Book Chapter

Sentic medoids: Organizing affective common sense knowledge in a multi-dimensional vector space

Details

Citation

Cambria E, Mazzocco T, Hussain A & Eckl C (2011) Sentic medoids: Organizing affective common sense knowledge in a multi-dimensional vector space. In: Liu D, Zhang H, Polycarpou M, Alippi C & He H (eds.) Advances in Neural Networks – ISNN 2011: 8th International Symposium on Neural Networks, ISNN 2011, Guilin, China, May 29–June 1, 2011, Proceedings, Part III. Lecture Notes in Computer Science, 6677. Berlin Heidelberg: Springer, pp. 601-610. http://link.springer.com/chapter/10.1007/978-3-642-21111-9_68#

Abstract
Existing approaches to opinion mining and sentiment analysis mainly rely on parts of text in which opinions and sentiments are explicitly expressed such as polarity terms and affect words. However, opinions and sentiments are often conveyed implicitly through context and domain dependent concepts, which make purely syntactical approaches ineffective. To overcome this problem, we have recently proposed Sentic Computing, a multi-disciplinary approach to opinion mining and sentiment analysis that exploits both computer and social sciences to better recognize and process opinions and sentiments over the Web. Among other tools, Sentic Computing includes AffectiveSpace, a language visualization system that transforms natural language from a linguistic form into a multi-dimensional space. In this work, we present a new technique to better cluster this vector space and, hence, better organize and reason on the affective common sense knowledge in it contained.

Keywords
Sentic Computing; AI; Semantic Web; NLP; Clustering; Opinion Mining and Sentiment Analysis

StatusPublished
Title of seriesLecture Notes in Computer Science
Number in series6677
Publication date31/12/2011
PublisherSpringer
Publisher URLhttp://link.springer.com/…-642-21111-9_68#
Place of publicationBerlin Heidelberg
ISSN of series0302-9743
ISBN978-3-642-21110-2