Feature analysis of marginalized stacked denoising autoenconder for unsupervised domain adaptation

Marginalized stacked denoising autoencoder (mSDA), has recently emerged with demonstrated effectiveness in domain adaptation. In this paper, we investigate the rationale for why mSDA benefits domain adaptation tasks from the perspective of adaptive regularization. Our investigations focus on two typ...

全面介紹

Saved in:
書目詳細資料
Main Authors: Wei, Pengfei, Ke, Yiping, Goh, Chi Keong
其他作者: School of Computer Science and Engineering
格式: Article
語言:English
出版: 2021
主題:
在線閱讀:https://hdl.handle.net/10356/151969
標簽: 添加標簽
沒有標簽, 成為第一個標記此記錄!
機構: Nanyang Technological University
語言: English
id sg-ntu-dr.10356-151969
record_format dspace
spelling sg-ntu-dr.10356-1519692021-07-08T05:27:12Z Feature analysis of marginalized stacked denoising autoenconder for unsupervised domain adaptation Wei, Pengfei Ke, Yiping Goh, Chi Keong School of Computer Science and Engineering Engineering::Computer science and engineering Deep Feature Learning and Feature Analysis Marginalized Denoising Autoencoder Marginalized stacked denoising autoencoder (mSDA), has recently emerged with demonstrated effectiveness in domain adaptation. In this paper, we investigate the rationale for why mSDA benefits domain adaptation tasks from the perspective of adaptive regularization. Our investigations focus on two types of feature corruption noise: Gaussian noise (mSDA g ) and Bernoulli dropout noise (mSDA bd ). Both theoretical and empirical results demonstrate that mSDA bd successfully boosts the adaptation performance but mSDA g fails to do so. We then propose a new mSDA with data-dependent multinomial dropout noise (mSDA md ) that overcomes the limitations of mSDA bd and further improves the adaptation performance. Our mSDA md is based on a more realistic assumption: different features are correlated and, thus, should be corrupted with different probabilities. Experimental results demonstrate the superiority of mSDA md to mSDA bd on the adaptation performance and the convergence speed. Finally, we propose a deep transferable feature coding (DTFC) framework for unsupervised domain adaptation. The motivation of DTFC is that mSDA fails to consider the distribution discrepancy across different domains in the feature learning process. We introduce a new element to mSDA: domain divergence minimization by maximum mean discrepancy. This element is essential for domain adaptation as it ensures the extracted deep features to have a small distribution discrepancy. The effectiveness of DTFC is verified by extensive experiments on three benchmark data sets for both Bernoulli dropout noise and multinomial dropout noise. Ministry of Education (MOE) National Research Foundation (NRF) This work was supported in part by the National Research Foundation Singapore through the Corp Lab@University Scheme and in part by the Ministry of Education of Singapore through AcRF Tier-1 under Grant RG135/14. 2021-07-08T05:27:12Z 2021-07-08T05:27:12Z 2018 Journal Article Wei, P., Ke, Y. & Goh, C. K. (2018). Feature analysis of marginalized stacked denoising autoenconder for unsupervised domain adaptation. IEEE Transactions On Neural Networks and Learning Systems, 30(5), 1321-1334. https://dx.doi.org/10.1109/TNNLS.2018.2868709 2162-2388 https://hdl.handle.net/10356/151969 10.1109/TNNLS.2018.2868709 30281483 2-s2.0-85054377418 5 30 1321 1334 en RG135/14 IEEE Transactions on Neural Networks and Learning Systems © 2018 IEEE. All rights reserved.
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering::Computer science and engineering
Deep Feature Learning and Feature Analysis
Marginalized Denoising Autoencoder
spellingShingle Engineering::Computer science and engineering
Deep Feature Learning and Feature Analysis
Marginalized Denoising Autoencoder
Wei, Pengfei
Ke, Yiping
Goh, Chi Keong
Feature analysis of marginalized stacked denoising autoenconder for unsupervised domain adaptation
description Marginalized stacked denoising autoencoder (mSDA), has recently emerged with demonstrated effectiveness in domain adaptation. In this paper, we investigate the rationale for why mSDA benefits domain adaptation tasks from the perspective of adaptive regularization. Our investigations focus on two types of feature corruption noise: Gaussian noise (mSDA g ) and Bernoulli dropout noise (mSDA bd ). Both theoretical and empirical results demonstrate that mSDA bd successfully boosts the adaptation performance but mSDA g fails to do so. We then propose a new mSDA with data-dependent multinomial dropout noise (mSDA md ) that overcomes the limitations of mSDA bd and further improves the adaptation performance. Our mSDA md is based on a more realistic assumption: different features are correlated and, thus, should be corrupted with different probabilities. Experimental results demonstrate the superiority of mSDA md to mSDA bd on the adaptation performance and the convergence speed. Finally, we propose a deep transferable feature coding (DTFC) framework for unsupervised domain adaptation. The motivation of DTFC is that mSDA fails to consider the distribution discrepancy across different domains in the feature learning process. We introduce a new element to mSDA: domain divergence minimization by maximum mean discrepancy. This element is essential for domain adaptation as it ensures the extracted deep features to have a small distribution discrepancy. The effectiveness of DTFC is verified by extensive experiments on three benchmark data sets for both Bernoulli dropout noise and multinomial dropout noise.
author2 School of Computer Science and Engineering
author_facet School of Computer Science and Engineering
Wei, Pengfei
Ke, Yiping
Goh, Chi Keong
format Article
author Wei, Pengfei
Ke, Yiping
Goh, Chi Keong
author_sort Wei, Pengfei
title Feature analysis of marginalized stacked denoising autoenconder for unsupervised domain adaptation
title_short Feature analysis of marginalized stacked denoising autoenconder for unsupervised domain adaptation
title_full Feature analysis of marginalized stacked denoising autoenconder for unsupervised domain adaptation
title_fullStr Feature analysis of marginalized stacked denoising autoenconder for unsupervised domain adaptation
title_full_unstemmed Feature analysis of marginalized stacked denoising autoenconder for unsupervised domain adaptation
title_sort feature analysis of marginalized stacked denoising autoenconder for unsupervised domain adaptation
publishDate 2021
url https://hdl.handle.net/10356/151969
_version_ 1705151348408844288