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Probabilistic rather than Deterministic
If the model is based on fixed calculations we will have the same results every time(i.e. taking average value of each pixel), thus that's not generative. It is inevitable to use random element influencing each samples that are produced by our model. (quick note this comparison can be similar to linear vs non-linear activation functions in deep learning)
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Probabilistic rather than Deterministic
Discriminative Modeling
Why Generative Modeling ?
Quick Recap For Some Probability Concepts
Representational Learning
Generative Modeling Architectures
David Foster's Generative Deep Learning
Deep Belief Networks (DBNs)
Evaluating Generative Models
Generative Adversarial Networks
Convolutional Generative Networks
Generative Stochastic Networks (GSNs)
Generative Model Example
How to generate samples from not complicated distributions using generator networks?
Generate samples from complicated distributions
Emitting the parameters of a conditional distribution versus directly emitting samples
Why is Generative modeling more difficult than classiļ¬cation or regression
Variations of generative models
Generative models