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{{Other uses|Dominance (disambiguation){{!}}Dominance}}
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'''Stochastic dominance'''<ref>Hadar, J., and Russell, W.,"Rules for Ordering Uncertain Prospects", ''American Economic Review'' 59, March 1969, 25-34.</ref><ref>Bawa, Vijay S., "Optimal Rules for Ordering Uncertain Prospects," ''Journal of Financial Economics'' 2, 1975, 95-121.</ref> is a form of [[stochastic ordering]]. The term is used in [[decision theory]] and [[decision analysis]] to refer to situations where one gamble (a [[probability distribution]] over possible outcomes, also known as prospects) can be ranked as superior to another gamble. It is based on [[preference]]s regarding outcomes.  A preference might be a simple ranking of outcomes from favorite to least favored, or it might also employ a value measure (i.e., a number associated with each outcome that allows comparison of multiples of one outcome with another, such as two instances of winning a dollar vs. one instance of winning two dollars.)  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 [[order theory|''complete'' ordering]]: For some pairs of gambles, neither one stochastically dominates the other, yet they cannot be said to be equal.
 
A related concept not included under stochastic dominance is '''deterministic dominance''', which occurs when the least preferable outcome of gamble A is more valuable than the most highly preferred outcome of gamble B.
 
==Statewise dominance==
 
The simplest case  of stochastic dominance is '''statewise dominance''' (also known as '''state-by-state dominance'''), defined as follows:  gamble A is statewise dominant over gamble B if A gives a better outcome than B in every possible future state (more precisely, at least as good an outcome in every state, with strict inequality 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. 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 [[monotonic]]ally increasing preferences) will always prefer a statewise dominant gamble.
 
==First-order stochastic dominance==
 
Statewise dominance is a special case of the canonical  '''first-order stochastic dominance''', defined as follows: Gamble A has first-order stochastic dominance over gamble B if for any good 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, <math>P [A \ge x]\ge P [B \ge x]</math> for all ''x'', and for some ''x'', <math>P[A \ge x]>P[B \ge x]</math>. In terms of the [[cumulative distribution function]]s of the two gambles, A dominating B means that <math>F_A(x) \le F_B(x)</math> for all ''x'', with strict inequality at some ''x''. For example, consider a die-toss where 1 through 3 wins $1 and 4 through 6 wins $2 in gamble B.  This is dominated by a gamble C that yields $3 for 1 through 3 and $1 for 4 through 6, and it is also dominated by a gamble A that gives $1 for 1 and 2 and $2 for 3 through 6. Gamble A has statewise dominance over B, but gamble C has first-order stochastic dominance over B without statewise dominance. This is because, in states 4  to 6, gamble C has a worse outcome than B, however <math>P [C \ge x] = P [B \ge x]</math> for all <math> x \le 2 </math> and <math>P [C \ge x]> P [B \ge x]</math> for all <math> 2 < x \le 3 </math>
.  Further, although when A dominates B, the expected value of the payoff under A will be greater than the expected value of the payoff under B, this is not a sufficient condition for dominance, and so one cannot order lotteries with regard to stochastic dominance simply by comparing the means of their probability distributions.
 
Every [[expected utility hypothesis|expected utility]] maximizer with an increasing [[utility|utility function]] will prefer gamble A over gamble B if A first-order stochastically dominates B.
 
First-order stochastic dominance can also be expressed as follows: If and only if A first-order stochastically dominates B, there exists some gamble <math>y</math> such that <math>x_B \overset {d}{=} (x_A+y)</math> where <math>y\le 0</math> in all possible states (and strictly negative in at least one state); here <math>\overset{d}{=}</math> means "[[Random_variable#Equality_in_distribution|is equal in distribution to]]" (that is, "has the same distribution as"). Thus, we can go from the graphed density function of A to that of B by, roughly speaking, pushing some of the probability mass to the left.
 
==Second-order stochastic dominance==
 
The other commonly used type of stochastic dominance is '''second-order stochastic dominance'''. Roughly speaking, for two gambles A and B, gamble A has second-order stochastic dominance over gamble B if the former is more predictable (i.e. involves less risk) and has at least as high a mean.  All [[risk aversion|risk-averse]] [[Expected utility hypothesis|expected-utility maximizers]] (that is, those with increasing and concave utility functions) prefer a second-order stochastically dominant gamble to a dominated gamble. The same is true for non-expected utility maximizers with utility functions that are locally concave.
 
In terms of cumulative distribution functions <math>F_A</math> and <math>F_B</math>, A is second-order stochastically dominant over B if and only if the area under <math>F_A</math> from minus infinity to <math>x</math> is less than or equal to that under <math>F_B</math> from minus infinity to <math>x</math> for all real numbers <math>x</math>, with strict inequality at some <math>x</math>; that is, <math>\int_{-\infty}^x [F_B(t) - F_A(t)]dt \geq 0</math> for all <math>x</math>, with strict inequality at some <math>x</math>. Equivalently, <math>A</math> dominates <math>B</math> in the second order if and only if <math>E[u(A)] \geq E[u(B)]</math> for all nondecreasing and [[concave function|concave]] utility functions <math>u(x)</math>.
 
Second-order stochastic dominance can also be expressed as follows: If and only if A second-order stochastically dominates B, there exist some gambles <math>y</math> and <math>z</math> such that  <math>x_B \overset {d}{=} (x_A + y + z)</math>, with <math>y</math> always less than or equal to zero, and with <math>E(z|x_A+y)=0</math> for all values of <math>x_A+y</math>. Here the introduction of random variable <math>y</math> makes B first-order stochastically dominated by A (making B disliked by those with an increasing utility function), and the introduction of random variable <math>z</math> introduces a [[mean-preserving spread]] in B which is disliked by those with concave utility. Note that if A and B have the same mean (so that the random variable <math>y</math> degenerates to the fixed number 0), then B is a mean-preserving spread of A.
 
===Second-order stochastic dominance in portfolio analysis===
 
Portfolio analysis typically assumes that all investors are risk averse. Therefore, no investor would choose a portfolio that is second-order stochastically dominated by some other portfolio. See [[modern portfolio theory]] and [[marginal conditional stochastic dominance]].
 
===Sufficient conditions for second-order stochastic dominance===
 
* 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 for second-order stochastic dominance===
 
* <math>E_A(x) \geq E_B(x)</math> is a necessary condition for ''A'' to second-order stochastically dominate ''B''.
* If <math>A</math> dominates <math>B</math> in the second order, then the geometric mean of <math>A</math> must be greater than or equal to the geometric mean of <math>B</math>.{{Clarify|June 2011|date=June 2011}}
* <math>\min_A(x)\geq\min_B(x)</math> is a necessary condition. The condition implies that the left tail of <math>F_B</math> must be thicker than the left tail of <math>F_A</math>.
 
==Third-order stochastic dominance==
 
Let <math>F_A</math> and <math>F_B</math> be the cumulative distribution functions of two distinct investments <math>A</math> and <math>B</math>. <math>A</math> dominates <math>B</math> in '''the third order''' if and only if
 
* <math>\int_{-\infty}^x \int_{-\infty}^z [F_B(t) - F_A(t)] \, dt \, dz \geq 0</math> for all <math>x</math>,
 
* <math>E_A(x) \geq E_B(x), \, </math>
 
and there is at least one strict inequality. Equivalently, <math>A</math> dominates <math>B</math> in the third order if and only if <math>E_AU(x) \geq E_BU(x)</math> for all nondecreasing, concave utility functions <math>U</math> that are '''positively skewed''' (that is, have a positive third derivative throughout).
 
===Sufficient condition for third-order stochastic dominance===
 
* Second-order stochastic dominance is a sufficient condition.
 
===Necessary conditions for third-order stochastic dominance===
 
* <math>E_A(\log(x))\geq E_B(\log(x))</math> is a necessary condition. The condition implies that the geometric mean of <math>A</math> must be greater than or equal to the geometric mean of <math>B</math>.
* <math>\min_A(x)\geq\min_B(x)</math> is a necessary condition. The condition implies that the left tail of <math>F_B</math> must be thicker than the left tail of <math>F_A</math>.
 
==Higher-order stochastic dominance==
 
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.
 
==Stochastic dominance constraints==
 
Stochastic dominance relations may be used as constraints 
<ref>[[Darinka Dentcheva|Dentcheva]], D., and [[Andrzej Piotr Ruszczyński|Ruszczyński]], A., "Optimization with Stochastic Dominance Constraints," ''SIAM Journal on Optimization'' 14, 2003, 548--566.</ref>
<ref>[[Darinka Dentcheva|Dentcheva]], D., and [[Andrzej Piotr Ruszczyński|Ruszczyński]], A.,
"Semi-Infinite Probabilistic Optimization: First Order Stochastic Dominance Constraints," ''Optimization'' 53, 2004, 583--601.</ref>
in problems of [[mathematical optimization]], in particular [[stochastic programming]]. In a problem of maximizing a real functional <math> f(X)</math> over random
variables <math> X </math> in a set <math> X_0 </math> we may additionally require that <math> X </math> stochastically dominates a fixed random
''benchmark'' <math> B </math>. In these problems, [[utility]] functions play the role of [[Lagrange multiplier]]s associated with
stochastic dominance constraints. Under appropriate conditions, the solution of the problem is also a (possibly local) solution of the problem to maximize
<math> f(X) + E[u(X) - u(B)] </math> over <math> X </math> in <math> X_0 </math>, where <math> u(x) </math> is a certain utility function. If the
first order stochastic dominance constraint is employed, the utility function <math> u(x) </math> is [[monotonic function|nondecreasing]];
if the second order stochastic dominance constraint is used, <math> u(x) </math> is [[monotonic function|nondecreasing]] and [[concave function|concave]].
 
==References==
<references/>
 
{{DEFAULTSORT:Stochastic Dominance}}
[[Category:Decision theory]]

Latest revision as of 23:14, 22 May 2014

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