Domain adaptation network based on hypergraph regularized denoising autoencoder

被引:0
作者
Xuesong Wang
Yuting Ma
Yuhu Cheng
机构
[1] China University of Mining and Technology,School of Information and Control Engineering
来源
Artificial Intelligence Review | 2019年 / 52卷
关键词
Domain adaptation; Hypergraph; Denoising autoencoder; Maximum mean discrepancy;
D O I
暂无
中图分类号
学科分类号
摘要
Domain adaptation learning aims to solve the classification problems of unlabeled target domain by using rich labeled samples in source domain, but there are three main problems: negative transfer, under adaptation and under fitting. Aiming at these problems, a domain adaptation network based on hypergraph regularized denoising autoencoder (DAHDA) is proposed in this paper. To better fit the data distribution, the network is built with denoising autoencoder which can extract more robust feature representation. In the last feature and classification layers, the marginal and conditional distribution matching terms between domains are obtained via maximum mean discrepancy measurement to solve the under adaptation problem. To avoid negative transfer, the hypergraph regularization term is introduced to explore the high-order relationships among data. The classification performance of the model can be improved by preserving the statistical property and geometric structure simultaneously. Experimental results of 16 cross-domain transfer tasks verify that DAHDA outperforms other state-of-the-art methods.
引用
收藏
页码:2061 / 2079
页数:18
相关论文
共 61 条
[1]  
Bellaachia A(2015)Short text keyphrase extraction with hypergraphs Prog Artif Intell 3 73-87
[2]  
AI-Dhelaan M(2009)Discriminative learning under covariate shift J Mach Learn Res 10 2137-2155
[3]  
Bickel S(2010)Domain adaptation problems: a DASVM classification technique and a circular validation strategy IEEE Trans Pattern Anal Mach Intell 32 770-787
[4]  
Brückner M(2015)Complex video event detection via pairwise fusion of trajectory and multi-label hypergraphs Multimedia Tools Appl 75 15079-15100
[5]  
Scheffer T(2010)Regularization paths for generalized linear models via coordinate descent J Stat Softw 33 1-22
[6]  
Bruzzone L(2014)Transfer learning with graph co-regularization IEEE Trans Knowl Data Eng 26 1805-1818
[7]  
Marconcini M(2016)LLNet: a deep autoencoder approach to natural low-light image enhancement Pattern Recognit 61 650-662
[8]  
Chen XJ(2010)A survey on transfer learning IEEE Trans Knowl Data Eng 22 1345-1359
[9]  
Zhan YZ(2011)Domain adaptation via transfer component analysis IEEE Trans Neural Netw 22 199-210
[10]  
Ke J(2015)Discriminative graph regularized extreme learning machine and its application to face recognition Neurocomputing 149 340-353