In Search of the Real Inductive Bias: On the Role of Implicit Regularization in Deep Learning

Neyshabur, Behnam, Tomioka, Ryota, Srebro, Nathan

arXiv.org Artificial Intelligence 

We present experiments demonstrating that some other form of capacity control, different from network size, plays a central role in learning multi-layer feedforward networks. We argue, partially through analogy to matrix factorization, that this is an inductive bias that can help shed light on deep learning.

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