Road to Flow Matching
· 5 min read
Introduction
Generative models aim to transform a simple base distribution, such as a Gaussian, into a complex target data distribution. The core idea is to construct a generator that maps samples from the base distribution into data space. To compute likelihoods, this generator must be invertible. If a generator transforms into , then must exist, and the density is computed using the change of variables:


