Conference Proceedings

Classifying dialogue acts in multi-party live chats

SN Kim, L Cavedon, T Baldwin

Proceedings of the 26th Pacific Asia Conference on Language Information and Computation Paclic 2012 | Published : 2012

Abstract

We consider the task of classifying chat contributions by dialogue act in a multi-party setting. This extends the problem significantly over the 1-1 chat scenario due to the semi-asynchronous and "entangled" nature of the contributions by chat participants. We experiment with a number of machine learning approaches, using different categories of features: lexical, contextual, structural, keyword and dialogue interaction information. For evaluation, we developed gold-standard data using online forums from the USA Library of Congress. We found that, for multi-party dialogues, features based on 1-gram and keywords produced best performance, while features exploiting structure and interaction di..

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University of Melbourne Researchers

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