How can I show that a random walk ($y$ follows a random walk) is not covariance stationary? I tried to work on the formula below (with no results) Could you give me just a hint on how to proceed please?
$$Cov(y_{t+h},y_t)=E(y_{t+h}\times y_t)-E(y_t)E(y_{t+h})$$
Is this approach right?
Important: $\epsilon_t$, the shock, is an iid sequence with mean $0$ and variance $\sigma^2_\epsilon$.
If $y$ follows a RW we have $$y_t=y_{t-1}+\epsilon_t$$
then,
$$Var(y_t)=Var(y_{t-1}+\epsilon_t)=Var(y_{t-1})+\sigma_\epsilon+2Cov(\epsilon_t,y_{t-1})$$ Now I see that the variance of $y_t$ depends on the variance of $y_{t-1}$. This should suggest me that we lack covariance stationarity.
self-study
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