Springer Texts in Business and Economics
TheAR(1) model. From (5.26), by continuous substitution just like (5.29), one could stop at ut_s to get
ut = Psut_s + ps 1£t_s+1 + ps 2©t_s+2 + .. + pet-1 + ©t for t > s.
Note that the power of p and the subscript of e always sum to t. Multiplying both sides by ut-s and taking expected value, one gets
E (utut_s) = psE (uj-s) + ps-1E (©t_s+1ut_s) + .. + pE (et_1ut_s) + E (©tut_s)
using (5.29), ut_s is a function of et_s, past values of et_s and uo. Since uo is independent of the e’s, and the e’s themselves are not serially correlated, then ut_s is independent of et, et_i,..., et_s+i. Hence, all the terms on the right hand side of E(utut_s) except the first are zero. Therefore, cov(ut, ut_s) = E(utut_s) = psau2 for t > s.
5.7 Relative Efficiency of OLS Under the AR(1) Model.
T T T T
a. "ols = J2 xtyt xt2 = " + J2 xtut xt2 with E ("ols) = " since xt
t=i t=i t=i t=i
and ut are independent. Also,
2 / T T 2 T / T 2
var ("ols) = E ("ols _ " = E xtut/£xt2 = E xt2E К xt2
t=i t=i t=i t=i
C E і EE xjxsutu, 3
using the fact that E(utus) = pjt_sj 0,2 as shown in problem 6.
Alternatively, one can use matrix algebra, see Chap. 9. For the AR(1) model, Й = E(uu') is given by Eq. (9.9) of Chap. 9. So
i p p2 ... pT 1 |
xi |
||
x'^x = (xi, ...,xT) |
p i p... pT_2 |
x2 |
|
pT_l pT_2 pT_3 ... i |
xT |
||
= (x2 + px1x2 + |
.. + pt_1xtx^ + (pxix2 + x2 + |
+ pT |
+ (p2x1x3 + px2x3 + .. + pT 3xtx^ + .. |
+ (pT_3x1xT + pT_2 x2xt + .. + xT)
collecting terms, we get
|
|
|
|
|
|
|
T—2 T
well by xtXt+2 x2, etc. Hence
t=1 t=1
r( " pw)
var("ols 0 + p2 — 2pk) 0 + 2pk + 2p2X2 + ..)
(1 — p2)(1 — pk)
(1 C p2 — 2pk)(1 C pk)
where the last equality uses the fact that (1 C pk)/(1 — pk) = (1 C 2pk C 2p2k2 C..). For k = 0, or p = k, this asy eff("ols) is equal to (1 — p2)/(1 C p2).
c. The asy eff("ols) derived in part (b) is tabulated below for various values of p and k. A similar table is given in Johnston (1984, p. 312). For p > 0, loss in efficiency is big as p increases. For a fixed k, this asymptotic efficiency drops from the 90 to a 10% range as p increases from 0.2 to 0.9. Variation in k has minor effects when p > 0. For p < 0, the efficiency loss is still big as the absolute value of p increases, for a fixed k. However, now variation in k has a much stronger effect. For a fixed negative p, the loss in efficiency decreases with k. In fact, for k = 0.9, the loss in efficiency drops from 99% to 53 as p goes from —0.2 to —0.9. This is in contrast to say k = 0.2 where the loss in efficiency drops from 93 to 13% as p goes from —0.2 to —0.9.
(Asymptotic Relative Efficiency of pols) x 100
A |
-0.9 |
-0.8 |
-0.7 |
-0.6 |
-0.5 |
-0.4 |
-0.3 |
-0.2 |
-0.1 |
0 |
0.1 |
0.2 |
0.3 |
0.4 |
0.5 |
0.6 |
0.7 |
0.8 |
0.9 |
0 |
10.5 |
22.0 |
34.2 |
47.1 |
60.0 |
72.4 |
83.5 |
92.3 |
98.0 |
100 |
98.0 |
92.3 |
83.5 |
72.4 |
60.0 |
47.1 |
34.2 |
22.0 |
10.5 |
0.1 |
11.4 |
23.5 |
36.0 |
48.8 |
61.4 |
73.4 |
84.0 |
92.5 |
98.1 |
100 |
98.0 |
92.2 |
83.2 |
71.8 |
59.0 |
45.8 |
32.8 |
20.7 |
9.7 |
0.2 |
12.6 |
25.4 |
38.2 |
50.9 |
63.2 |
74.7 |
84.8 |
92.9 |
98.1 |
100 |
98.1 |
92.3 |
83.2 |
71.6 |
58.4 |
44.9 |
31.8 |
19.8 |
9.1 |
0.3 |
14.1 |
27.7 |
40.9 |
53.5 |
65.5 |
76.4 |
85.8 |
93.3 |
98.2 |
100 |
98.1 |
92.5 |
83.5 |
71.7 |
58.4 |
44.5 |
31.1 |
19.0 |
8.6 |
0.4 |
16.0 |
30.7 |
44.2 |
56.8 |
68.2 |
78.4 |
87.1 |
93.9 |
98.4 |
100 |
98.3 |
92.9 |
84.1 |
72.4 |
58.8 |
44.6 |
30.8 |
18.5 |
8.2 |
0.5 |
18.5 |
34.4 |
48.4 |
60.6 |
71.4 |
80.8 |
88.6 |
94.6 |
98.6 |
100 |
98.4 |
93.5 |
85.1 |
73.7 |
60.0 |
45.3 |
31.1 |
18.4 |
7.9 |
0.6 |
22.0 |
39.4 |
53.6 |
65.4 |
75.3 |
83.6 |
90.3 |
95.5 |
98.8 |
100 |
98.6 |
94.3 |
86.6 |
75.7 |
62.1 |
47.1 |
32.0 |
18.6 |
7.8 |
0.7 |
27.3 |
46.2 |
60.3 |
71.2 |
79.9 |
86.8 |
92.3 |
96.4 |
99.0 |
100 |
98.9 |
95.3 |
88.7 |
78.8 |
65.7 |
50.3 |
34.2 |
19.5 |
7.8 |
0.8 |
35.9 |
56.2 |
69.3 |
78.5 |
85.4 |
90.6 |
94.6 |
97.5 |
99.3 |
100 |
99.2 |
96.6 |
91.4 |
83.2 |
71.4 |
56.2 |
38.9 |
22.0 |
8.4 |
0.9 |
52.8 |
71.8 |
81.7 |
87.8 |
92.0 |
94.9 |
97.1 |
98.7 |
99.6 |
100 |
99.6 |
98.1 |
95.1 |
89.8 |
81.3 |
68.3 |
50.3 |
29.3 |
10.5 |
Asymptotic Relative Efficiency
100
80
60
40
20
0
-0.9 -0.8 -0.7 -0.6 -0.5 -0.4 -0.3 -0.2 -0.1 0 0.1 0.2 0.3 0.4 0.5 0.6 0.7 0.8 0.9
d. Ignoring autocorrelation, s2 x2 estimates a2 x^, but
t=i t=i
asy. var (Pols)
so the asy. bias in estimating the var("ols) is
and asy. proportionate bias = —2pX/(i + pX).
Percentage Bias in estimating var((°ols)
P
A |
-0.9 |
-0.8 |
-0.7 |
-0.6 |
-0.5 |
-0.4 |
-0.3 |
-0.2 |
0 |
0.1 |
0.3 |
0.4 |
0.5 |
0.6 |
0.7 |
0.8 |
0.9 |
0 |
0 |
0 |
0 |
0 |
0 |
0 |
0 |
0 |
0 |
0 |
0 |
0 |
0 |
0 |
0 |
0 |
0 |
0.1 |
19.8 |
17.4 |
15.1 |
12.8 |
10.5 |
8.3 |
6.2 |
4.1 |
0 |
-2.0 |
-5.8 |
-7.7 |
-9.5 |
-11.3 |
-13.1 |
-14.8 |
-16.5 |
0.2 |
43.9 |
38.1 |
32.6 |
27.3 |
22.2 |
17.4 |
12.8 |
8.3 |
0 |
-3.9 |
-11.3 |
-14.8 |
-18.2 |
-21.4 |
-24.6 |
-27.6 |
-30.5 |
0.3 |
74.0 |
63.2 |
53.2 |
43.9 |
35.3 |
27.3 |
19.8 |
12.8 |
0 |
-5.8 |
-16.5 |
-21.4 |
-26.1 |
-30.5 |
-34.7 |
-38.7 |
-42.5 |
0.4 |
112.5 |
94.1 |
77.8 |
63.2 |
50.0 |
38.1 |
27.3 |
17.4 |
0 |
-7.7 |
-21.4 |
-27.6 |
-33.3 |
-38.7 |
-43.8 |
-48.5 |
-52.9 |
0.5 |
163.6 |
133.3 |
107.7 |
85.7 |
66.7 |
50.0 |
35.3 |
22.2 |
0 |
-9.5 |
-26.1 |
-33.3 |
-40.0 |
-46.2 |
-51.9 |
-57.1 |
-62.1 |
0.6 |
234.8 |
184.6 |
144.8 |
112.5 |
85.7 |
63.2 |
43.9 |
27.3 |
0 |
-11.3 |
-30.5 |
-38.7 |
-46.2 |
-52.9 |
-59.2 |
-64.9 |
-70.1 |
0.7 |
340.5 |
254.5 |
192.2 |
144.8 |
107.7 |
77.8 |
53.2 |
32.6 |
0 |
-13.1 |
-34.7 |
-43.8 |
-51.9 |
-59.2 |
-65.8 |
-71.8 |
-77.3 |
0.8 |
514.3 |
355.6 |
254.5 |
184.6 |
133.3 |
94.1 |
63.2 |
38.1 |
0 |
-14.8 |
-38.7 |
-48.5 |
-57.1 |
-64.9 |
-71.8 |
-78.0 |
-83.7 |
0.9 |
852.6 |
514.3 |
340.5 |
234.8 |
163.6 |
112.5 |
74.0 |
43.9 |
0 |
-16.5 |
-42.5 |
-52.9 |
-62.1 |
-70.1 |
-77.3 |
-83.7 |
-89.5 |
This is tabulated for various values of p and X. A similar table is given in Johnston (1984, p. 312).
For p and X positive, var ols^ is underestimated by the conventional formula. For p = X = 0.9, this underestimation is almost 90%. For p < 0, the var("ols) is overestimated by the conventional formula. For p = —0.9 and X = 0.9, this overestimation is of magnitude 853%. e. et = yt — yt = (" — "ols)xt + ut
Hence, p e2 = "ols — " p x2 + p u2 — 2 "ols — " p xtut and
t=i t=i t=i t=i
So that E(s2) = E ^ P e2/(T — 1)
If p = 0, then E(s2) = a2. If xt follows an AR(1) model with parameter X, then for large T, E(s2) = au2 (Т - 1-^ /(T - 1).
For T = 101, E(s2) = ctu2(101 - iC-pX /100.
This can be tabulated for various values of p and X. For example, when p = X = 0.9, E(s2) = 0.915 a2.