Presentation is loading. Please wait.

Presentation is loading. Please wait.

Empirical Financial Economics 5. Current Approaches to Performance Measurement Stephen Brown NYU Stern School of Business UNSW PhD Seminar, June 19-21.

Similar presentations


Presentation on theme: "Empirical Financial Economics 5. Current Approaches to Performance Measurement Stephen Brown NYU Stern School of Business UNSW PhD Seminar, June 19-21."— Presentation transcript:

1 Empirical Financial Economics 5. Current Approaches to Performance Measurement Stephen Brown NYU Stern School of Business UNSW PhD Seminar, June 19-21 2006

2 Overview of lecture  Standard approaches  Theoretical foundation  Practical implementation  Relation to style analysis  Gaming performance metrics

3 Performance measurement Leeson Investment Managemen t Market (S&P 500) Benchmark Short-term Government Benchmark Average Return.0065.0050.0036 Std. Deviation.0106.0359.0015 Beta.06401.0.0 Alpha.0025 (1.92).0 Sharpe Ratio.2484.0318.0 Style: Index Arbitrage, 100% in cash at close of trading

4 Frequency distribution of monthly returns

5 Universe Comparisons 5% 10% 15% 20% 25% 30% 35% 40% Brownian Management S&P 500 One Quarter 1 Year3 Years5 Years Periods ending Dec 31 2002

6 Average Return Total Return comparison A B C D

7 r f = 1.08% Average Return R S&P = 13.68% Total Return comparison A S&P 500 B C D Treasury Bills Manager A best Manager D worst

8 Average Return Total Return comparison A B C D

9 Average Return Standard Deviation Sharpe ratio comparison A B C D

10 r f = 1.08% σ S&P = 20.0% Average Return Standard Deviation R S&P = 13.68% Sharpe ratio comparison ^ A S&P 500 B C D Treasury Bills

11 r f = 1.08% σ S&P = 20.0% Average Return Standard Deviation R S&P = 13.68% Sharpe ratio comparison ^ A S&P 500 B C D Treasury Bills Manager D best Manager C worst Sharpe ratio = Average return – r f Standard Deviation

12 r f = 1.08% σ S&P = 20.0% Average Return Standard Deviation R S&P = 13.68% Sharpe ratio comparison ^ A S&P 500 B C D Treasury Bills

13 r f = 1.08% Average Return R S&P = 13.68% Jensen’s Alpha comparison A S&P 500 B C D Treasury Bills Manager B worst Jensen’s alpha = Average return – {r f + β ( R S&P - r f )} β S&P = 1.0 Beta Manager C best

14 Intertemporal equilibrium model  Multiperiod problem:  First order conditions:  Stochastic discount factor interpretation:  “stochastic discount factor”, “pricing kernel”

15 Value of Private Information  Investor has access to information  Value of is given by where and are returns on optimal portfolios given and  Under CAPM (Chen & Knez 1996)  Jensen’s alpha measures value of private information

16 The geometry of mean variance Note: returns are in excess of the risk free rate

17 Informed portfolio strategy  Excess return on informed strategy where is the return on an optimal orthogonal portfolio (MacKinlay 1995)  Sharpe ratio squared of informed strategy  Assumes well diversified portfolios

18 Informed portfolio strategy  Excess return on informed strategy where is the return on an optimal orthogonal portfolio (MacKinlay 1995)  Sharpe ratio squared of informed strategy  Assumes well diversified portfolios Used in tests of mean variance efficiency of benchmark

19 Practical issues  Sharpe ratio sensitive to diversification, but invariant to leverage  Risk premium and standard deviation proportionate to fraction of investment financed by borrowing  Jensen’s alpha invariant to diversification, but sensitive to leverage  In a complete market implies through borrowing (Goetzmann et al 2002)

20 Changes in Information Set  How do we measure alpha when information set is not constant?  Rolling regression, use subperiods to estimate (no t subscript) – Sharpe (1992)  Use macroeconomic variable controls – Ferson and Schadt(1996)  Use GSC procedure – Brown and Goetzmann (1997)

21 Style management is crucial … Economist, July 16, 1995 But who determines styles?

22 Characteristics-based Styles  Traditional approach …  are changing characteristics (PER, Price/Book)  are returns to characteristics  Style benchmarks are given by

23 Returns-based Styles  Sharpe (1992) approach …  are a dynamic portfolio strategy  are benchmark portfolio returns  Style benchmarks are given by

24 Returns-based Styles  GSC (1997) approach …  vary through time but are fixed for style  Allocate funds to styles directly using  Style benchmarks are given by

25 Eight style decomposition

26 Five style decomposition

27 Style classifications GSC1Event driven international GSC2Property/Fixed Income GSC3US Equity focus GSC4Non-directional/relative value GSC5Event driven domestic GSC6International focus GSC7Emerging markets GSC8Global macro

28 Regressing returns on classifications: Adjusted R 2

29 Variance explained by prior returns-based classifications

30 Variance explained by prior factor loadings

31 Percentage in cash (monthly)

32 Examples of riskless index arbitrage …

33 Percentage in cash (daily)

34 “Informationless” investing

35 Concave payout strategies  Zero net investment overlay strategy (Weisman 2002)  Uses only public information  Designed to yield Sharpe ratio greater than benchmark  Using strategies that are concave to benchmark

36 Concave payout strategies  Zero net investment overlay strategy (Weisman 2002)  Uses only public information  Designed to yield Sharpe ratio greater than benchmark  Using strategies that are concave to benchmark  Why should we care?  Sharpe ratio obviously inappropriate here  But is metric of choice of hedge funds and derivatives traders

37 We should care!  Delegated fund management  Fund flow, compensation based on historical performance  Limited incentive to monitor high Sharpe ratios  Behavioral issues  Prospect theory: lock in gains, gamble on loss  Are there incentives to control this behavior?

38 Sharpe Ratio of Benchmark Sharpe ratio =.631

39 Maximum Sharpe Ratio Sharpe ratio =.748

40 Concave trading strategies

41 Examples of concave payout strategies  Long-term asset mix guidelines

42  Unhedged short volatility  Writing out of the money calls and puts Examples of concave payout strategies

43  Loss averse trading  a.k.a. “Doubling” Examples of concave payout strategies

44  Long-term asset mix guidelines  Unhedged short volatility  Writing out of the money calls and puts  Loss averse trading  a.k.a. “Doubling”

45 Forensic Finance  Implications of concave payoff strategies  Patterns of returns

46 Forensic Finance  Implications of Informationless investing  Patterns of returns  are returns concave to benchmark?

47 Forensic Finance  Implications of concave payoff strategies  Patterns of returns  are returns concave to benchmark?  Patterns of security holdings

48 Forensic Finance  Implications of concave payoff strategies  Patterns of returns  are returns concave to benchmark?  Patterns of security holdings  do security holdings produce concave payouts?

49 Forensic Finance  Implications of concave payoff strategies  Patterns of returns  are returns concave to benchmark?  Patterns of security holdings  do security holdings produce concave payouts?  Patterns of trading

50 Forensic Finance  Implications of concave payoff strategies  Patterns of returns  are returns concave to benchmark?  Patterns of security holdings  do security holdings produce concave payouts?  Patterns of trading  does pattern of trading lead to concave payouts?

51 Conclusion  Value of information interpretation of standard performance measures  New procedures for style analysis  Return based performance measures only tell part of the story


Download ppt "Empirical Financial Economics 5. Current Approaches to Performance Measurement Stephen Brown NYU Stern School of Business UNSW PhD Seminar, June 19-21."

Similar presentations


Ads by Google