DocumentCode :
1261822
Title :
Mining Distinction and Commonality across Multiple Domains Using Generative Model for Text Classification
Author :
Zhuang, Fuzhen ; Luo, Ping ; Shen, Zhiyong ; He, Qing ; Xiong, Yuhong ; Shi, Zhongzhi ; Xiong, Hui
Author_Institution :
Key Lab. of Intell. Inf. Process., Inst. of Comput. Technol., Beijing, China
Volume :
24
Issue :
11
fYear :
2012
Firstpage :
2025
Lastpage :
2039
Abstract :
The distribution difference among multiple domains has been exploited for cross-domain text categorization in recent years. Along this line, we show two new observations in this study. First, the data distribution difference is often due to the fact that different domains use different index words to express the same concept. Second, the association between the conceptual feature and the document class can be stable across domains. These two observations actually indicate the distinction and commonality across domains. Inspired by the above observations, we propose a generative statistical model, named Collaborative Dual-PLSA (CD-PLSA), to simultaneously capture both the domain distinction and commonality among multiple domains. Different from Probabilistic Latent Semantic Analysis (PLSA) with only one latent variable, the proposed model has two latent factors y and z, corresponding to word concept and document class, respectively. The shared commonality intertwines with the distinctions over multiple domains, and is also used as the bridge for knowledge transformation. An Expectation Maximization (EM) algorithm is developed to solve the CD-PLSA model, and further its distributed version is exploited to avoid uploading all the raw data to a centralized location and help to mitigate privacy concerns. After the training phase with all the data from multiple domains we propose to refine the immediate outputs using only the corresponding local data. In summary, we propose a two-phase method for cross-domain text classification, the first phase for collaborative training with all the data, and the second step for local refinement. Finally, we conduct extensive experiments over hundreds of classification tasks with multiple source domains and multiple target domains to validate the superiority of the proposed method over existing state-of-the-art methods of supervised and transfer learning. It is noted to mention that as shown by the experimental results CD-PLSA for the - ollaborative training is more tolerant of distribution differences, and the local refinement also gains significant improvement in terms of classification accuracy.
Keywords :
computer based training; data mining; data privacy; expectation-maximisation algorithm; groupware; learning (artificial intelligence); pattern classification; statistical analysis; text analysis; CD-PLSA; EM algorithm; PLSA; collaborative dual-PLSA; collaborative training; commonality across domains; commonality intertwines; cross-domain text categorization; data distribution difference; different index words; distinction across domains; document class; expectation maximization algorithm; generative statistical model; knowledge transformation; local refinement; mining distinction; multiple domains; multiple source domains; multiple target domains; privacy concern mitigation; probabilistic latent semantic analysis; supervised learning; transfer learning; two-phase method; word concept; Collaboration; Companies; Data models; Graphical models; Joints; Mathematical model; Training; Statistical generative models; classification; cross-domain learning; distinction and commonality;
fLanguage :
English
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
1041-4347
Type :
jour
DOI :
10.1109/TKDE.2011.143
Filename :
5936065
Link To Document :
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