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Domingues et al., 2018 - Google Patents

Deep Gaussian Process autoencoders for novelty detection

Domingues et al., 2018

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Document ID
15495192415087678286
Author
Domingues R
Michiardi P
Zouaoui J
Filippone M
Publication year
Publication venue
Machine Learning

External Links

Snippet

Novelty detection is one of the classic problems in machine learning that has applications across several domains. This paper proposes a novel autoencoder based on Deep Gaussian Processes for novelty detection tasks. Learning the proposed model is made …
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