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Student-t Variational Autoencoder for Robust Multivariate Density Estimation
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- Takahashi Hiroshi
- NTT Software Innovation Center Kyoto University
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- Iwata Tomoharu
- NTT Communication Science Laboratories
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- Yamanaka Yuki
- NTT Secure Platform Laboratories
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- Yamada Masanori
- NTT Secure Platform Laboratories
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- Yagi Satoshi
- NTT Software Innovation Center
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- Kashima Hisashi
- Kyoto University
Bibliographic Information
- Other Title
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- Student-t VAEによるロバスト確率密度推定
Description
<p>We propose the Student-t variational autoencoder (VAE), which is a robust multivariate density estimatorbased on the VAE. The VAE is a powerful deep generative model, and used for multivariate density estimation. Withthe original VAE, the distribution of observed continuous variables is assumed to be a Gaussian, where its mean andvariance are modeled by deep neural networks taking latent variables as their inputs. This distribution is called thedecoder. However, the training of VAE often becomes unstable. One reason is that the decoder of VAE is sensitiveto the error between the data point and its estimated mean when its estimated variance is almost zero. To solve thisinstability problem, our Student-t VAE uses a Student-t distribution as the decoder. This distribution is a heavytaileddistribution, of which the probability in the tail region is higher than that of a light-tailed distribution such as aGaussian. Therefore, the Student-t decoder is robust to the error between the data point and its estimated mean, whichmakes the training of the Student-t VAE stable. Numerical experiments with various datasets show that training ofthe Student-t VAE is robust, and the Student-t VAE achieves high density estimation performance.</p>
Journal
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- Transactions of the Japanese Society for Artificial Intelligence
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Transactions of the Japanese Society for Artificial Intelligence 36 (3), A-KA4_1-9, 2021-05-01
The Japanese Society for Artificial Intelligence
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Details 詳細情報について
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- CRID
- 1390287907270804352
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- NII Article ID
- 130008033278
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- ISSN
- 13468030
- 13460714
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- Text Lang
- ja
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- Data Source
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- JaLC
- Crossref
- CiNii Articles
- OpenAIRE
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- Abstract License Flag
- Disallowed