A Multi-Factor Residual-Based Trading Strategy - PowerPoint PPT Presentation

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A Multi-Factor Residual-Based Trading Strategy

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A Multi-Factor Residual-Based Trading Strategy Finance 453 Adrian Helfert Terry Moore Kevin Stoll Ben Thomason February 26, 2004 Agenda CAPM Roots Our Multi-factor ... – PowerPoint PPT presentation

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Title: A Multi-Factor Residual-Based Trading Strategy


1
A Multi-Factor Residual-Based Trading Strategy
  • Finance 453
  • Adrian Helfert
  • Terry Moore
  • Kevin Stoll
  • Ben Thomason
  • February 26, 2004

2
Agenda
  • CAPM Roots
  • Our Multi-factor Model
  • Our Trading Strategy
  • Our Results
  • Next Steps

3
Is the CAPM Dead?
  • The CAPMs beta does not work well for all
    securities
  • Fama and French found 3 factors described asset
    returns better than the basic CAPM

4
An Intuitive Multi-Factor Model
  • We chose the following risk factors
  • CAPM market risk premium
  • The square of the market risk premium
  • US dollar returns
  • GS Commodity Index returns
  • US long-term govt. bond returns
  • Change in the term structure

5
Estimating a Better Pricing Model
  • Dow Jones Industrial 30 large cap, liquid
    stocks
  • In-sample daily returns 1/1/94-12/31/02
  • Out-of-sample 1/1/03-1/31/04
  • Linear regression for in-sample period
  • R-squared range from 3 (BS) to 52 (GE)
  • Significant t-stats
  • Residuals show negative autocorrelation

6
Screens
  • Rank residual factors (or expected variance) in
    ascending order, rebalancing weekly
  • Ten lowest form Portfolio 1 (long)
  • Ten highest form Portfolio 3 (short)
  • Screen 1 sum of last 5 days residuals
  • Screen 2 sum of last 30 days residuals
  • Screen 3 5 day moving avg 30 day moving avg
  • Screen 4 5 day moving avg 10 day moving avg
  • Screen 5 expected variance (GARCH)
  • Screen 6 change in expected variance

7
Screens 1 2 Sum Previous Residuals
  • Low residuals signal underperformance to risk
    factors
  • Stock will catch up when investors digest news
  • High residuals signal outperformance to risk
    factors
  • Stock should correct downward
  • Negative autocorrelations in our residuals
    support this theory

8
Screens 3 4 Difference Between Moving
Averages of Previous Residuals
  • Technical reversal
  • Stocks tend to track longer term trend relative
    to the market
  • Profit-taking may cause near-term
    underperformance
  • Dip-buying may cause near-term outperformance

9
Screens 5 6 Expected Variance (GARCH)
  • Use residuals to estimate expected variances
  • Low variance stocks are rewarded by investors
  • High variance stocks are penalized by investors
  • Reductions in variance are positive
  • Increases in variance are negative

10
In-Sample Results
  • We discarded Screens 2, 4 and 6
  • - Results were similar, but not as good
    as 1,3 5

11
Scoring System
  • Screen 1
  • Portfolio 1 scores 5, Portfolio 3 scores -4
  • Screen 3
  • Portfolio 1 scores 3, Portfolio 3 scores -3
  • Screen 5
  • Portfolio 1 scores 3, Portfolio 3 scores -2
  • Add scores for each week, sort and repeat process
    for next week

12
Out-of-Sample Results
  • Total scoring screen significantly
    underperforms in the out-of-sample
    year -23.7 return

13
Next Steps
  • Test different stocks
  • Estimate a rolling pricing model instead of fixed
    historical time period
  • Optimize scoring (weighting) instead of
    subjective scoring
  • Factor trading costs and slippage costs
    explicitly into model
  • Test a 2-day model instead of 5-day because of
    autocorrelation results
  • Test a technical crossover strategy
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