Title: Capital Market Expectations
1Capital Market Expectations
2Capital Market Expectations
- Questions to be answered
- What are capital market expectations (CME)?
- How does CMEs fit into to the bigger portfolio
management picture? - What is an appropriate framework for developing
CME? - What are some key issues that analysts face or
must recognize while developing CME? - What are some common tools for formulating CME?
3Capital Market Expectations
- Capital Market Expectations (CME) represent the
investors expectations concerning the risk and
return prospects of asset classes. - These are different from micro expectations,
which are expectations concerning individual
assets.
4CME within the larger picture
- Developing CME allow portfolio managers to
- Develop return and risk expectations for broad
asset classes. - Ensure that return and risk objectives are
consistent with investor expectations. - Construct efficient portfolios
- Develop a basis for the first step in the
top-down approach of constructing portfolios - Broad asset class analyses, industry analyses,
individual security analyses
5Framework for Developing CME
- Specify the final set of expectations that are
needed, including time horizon. - Research the historical record.
6Framework for Developing CME
- Specify the methods that will be used to
formulate CME and the information required. - Determine the best sources for information
needed.
7Framework for Developing CME
- Interpret the current investment environment
using the selected data and methods. - Provide the set of expectations required.
- Monitor actual outcomes to provide feedback to
improve the CME development process.
8Framework for Developing CME
- Good forecasts should generally be
- Unbiased, objective and well researched
- Efficient (minimizing forecast errors)
- Internally consistent
9Challenges in Forecasting
- Limitations of economic data lagged, revised,
changes in definitions and calculation methods. - Data measurement errors and biases
transcription errors, survivorship bias,
appraisal (smoothed) data.
10Challenges in Forecasting
- Limitations of historical estimates
- Risk/return relationships can be changed if there
is a change in regime. - Using historical estimates (without correcting
for changing regimes) assumes stationarity, i.e.,
the statistical properties of the forecasted
variables remain the same.
11Challenges in Forecasting
- Limitations of historical estimates
- Data-mining bias. Does the variable have economic
rationale? - Time-period bias.
12Challenges in Forecasting
- Psychological traps
- Anchoring trap tendency to give
disproportionate weight to the first information
received - Status quo trap tendency for forecasts to
perpetuate recent observations
13Challenges in Forecasting
- Psychological traps
- Confirming evidence trap bias that leads
individuals to give greater weight to information
that supports a preferred point of view - Overconfidence trap tendency to overestimate
the accuracy of forecasts
14Challenges in Forecasting
- Psychological traps
- Prudence trap tendency to temper forecasts so
that they do not appear extreme. - Recallability trap tendency of forecasts to be
overly influenced by events that have left a
strong impression.
15Tools for Formulating CME
- Historical Statistical Approach
- Historical statistical characteristics (mean,
variance, correlation) can be used to estimate
future returns. - Shrinkage Estimators
- This involves taking a weighted average of a
historical estimate of a parameter and some other
parameter estimate (from, for example, CAPM).
16Tools for Formulating CME
- Financial Market Equilibrium Models
- These models describe relationships between
return and risk in which returns are correctly
estimated if the equilibrium model is correct and
investments are properly priced based on their
risk levels. - The CAPM is one example of such a model.
- Limitations of the CAPM as we know it
- It is difficult to define an appropriate market
- Other variables appear to explain returns
- The model assumes that markets are perfectly
integrated
17Tools for Formulating CME
- Financial Market Equilibrium Models
- ICAPM International Capital Asset Pricing
Model (Singer and Terhaar, 1997) - The basic model is the same
- Where
18Tools for Formulating CME
- Financial Market Equilibrium Models
- ICAPM
- An appropriate proxy for the world market
portfolio is the global investable market (GIM).
This market should include traditional and
alternative asset classes. - We can rearrange the ICAPM equation to the
following equation - where the term in the brackets (GIM Sharpe
Ratio) represents the expected risk premium per
unit of standard deviation for the GIM.
19Tools for Formulating CME
- Financial Market Equilibrium Models
- ICAPM
- Based on research, a good estimate of this GIM
Sharpe ratio is 0.28. - The ICAPM has the ability to incorporate market
imperfections. We consider market segmentation. - Market segmentation means that there are
impediments to capital market movements. - The more the market is segmented, the more it is
dominated by local investors - With segmented markets, two identical assets
(with the same risk characteristics) can have
different expected returns.
20Tools for Formulating CME
- Financial Market Equilibrium Models
- ICAPM
- Calculating expected return with market
segmentation - Assume that the market is completely segmented.
Then the risk premium of that market is - With the degree of integration of that market, we
can estimate the final risk premium
21Tools for Formulating CME
- Financial Market Equilibrium Models
- ICAPM
- Degree of integration
- Developed equity and bond markets 80
- US real estate 70
- Emerging market equities and bonds 65
22Tools for Formulating CME
- Multifactor models
- Multifactor models explain the returns to an
asset in terms of a set of factors and are based
on the Arbitrage Pricing Theory (APT).
F1t is the period t return to the first
designated risk factor and Rit can be measured as
either a nominal or excess return to security i.
23Tools for Formulating CME
- Multifactor models
- To determine a specific asset return and risk
characteristics, we use the factor covariance
matrix (which contains the covariances for the
factors that drive the return) and factor
sensitivities (or betas) for the asset.
24Tools for Formulating CME
- Multifactor models
- So, for a two-factor model, two-asset model (M),
for example, - and the asset variances and covariances are
calculated as
25Tools for Formulating CME
- Multifactor models
- These models can be used to develop expectations
about broader asset classes or to develop
expectations about individual securities. - The following two models are the three-factor and
four-factor models used for individual
securities. - They can also be used to determine the style of a
particular stock, mutual fund or ETF.
26Tools for Formulating CME
- Multifactor models
- Fama and French three-factor model
where SMB (i.e. small minus big) is the return to
a portfolio of small capitalization stocks less
the return to a portfolio of large capitalization
stocks HML (i.e. high minus low) is the return to
a portfolio of stocks with high ratios of
book-to-market values less the return to a
portfolio of low book-to-market value stocks
27Tools for Formulating CME
- Multifactor models
- Carhart (1997) extends the Fama-French three
factor model by including a fourth common risk
factor that accounts for the tendency for firms
with positive past return to produce positive
future return. This is referred to as the
momentum factor. - where PR1YR is the average return to a set of
stocks with the best performance over a year
minus that of the of a set of stocks with the
worst performance.
28Tools for Formulating CME
- Multifactor models
- Estimating Expected Returns for Individual Stocks
- A Specific set of K common risk factors must be
identified - The risk premia for the factors must be estimated
- Sensitivities (or betas) of the ith stock to each
of those K factors must be estimated - The expected returns can be calculated by
combining the results of the previous steps in
the appropriate way
29Tools for Formulating CME
- Discounted Cash Flow models
- The Gordon growth model is often used to
formulate the long-term expected return of equity
markets - where g can be estimated as the growth rate in
nominal GDP (real GDP growth rate expected
inflation rate)
30Tools for Formulating CME
- Risk Premium Approach
- The risk premium approach expresses the expected
return on a risky asset as the risk-free rate
plus risk premiums to compensate investors for
the sources of risk for that asset.
31Tools for Formulating CME
- Risk Premium Approach
- For Fixed-income
32Tools for Formulating CME
- Risk Premium Approach
- Inflation premium reflects the average inflation
rate expected over maturity of debt - Illiquidity premium represents the risk of loss
relative to an investment value if it needs to be
converted to cash quickly - Tax premium may be applicable to certain classes
of stocks.
33Tools for Formulating CME
- Risk Premium Approach
- For equity, we can use a historical risk premium
estimate to proxy for the equity risk premium
34Tools for Formulating CME
- Survey Method
- The survey method involves asking a group of
experts for their CMEs. - The Livingston Survey (managed by the Fed of
Philadelphia) provides expectations on
macro-economic variables
35Readings
- RB 8 (pgs. 239 246 review of CAPM)
- RB 9 (pgs. 279 291),
- RM 2 (up to section 4, we do not cover the
Grinold-Kroner model or Time Series Estimators)