Alexander Clarck
2007
Exploiting structural meeting-specific features for topic segmentation
Maria Georgescul
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Alexander Clarck
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Susan Armstrong
Actes de la 14ème conférence sur le Traitement Automatique des Langues Naturelles. Articles longs
In this article we address the task of automatic text structuring into linear and non-overlapping thematic episodes. Our investigation reports on the use of various lexical, acoustic and syntactic features, and makes a comparison of how these features influence performance of automatic topic segmentation. Using datasets containing multi-party meeting transcriptions, we base our experiments on a proven state-of-the-art approach using support vector classification.
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