DocumentCode
2208858
Title
D-LDA: A Topic Modeling Approach without Constraint Generation for Semi-defined Classification
Author
Zhuang, Fuzhen ; Luo, Ping ; Shen, Zhiyong ; He, Qing ; Xiong, Yuhong ; Shi, Zhongzhi
Author_Institution
Key Lab. of Intell. Inf. Process., CAS, China
fYear
2010
fDate
13-17 Dec. 2010
Firstpage
709
Lastpage
718
Abstract
We study what we call semi-defined classification, which deals with the categorization tasks where the taxonomy of the data is not well defined in advance. It is motivated by the real-world applications, where the unlabeled data may also come from some other unknown classes besides the known classes for the labeled data. Given the unlabeled data, our goal is to not only identify the instances belonging to the known classes, but also cluster the remaining data into other meaningful groups. It differs from traditional semi-supervised clustering in the sense that in semi-supervised clustering the supervision knowledge is too far from being representative of a target classification, while in semi-defined classification the labeled data may be enough to supervise the learning on the known classes. In this paper we propose the model of Double-latent-layered LDA (D-LDA for short) for this problem. Compared with LDA with only one latent variable y for word topics, D-LDA contains another latent variable z for (known and unknown) document classes. With this double latent layers consisting of y and z and the dependency between them, D-LDA directly injects the class labels into z to supervise the exploiting of word topics in y. Thus, the semi-supervised learning in D-LDA does not need the generation of pair wise constraints, which is required in most of the previous semi-supervised clustering approaches. We present the experimental results on ten different data sets for semi-defined classification. Our results are either comparable to (on one data sets), or significantly better (on the other nine data set) than the six compared methods, including the state-of-the-art semi-supervised clustering methods.
Keywords
learning (artificial intelligence); pattern classification; pattern clustering; D-LDA; constraint generation; data cluster; data taxonomy; double-latent-layered LDA; labeled data; semidefined classification; semisupervised learning; topic modeling approach; unlabeled data; Gibbs Sampling; Semi-defined classification; Semi-supervised clustering; Topic modeling;
fLanguage
English
Publisher
ieee
Conference_Titel
Data Mining (ICDM), 2010 IEEE 10th International Conference on
Conference_Location
Sydney, NSW
ISSN
1550-4786
Print_ISBN
978-1-4244-9131-5
Electronic_ISBN
1550-4786
Type
conf
DOI
10.1109/ICDM.2010.13
Filename
5694027
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