8.4 Gaussian processes
Now we are ready to understand what Gaussian processes (GPs) are and how they are used in practice. A somewhat formal definition of GPs, taken from Wikipedia, is as follows:
”The collection of random variables indexed by time or space, such that every finite collection of those random variables has a MultivariateNormal distribution, i.e. every finite linear combination of them is normally distributed.”
This is probably not a very useful definition, at least not at this stage of your learning path. The trick to understanding Gaussian processes is to realize that the concept of GP is a mental (and mathematical) scaffold, since, in practice, we do not need to directly work with this infinite mathematical object. Instead, we only evaluate the GPs at the points where we have data. By doing this, we collapse the infinite-dimensional GP into a finite multivariate Gaussian distribution with as many dimensions as data points. Mathematically, this collapse...