November 2018
Intermediate to advanced
322 pages
7h 54m
English
An unsupervised learning model that learns the underlying data distribution of the training set and generates new data that may or may not have variations is commonly known as a generative model. Knowing the true underlying distribution might not always be a possibility, hence the neural network trains on a function that tries to be as close a match as possible to the true distribution.
The most common methods used to train generative models are as follows:
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