Title: Chapter 5 The Mathematics of Diversification
1Chapter 5The Mathematics of Diversification
2Introduction
- The reason for portfolio theory mathematics
- To show why diversification is a good idea
- To show why diversification makes sense logically
3Introduction (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
4Introduction
- 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
5Return
- The expected return of a portfolio is a weighted
average of the expected returns of the
components
6Variance
- Introduction
- Two-security case
- Minimum variance portfolio
- Correlation and risk reduction
- The n-security case
7Introduction
- 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
8Introduction (contd)
- For an n-security portfolio, the portfolio
variance is
9Two-Security Case
- For a two-security portfolio containing Stock A
and Stock B, the variance is
10Two Security Case (contd)
- Example
- Assume the following statistics for Stock A and
Stock B
11Two Security Case (contd)
- Example (contd)
- Solution The expected return of this
two-security portfolio is
12Two Security Case (contd)
- Example (contd)
- Solution (contd) The variance of this
two-security portfolio is
13Minimum 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
14Minimum Variance Portfolio (contd)
- For a two-security minimum variance portfolio,
the proportions invested in stocks A and B are
15Minimum Variance Portfolio (contd)
- Example (contd)
- Solution The weights of the minimum variance
portfolios in the previous case are
16Minimum Variance Portfolio (contd)
Weight A
Portfolio Variance
17Correlation 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
18The n-Security Case
- For an n-security portfolio, the variance is
19The 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
20Example of Variance-Covariance Matrix Computation
in Excel
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23Portfolio Mathematics (Matrix Form)
- Define w as the (vertical) vector of weights on
the different assets. - Define the (vertical) vector of expected
returns - Let V be their variance-covariance matrix
- The variance of the portfolio is thus
-
- Portfolio optimization consists of minimizing
this variance subject to the constraint of
achieving a given expected return.
24Portfolio Variance in the 2-asset case
25Covariance Between Two Portfolios (Matrix Form)
- Define w1 as the (vertical) vector of weights on
the different assets in portfolio P1. - Define w2 as the (vertical) vector of weights on
the different assets in portfolio P2. - Define the (vertical) vector of expected
returns - Let V be their variance-covariance matrix
- The covariance between the two portfolios is
-
-
26The Optimization Problem
- Minimize
- Subject to
- where E(Rp) is the desired (target) expected
return on the portfolio and is a vector of
ones and the vector is defined as
27Lagrangian Method
28Taking Derivatives
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30- The last equation solves the mean-variance
portfolio problem. The equation gives us the
optimal weights achieving the lowest portfolio
variance given a desired expected portfolio
return. - Finally, plugging the optimal portfolio weights
back into the variance - gives us the efficient portfolio frontier
31Global Minimum Variance Portfolio
- In a similar fashion, we can solve for the global
minimum variance portfolio - The global minimum variance portfolio is the
efficient frontier portfolio that displays the
absolute minimum variance.
32Another Way to Derive the Mean-Variance Efficient
Portfolio Frontier
- Make use of the following property if two
portfolios lie on the efficient frontier, any
linear combination of these portfolios will also
lie on the frontier. Therefore, just find two
mean-variance efficient portfolios, and
compute/plot the mean and standard deviation of
various linear combinations of these portfolios.
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35Some Excel Tips
- To give a name to an array (i.e., to name a
matrix or a vector) - Highlight the array (the numbers defining the
matrix) - Click on Insert, then Name, and finally
Define and type in the desired name.
36Excel Tips (Contd)
- To compute the inverse of a matrix previously
named (as an example) V - Type the following formula minverse(V) and
click ENTER. - Re-select the cell where you just entered the
formula, and highlight a larger area/array of the
size that you predict the inverse matrix will
take. - Press F2, then CTRL SHIFT ENTER
37Excel Tips (end)
- To multiply two matrices named V and W
- Type the following formula mmult(V,W) and
click ENTER. - Re-select the cell where you just entered the
formula, and highlight a larger area/array of the
size that you predict the product matrix will
take. - Press F2, then CTRL SHIFT ENTER
38Single-Index Model Computational 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
39Computational Advantages (contd)
- A single index drastically reduces the number of
computations needed to determine portfolio
variance - A securitys beta is an example
40Portfolio Statistics With the Single-Index Model
- Beta of a portfolio
- Variance of a portfolio
41Proof
42Portfolio Statistics With the Single-Index Model
(contd)
- Variance of a portfolio component
- Covariance of two portfolio components
43Proof
44Multi-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
45Multi-Index Model (contd)
- The general form of a multi-index model