Literature DB >> 10746366

Can prosody aid the automatic classification of dialog acts in conversational speech?

E Shriberg1, R Bates, A Stolcke, P Taylor, D Jurafsky, K Ries, N Coccaro, R Martin, M Meteer, C van Ess-Dykema.   

Abstract

Identifying whether an utterance is a statement, question, greeting, and so forth is integral to effective automatic understanding of natural dialog. Little is known, however, about how such dialog acts (DAs) can be automatically classified in truly natural conversation. This study asks whether current approaches, which use mainly word information, could be improved by adding prosodic information. The study is based on more than 1000 conversations from the Switchboard corpus. DAs were hand-annotated, and prosodic features (duration, pause, F0, energy, and speaking rate) were automatically extracted for each DA. In training, decision trees based on these features were inferred; trees were then applied to unseen test data to evaluate performance. Performance was evaluated for prosody models alone, and after combining the prosody models with word information--either from true words or from the output of an automatic speech recognizer. For an overall classification task, as well as three subtasks, prosody made significant contributions to classification. Feature-specific analyses further revealed that although canonical features (such as F0 for questions) were important, less obvious features could compensate if canonical features were removed. Finally, in each task, integrating the prosodic model with a DA-specific statistical language model improved performance over that of the language model alone, especially for the case of recognized words. Results suggest that DAs are redundantly marked in natural conversation, and that a variety of automatically extractable prosodic features could aid dialog processing in speech applications.

Mesh:

Year:  1998        PMID: 10746366     DOI: 10.1177/002383099804100410

Source DB:  PubMed          Journal:  Lang Speech        ISSN: 0023-8309            Impact factor:   1.500


  6 in total

1.  Supervised and Unsupervised Feature Selection for Inferring Social Nature of Telephone Conversations from Their Content.

Authors:  Anthony Stark; Izhak Shafran; Jeffrey Kaye
Journal:  Proc IEEE Workshop Autom Speech Recognit Underst       Date:  2003-10-13

2.  Neurobiology of managing perceived stress.

Authors:  Ernest Friedman
Journal:  J Natl Med Assoc       Date:  2005-04       Impact factor: 1.798

3.  MODELING THE INTONATION OF DISCOURSE SEGMENTS FOR IMPROVED ONLINE DIALOG ACT TAGGING.

Authors:  Sridhar Vivek Kumar Rangarajan; Shrikanth Narayanan; Srinivas Bangalore
Journal:  Proc IEEE Int Conf Acoust Speech Signal Process       Date:  2008

4.  AUTOMATIC CLASSIFICATION OF QUESTION TURNS IN SPONTANEOUS SPEECH USING LEXICAL AND PROSODIC EVIDENCE.

Authors:  Sankaranarayanan Ananthakrishnan; Prasanta Ghosh; Shrikanth Narayanan
Journal:  Proc IEEE Int Conf Acoust Speech Signal Process       Date:  2008

5.  Exploiting Acoustic and Syntactic Features for Automatic Prosody Labeling in a Maximum Entropy Framework.

Authors:  Vivek Kumar Rangarajan Sridhar; Srinivas Bangalore; Shrikanth S Narayanan
Journal:  IEEE Trans Audio Speech Lang Process       Date:  2008

6.  Hierarchical temporal structure in music, speech and animal vocalizations: jazz is like a conversation, humpbacks sing like hermit thrushes.

Authors:  Christopher T Kello; Simone Dalla Bella; Butovens Médé; Ramesh Balasubramaniam
Journal:  J R Soc Interface       Date:  2017-10       Impact factor: 4.118

  6 in total

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