Title: Factor Models
1Factor Models
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15- Basic Equations Used to Do Factor Computations
- Estimated Average Return for Stock i
- ri (ri1 ... ri10)/10
- Estimated Variance of Return for Stock i
- var(ri) (ri1 ri)2 ... (ri10 ri)2/9
- Estimated Average Return for Index
- f (f1 ... f10)/10
- Estimated Covariance of Stock i with Index
- cov(ri,f) (ri1 ri)(f1 f) ... (ri10
ri)(f10 f)/9 - Estimated b Term for Stock i
- bi cov(ri,f)/var(f)
- Estimated a Term for Stock i
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25The CAPM as a Factor Model
26 27- Characteristic Line
- This line represents a single-factor model that
has - rMrf as the factor for the variable rirf
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33avg.
15.00
14.34
10.90
15.09
13.83
5.84
var.
90.26
107.23
162.20
68.25
72.12
stdev
9.50
10.35
12.74
8.26
8.49
corel w M
0.81
0.84
0.93
0.70
1
65.09
73.62
100.79
48.99
72.12
cov. w. M
0.90
1.02
1.40
0.68
beta
1.94
0.34
-
6.11
3.82
alpha
e
-
var.
31.52
32.07
21.36
34.98
34- To compute each ?i, divide the covariance with
the market by the variance of the market. -
- To compute each ?i, compute two terms (1) the
difference of the return for the asset and the
risk-free return (2) ?i times the difference of
the return for the market and the risk-free
return. - Then subtract the second term from the first.
-
- To compute the variance of each error, subtract
from the variance of the return the product of ?2
and the variance of the market.
35Data and Statistics
Basic Question
How accurately can we estimate E
r
, Var
r
?
Common Estimation Approaches
Use historical data, e.g.,
monthly return rates for 3 years,
annual return rates for
10 years,
to compute sample average returns, sample
variances
of returns, sample correlations.
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465.01
5.88
3.21
3.81
2.98
3.24
4.66
3.55
4.12
s
47The Ta
ble 8.3 reports monthly returns simulated from
iid
normal random variables with Er 1 and
St.dev. 4.33.
Note
how much the r values vary from year to year
the overall Er estimate is 33 high
the standard deviation estimates vary less from
year
to year
the overall standard deviation estimate is not
bad.
Refer to the histogram of monthly returns, Figure
8.4. "It
is impossible to determine an accurate estimate
of the
true mean from the samples."
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49Estimation of Other Parameters
50Note r is a random variable
Er Er
sample variance of r
2
2
2
2
2
s
s
(r
- r)
... (r
- r)
/(n-1)
Es
.
Þ
1
n
2
How accurate is s
? If also the r
are normally
i
distributed, then
2
4
s
var(s
) 2
/(n-1)
2
2
s
stdev(s
)
2
/
(n-1) which goes to 0 as n increases.
Ö
Ö
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525.01
5.88
3.21
3.81
2.98
3.24
4.66
3.55
4.12
s
53- Blur for Factor Models
- "The blur phenomenon applies to the parameters
of a factor model, but mainly to the
determination of a. In fact the presence of
a-blur can be deduced from the mean-blur
phenomenon, but we omit the details. - The inherently poor accuracy of a estimates is
reflected in the so-called Beta Book, published
by Merrill Lynch (example in Table 8.4) .... the
reported standard deviation for a is typically
larger than the value of a itself. The related
error in estimating ? is somewhat better."
54Tilting Away from Equilibrium
- Mean-variance theory suggests that the efficient
fund of risky assets would be the market
portfolio. - Many investors are not satisfied with this
conclusion and consider that a superior solution
can be computed by solving Markowitz problem
directly. - Historical data may not be enough to solve the
Markowitz problem. - Compromise solution combine CAPM with an
additional information
55- Equilibrium Means
- Rates of return implied by CAPM
- Erie rf ?i (ErM rf)
- ?I can be estimated from data, and ErM can be
estimated using consensus (expert) opinions
56- Information
- CAPM rates of return may differ from true rates
- Eri Erie ei ,
- where ei has zero mean.
- Historical rates of return also differ from true
rates - Eri Erih ei
57- Example. Double use of data (see, Exam. 8.2)
- Average rates of return implied by CAPM and
historical rates are not equal. Both estimates
have errors, but they can be combined to form new
estimates, called tilt.
Stk. 1
Stk. 2
Stk. 3
Stk. 4
Market
Riskless
avg.
15.00
14.34
10.90
15.09
13.83
5.84
var.
90.26
107.23
162.20
68.25
72.12
cov. w. M
65.09
73.62
100.79
48.99
72.12
beta
0.90
1.02
1.40
0.68
CAPM
13.05
14.00
17.01
11.27
tilt
13.82
14.14
14.17
12.57
58- Example. Double use of data (Contd)
- For example, for stock 1 rate of return implied
by CAPM - Er1e rf ?i (ErM rf)
- 5.84.9(13.83-5.84)13.0
5 - To form a new, combined, estimates we calculate
the variance for each estimate (errors in the
CAPM model are ignored except error in ErM ) - sih si / v10 ,
- sie ?i sM / v10
59- Example. Double use of data (Contd)
- Tilts
- Eri Erie/(sie)2 Erih/(sih)2 /
1/(sie)2 1/(sih)2 - Er113.82
60Multiperiod Fallacy
- Both mean-variance (Markowitz) theory and the
CAPM are for single periods. In practice,
however, both ... are applied to situations that
are inherently multiperiod, such as the
construction of portfolios of common stocks that
can be traded at any time. - Suppose the basic period of time is 1 month.
Suppose we formulate the Markowitz model for this
period, and solve it. The CAPM would imply the
weights in W, the solution, are the same as the
market portfolio.
61-
- In particular, suppose there are only 2 stocks
in the entire market. There are 1,000 shares of
each, and each costs 1.00 a share. We have 100
to invest this month. The two stocks are
uncorrelated, with the same mean return and
variance of return. The Markowitz model will
give W (1/2,1/2). This W corresponds to the
market portfolio, which the total value of each
stock is 1,000. We will buy 50 shares of each
stock.
62Next month we can again invest. The first stock
now
sells for 2.00 a share while the second still
sells for
1.00 a share. We sell our shares our total
wealth is
now 150. The statistical properties remain
unchanged,
so the optimal solution to the Markowitz model
will
again be (1/2,1/2). This means we put 75 into
stock 1
and 75 into stock 2. This buys us 75/2 37.5
shares
of stock 1 and 75 shares of stock 2.
But because the statistical properties have
remained
unchanged, the market portfolio still has equal
shares of
each stock. Hence, we have not purchased the
market
portfolio in month 2.
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