首页> 外文会议>12th Annual meeting of the Special Interest Group on Discourse and Dialogue. >Using Performance Trajectories to Analyze the Immediate Impact of User State Misclassification in an Adaptive Spoken Dialogue System
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Using Performance Trajectories to Analyze the Immediate Impact of User State Misclassification in an Adaptive Spoken Dialogue System

机译:使用性能轨迹分析自适应口语对话系统中用户状态错误分类的直接影响

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We present a method of evaluating the immediate performance impact of user state mis-classifications in spoken dialogue systems. We illustrate the method with a tutoring system that adapts to student uncertainty over and above correctness. First we define a ranking of user states representing local performance. Second, we compare user state trajectories when the first state is accurately classified versus misclassified. Trajectories are quantified using a previously proposed metric representing the likelihood of transitioning from one user state to another. Comparison of the two sets of trajectories shows whether user state misclassifications change the likelihood of subsequent higher or lower ranked states, relative to accurate classification. Our tutoring system results illustrate the case where user state misclassification increases the likelihood of negative performance trajectories as compared to accurate classification.
机译:我们提出了一种评估语音对话系统中用户状态错误分类对性能立即产生影响的方法。我们用一个辅导系统来说明这种方法,该系统可以适应学生正确性之外的不确定性。首先,我们定义代表本地性能的用户状态等级。其次,当第一个状态正确分类或分类错误时,我们比较用户状态轨迹。使用先前提出的度量来量化轨迹,该度量代表从一个用户状态转换到另一用户状态的可能性。两组轨迹的比较表明,相对于准确的分类,用户状态错误分类是否会改变随后较高或较低等级的状态的可能性。我们的辅导系统结果说明了与准确分类相比,用户状态错误分类增加了负面绩效轨迹的可能性的情况。

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