The bootstrap resampling method has been popular for performing significance analysis on word error rate (WER) in automatic speech recognition (ASR) evaluations. To deal with the issue of dependent speech data, the blockwise bootstrap approach is also proposed that by dividing utterances into uncorrelated blocks, it resamples these blocks instead of original data. However, it is always nontrivial to uncover the dependent structure among utterances, which could lead to subjective findings in statistical testing. In this paper, we present graphical lasso based methods to explicitly model such dependency and estimate the independent blocks of utterances in a rigorous way. Then the blockwise bootstrap is applied on top of the inferred blocks. We show that the resulting variance estimator for WER is consistent under mild conditions. We also demonstrate the validity of proposed approach on LibriSpeech data.
翻译:在自动语音识别(ASR)评价中对单词误差率(WER)进行重要分析时,采样靴子方法一直很受欢迎。为了处理依赖性语音数据问题,还提议采用块状型靴子方法,通过将发声分解成不相干的区块,重新采样这些区块,而不是原始数据。然而,发现发音之间的依赖性结构,这可能导致统计测试中的主观结论,总是非技术性的。在本文中,我们提出基于图形的拉索法,以明确模拟这种依赖性,并严格估计独立发音区块。然后,在推断区块的顶部应用块的块状型靴子。我们表明,在温和的条件下,WER产生的差异估计器是一致的。我们还证明了对LibriSpeech数据的拟议方法的有效性。