Title: Economic Theory of Choice Certainty
1V. Simplifying the Portfolio Process
2 Simplifying the Portfolio Process  Estimating
correlations Single Index Models Multiple Index
Models Average Models  Finding Efficient
Portfolios
31956 Markowitz not implemented Â
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5or
return on the market what expect stock i
to return if Rm 0 sensitivity of stock i
to return on the market  random
element of return
6Sharpe Single Index Models  Basic Equation
By Construction
i 1,2,N
By Definition
i 1,2,N
By Assumption
i 1,2,N
7Expected Value
8Expected Variance Stocks own variance
9Covariance Between Stock
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11 a b c  a Stocks own variances
due to market  b Covariance risk  c Independent
component of stocks own variance
12Â
Â
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14Alternative way of getting inputs
Input
Alternative Input
15Re-examine Risk
16Non Diversifiable Diversifiable Market
Risk Residual Risk
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22Measuring Tendency of Beta to Regress to 1
1. Blume
2. Vasicek (Bayes)
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24Vasicek
25How Well Do They Forecast Future Betas
1.      Vasicek 2.           Blume 3.
Unadjusted 4. All Betas 1.0
26How Well Do They Forecast Future Correlation
Offsetting Influences
1.       Plain Vanilla Beta - a) understates
for assumes only reason stocks move together is
due to market
Blume - b) overstates - product of
shrunk numbers is larger (.8) (1.2) .96 (.9)
(1.1) .99 c) over or understates because of
trend
2.
Vasicek no c d) understates for larger Betas
have larger standard errors therefore,
moves larger betas more toward 1 than it moves
smaller betas toward 1.
3.
27Which of these biases are more important -
empirical matter - ranking when adjust for mean
1.           Vasicek 2.          Â
Blume 3.           Plain Vanilla
Beta 4.           Beta 1 5.          Â
Historical
28Can we do better - Round 1- Fundamental Betas
Why look at Fundamental Variables
1.         Betas are risk measures - they should
be related to fundamental variables 2.         Â
Betas are typically based on 60 months of data
what happens is something changes 10 months
after.
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30Barra
31Forecast Fundamental
Can we do better - Round 2 - Multi Index Models
Assume E
Indexes uncorrelated
Mathematically we can always take a set of
correlated indexes and convert them to a set of
uncorrelated indexes (Appendix A)
Then if E
32Average Correlation Models  If the single index
model works better than the historic correlation
matrix will other types of smoothing work
better. Â Overall mean outperformed Single Index
Models. Differences were statistically
significant and economically significant 2 to 5
percent per year.
Industry and pseudo industry mean models
performed almost as well. Â International
evidence.