Intriguing properties of neural networks
New York University · Université de Montréal · +1 more institution
Abstract
Deep neural networks are highly expressive models that have recently achieved state of the art performance on speech and visual recognition tasks. While their expressiveness is the reason they succeed, it also causes them to learn uninterpretable solutions that could have counter-intuitive properties. In this paper we report two such properties. First, we find that there is no distinction between individual high level units and random linear combinations of high level units, according to various methods of unit analysis. It suggests that it is the space, rather than the individual units, that contains of the semantic information in the high layers of neural networks. Second, we find that deep neural networks…
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7Topics & keywords
- Computer science
- Artificial neural network
- Artifact (error)
- Perturbation (astronomy)
- Artificial intelligence
- Deep neural networks
- Machine learning
- Quality Education