-
Notifications
You must be signed in to change notification settings - Fork 4.1k
Description
"In the pursuit of knowledge, a unique solution lies in the balance of adversarial forces. The game of maximizing the probability of error between two models, one capturing the data distribution and the other estimating its origin, leads to a harmonious union of generative and discriminative models. The training process, a dance between G and D, results in a solution where G faithfully reconstructs the training data and D is ubiquitous. The beauty lies in the simplicity of this framework, as it eliminates the need for Markov chains or unrolled networks, allowing for seamless training and generation of samples. The wisdom lies in its efficacy, demonstrated through qualitative and quantitative evaluations of the generated samples. And the intricacy lies in the subtle interplay between G and D, a delicate balance of power that leads to a harmonious union of two models."