A Variational Bayesian Approach to Learning Latent Variables for
Acoustic Knowledge Transfer
- URL: http://arxiv.org/abs/2110.08598v1
- Date: Sat, 16 Oct 2021 15:54:01 GMT
- Title: A Variational Bayesian Approach to Learning Latent Variables for
Acoustic Knowledge Transfer
- Authors: Hu Hu, Sabato Marco Siniscalchi, Chao-Han Huck Yang, Chin-Hui Lee
- Abstract summary: We propose a variational Bayesian (VB) approach to learning distributions of latent variables in deep neural network (DNN) models.
Our proposed VB approach can obtain good improvements on target devices, and consistently outperforms 13 state-of-the-art knowledge transfer algorithms.
- Score: 55.20627066525205
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: We propose a variational Bayesian (VB) approach to learning distributions of
latent variables in deep neural network (DNN) models for cross-domain knowledge
transfer, to address acoustic mismatches between training and testing
conditions. Instead of carrying out point estimation in conventional maximum a
posteriori estimation with a risk of having a curse of dimensionality in
estimating a huge number of model parameters, we focus our attention on
estimating a manageable number of latent variables of DNNs via a VB inference
framework. To accomplish model transfer, knowledge learnt from a source domain
is encoded in prior distributions of latent variables and optimally combined,
in a Bayesian sense, with a small set of adaptation data from a target domain
to approximate the corresponding posterior distributions. Experimental results
on device adaptation in acoustic scene classification show that our proposed VB
approach can obtain good improvements on target devices, and consistently
outperforms 13 state-of-the-art knowledge transfer algorithms.
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