Publication | Closed Access
CRF-based combination of contextual features to improve a posteriori word-level confidence measures
34
Citations
11
References
2010
Year
Unknown Venue
EngineeringSpeech CorpusConditional Random FieldSemantic ProcessingPsycholinguisticsCrf-based CombinationSpoken Language ProcessingCorpus LinguisticsLanguage ProcessingText MiningSpeech RecognitionNatural Language ProcessingContext InformationContextual FeaturesComputational LinguisticsLanguage AcquisitionLanguage EngineeringConfidence Measure ReliabilityRobust Speech RecognitionLanguage StudiesDistributional SemanticsSpeech CommunicationSpeech TechnologySpeech AnalysisSpeech ProcessingLexical Complexity PredictionSpeech PerceptionLinguistics
This paper addresses the issue of confidence measure reliability provided by automatic speech recognition systems for use in various spoken language processing applications. We propose a method based on conditional random field to combine contextual features to improve word-level confidence measures. The method consists in combining various knowledge sources (acoustic, lexical, linguistic, phonetic and morphosyntactic) to enhance confidence measures, explicitly exploiting context information. Experiments were conducted on a large French broadcast news corpus from the ESTER benchmark. Results demonstrate the added-value of our method with a significant improvement of the normalized cross entropy and of the equal error rate.
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