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Estimating Classifier Performance in Unknown Noise

机译:估计未知噪声的分类器性能

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摘要

We propose and investigate a non-parametric method for identifying regions of speech that have unexpected distortions not seen in the training data. The method does not require knowledge of correct labels and relies only on divergence between statistics of the test and training data. Our experiments show that the proposed method requires a relatively small amount of test data of the order of several seconds to stabilize, and correlates well with recognition error observed on the test data.
机译:我们提出并调查了识别在训练数据中没有看到意外失真的语音区域的非参数方法。该方法不需要了解正确的标签,并仅依赖于测试和培训数据的统计数据之间的分歧。我们的实验表明,所提出的方法需要相对少量的测试数据数量的数量待稳定,并且在测试数据上观察到的识别误差很好地相关。

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