首页> 外文会议>International conference on multimodal interfaces and workshop on machine learning for multimodal interaction 2010 >Learning and Evaluating Response Prediction Models using Parallel Listener Consensus
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Learning and Evaluating Response Prediction Models using Parallel Listener Consensus

机译:使用并行侦听器共识来学习和评估响应预测模型

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Traditionally listener response prediction models are learned from pre-recorded dyadic interactions. Because of individual differences in behavior, these recordings do not capture the complete ground truth. Where the recorded listener did not respond to an opportunity provided by the speaker, another listener would have responded or vice versa. In this paper, we introduce the concept of parallel listener consensus where the listener responses from multiple parallel interactions are combined to better capture differences and similarities between individuals. We show how parallel listener consensus can be used for both learning and evaluating probabilistic prediction models of listener responses. To improve the learning performance, the parallel consensus helps identifying better negative samples and reduces outliers in the positive samples. We propose a new error measurement called Fconsensus which exploits the parallel consensus to better define the concepts of exactness (mislabels) and completeness (missed labels) for prediction models. We present a series of experiments using the MultiLis Corpus where three listeners were tricked into believing that they had a one-on-one conversation with a speaker, while in fact they were recorded in parallel in interaction with the same speaker. In this paper we show that using parallel listener consensus can improve learning performance and represent better evaluation criteria for predictive models.
机译:传统上,听众响应预测模型是从预先记录的二元互动中学习的。由于行为上的个体差异,这些录音无法捕捉到完整的地面事实。如果录制的听众没有响应演讲者提供的机会,则另一个听众会做出响应,反之亦然。在本文中,我们介绍了并行侦听器共识的概念,其中组合了来自多个并行交互的侦听器响应,以更好地捕获个体之间的差异和相似性。我们展示了如何将并行的听众共识用于学习和评估听众响应的概率预测模型。为了提高学习效果,并行共识有助于识别更好的阴性样本并减少阳性样本中的离群值。我们提出了一种称为Fconsensus的新错误度量,该度量利用并行共识来更好地定义预测模型的准确性(错误标签)和完整性(丢失标签)的概念。我们使用MultiLis语料库进行了一系列实验,其中三个听众被诱骗了以为他们与讲话者进行了一对一对话,而实际上他们是在与同一讲话者互动的同时进行录制的。在本文中,我们证明了使用并行侦听器共识可以提高学习性能,并为预测模型提供更好的评​​估标准。

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