module 5 chapter 3
regression coefficients
based on correlations between security and mimicking portfolios
surprises for factors
cant anticipate them or effects - all 0
don't have way to measure risk premia in most cases
create factor mimicking portfolios to estimate the risk premia
Mimicking portfolio will be proxy for
expected and shock portfolio (adjust when shocks f occur)
alpha would be (α)
expected return - E(ri)
risk premium on mimicking portfolio proxies for
factor risk premium
Factor mimicking portfolios
factors are the excess returns to what are known for
book to market is proxy for
financial distress risk
Conservative Minus Agressive (CMA)
firms who invest more heavily tend to underperform firms who do not
Robust Minus Weak
high profitable firms tend to outperofrm low profitability firms
Small size stocks outperform
large size stocks
high book to market value stocks outperform
low book-to-market growth stocks
view SMB and HML factors as risk premiums similar to
market risk premium
Market factor (Mkt - Rf)
market risk premium (same as CAPM) - portfolio bears the risk
high book to markets
may potentially be near financial distress
Surprises in investor confidence
measured by changes in default premium of corporate bonds
Surprises in GNP
measured by industrial production index
use derivative prices
more active data
regression forms
moves risk free rate over and drops expectations
well-diversified portfolio
no firm-specific risk
high R2
not everything
avoid
p hacking or data mining
following guidelines ensure model has some
predictive power rather than qurik
factors loading or beta
represent each stocks sensitivity to the factor - Kenneth French Data Library
Size factor (SMB)
reutrn difference between a portfolio of small stocks and portfolio of large stocks - small - big - portfolio doesn't bear the risk
λk
risk premium factor
Violation of law of one price
same assets sells for different prices in two different markets
Zero investment portfolio
shorting overpriced security and buying the underpriced security
APT factor model
stock returns are result of exogenous shocks to set of factors
SMB risk premium demanded by investors for
taking on the additional risk of holding small firms relative to large firms
HML risk premium demanded by investors for
taking on the risk of owning high book to market stocks
Fama French factor to
tease out the abnormal return
build portfolios to estimate what
think factor's value is
understand ideas of regression
use past to predict future
APT assumptions
- All securities have finite expected values and variance - Some can form well diversified portfolios - There are no taxes, no transaction costs
Fama French 5-Factor Modle
- Fama French (2015) - adds profitability and investment factor
APT issue
- at most 1 less factor than we have assets in our data - S&P only 499 - need for regression
Carhart 4 Factor Model
- carhart (1997) - fama french 4-factor model - adds momentum
Extensions for factor model
- carhart 4 factor model - fama french 5-factor model
CAPM
- equilibrium model - single factor completely described expected return - unobservable market portfolio - individual assets or portfolio
Adds momentum factor (carhart)
- form portfolios of over and under performers - buy over performs - short under performs - generate alpha over 3 factor
Value
- high B/M - low M/B - distress
No universal answer
- how much data - frequency of data - what model to use
Empirical work
- include a lot of control variables - fixed effects - count towards limit
Mispricing can occur
- investors able to profit from these through trading on arbitrage in expectations - two stocks with equivalent risk - shorts lower return and buys higher return
Observations
- momentum factor for Carhart model is not included - value factor is statistically insignificant
APT
- no arbitrage model - multiple risk factor (don't specify) - fewer assumption (no market portfolio0 - well diversified portfolios - loosely to individual assets
Arbitrage in expectations
- not true arbitrage - market may move against us
Riskless arbitrage opportunity
- positive payoffs are realized with certainty with zero upfront
create factor mimicking portfolios
- postively correlated returns (even if not traded) - beta = 1 with own factor - 0 with all other
Book to Market factor (HML)
- return difference between a portfolio of high book-to-market stocks and a portfolio of low book to market stocks - high minus low
APT factors probelms
- slow - reported monthly or quarterly (not fast enough)
Chen Ross and Roll used these factors (1986)
- surprises in inflation - surprises in GNP - surprises in investor confidence - surprises shifts in yield curve
differences with mimick and fama french
▶ The mimicking portfolios subtract the risk free rate instead of the "opposite" portfolio ▶ We have to make the mimicking portfolios ourselves
APT: Factor Mimicking Portfolio
▶ Trying to isolate the effect of a single specific factor ▶ not like Fama French, we'll only use a long position bearing the risk ▶ It can be difficult to identify a portfolio that does not bear some of these systematic risks, so we can't make a true "long-short" portfolio
Arbitrage Pricing Theory
-Ross 1976 - relationship for expected returns that relies on no arbitrage requirements - price securities dont exist in well-functioning capital markets
epsilons should have average of
0
APT factors
1 impact on asset through unexpected movements 2 undiversifiable influences (typically macroeconomic) 3 Timely and accurate information is required 4 theoretically justifiable relationship on economic grounds