AR(1) Model - Jorion CD Question

notjusttp

New Member
10. Suppose X follows an AR(1) model: X(t) = 0.1 + 0.8*X(t-1) + e(t), where, E(e(t)) = 0. What is the long term mean of X?

B is correct. For a AR(1) model of the form: X(t) = alpha + beta X(t-1) + e(t), where E[e(t)] = 0, the long term mean of X is alpha / (1-beta).
For this problem, the long term mean of X is 0.5000 = 0.1 / (1.0 - 0.8).


My Doubt.

1) What is this AR(1) model?
2) It is covered in which topic?

Thanks and rgds
Amit
 

David Harper CFA FRM

David Harper CFA FRM
Subscriber
Hi Amit,

It refers to Linda Allen p70: "Next period’s expectations are a weighted sum of today’s value, Xt, and the long run mean a/(1 - b). Here b is the key parameter, often termed “the speed of reversion” parameter. If b = 1 then the process is a random walk – a nonstationary process with an undefined (infinite) long run mean, and, therefore, next period’s expected value is equal to today’s value. If b < 1 then the process is mean reverting."

However, current testability is low/non existent.

Hull is now more relevant, so more relevant would be to find the long-run mean variance of a GARCH (1,1) process; i.e., LR variance = omega/(1-alpha-beta)

David
 
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