This video, a continuation of [boPIEN], will discuss the meaning of the ExpectedImprovement (EI) acquisition function in Bayiesan optimization. Basically,
Expected value (Gaussian mean) should be used if getting a bad sample penalises
some “utility” in my particular application, and expected improvement should be
used if bad samples do not incur any cost as we have our ‘best’ sample in
our historical record to provide as our final solution to the optimization
problem.
A final discussion on the comparison with probability of improvement and
confidence bound acquisition functions is also provided.
All discussions are supported via an example that is coincident with that in
the above-mentioned video this is a continuation thereof.