Title: NTU Conference
1-
- based on the joint work with
- Devraj Basu
- EDHEC Business School
Anomaly Timing Daniel Chi-Hsiou Hung Durham
Business School Durham University http//www.dur.a
c.uk/d.c.hung
2Introduction
overview
literature
results
extensions
theory
synopsis
objectives
- in this paper
- we construct timing strategies
- based on the lagged return on the market
- time the portfolios of asset-pricing anomalies
- achieve higher Sharpe ratios
- with lower volatility
- positive and significant model alphas
- develop timing strategies
-
- use the state of the market as a timing signal
- use size, book-to-market and momentum portfolios
as primitive assets -
- investigate their performance
- an upside risk factor
3Introduction
overview
literature
results
extensions
theory
Motivation
Asset-pricing anomalies
- Zero net-worth portfolios which buy and sell
short on equity securities with some
firm-characteristics generate profits - The effect of size (market capitalization of
equity) Banz, 1981 - The effect of value (book-to-market equity ratio)
Fama and French, 1993 - The effect of momentum (past returns) Jegadeesh
and Titman (1993 and 2001)
Chi-Hsiou Hung
4Introduction
overview
literature
results
extensions
theory
Motivations
the returns on the anomalies portfolios and
trading activities are correlated with the states
of the market
- momentum profits follow positive market returns
(Cooper, Gutierrez and Hameed, JF, 2004 ) - momentum loses follow negative market returns
(Cooper, Gutierrez and Hameed, JF, 2004) - small size stocks, value stocks, and past return
losers exhibit greater correlation asymmetries
with the aggregate U.S. market (Ang and Chen,
JFE, 2002) - trading volume is positively related to lagged
market returns (Statman, Thorley and Vorkink,
RFS, 2006)
Chi-Hsiou Hung
5Introduction
overview
literature
results
extensions
theory
Our investigations
the state of the market may be a timing signal
- We construct simple timing strategies that invest
in the primitive assets of the size,
book-to-market and momentum portfolios - The objectives are to capture the upside returns
and avoid the downside losses on these portfolios - the type I and type II timing strategies
- These strategies are long only
- and are easy to implement
Chi-Hsiou Hung
6Introduction
literature
theory
results
extensions
data
Our investigations
Timing strategies
- Type I
- invest in the primitive assets in a given month
if the return on the CRSP Value Weighted index in
the previous month is positive - otherwise invest in the 1 month Treasury bills
- Type II
- invest in the primitive assets in a given month
if the return on the CRSP Value Weighted index in
the previous month is greater than 2 - otherwise invest in the 1 month Treasury bills
7Introduction
literature
theory
results
extensions
data
Our investigations
Evaluation of the economic and statistical
significance of the returns
- timing strategies outperform the primitive assets
in terms of - Higher Sharpe ratio
- considerably lower volatility
- use asset-pricing models
- that explain the returns on the primitive
portfolios - find positive, often significant, alphas relative
to these models - We augment the models with an upside factor
- which is the maximum of the market return and
zero - most of the alphas become negative
- none of the positive alphas are significant
- positive and significant loading on the upside
factor
8Introduction
overview
literature
results
extensions
methodology
What is the type I timing strategy?
- The strategy switches in and out of the risky
assets -
-
return of the strategy
the timing signal
9Introduction
overview
literature
results
extensions
methodology
What is the type II timing strategy?
- The strategy switches in and out of the risky
assets -
-
return of the strategy
the timing signal
Chi-Hsiou Hung
10Introduction
overview
literature
extensions
theory
empirical tests
Data
- We use all monthly equity data of the NYSE, AMEX
and NASDAQ files from the Center for Research in
Security Price (CRSP) between January 1926 and
December 2006.
Chi-Hsiou Hung
11Introduction
overview
literature
extensions
theory
empirical tests
Primitive assets
- two sets of equally weighted portfolios
- The top and bottom decile portfolios
- Stock portfolios of the top and bottom 30 of the
sorting criteria - momentum winner and loser portfolios (returns
over months t-2 to t-12) - book-to-market ratio (value) portfolios
- equity market capital (size) portfolios
- long-term winner and loser portfolios (reversal)
returns over months t-13 to t-60 -
Chi-Hsiou Hung
12Introduction
overview
literature
extensions
theory
analysis
risk and return profiles of the primitive
portfolios
Chi-Hsiou Hung
13Introduction
overview
literature
extensions
theory
results
risk and return profiles of the type I strategies
14Introduction
overview
literature
extensions
theory
results
risk and return profiles of the type I strategies
- All the average returns of the strategies are
positive - The Bonferroni adjusted probabilities for
observing the p-values are all highly significant
- the type I strategies based on for all primitive
assets but the winner portfolios improve the risk
adjusted performance (Sharpe ratio) -
-
15Introduction
overview
literature
extensions
theory
results
risk and return profiles of the type II strategies
16Introduction
overview
literature
extensions
theory
results
risk and return profiles of the type II strategies
- the type II strategies further improve the risk
reward profiles for all but the strategy based on
the loser portfolios - The type II timing strategies considerably reduce
both total volatility and downside volatility -
-
17Introduction
overview
literature
extensions
theory
results
Extreme up and down moves ratios
- Extreme up moves
- a monthly gain of more than 5
- Extreme down moves
- a monthly loss of more than 5
- We compute the ratio of extreme up (down) moves
of a timing strategy to that of the primitive
portfolio - A high ratio of extreme up moves indicates the
ability of the strategy in capturing the extreme
upside returns of the primitive portfolio - A low ratio of extreme down moves indicates that
the strategy avoids much of the extreme downside
losses
18Introduction
overview
literature
extensions
theory
results
Extreme up and down moves ratios
19Introduction
overview
literature
extensions
theory
results
Extreme up and down moves ratios
- the type I strategies
- capture between 57 and 79 of the extreme up
moves of the primitive assets, - reduce the extreme down moves to between 38 and
59 - the type II strategies
- capture between 37 and 57 of the extreme up
moves - reduce the extreme down moves to between 10 and
33
20Introduction
overview
literature
extensions
theory
analysis
Evaluation using unconditional asset-pricing
models
- an unconditional K-factor model
-
-
the MKT, SMB, HML and UMD
plus an upside market factor
21Introduction
overview
literature
extensions
theory
results
Evaluation using asset-pricing models
22Introduction
overview
literature
extensions
theory
results
Evaluation using unconditional pricing models for
type I
23Introduction
overview
literature
extensions
theory
results
Evaluation using unconditional pricing models for
type II
24Introduction
overview
literature
extensions
theory
analysis
Evaluation using conditional asset-pricing
models
- a conditional K-factor model
-
-
the MKT, SMB, HML and UMD
plus a dummy variable
Instruments of 1 month T-bill rate, the term
spread and the default spread
25Introduction
overview
literature
extensions
theory
results
Evaluation using conditional pricing models for
type I
26Introduction
overview
literature
extensions
theory
results
Evaluation using conditional pricing models for
type II
27Introduction
overview
literature
conclusions
theory
results
Conclusions
- Simple timing strategies successfully capture the
upside returns on the size, book-to-market and
momentum portfolios - and avoid their downside losses
- They remain profitable after accounting for
relatively high levels of transaction costs - the variation in returns on the timing strategies
is better explained by dynamic factor betas
Chi-Hsiou Hung