Top-Down Regularization of Deep Belief Networks
Goh, Hanlin, Thome, Nicolas, Cord, Matthieu, Lim, Joo-Hwee
–Neural Information Processing Systems
Designing a principled and effective algorithm for learning deep architectures is a challenging problem. The current approach involves two training phases: a fully unsupervised learning followed by a strongly discriminative optimization. We suggest a deep learning strategy that bridges the gap between the two phases, resulting in a three-phase learning procedure. We propose to implement the scheme using a method to regularize deep belief networks with top-down information. The network is constructed from building blocks of restricted Boltzmann machines learned by combining bottom-up and top-down sampled signals.
Neural Information Processing Systems
Feb-14-2020, 17:56:08 GMT
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