Title: Quantitative Stock Selection
1Quantitative Stock Selection
- James F. Page III, CFA
- May 2005
2Project Summary
- Why Quant Selection is Attractive
- Methodology
- Historical Back Testing
- Model Results
- Dynamic Weights / Regime Change
- Benchmarks
- Next Generation Models
- Concluding Thoughts
3I. Quantitative Stock Selection
4Quant Stock Selection
- Premise
- In aggregate, certain fundamental, expectational,
and macro variables may contain valuable
information in predicting stock returns - Not unlike traditional fundamental analysis, just
more systematic
5Quant Stock Selection
- Pros
- Anecdotal evidence suggests 80 of stock picking
is done by hand (individuals making calls on
fundamentals) - Relies heavily on talent (or luck) of individual
analyst - Individuals can only process so much information
(sector focus) - Human nature suggests cognitive biases likely
- Market structure may perpetuate mis-pricings
(Street incentives, value weighted benchmarks,
short sale restrictions) - Little academic research on subject (trade rather
than publish) - Evidence suggests that investors systematically
over pay for growth - Quantitative selection is scaleable
6Quant Stock Selection
- Cons
- Black box nature of model
- Explain approach without revealing too much
information - Attribution analysis must be able to explain
performance - Protecting against common modeling errors
- Credibility of simulated results
- Adapting to individual client restraints
7Quant Stock Selection
- Market Neutral
- Generate returns from both undervalued and
overvalued stocks - At present, high market valuation low future
returns - Market exposure is commodity but good stock
selection is valued (higher management fees) - Low return expectations combined with
geo-political environment suggests absolute
return approach prudent
8II. Methodology
9Methodology
- Hypothesize
- Develop candidate list of potential factors that
may assist in predicting stock returns
(valuation, growth, etc.) - Priors reduce data mining
- Back Test
- Decide on universe for testing (capitalization,
index, sector, etc) - Use sorting or regressions to test individual
candidate variables - FactSets AlphaTester currently available to Duke
students - Rebalance
- Periodically rebalance portfolios (monthly,
annually, etc.)
10Methodology
- Analyze Results
- Consider factor performance and consistency (both
long and short candidates) in predicting returns
balanced against turnover - Select most promising factors for inclusion in
the model - Weight
- Once individual factors selected must decide on
weights for final model by either - Eye balling best factors and assigning weights
for a scoring model - Pushing individual factor portfolios into a
mean-variance optimizer
11III. Historical Back Testing
12Historical Back Testing
- Access to reasonably accurate historical data is
costly - FactSets AlphaTester is currently available to
Duke students - Two approaches common in practice
- Regression of factors on security returns (Panel,
etc.) - Sorting universe into fractiles based on factor
characteristics (AlphaTester) - Must protect against common modeling errors
- Survivorship bias
- Information / reporting lags
- Data mining
- Inaccuracies in data
- Credibility of simulated returns is critical
13Historical Back Testing
- Term 3 Model Discredited
- Errors in Historical Returns
- Scrub Example.xls
- Survivorship Bias
- Difficult to rule out unless you spend a lot of
time examining results - Fractile Misspecification
- MSFT grouped in F1 Div Yield for 85-04 because of
Special Dividend - Betas not believable
- Subject to similar errors as returns information
- Makes market neutral simulation difficult
- Combing factors into comprehensive model
increases complexity
14Historical Back Testing
- To Mitigate Potential Errors
- Universe Selection is critical component
- Market Cap weighted
- Adds to turnover (98-00)
- Unstable sector allocations
- Less undervalued firms to buy
- Revenue weighted
- Sector bias
- Less overvalued firms to sell
- Actual Indices (Preferred method)
- Limit universe to actual benchmark
- Limit survivorship bias
- Historical indices available (but option not
turned on for Duke) - Greatly enhance credibility look to acquire for
next years class
15Historical Back Testing
- To Mitigate Potential Errors
- Factor Syntax
- If you do not get this right data is worthless
(lots of opportunities to get it wrong) - Consider consolidating our approved syntax for
future students as starting point - Expectational (instead of accounting/fundamental)
produced significantly fewer errors - Survivorship Bias
- Selecting Research Companies does not protect
without - Appropriate Syntax on Factors
- Correct specification of Universe
- Sanity checks on early period companies
- of NA companies can be signal
- Errors
- You must clean historical data
- Consider median returns as back of envelope
option
16Historical Back Testing
- Recommendations
- Use historical indices as universe
- SP 500
- Barra 1000
- Start with approved list of factor syntax
- Clean historical results (particularly returns)
- Do not rely on betas to construct market neutral
portfolio - Research ways to limit reliance on AlphaTester
- Look for other data providers ask managers what
they use - Interface with CompuStat/IBES directly?
- Once comfortable with model, begin sorting real
time ASAP
17IV. Model Results
18Model Results
- Desired Universe SP 500
- Why
- Considered to be highly efficient
- Value weighted index suggests low hanging fruit
- Historical data for testing is plentiful and
reasonably accurate - Highly liquid (market impact costs and borrow)
- Very scaleable because of market capitalizations
- Actual Universe
- First choose US Companies with highest sales (
500) - Had to switch to Market Cap because of data
limitations
19Model Results
- Universe Comments
- Unstable during bubble period (1998-2000)
- Less undervalued firms to buy (but more
overvalued firms to sell) - Sector allocations float with market sentiment
- Other
- Rebalanced official results annually due to
time consuming nature of cleaning returns - Equal number of companies in each bucket
- Equal weight returns
- Did not impose sector constraints
- Included two groups of Factors Fundamental and
Expectational - Actively looking for Quality factor to add to
the model - Assume beta exposure is equal is both
portfolios probably conservative - Results seem too good further cleaning
necessary
20Model Results
Individual Factor Performance Monthly Statistics
1989 2004 Long Factors correlated with Value
and visa versa View Portfolios
21Model Results
Fixed Weighting Scheme
22Model Results
Scoring Model Heat Map
23Model Results
Summary Statistics
24V. Dynamic Weights / Regime Change
25Dynamic Weights / Regime Change
- A factors effectiveness may vary in different
states of nature (PE ratios impacted by
inflation) - Certain market / macro conditions may favor
growth or value (value was dog in late 1990s) - Dynamic factor weights allow model to capitalize
on conditional information - Few managers currently employ dynamic weighting
schemes - This area is the Holy Grail of Quant Strategies
26Dynamic Weights / Regime Change
- Forecasting Regime Change
- Inflection point for style (growth or value)
relative performance - Used SP 500 Barra Value and Growth Indices as
Proxies - Examined macro economic variables that might
assist in forecasting these inflection points - Two variables demonstrated promise in
forecasting style relative performances over the
following year
27Dynamic Weights / Regime Change
28Dynamic Weights / Regime Change
29Dynamic Weights / Regime Change
- The Same Can Be Applied to View Portfolios
- Expectational Factor 2 and Regime Change Factor
1 - Prediction of Long outperforming Short
30Dynamic Weights / Regime Change
- The Same Can Be Applied to View Portfolios
- Expectational Factor 2 and Regime Change Factor
2 - Prediction of Long Outperforming Short
31VI. Benchmarks
32Benchmarks
- Value or Equal Weight?
- Since 1990, EWI has outperformed by 177 basis
points - Turnover for EWI is 6x which begs the question
- Can we separate turnover between model signals
and weighting scheme?
33Benchmarks
- Value or Equal Weight?
- Significant Implications for Sector Weights /
Tracking Error
34Benchmarks
- Value or Equal Weight?
- Correlations drift through time implications
for tracking error
35Benchmarks
- Value or Equal Weight?
- EWI had positive loading on the size premium
- EWI has significant exposure to the value premium
- Fama-French Risk Factor Exposures
Source http//mba.tuck.dartmouth.edu/pages/facul
ty/ken.french/data_library.html
36Benchmarks
- Value or Equal Weight?
- EWI has 82 correlation with 500 / Barra Growth
- EWI has 96 correlation with 500 / Barra Value
- Further proof of value tilt
37Benchmarks
- Value or Equal Weight?
- Obvious Pros and Cons to both
- EWI benchmark will make returns look less
impressive, but help explain turnover - EWI may be a better match for style
- Provide more stable weighting for sector
allocations - Equal weight is newer idea historical data is
limited - If possible, choice should match weighting scheme
of portfolio
38VII. Next Generation Models
39Next Generation Models
- Refining Dynamic Factor Weights
- Preferably done outside of FactSet
- Migration Tracking
- May contain information to enhance returns or
limit turnover -
40Next Generation Models
- Modified Versions of SP 500 Model
- Separate Models for Sector and Stock Selection
- More Conservative
- More positions
- Limited tracking error
- More Aggressive
- Directional
- Less positions
- Leverage
- Other Domestic Models
- SP Mid-Cap 400 / Russell 2000
- International Models
- Developed / Emerging markets
41VIII. Concluding Thoughts
42Concluding Thoughts
- Theoretical
- How long will excess returns exist
- How to stay ahead of the curve
- Implementation
- Cost of data
- Credibility of simulation
- Returns during first 12 24 months
- Balance between turnover and model signals
43Concluding Thoughts
- Overall
- Quantitative Stock Selection Appealing
- Outperformance Seems Possible
- Long/Short Consistent with Absolute Return
Approach
44Bio
- James F. Page III
- Jimmy became interested in quantitative stock
selection during Campbell Harveys Global Asset
Allocation and Stock Selection class and a
follow-up course dedicated to quantitative stock
selection. He received his Bachelor of Science
degree from the University of Florida and will
receive his MBA from Duke Universitys Fuqua
School of Business in May 2005. Prior to
enrolling at Duke, he spent four years in the
Equity Research Department of Raymond James
Associates in St. Petersburg, FL. He is also a
CFA charter holder.