Title: Multi-objective Approach to Portfolio Optimization
1Multi-objective Approach to Portfolio Optimization
2CONTENTS
- Introduction
- Motivation
- Methodology
- Application
- Risk Aversion Index
3Key Concept
- Reward and risk are measured by expected return
and variance of a portfolio - Decision variable of this problem is asset weight
vector
4Introduction to Portfolio Optimization
- The Mean Variance Optimization Proposed by Nobel
Prize Winner Markowitz in 1990 - Model 1 Minimize risk for a given level of
expected return - Minimize
- Subject to
5- Not be the best model for those who are extremely
risk seeking - Does not allow to simultaneously minimize risk
and maximize expected return - Multi-objective Optimization
6Introduction to Multi-objective Optimization
- Developed by French-Italian economist Pareto
- Combine multiple objectives into one objective
function by assigning a weighting coefficient to
each objective
7Multi-objective Formulation
- Minimize w.r.t.
- Subject to
- Assign two weighting coefficients
- Minimize
- Subject to
8Risk Aversion Index
- We can consider as a risk aversion index that
measures the risk tolerance of an investor - Smaller , more risk seeking
- Larger , more risk averse
9- Model 2 Maximize expected return (disregard
risk) - Maximize
- Subject to
- Model 3 Minimize risk (disregard expected
return) - Minimize
- Subject to
10Comparison with Mean Variance Optimization
- Since the Lagrangian multipliers of both methods
are same, their efficient frontiers are also same - Different in their approach to producing their
efficient frontiers
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12Two comparative advantages
- For investors who are extremely risk seeking
- When investors do not want to place any
constraints on their investment - Provide the entire picture of optimal risk-return
trade off
13Solving Multi-objective Optimization
- Using Lagrangian multiplier
- The optimized solution for the portfolio weight
vector is
14Convex Vector Optimization
- The second derivative of the objective function
is positive definite - The equality constraint can be expressed in
linear form - is the optimal solution
15Applications
Stock Exp. Return Variance
IBM 0.400 0.006461
MSFT 0.513 0.0039
AAPL 4.085 0.012678
DGX 1.006 0.005598361
BAC 1.236 0.001622897
16IBM MSFT AAPL DGX BAC
IBM 0.006461 0.002983 0.00235487 0.00235487 0.00096889
MSFT 0.002983 0.0039 0.00095937 -0.0001987 0.00063459
AAPL 0.002355 0.000959 0.01267778 0.00135712 0.00134481
DGX 0.002355 -0.0002 0.00135712 0.00559836 0.00041942
BAC 0.000969 0.000635 0.00134481 0.00041942 0.0016229
17Example
- When equals to 50, the optimal portfolio
strategy shows that the investor should invest - -15.94 in IBM
- 30.37 in MSFT
- 3.19 in AAPL
- 22.60 in DGX
- 59.78 in BAC
18- If cases involving of short selling are excluded
in this example, the investor should invest - 19.77 in MSFT
- 2.05 in AAPL
- 16.96 in DGX
- 61.22 in BAC
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21The risk aversion parameter
22 23Proof
24The End
Thanks!