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Towards a domain-independent ASR-confidence classifier

机译:迈向与域无关的ASR信心分类器

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摘要

This work addresses the problem of developing a domain-independent binary classifier for a test domain given labeled data from several training domains where the test domain is not necessarily present in training data. The classifier accepts or rejects the ASR hypothesis based on the confidence generated by the ASR system. In the proposed approach, training data is grouped into across-domain clusters and separate cluster-specific classifiers are trained. One of the main findings is that the cluster purity and the normalized mutual information of the clusters are not very high which suggests that the domains might not necessarily be natural clusters. The performance of these cluster-specific classifiers is better than that of: (a) a single classifier trained on data from all the domains, and (b) a set of classifiers trained separately for each of the training domains. At an operating point corresponding to low False Accept, the Correct Accept of the proposed technique is on an average 2.3% higher than that obtained by the single-classifier or the individual train-domain classifiers.
机译:这项工作解决了为来自多个训练域的带标签数据的测试域开发独立于域的二进制分类器的问题,其中训练域不一定存在于训练数据中。分类器根据ASR系统生成的置信度接受或拒绝ASR假设。在提出的方法中,将训练数据分组为跨域集群,并训练单独的特定于集群的分类器。主要发现之一是,簇的纯度和簇的归一化互信息不是很高,这表明域不一定是天然簇。这些特定于群集的分类器的性能优于:(a)对来自所有域的数据进行训练的单个分类器,以及(b)针对每个训练域分别进行训练的一组分类器。在与低错误接受率相对应的工作点上,所提出技术的正确接受率平均比单分类器或单个火车域分类器获得的正确接受率高2.3%。

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