Title: Portfolio Optimization with Drawdown Constraints
1Portfolio Optimization with Drawdown Constraints
January 29, 2000
- Alexei Chekhlov, TrendLogic Associates, Inc.
- Stanislav Uryasev Mikhail Zabarankin,
University of Florida, ISE
2Introduction
- Losing clients accounts is equivalent to death
of business - Highly unlikely to hold an account which was in a
drawdown for 2 years - Highly unlikely to be permitted to have a 50
drawdown - Shutdown condition 20 drawdown
- Warning condition 15 drawdown
- Longest time to get out of a drawdown - 1 year.
3- uncompounded portfolio value at time t
- set of unknown weights
- drawdown function.
- Three Measures of Risk
- Maximum drawdown (MaxDD)
- Average drawdown (AvDD)
- Conditional drawdown-at-risk (CDaR)
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6Limiting the risk
- MaxDD
- AvDD
- DVaR
- Combination
7Continuous Optimization Problems
MaxDD
AvDD
CDaR
technological constraints
8Discrete Optimization Problems
MaxDD
AvDD
CDaR
, (g)max0,g.
9Reward/Risk Ratios MaxDD
10Reward/Risk Ratios AvDD
11Table 1 MaxDD Solution
12Table 2 AvDD Solution
13Figure 1 MaxDD Efficient Frontier
Figure 2 AvDD Efficient Frontier
14Figure 3 Efficient Frontier as a function of
MaxDD
Figure 4 Efficient Frontier as a function of
AvDD
15Figure 5 MaxDDRatio as a function of MaxDD
Figure 6 AvDDRatio as a function of AvDD
16Underwater Curves MaxDD and AvDD
17Conclusions
- Introduced a one-parameter family of risk
measures based on a notion of a drawdown
(underwater) curve - Mapped Portfolio Allocation problem into linear
programming problems to be solved using efficient
computer solvers - Solved a particular real-life example on the
basis of historical equity curves - CDaR-generated solutions are more stable for
practical weights allocation.