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Integrating Multiple Knowledge Sources For Improved Speech Understanding

机译:整合多个知识来源以改进语音理解

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In spoken dialog systems it is often the case that the sentence produced by the decoder with the highest recognition probability may not be the best choice for extracting the intended concepts. Lower ranking hypotheses may present better alternatives. In this paper, we show how to integrate multiple knowledge sources for the decision of selecting one of these hypotheses. A scoring schema combining information from the recognizer output, the parser, an utterance type classifier and dialog context is used. The scaling weights of the combined scores are determined automatically by an optimization procedure. Finally, we show the results of testing this approach and its performance compared to the approach of selecting the best recognition hypothesis.
机译:在口头对话系统中,通常是解码器具有最高识别概率的句子的情况可能不是提取预期概念的最佳选择。较低的排名假设可能呈现更好的替代品。在本文中,我们展示了如何集成多个知识源以获取选择其中一个假设的决定。使用来自识别器输出,解析器,发声类型分类器和对话框上下文的评分模式。组合得分的缩放权重由优化过程自动确定。最后,与选择最佳识别假说的方法相比,我们展示了测试这种方法的结果及其性能。

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