Suppose we are trying to estimate the quantity $\theta$ and we have that the estimator $\hat\theta_n$. Suppose it is efficient, i.e. is variance is the smallest among certain class of other possible estimators of $\theta$, say that this class is a class of unbiased estimators.
Efficient estimators are naturally desired, since they are the "best" in some sense. But what do we lose when we use estimator which is not efficient? Suppose we have two estimators which are asymptotically normal, then we can say that the confidence interval of the efficient estimator is narrower than the one of non-efficient one. But surely there is a better explanation than such hand-waving? Is there some quantification of what is lost?
My question was motivated by this quote by Ch. Sims found here:
Frequentist inference could be approached in the same way: Define your model, derive fully efficient estimators, pay no attention to anything else
Note that I would not like to ignite another frequentist vs Bayesian war, I just feel that there might be some deep result I am not familiar with.