Confidence annotation allows a spoken dialog system to accurately assess the likelihood of misunderstanding at the utterance level and to avoid breakdowns in interaction. We describe experiments that assess the utility of features from the decoder, parser and dialog levels of processing. We also investigate the effectiveness of various classifiers, including Bayesian Networks, Neural Networks, SVMs, Decision Trees, AdaBoost and Naive Bayes, to combine this information into an utterancelevel confidence metric. We found that a combination of a subset of the features considered produced promising results with several of the classification algorithms considered, e.g., our Bayesian Network classifier produced a 45.7% relative reduction in confid...
This paper describes three experiments in using frame level observation probabilities as the basis f...
Spoken dialogue systems generally use one or two confidence thresholds during speech recognition. A ...
In the real environment, it is hard for a speech recog-nizer to avoid misrecognitions completely. Ho...
Confidence annotation allows a spoken dialog system to accurately assess the likelihood of misunders...
This paper describes the development of a word-level confidence metric suitable for use in a dialog ...
This paper describes the development of a word-level confidence metric suitable for use in a dialog ...
This paper describes the development of a word-level confidence metric suitable for use in a dialog ...
In the context of large vocabulary speech recognition system, it’s of major interest to classify eve...
This paper investigates improved confidence assessment for spoken dialogue systems at three levels: ...
This paper provides improved confidence assessment for detection of word-level speech recognition er...
The approach proposed is an alternative to the tradi-tional architecture of Spoken Dialogue Systems ...
This paper provides improved confidence assessment for detection of word-level speech recognition er...
A major challenge in the field of automatic recognition of emotion and affect in speech is the subje...
Despite the significant advances in speech and language technologies speech recognition systems are ...
A major challenge in the field of automatic recognition of emotion and affect in speech is the subje...
This paper describes three experiments in using frame level observation probabilities as the basis f...
Spoken dialogue systems generally use one or two confidence thresholds during speech recognition. A ...
In the real environment, it is hard for a speech recog-nizer to avoid misrecognitions completely. Ho...
Confidence annotation allows a spoken dialog system to accurately assess the likelihood of misunders...
This paper describes the development of a word-level confidence metric suitable for use in a dialog ...
This paper describes the development of a word-level confidence metric suitable for use in a dialog ...
This paper describes the development of a word-level confidence metric suitable for use in a dialog ...
In the context of large vocabulary speech recognition system, it’s of major interest to classify eve...
This paper investigates improved confidence assessment for spoken dialogue systems at three levels: ...
This paper provides improved confidence assessment for detection of word-level speech recognition er...
The approach proposed is an alternative to the tradi-tional architecture of Spoken Dialogue Systems ...
This paper provides improved confidence assessment for detection of word-level speech recognition er...
A major challenge in the field of automatic recognition of emotion and affect in speech is the subje...
Despite the significant advances in speech and language technologies speech recognition systems are ...
A major challenge in the field of automatic recognition of emotion and affect in speech is the subje...
This paper describes three experiments in using frame level observation probabilities as the basis f...
Spoken dialogue systems generally use one or two confidence thresholds during speech recognition. A ...
In the real environment, it is hard for a speech recog-nizer to avoid misrecognitions completely. Ho...