Mapping semantic knowledge for unsupervised text categorisation


Autoria(s): Tao, Xiohui; Li, Yuefeng; Zhang, Ji; Yong, Jianming
Contribuinte(s)

Wang, Hua

Zhang, Rui

Data(s)

01/02/2013

Resumo

Text categorisation is challenging, due to the complex structure with heterogeneous, changing topics in documents. The performance of text categorisation relies on the quality of samples, effectiveness of document features, and the topic coverage of categories, depending on the employing strategies; supervised or unsupervised; single labelled or multi-labelled. Attempting to deal with these reliability issues in text categorisation, we propose an unsupervised multi-labelled text categorisation approach that maps the local knowledge in documents to global knowledge in a world ontology to optimise categorisation result. The conceptual framework of the approach consists of three modules; pattern mining for feature extraction; feature-subject mapping for categorisation; concept generalisation for optimised categorisation. The approach has been promisingly evaluated by compared with typical text categorisation methods, based on the ground truth encoded by human experts.

Identificador

http://eprints.qut.edu.au/61833/

Publicador

Australian Computer Society, Inc.

Relação

http://crpit.com/Vol137.html

Tao, Xiohui, Li, Yuefeng, Zhang, Ji, & Yong, Jianming (2013) Mapping semantic knowledge for unsupervised text categorisation. In Wang, Hua & Zhang, Rui (Eds.) Proceedings of the Twenty-Fourth Australasian Database Conference (ADC 2013), Australian Computer Society, Inc., Adelaide, Australia, pp. 51-60.

Direitos

Copyright 2013 Australian Computer Society, Inc.

Fonte

School of Electrical Engineering & Computer Science; Science & Engineering Faculty

Palavras-Chave #Text categorisation #Knowledge mapping #Ontology
Tipo

Conference Paper