Title: Chapter 6 The Mathematics of Diversification
1Chapter 6The Mathematics of Diversification
2Outline
- Introduction
- Linear combinations
- Single-index model
- Multi-index model
3Introduction
- The reason for portfolio theory mathematics
- To show why diversification is a good idea
- To show why diversification makes sense logically
4Introduction (contd)
- Harry Markowitzs efficient portfolios
- Those portfolios providing the maximum return for
their level of risk - Those portfolios providing the minimum risk for a
certain level of return
5Linear Combinations
- Introduction
- Return
- Variance
6Introduction
- A portfolios performance is the result of the
performance of its components - The return realized on a portfolio is a linear
combination of the returns on the individual
investments - The variance of the portfolio is not a linear
combination of component variances
7Return
- The expected return of a portfolio is a weighted
average of the expected returns of the
components
8Variance
- Introduction
- Two-security case
- Minimum variance portfolio
- Correlation and risk reduction
- The n-security case
9Introduction
- Understanding portfolio variance is the essence
of understanding the mathematics of
diversification - The variance of a linear combination of random
variables is not a weighted average of the
component variances
10Introduction (contd)
- For an n-security portfolio, the portfolio
variance is
11Two-Security Case
- For a two-security portfolio containing Stock A
and Stock B, the variance is
12Two Security Case (contd)
- Example
- Assume the following statistics for Stock A and
Stock B
13Two Security Case (contd)
- Example (contd)
- What is the expected return and variance of this
two-security portfolio?
14Two Security Case (contd)
- Example (contd)
- Solution The expected return of this
two-security portfolio is
15Two Security Case (contd)
- Example (contd)
- Solution (contd) The variance of this
two-security portfolio is
16Minimum Variance Portfolio
- The minimum variance portfolio is the particular
combination of securities that will result in the
least possible variance - Solving for the minimum variance portfolio
requires basic calculus
17Minimum Variance Portfolio (contd)
- For a two-security minimum variance portfolio,
the proportions invested in stocks A and B are
18Minimum Variance Portfolio (contd)
- Example (contd)
- Assume the same statistics for Stocks A and B as
in the previous example. What are the weights of
the minimum variance portfolio in this case?
19Minimum Variance Portfolio (contd)
- Example (contd)
- Solution The weights of the minimum variance
portfolios in this case are
20Minimum Variance Portfolio (contd)
Weight A
Portfolio Variance
21Correlation and Risk Reduction
- Portfolio risk decreases as the correlation
coefficient in the returns of two securities
decreases - Risk reduction is greatest when the securities
are perfectly negatively correlated - If the securities are perfectly positively
correlated, there is no risk reduction
22The n-Security Case
- For an n-security portfolio, the variance is
23The n-Security Case (contd)
- The equation includes the correlation coefficient
(or covariance) between all pairs of securities
in the portfolio
24The n-Security Case (contd)
- A covariance matrix is a tabular presentation of
the pairwise combinations of all portfolio
components - The required number of covariances to compute a
portfolio variance is (n2 n)/2 - Any portfolio construction technique using the
full covariance matrix is called a Markowitz model
25Single-Index Model
- Computational advantages
- Portfolio statistics with the single-index model
26Computational Advantages
- The single-index model compares all securities to
a single benchmark - An alternative to comparing a security to each of
the others - By observing how two independent securities
behave relative to a third value, we learn
something about how the securities are likely to
behave relative to each other
27Computational Advantages (contd)
- A single index drastically reduces the number of
computations needed to determine portfolio
variance - A securitys beta is an example
28Portfolio Statistics With the Single-Index Model
- Beta of a portfolio
- Variance of a portfolio
29Portfolio Statistics With the Single-Index Model
(contd)
- Variance of a portfolio component
- Covariance of two portfolio components
30Multi-Index Model
- A multi-index model considers independent
variables other than the performance of an
overall market index - Of particular interest are industry effects
- Factors associated with a particular line of
business - E.g., the performance of grocery stores vs. steel
companies in a recession
31Multi-Index Model (contd)
- The general form of a multi-index model