具有形态学和n -最优列表特征的ASR假设的判别重排序

H. Sak, M. Saraçlar, Tunga Güngör
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引用次数: 18

摘要

本文探索了丰富的形态学和新颖的n-best-list特征,用于自动语音识别假设的重新排序。词素特征是通过使用n-gram语言模型对首遍的词素和语法语素所获得的词素特征进行定义的。每个假设的n个最佳列表特征使用该假设和n个最佳列表中的其他备选假设来定义。我们的方法是使用最小编辑距离对齐将每个假设与其他假设一个接一个地对齐。这为我们提供了一组编辑操作-替换,添加和删除,如这些对齐所示。这些编辑操作构成了我们的n个最佳列表功能,作为指示功能。重新排序模型的训练采用了错误率敏感平均感知器算法。在土耳其广播新闻转录任务中对所提出的方法进行了评估。基线系统是词和统计子词系统,它们也使用形态特征进行重新排序。我们发现形态学特征和n-best-list特征在提高系统准确率方面是有效的(0.8%)。
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Discriminative reranking of ASR hypotheses with morpholexical and N-best-list features
This paper explores rich morphological and novel n-best-list features for reranking automatic speech recognition hypotheses. The morpholexical features are defined over the morphological features obtained by using an n-gram language model over lexical and grammatical morphemes in the first-pass. The n-best-list features for each hypothesis are defined using that hypothesis and other alternate hypotheses in an n-best list. Our methodology is to align each hypothesis with other hypotheses one by one using minimum edit distance alignment. This gives us a set of edit operations - substitution, addition and deletion as seen in these alignments. These edit operations constitute our n-best-list features as indicator features. The reranking model is trained using a word error rate sensitive averaged perceptron algorithm introduced in this paper. The proposed methods are evaluated on a Turkish broadcast news transcription task. The baseline systems are word and statistical sub-word systems which also employ morphological features for reranking. We show that morpholexical and n-best-list features are effective in improving the accuracy of the system (0.8%).
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