other,11-1-E06-1035,ak In this paper , we investigate the problem of automatically predicting <term> segment boundaries </term> in <term> spoken multiparty dialogue </term> .
other,14-1-E06-1035,ak In this paper , we investigate the problem of automatically predicting <term> segment boundaries </term> in <term> spoken multiparty dialogue </term> .
other,10-3-E06-1035,ak We first apply approaches that have been proposed for predicting <term> top-level topic shifts </term> to the problem of identifying <term> subtopic boundaries </term> .
other,18-3-E06-1035,ak We first apply approaches that have been proposed for predicting <term> top-level topic shifts </term> to the problem of identifying <term> subtopic boundaries </term> .
other,9-4-E06-1035,ak We then explore the impact on performance of using <term> ASR output </term> as opposed to <term> human transcription </term> .
other,14-4-E06-1035,ak We then explore the impact on performance of using <term> ASR output </term> as opposed to <term> human transcription </term> .
other,5-5-E06-1035,ak Examination of the effect of <term> features </term> shows that predicting top-level and predicting <term> subtopic boundaries </term> are two distinct tasks : ( 1 ) for predicting <term> subtopic boundaries </term> , the <term> lexical cohesion-based approach </term> alone can achieve competitive results , ( 2 ) for predicting <term> top-level boundaries </term> , the <term> machine learning approach </term> that combines <term> lexical-cohesion and conversational features </term> performs best , and ( 3 ) <term> conversational cues </term> , such as <term> cue phrases </term> and <term> overlapping speech </term> , are better indicators for the <term> top-level prediction task </term> .
other,12-5-E06-1035,ak Examination of the effect of <term> features </term> shows that predicting top-level and predicting <term> subtopic boundaries </term> are two distinct tasks : ( 1 ) for predicting <term> subtopic boundaries </term> , the <term> lexical cohesion-based approach </term> alone can achieve competitive results , ( 2 ) for predicting <term> top-level boundaries </term> , the <term> machine learning approach </term> that combines <term> lexical-cohesion and conversational features </term> performs best , and ( 3 ) <term> conversational cues </term> , such as <term> cue phrases </term> and <term> overlapping speech </term> , are better indicators for the <term> top-level prediction task </term> .
other,24-5-E06-1035,ak Examination of the effect of <term> features </term> shows that predicting top-level and predicting <term> subtopic boundaries </term> are two distinct tasks : ( 1 ) for predicting <term> subtopic boundaries </term> , the <term> lexical cohesion-based approach </term> alone can achieve competitive results , ( 2 ) for predicting <term> top-level boundaries </term> , the <term> machine learning approach </term> that combines <term> lexical-cohesion and conversational features </term> performs best , and ( 3 ) <term> conversational cues </term> , such as <term> cue phrases </term> and <term> overlapping speech </term> , are better indicators for the <term> top-level prediction task </term> .
tech,28-5-E06-1035,ak Examination of the effect of <term> features </term> shows that predicting top-level and predicting <term> subtopic boundaries </term> are two distinct tasks : ( 1 ) for predicting <term> subtopic boundaries </term> , the <term> lexical cohesion-based approach </term> alone can achieve competitive results , ( 2 ) for predicting <term> top-level boundaries </term> , the <term> machine learning approach </term> that combines <term> lexical-cohesion and conversational features </term> performs best , and ( 3 ) <term> conversational cues </term> , such as <term> cue phrases </term> and <term> overlapping speech </term> , are better indicators for the <term> top-level prediction task </term> .
other,42-5-E06-1035,ak Examination of the effect of <term> features </term> shows that predicting top-level and predicting <term> subtopic boundaries </term> are two distinct tasks : ( 1 ) for predicting <term> subtopic boundaries </term> , the <term> lexical cohesion-based approach </term> alone can achieve competitive results , ( 2 ) for predicting <term> top-level boundaries </term> , the <term> machine learning approach </term> that combines <term> lexical-cohesion and conversational features </term> performs best , and ( 3 ) <term> conversational cues </term> , such as <term> cue phrases </term> and <term> overlapping speech </term> , are better indicators for the <term> top-level prediction task </term> .
tech,46-5-E06-1035,ak Examination of the effect of <term> features </term> shows that predicting top-level and predicting <term> subtopic boundaries </term> are two distinct tasks : ( 1 ) for predicting <term> subtopic boundaries </term> , the <term> lexical cohesion-based approach </term> alone can achieve competitive results , ( 2 ) for predicting <term> top-level boundaries </term> , the <term> machine learning approach </term> that combines <term> lexical-cohesion and conversational features </term> performs best , and ( 3 ) <term> conversational cues </term> , such as <term> cue phrases </term> and <term> overlapping speech </term> , are better indicators for the <term> top-level prediction task </term> .
other,51-5-E06-1035,ak Examination of the effect of <term> features </term> shows that predicting top-level and predicting <term> subtopic boundaries </term> are two distinct tasks : ( 1 ) for predicting <term> subtopic boundaries </term> , the <term> lexical cohesion-based approach </term> alone can achieve competitive results , ( 2 ) for predicting <term> top-level boundaries </term> , the <term> machine learning approach </term> that combines <term> lexical-cohesion and conversational features </term> performs best , and ( 3 ) <term> conversational cues </term> , such as <term> cue phrases </term> and <term> overlapping speech </term> , are better indicators for the <term> top-level prediction task </term> .
other,62-5-E06-1035,ak Examination of the effect of <term> features </term> shows that predicting top-level and predicting <term> subtopic boundaries </term> are two distinct tasks : ( 1 ) for predicting <term> subtopic boundaries </term> , the <term> lexical cohesion-based approach </term> alone can achieve competitive results , ( 2 ) for predicting <term> top-level boundaries </term> , the <term> machine learning approach </term> that combines <term> lexical-cohesion and conversational features </term> performs best , and ( 3 ) <term> conversational cues </term> , such as <term> cue phrases </term> and <term> overlapping speech </term> , are better indicators for the <term> top-level prediction task </term> .
other,67-5-E06-1035,ak Examination of the effect of <term> features </term> shows that predicting top-level and predicting <term> subtopic boundaries </term> are two distinct tasks : ( 1 ) for predicting <term> subtopic boundaries </term> , the <term> lexical cohesion-based approach </term> alone can achieve competitive results , ( 2 ) for predicting <term> top-level boundaries </term> , the <term> machine learning approach </term> that combines <term> lexical-cohesion and conversational features </term> performs best , and ( 3 ) <term> conversational cues </term> , such as <term> cue phrases </term> and <term> overlapping speech </term> , are better indicators for the <term> top-level prediction task </term> .
other,70-5-E06-1035,ak Examination of the effect of <term> features </term> shows that predicting top-level and predicting <term> subtopic boundaries </term> are two distinct tasks : ( 1 ) for predicting <term> subtopic boundaries </term> , the <term> lexical cohesion-based approach </term> alone can achieve competitive results , ( 2 ) for predicting <term> top-level boundaries </term> , the <term> machine learning approach </term> that combines <term> lexical-cohesion and conversational features </term> performs best , and ( 3 ) <term> conversational cues </term> , such as <term> cue phrases </term> and <term> overlapping speech </term> , are better indicators for the <term> top-level prediction task </term> .
other,78-5-E06-1035,ak Examination of the effect of <term> features </term> shows that predicting top-level and predicting <term> subtopic boundaries </term> are two distinct tasks : ( 1 ) for predicting <term> subtopic boundaries </term> , the <term> lexical cohesion-based approach </term> alone can achieve competitive results , ( 2 ) for predicting <term> top-level boundaries </term> , the <term> machine learning approach </term> that combines <term> lexical-cohesion and conversational features </term> performs best , and ( 3 ) <term> conversational cues </term> , such as <term> cue phrases </term> and <term> overlapping speech </term> , are better indicators for the <term> top-level prediction task </term> .
other,5-6-E06-1035,ak We also find that the <term> transcription errors </term> inevitable in <term> ASR output </term> have a negative impact on <term> models </term> that combine <term> lexical-cohesion and conversational features </term> , but do not change the general preference of approach for the two tasks .
other,9-6-E06-1035,ak We also find that the <term> transcription errors </term> inevitable in <term> ASR output </term> have a negative impact on <term> models </term> that combine <term> lexical-cohesion and conversational features </term> , but do not change the general preference of approach for the two tasks .
model,16-6-E06-1035,ak We also find that the <term> transcription errors </term> inevitable in <term> ASR output </term> have a negative impact on <term> models </term> that combine <term> lexical-cohesion and conversational features </term> , but do not change the general preference of approach for the two tasks .
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