DocumentCode
3724088
Title
Infinite Author Topic Model Based on Mixed Gamma-Negative Binomial Process
Author
Junyu Xuan;Jie Lu;Guangquan Zhang;Richard Yi Da Xu;Xiangfeng Luo
Author_Institution
Centre for Quantum Comput. &
fYear
2015
Firstpage
489
Lastpage
498
Abstract
Incorporating the side information of text corpus, i.e., authors, time stamps, and emotional tags, into the traditional text mining models has gained significant interests in the area of information retrieval, statistical natural language processing, and machine learning. One branch of these works is the so-called Author Topic Model (ATM), which incorporates the authors´s interests as side information into the classical topic model. However, the existing ATM needs to predefine the number of topics, which is difficult and inappropriate in many real-world settings. In this paper, we propose an Infinite Author Topic (IAT) model to resolve this issue. Instead of assigning a discrete probability on fixed number of topics, we use a stochastic process to determine the number of topics from the data itself. To be specific, we extend a gamma-negative binomial process to three levels in orderto capture the author-document-keyword hierarchical structure. Furthermore, each document is assigned a mixed gamma process that accounts for the multi-author´s contribution towards this document. An efficient Gibbs sampling inference algorithm witheach conditional distribution being closed-form is developed for the IAT model. Experiments on several real-world datasets show the capabilities of our IAT model to learn the hidden topics, authors´ interests on these topics and the number of topics simultaneously.
Keywords
"Bayes methods","Hidden Markov models","Weight measurement","Text mining","Stochastic processes","Data models","Probability distribution"
Publisher
ieee
Conference_Titel
Data Mining (ICDM), 2015 IEEE International Conference on
ISSN
1550-4786
Type
conf
DOI
10.1109/ICDM.2015.19
Filename
7373353
Link To Document