Portfolio Management #53 - Introduction to Multi-factor Models Flashcards

1
Q

arbitrage pricing theory (APT)

A

LOS 53.a

APT - describes the equilibrium relationship between expected returns for well-diversified portfolios and their multiple sources of systematic risk.

E(Rp) = RF + ßP1(A1) + … + ßPk(Ak​), where

A (lamda) = risk premiums

ß = portfolio factor betas (or “loadings”)

APT assumes there are no market imperfections preventing investors from exploiting arbitrage i.e. extreme long/short positions are permitted

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2
Q

types of multifactor models

A

LOS 53.d

1. Macroeconomic Factor Models

  • surprises in macro variables that explain differences in stock returns
  • e.g. interest rates, inflation, business cycle, credit spreads, etc.

2. Fundamental Factor Models

  • attributes of stocks that are important in explaining cross-sectional differences in returns
  • e.g. B/M, market cap, P/E, leverage, etc.

3. Statistical Factor Models

  • Principal components models - factors are portfolios of securities that best reproduce historic return variances
  • Factor analysis models - factors are portfolios of securities that best reproduce historic return covariances
  • Issue: attaching economic meaning to statistical factors is difficult
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3
Q

macroeconomic factor model

A

LOS 53.d

Two-factor example:

Ri = E(Ri) + bi1FGDP + bi2FINT + ei

E(Ri) – ex-ante (forecasted) return (no surprises)

bi1 – sensitivity to GDP surprises
FGDP – GDP surprise actual - consensus predicted

bi2 – sensitivity to INT surprises
FINT – interest rate surprise actual - consensus expected

ei – the part of the return that cannot be explained by the model; it represents unsystematic risk related to firm-specific events e.g. a strike, warehouse fire, etc.

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4
Q

fundamental factor model

A

LOS 53.d

fundamental factor model:

Ri = ai + bi1FP/E + bi2FSIZE + ei, where

R<sub>i</sub> = return for stock i
F<sub>P/E</sub> = return assoc. with the P/E factor
F<sub>SIZE</sub> = return assoc with the SIZE (mkt cap) factor
a<sub>i</sub> = intercept
b<sub>i</sub><sub>1</sub> = standardized sensitivity of stock to P/E factor
b<sub>i2</sub> = standardized sensitivity of stock to SIZE factor
  • factors are returns, not surprises
  • intercept != expected return
  • factor sensitivities are standardized e.g.:

bi1 = [(P/E)i - avg(P/E)] / σP/E, where

(P/E)<sub>i</sub> = P/E for _stock i_
avg(P/E) = average P/E calculated across _all stocks_
σ<sub>P/E</sub> = std deviation of P/E ratios across _all stocks_
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5
Q

macro vs. fundamental models

A

LOS 53.d

Macro Factor Fundamental
Model Factor Model

regression time series of cross-sectional
surprises asset returns

factor sens. (ß) regression based standardized from
attribute data

factor rtns. (F) surprises in computed from
macro variables multiple regression

intercept expected return undefined

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6
Q

active return, active risk, information ratio

A

LOS 53.e

  • active return - differences in returns between a managed portfolio and its benchmark:

Active Return = RP - RB

  • active risk (aka tracking error, tracking risk) - the standard deviation of the active return:

Active Risk = TE = s(RP - RB)

  • information ratio - the active portfolio’s average active return per unit risk:

IR = [avg(RP) - avg(RB)] / s(RP - RB)

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7
Q

multifactor model use for return attribution

A

LOS 53.f

Fundamental Factor Model
(macro & stat factor models not commonly used for return attribution)

decompose active return into factor return and security selection:

active return = factor return + security selection return

active return = sum(i=1,k)[(ßpk - ßbk) * Ak] + sec. select. rtn.

  • use: decompose sources of an asset manager’s return relative to a benchmark
  • model uses easily understood factors
  • can express investment style choices and security characteristics in detail
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8
Q

risk attribution

A

LOS 53.f

decompose active risk into two compoments:

  • active factor risk - attributable to factor tilts
  • active specific risk - attributable to stock selection

σ2(RP - RB) = active risk + active specific risk

active specific risk = sum(i=1,n)[(WPi - WBi)2σ<em>e</em>i2

active factor risk = residual

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9
Q

strategic portfolio decisions

A

LOS 53.g

Two questions for investors:

  1. what kind of risk do I have a comparitive advantage in bearing?
  2. what kind of risk do I have a comparitive disadvantage in bearing?

Examples:

  • pension funds have long investment horizons, so less exposed to liquidity risk
  • unemployed worker reliant on income is exposed to business cycle risk
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