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Filler model based confidence measures for spoken dialog systems

机译:基于填充模型的口语对话系统的置信度措施

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Because of the inadequate performance of speech recognition systems, an accurate confidence scoring mechanism should be employed to understand user requests correctly. To determine a confidence score for a hypothesis, certain confidence features are combined. The performance of filler model based confidence features are investigated. Five types of filler model networks were defined: triphone-network, phone-network, phone-class network, 5-state catch-all model and 3-state catch-all model. First, all the models were evaluated in a Turkish speech recognition task in terms of their ability to tag correctly (recognition-error or correct) recognition hypotheses. The best performance was obtained from the triphone recognition network. Then, the performance of reliable combinations of these models was investigated and it was observed that certain combinations of filler models could significantly improve the accuracy of the confidence annotation.
机译:由于语音识别系统性能不足,应采用准确的置信度评分机制来了解用户请求。为了确定假设的置信度分数,结合了某些置信度。研究了基于填充模型的置信度特征的性能。定义了五种类型的填充模型网络:Triphone网,电话网络,电话类网络,5状态捕获 - 所有型号和3状态捕获量。首先,在土耳其语音识别任务中在其标记正确(识别错误或正确)识别假设方面,在土耳其语音识别任务中评估所有模型。从Trighone识别网络获得最佳性能。然后,研究了这些模型的可靠组合的性能,并观察到填充模型的某些组合可以显着提高置信注释的准确性。

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