Why and when can deep-but not shallow-networks avoid the curse of dimensionality: A review

McGovern Institute for Brain Research · Massachusetts Institute of Technology · +2 more institutions

Indexed incrossref

Abstract

The paper reviews and extends an emerging body of theoretical results on deep learning including the conditions under which it can be exponentially better than shallow learning. A class of deep convolutional networks represent an important special case of these conditions, though weight sharing is not the main reason for their exponential advantage. Implications of a few key theorems are discussed, together with new results, open problems and conjectures.

No related works found for this paper.