Abstract
Unsupervised learning algorithms aim to discover the structure hidden in the data, and to learn representations that are more suitable as input to a supervised machine than the raw input. Many unsupervised methods are based on reconstructing the input from the representation, while constraining the representation to have certain desirable properties (e.g. low dimension, sparsity, etc). Others are based on approximating density by stochastically reconstructing the input from the representation. We describe a novel and efficient algorithm to learn sparse representations, and compare it theoretically and experimentally with a similar machine trained probabilistically, namely a Restricted Boltzmann Machine. We…
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3Topics & keywords
Topics
Keywords
- Computer science
- Artificial intelligence
- Boltzmann machine
- Restricted Boltzmann machine
- Representation (politics)
- Pattern recognition (psychology)
- Feature learning
- Unsupervised learning
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