Title: STOCHASTIC DOMINANCE APPROACH TO PORTFOLIO OPTIMIZATION
1STOCHASTIC DOMINANCE APPROACH TO PORTFOLIO
OPTIMIZATION
- Nesrin Alptekin
- Anadolu University, TURKEY
2OUTLINE
- Mean-Variance Analysis
- Criticisms of Mean-Variance Analysis
- Stochastic Dominance Rule
- First Order Stochastic Dominance Rule
- Second Order Stochastic Dominance Rule
- Advantages of Stochastic Dominance Rules
- Stochastic Dominance Approach to Portfolio
Optimization - Quantile Form of Stochastic Dominance Rules
- Linear Programming Problem of Portfolio
Optimization With SSD - Further Remarks
3Markowitzs Mean-Variance Analysis
- Maximize Return subject to Given Variance
Subject to
4Markowitzs Mean-Variance Analysis
- Minimize Variance (risk) subject to Given Return
Subject to
5Criticisms of Mean-Variance Analysis
- Mean-variance rules are not consistent with
axioms of rational choice. -
- Probability distribution of returns is normal.
- Decision makers utility function is quadratic.
Beyond some wealth level the decision makers
marginal utility becomes negative. - When considering the risk, variance which is the
risk measure of mean-variance rule, is not always
appropiate risk measure, because of left sided
fat tails in return distributions.
6Criticisms of Mean-Variance Analysis
- According to this rule, the random variable X
will be preferred over the random variable Y, if
and - and there is at least one
strict equality. However, with empirical data
E(X) gt E(Y) and - inequalities are common. In such cases, the
mean-variance rule will be unable to distinguish
between the random variables X and Y.
7Stochastic Dominance Rule
- Stochastic dominance approach allows the decision
maker to judge a preference or random variable as
more risky than another for an entire class of
utility functions. - Stochastic dominance is based on an axiomatic
model of risk-averse preferences in utility
theory.
8Stochastic Dominance Rule
- The decision maker has a preference ordering over
all possible outcomes, represented by utility
function of von-Neumann and Morgenstern. - Two axioms of utility function are emphasized
the Monotonicity axiom which means more is better
than less and the concavity axiom which means
risk aversion. - Stochastic dominance rule theory provides general
rules which have common properties of utility
functions. - Suppose that X and Y are two random variables
with distribution functions Fx and Gy,
respectively. -
9Stochastic Dominance RuleFirst order stochastic
dominance
- Random variable X first order stochastically
dominates (FSD) the random variable Y if and only
if Fx Gy. - No matter what level of probability is
considered, G always has a greater probability
mass in the lower tail than does F. - The random variable X first order stochastically
dominates the random variable Y if for every
monotone (increasing) function u R R, then
- is obtained.
This is already shows that FSD can be viewed as
a stochastically larger relationship.
10Stochastic Dominance Rule
FIRST ORDER STOCHASTIC DOMINANCE
11Stochastic Dominance RuleSecond order stochastic
dominance
- The random variable X second order stochastically
dominates the random variable Y if and only if -
for all k. - X is preferred to Y by all risk-averse decision
makers if the cumulative differences of returns
over all states of nature favor Fx. The random
variable X second order stochastically dominates
the random variable Y if for u R R all
monotone (increasing) and concave functions u R
R, that is utility functions increasing at a
decreasing rate with wealth
- , then
is obtained.
12Stochastic Dominance Rule
Geometrically, up to every point k, the area
under F is smaller than the corresponding areas
under G.
13Stochastic Dominance Rule
- Criteria have been developed for third degree
stochastic dominance (TSD) by Whitmore (1970),
and for mixtures of risky and riskless assets by
Levy and Kroll (1976). However, the SSD criterion
is considered the most important in portfolio
selection. - Stochastic dominance approach is useful both for
normative analysis, where the objective is to
support practical decision making process, as
well as positive analysis, where the objective is
to analyze the decision rules used by decision
makers.
14ADVANTAGES OF STOCHASTIC DOMINANCE APPROACH TO
MEAN-VARIANCE ANALYSIS
- Stochastic dominance approach uses entire
probability distribution rather than two moments,
so it can be considered less restrictive than the
mean-variance approach. - In stochastic dominance approach, there are no
assumptions made concerning the form of the
return distributions. If it is fully specified
one of the most frequently used continuous
distribution like normal distribution, the
stochastic dominance approach tends to reduce to
a simpler form (e.g., mean-variance rule) so that
full-scale comparisons of empirical distributions
are not needed. Also, not much information on
decision makers preferences is needed to rank
alternatives.
15ADVANTAGES OF STOCHASTIC DOMINANCE APPROACH TO
MEAN-VARIANCE ANALYSIS
- From a bayesian perspective, when the true
distributions of returns are unknown, the use of
an empirical distribution function is justified
by the von-Neumann and Morgenstern axioms. - Stochastic dominance approach is consistent with
a wide range of economic theories of choice under
uncertainty, like expected utility theory,
non-expected utility theory of Yaaris, dual
theory of risk, cumulative prospect theory and
regret theory. However, mean variance analysis is
consistent with the expected utility theory under
relatively restrictive assumptions about investor
preferences and/or the statistical distribution
of the investments returns.
16STOCHASTIC DOMINANCE APPROACH TO PORTFOLIO
OPTIMIZATION
- In the stochastic dominance approach to portfolio
optimization, it is considered stochastic
dominance relations between random returns. - Portfolio X dominates portfolio Y under the FSD
- (first order stochastic dominance rule) if,
- Relation to utility functions
- X FSD Y
17STOCHASTIC DOMINANCE APPROACH TO PORTFOLIO
OPTIMIZATION
- Second order stochastic dominance rules are
- consistent with risk-averse decisions in decision
- theory.
- For X and Y portfolios, risk-averse consistency
- X SSD Y
18STOCHASTIC DOMINANCE APPROACH TO PORTFOLIO
OPTIMIZATION
- Up to now, first and second order stochastic
dominance rules are stated in terms of cumulative
distributions denoted by F and G.
- They can be also restated in terms of
distribution quantiles.
- These restatements allow to decision maker to
diversify between risky asset and riskless assets.
- They are also more easily extended to the
analysis of stochastic dominance among specific
distributions of rates of return because such
extensions are quite difficult in the cumulative
distribution form.
19STOCHASTIC DOMINANCE APPROACH TO PORTFOLIO
OPTIMIZATION
- Quantile Form of Stochastic Dominance Rules
- The Pth quantile of a distribution is defined as
the smallest possible value Q(P) for hold - For X random variable, the accumulated value of
probability P up to a specific x value is denoted
by xP. Thus xP value is equal to Q(P), it is also
Pth quantile.
20STOCHASTIC DOMINANCE APPROACH TO PORTFOLIO
OPTIMIZATION
- Quantile Form of Stochastic Dominance Rules
- For a strictly increasing cumulative distribution
denoted by F, the quantile is defined as the
inverse function - Theorem 1 Let F and G be cumulative
distributions of the return on two investments.
Then F FSD G if and only if - for
all
21STOCHASTIC DOMINANCE APPROACH TO PORTFOLIO
OPTIMIZATION
- Quantile Form of Stochastic Dominance Rules
- Theorem 2 Let F and G be two distributions under
consideration - with quantiles and ,
respectively. Then F SSD G, if - and only if
-
for all - Finally, this theorem holds for continuous and
discrete distributions alike.
22STOCHASTIC DOMINANCE APPROACH TO PORTFOLIO
OPTIMIZATION
- Q , i 1,,M j 1,,N1 matrix of
consisting of - the stratified sample of combinations of returns
of a group - of N candidate assets
- weights of asset j, j 1,,N (
) - Using of the quantile form of the SSD criterion,
define - reference return (market index,
existing portfolio,etc.)
23LINEAR PROGRAMMING PROBLEM OF PORTFOLIO
OPTIMIZATION WITH SSD
- Maximize rP
- Subject to
- The objective function maximizes the expected
return of the portfolio. - The set of M constraints requires the computed
portfolio to dominate the reference return by
SSD.
24Further Remarks
- This work in progress. The next step is to find
solving this problem in practice. - For this LP problem of portfolio optimization
with SSD, we need optimality and duality
conditions. - Finally, its computational results must be
compared with M-V analysis consequences.