7. Benchmarking and Performance Attribution Flashcards
Practice questions
- What is the common name for a comparison group of funds with similar risk and return objectives and characteristics?
• Peer group (or comparison group)
- Describe a theoretical, normative, time-series model of equity returns that might be used by a hedge
fund to guide a high frequency trading strategy.
• Theoretical models tend to explain behavior accurately in more simplified situations where the relationships among variables can be somewhat clearly understood through logic.
• Normative economic models tend to be most useful in helping explain underlying forces that might drive rational financial decisions under idealized circumstances and, to a lesser extent, under more realistic conditions.
• Time-series models analyze behavior of a single subject or a set of subjects through time.
➢ For example, a model that hypothesized the impact of large orders in an equity market with risk- averse traders of limited capital in a world of informational asymmetries in which the large orders were driven by exogenous shocks to the institutions placing the orders would qualify.
- Consider two hedge funds each of which attempt to benefit from identifying pairs of securities in which temporary mispricing is expected to correct as the prices converge. What would differentiate a normative model from a positive model?
• A normative model attempts to describe how people and prices ought to behave. A positive model attempts to describe how people and prices actually behave.
- Compare the role of the intercept in the ex post versions of the CAPM and the single factor market model.
• In the ex post version of the CAPM the risk-free rate can serve as the intercept, or can be subtracted from the asset’s return to form its excess return. In a single-factor market model the intercept is allowed to differ in theory from the riskless rate in order to indicate abnormally high or low returns due to mispricing. Thus the difference between a CAPM model and the single- factor risk model is that whether consistently abnormal returns are allowed to be captured in the intercept term or disallowed through a presumption of informational market efficiency.
- What is the traditional difference indicated by the use of “a” to denote an intercept rather than α?
• “a” is used to represent variables estimated in and outputted from a statistical procedure, in this case the y-intercept. α is used to represent the true and unobservable variables, in this case α = Rp – [Rf + (Rm – Rf) β].
- An analyst is using a multi-factor return model to estimate the overperformance or underperformance of a fund. What would be the anticipated effect of omitting systematic risk factors to which the fund was negatively exposed in an “up” market?
• In an “up market” (i.e., a market in which major indices outperformed the riskless rate), the omission of systematic risk factors will cause an analysis to overestimate the risk-adjusted performance of assets positively exposed to the omitted factors and underestimate the performance of assets negatively exposed to the omitted risk factors.
- Explain the relationship between the effect of omitted systematic risk factors and the overall direction of the market in a performance attribution.
• In an “up market” (i.e., a market in which major indices outperformed the riskless rate), the omission of systematic risk factors will cause an analysis to overestimate the risk-adjusted performance of assets positively exposed to the omitted factors and underestimate the performance of assets negatively exposed to the omitted risk factors. In a down market the anticipated effect would be the opposite. Most long-term studies are more likely to be up markets since risky assets on average outperform the riskless asset.
- Summarize the primary conclusion of the differences in Fund A’s estimated intercepts in Exhibits 7.1, 7.2 and 7.3.
• Exhibits 7.1 and 7.2 indicate that Fund A is generating superior returns. However, Exhibit 7.3 indicated that Fund A’s return included exposures to size, value, and momentum factors in addition to its exposure to the market index. Note that the annual idiosyncratic performance (the intercept) is now estimated as being 2.91% lower than would be obtained in a perfectly efficient market. What was previously estimated as a 1.3% positive alpha using a single-factor model is now estimated as a -2.9% alpha using multiple factors. Apparently, the intercept of Fund A using a single-factor model was erroneously identified as an indication of superior return rather than as compensation for the omitted risk exposures that the fund was incurring by investing in small- capitalization value stocks with a high degree of momentum. This indication that performance was inferior is in marked contrast to the estimated superior performance shown in Exhibits 7.1 and 7.2 using a simple benchmark and single-factor approach, respectively.
- List three reasons why the CAPM is an especially poor model with which to benchmark alternative investments.
• Multiperiod issues, nonnormality, illiquidity of returns and other barriers to diversification
- Why might nonnormality of returns be a more important concern for managing a portfolio of alternative investments rather than a portfolio of traditional investments?
• Alternative investment returns often tend to skew to one side or the other and/or have excess kurtosis, with fatter tails on both sides. Nonnormality of returns tends to be greater for larger time intervals, and alternative investments by their nature often tend to be illiquid and are less likely to be managed with short-term portfolio adjustments. Another reason for the nonnormality of many alternative investment returns is the structuring of their cash flows into relatively risky and asymmetric patterns.
abstract models
also called basic models, tend to have
applicability only in solving real-world challenges of the
future.
applied models
are designed to address immediate real world
challenges and opportunities.
benchmarking
often referred to as performance
benchmarking, is the process of selecting an investment index,
an investment portfolio, or any other source of return as a
standard (or benchmark) for comparison during performance
analysis.
cross-sectional models
analyze behavior at a single point in
time across various subjects, such as investors or investments.
panel data sets
combine the two approaches by tracking
multiple subjects through time and can also be referred to as
longitudinal data sets and cross-sectional time-series data sets.