615–1629 . 10.1287/mnsc.2014.1960.
- Fishburn . Peter C. . 1980-02-01 . Stochastic Dominance and Moments of Distributions . . 5 . 1 . 94–100 . 10.1287/moor.5.1.94 . 0364-765X.
- Darinka Dentcheva . Dentcheva . D. . Andrzej Piotr Ruszczyński . Ruszczyński . A. . Optimization with Stochastic Dominance Constraints . SIAM Journal on Optimization . 14 . 2 . 2003 . 548–566 . 10.1137/S1052623402420528 . 10.1.1.201.7815 . 12502544 .
- Kuosmanen . T . 2004 . Efficient diversification according to stochastic dominance criteria . Management Science . 50 . 10. 1390–1406 . 10.1287/mnsc.1040.0284.
- Darinka Dentcheva . Dentcheva . D. . Andrzej Piotr Ruszczyński . Ruszczyński . A. . Semi-Infinite Probabilistic Optimization: First Order Stochastic Dominance Constraints . Optimization . 53 . 5–6 . 2004 . 583–601 . 10.1080/02331930412331327148 . 122168294 .
- Post . Th . 2003 . Empirical tests for stochastic dominance efficiency . Journal of Finance . 58 . 5. 1905–1932 . 10.1111/1540-6261.00592.
- Post . Thierry . Kopa . Milos . Portfolio Choice Based on Third-Degree Stochastic Dominance . 2016 . . 63 . 10 . 3381–3392 . 10.1287/mnsc.2016.2506 . 2687104 .