Chat mining: predicting user and message attributes in computer-mediated communication

Date
2008-07
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Source Title
Information Processing & Management
Print ISSN
0306-4573
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Publisher
Elsevier Ltd
Volume
44
Issue
4
Pages
1448 - 1466
Language
English
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Abstract

The focus of this paper is to investigate the possibility of predicting several user and message attributes in text-based, real-time, online messaging services. For this purpose, a large collection of chat messages is examined. The applicability of various supervised classification techniques for extracting information from the chat messages is evaluated. Two competing models are used for defining the chat mining problem. A term-based approach is used to investigate the user and message attributes in the context of vocabulary use while a style-based approach is used to examine the chat messages according to the variations in the authors' writing styles. Among 100 authors, the identity of an author is correctly predicted with 99.7% accuracy. Moreover, the reverse problem is exploited, and the effect of author attributes on computer-mediated communications is discussed. © 2008 Elsevier Ltd. All rights reserved.

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Published Version (Please cite this version)