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
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.
Citation impact
- FWCI
- 49.38
- Percentile
- 100%
- References
- 65
Authors
5- TPTomaso PoggioCorresponding
McGovern Institute for Brain Research, Massachusetts Institute of Technology
- HNH. N. Mhaskar
California Institute of Technology, Claremont Graduate University
- LRLorenzo Rosasco
McGovern Institute for Brain Research, Massachusetts Institute of Technology
- BMBrando Miranda
McGovern Institute for Brain Research, Massachusetts Institute of Technology
- QLQianli Liao
McGovern Institute for Brain Research, Massachusetts Institute of Technology
Topics & keywords
- Curse of dimensionality
- Key (lock)
- Computer science
- Curse
- Artificial intelligence
- Deep learning
- Computation
- Class (philosophy)