Generative models

A generative model aims to generate all the values of a phenomenon, both those that can be observed (input) and those that can be calculated from the ones observed (target). We try to understand how such a model can succeed in this goal by proposing a first distinction between generative and discriminative models.

Often, in machine learning, we need to predict the value of a target vector y given the value of an input x vector. From a probabilistic perspective, the goal is to find the conditional probability distribution p(y|x).

The conditional probability of an event y with respect to an event x is the probability that y occurs, knowing that x is verified. This probability, indicated by p(y|x), expresses a correction of ...

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