Title: Adaptive Expectations
1- Adaptive Expectations
-
- Partial Adjustment Models
- Presented prepared
- by
- Marta Stepien and Cinnie Tijus
2Outline of the presentation
- What are Adaptive Expectations and Partial
Adjustments? - How are the models built?
- Where are they used?
- How can we use AE and PAM?
3What are adaptive expectations and partial
adjustments?
- In Adaptive Expectations Model
- Expected level of Yt in the future (not
observable) based on current expectations or on
what happened in the past - In Partial Adjustment Model
- Desirable or optimal level of Yt which is
unobservable. Agents cannot adjust fully to
changing conditions -
4How are the models built? Introduction (1)
- Suppose the effect of a variable X on the
dependent variable Y is spread out over several
time periods we get a distributed lag model
(finite or infinite) -
- Yt a0 ?0Xt ?1 Xt-1 ?2Xt-2 ?3Xt-3
... ut - we have to constraint the coefficients to follow
the pattern for the geometric lag we assume that
the coefficients decline exponentially (Koyck
lag) - ?i ?0 ?i
- so
- Yt a0 ?0( Xt ?Xt-1 ?2Xt-2 ... ) ut
5How are the models built?Introduction (2)
- We use Koyck transformation
- Yt a0 ?0( Xt ?Xt-1 ?2Xt-2 ... ) ut
- Yt-1 a0 ?0( Xt-1 ?Xt-2 ?2Xt-3 ... )
ut-1 - ?Yt-1 ?a0 ?0(? Xt-1?2Xt-2 ?3Xt-3 ... )
? ut-1 - Yt - ?Yt-1 (1-?)a0 ?0 Xt ut - ? ut-1
- The estimated equation becomes
- Yt (1-?)a0 ?0 Xt ?Yt-1 ut - ? ut-1
-
- ?0 vt
6How are the models built?Adaptive expectations
(1)
- Suppose that expectations of future income is
formed as follows - Xet1 - Xet ? (Xt - Xet) 0 lt ? lt 1
- Xet1 ? Xt (1- ?) Xet
- Substitute in for Xet the same equation
- Xet1 ? Xt (1- ?) ? Xt-1 (1- ?) Xe t-1
- Repeat this substitution to get
- Xet1 ? Xt (1- ?) ? Xt-1 (1- ?)2 ? X t-1
... - Thus adaptive expectations assume people weight
all past values with the weights falling off
exponentially.
7How are the models built?Adaptive expectations
(2)
- Suppose that Y depends on next periods expected
X - Yt ?0 ?1 Xet1 ut
(1) - Xet1 ? Xt (1 -?) Xet
(2) - or ? Xt Xet1 - (1- ?) Xet
(2a) - Use Koyck transformation for equation (1)
- (1-?)Yt-1 (1-?)?0 ?1(1- ?) Xet (1- ?) ut-1
(3) - Yt - (1-?)Yt-1 ?0 ?1Xet1 ut -
- - (1-?)?0 ?1(1- ?) Xet (1- ?) ut-1
- Yt -(1-?)Yt-1 ??0 ?1 (Xet1 - (1- ?) Xet)
vt
8How are the models built?Adaptive expectations
(3)
- After substitution
- Yt -(1-?)Yt-1 ??0 ?1?Xt vt
- Yt ??0 ?1 ? Xt (1-?)Yt-1 vt
- Estimate
- Yt ?0 ?1 Xt ?2 Yt-1 vt
- Where
-
- ? 1 - ?2
?1 ?1 /(1 - ?2 )
9How are the models built?Partial Adjustment (1)
- We get this equation to estimate
- Yt ? ? Xt ut
- Where Y are the desired inventories,
- X are the sales
- inventories partially adjust , 0 lt ? lt 1,
towards optimal or desired level, Yt - Yt - Yt-1 ? (Yt - Yt-1)
10How are the models built?Partial Adjustment (2)
- So we do the following transformation
- Yt - Yt-1 ? (Yt - Yt-1)
- ? (Yt ? ? Xt ut Yt-1)
- ? ? ? ? Xt - ? Yt-1 ? ut t
- We obtain
- Yt ?? (1 - ??Yt-1 ??Xt ? ?t
- Then we have the estimated equation
- Yt ?0 ?1Yt-1 ?2Xt ?t
- And we can use ordinary least squares regression
to get -
- g(1-b1) ab0/(1-b1) bb2/(1-b1)
11How are the models built?Partial Adjustment (3)
- Long-run short-run effects in PAM
-
- Suppose our model is
- Yt ?0 ?1 Xt et
- Yt - Yt-1 ? (Yt - Yt-1)
- We estimate
- Yt ? ?0 (1- ?) Yt-1 ? ?1 Xt ? et
- An increase in X of 1 unit increases Y in the ST
by ? ?1 units - In the LR, YtYt-1, so we get
- ?Yt ? ?0 ? ?1 Xt ? et
- the LR effect of X on Y is ?1/ ?
12Problems in these models (1)
- If the error term is serially correlated, then
the error term is correlated with lagged
dependent variable. - Yt ?0 ?1 Xt ?2 Yt-1 ?t
- And ? t ? ? t-1 vt
- Yt-1 depends in part on ?t-1 and hence Yt-1 and
?t are correlated. - Tests
- -gt Durbins h (for first order correlation)
-
- h(1-0.5d)(n/(1-n(var(? ))0.5 -gtStandard Normal
distribution - Where dDW, n is the sample size and ?, the
estimated coefficient on Yt-1. - H0 No serial correlation. Reject of H0 if
hgt1.96
13Problems in these models (2)
- -gt Lagrange Multiplier Test
- a) Estimate the model by OLS and get the
residual et - b) Estimate the following equation by OLS
- et a0 a1Xt a2 Yt-1 a3 et-1 ut
- c) Test the hypothesis that a30 using the
following statistic LMnR2 with n, the sample
size. - Instrumental Variable Estimation
- Method replace the lagged dependent variable
with an instrument that is correlated with Yt-1
but not with error
14Where AE PA models are used?Literature Review
(1)
- On the Long-Run and Short-Run Demand for Money,
Chow G. C.,1966 Maximum Likelihood Estimates of
a Partial Adjustment-Adaptive Expectations Model
of the Demand for Money, D. L. Thornton, The
Review of Economics and Statistics, Vol.64, 1982. - to estimate the short-run demand for money
- -gtThe desirable stock of money depends on
anticipated incomes and rates of return for the
different past periods - -gtThe actual stock of money will adjust to the
desired level via the standard PAM - -gtThe expectational variables will adjust via the
AEM
15Where AE PA models are used?Literature Review
(2)
- How the Bundesbank Conducts Monetary Policy, R.
Clarida, M. Gertler, NBER, Working Paper No.
5581, 1996 Monetary Policy and the Term
Structure of Interest Rate, B. McCallum, NBER,
Working Paper No. 4938. - PAM is used for capturing the type of smoothing
of interest-rate - It is taken as given that the target interest
rate is set and it is changed in pursuit of
macroeconomic objectives - The target interest rate tends to adjust slowly
and in relatively smooth pattern - Estimating the European Union Consumption
Function under the Permanent Income Hypothesis,
Athanasios Manitsaris, International Research
Journal of Finance and Economics, 2006
16How can we use AE and PAM?(1)
- The specifications adopted in the paper refer to
the combined partial adjustment and adaptive
expectation model - The permanent income hypothesis
- Provided by Milton Friedman in 1957
- People in trying to maintain a rather constant
standard of living base their consumption on what
they consider their normal (permanent) income,
althought their actual income may very over time
changes in actual income are assumed to
be temporary and thus have little effect on
consumption - Ctp a ßYtp
-
- PROBLEM permanent income and consumption
expenditure are unobservable they need to be
transformed into observable variables (we use AE
and PAM)
17How can we use AE and PAM?(2)
- Ct Ct-1 ?(Ctp Ct-1) et , 0lt ? lt 1
- where ? is the partial adjustment coefficient
- Ytp Yt-1p d(Yt Yt-1p) , 0lt d lt 1
- where d is the adaptive expectations
coefficient - Estimated equation (in logs)
- Ct ad ßdYt (1 d) Ct-1 error term
- where
- ßd is the elasticity of consumption with respect
to actual income - ß is the elasticity of consumption with respect
to permanent income
18How can we use AE and PAM?(3)
In the paper In our model
EU15 EU25
annual data quarterly data
1980 - 2005 1995 - 2005
GDP at constant prices GDP at constant prices
Private consumption expenditure Private consumption expenditure
from the EC from the Eurostat
19How can we use AE and PAM?(4)Results
Country ßd d ß
Belgium 0.415 0.508 0.817
Germany 0.356 0.427 0.834
Greece 0.582 0.737 0.790
Spain 0.458 0.445 1.029
France 0.282 0.266 1.060
Ireland 0.2 0.255 0.784
Italy -0.026 0.006 -4.333
Netherlands 0.191 0.225 0.849
Austria 0.215 0.283 0.760
Finland 0.03 0.044 0.682
Denmark 0.061 0.086 0.709
Sweden 0.415 0.469 0.885
UK 0.612 0.49 1.249
EU15 0.451 0.446 1.011
Country ßd d ß
Belgium 0.421 0.493 0.854
Germany 0.503 0.547 0.920
Greece 0.194 0.198 0.980
Spain 0.63 0.724 0.870
France 0.543 0.586 0.927
Ireland 0.461 0.675 0.683
Italy 0.685 0.719 0.953
Netherlands 0.676 0.735 0.920
Austria 0.657 0.721 0.911
Finland 0.396 0.402 0.985
Denmark 0.513 0.652 0.787
Sweden 0.493 0.513 0.961
UK 0.582 0.601 0.968
EU15 0.531 0.609 0.872
20How can we use AE and PAM?(5)Results
Czech Rep. 0.216 0.208 1.038
Estonia 0.468 0.442 1.059
Cyprus 0.625 0.576 1.085
Lithuania 0.173 0.13 1.331
Poland 0.043 0.077 0.558
Slovenia 0.619 0.853 0.726
Slovakia 0.131 0.154 0.851
EU25 0.407 0.403 1.010
21Sources
- On the Long-Run and Short-Run Demand for Money,
Chow G. C.,1966 - Maximum Likelihood Estimates of a Partial
Adjustment-Adaptive Expectations Model of the
Demand for Money, D. L. Thornton, The Review of
Economics and Statistics, Vol.64, 1982. - How the Bundesbank Conducts Monetary Policy, R.
Clarida, M. Gertler, NBER, Working Paper No.
5581, 1996 - Monetary Policy and the Term Structure of
Interest Rate, B. McCallum, NBER, Working Paper
No. 4938, 1994 - Estimating the European Union Consumption
Function under the Permanent Income Hypothesis,
Athanasios Manitsaris, International Research
Journal of Finance and Economics, 2006 - The Estimation of Partial Adjustment Models with
Rational Expectations, Kennan J., 1979.