Technical Program

Paper Detail

Paper:SP-P4.8
Session:Topics in Speech Understanding Systems
Time:Tuesday, May 18, 15:30 - 17:30
Presentation: Poster
Topic: Speech Processing: Spoken Language Systems and Dialog
Title: EXTENDING BOOSTING FOR CALL CLASSIFICATION USING WORD CONFUSION NETWORKS
Authors: Gokhan Tur; AT&T Labs - Research 
 Dilek Hakkani-Tür; AT&T Labs - Research 
 Giuseppe Riccardi; AT&T Labs - Research 
Abstract: We are interested in the problem of robust understanding from noisy spontaneous speech input. In goal driven human-machine dialog, utterance classification is a key component of the understanding process to determine the intent of the speaker. In this paper we propose a novel algorithm for exploiting ASR word confidence scores for better utterance classification of spoken utterances. Word confidence scores for automatic speech recognition (ASR) provide estimates for word error rates. While previous work has focused on straightforward combination of word confidence scores into Bayesian classifiers, in this paper we extend the mathematical formulation for Boosting classifiers. This extension of the algorithm allows to exploit confidence scores from a 1-best ASR output or from word confusion networks(WCNs). We present methods for on-line and off-line score combinations. The results we show are for a large database of utterances collected using the AT&T VoiceTone(SM) spoken dialog system. Our experiments show between 5%-10% reduction in error (1-precision) for a given recall using WCNs compared to ASR output.
 
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