Learning better lexical properties for recurrent OOV words

Longlu Qin, Alexander I. Rudnicky
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引用次数: 4

Abstract

Out-of-vocabulary (OOV) words can appear more than once in a conversation or over a period of time. Such multiple instances of the same OOV word provide valuable information for learning the lexical properties of the word. Therefore, we investigated how to estimate better pronunciation, spelling and part-of-speech (POS) label for recurrent OOV words. We first identified recurrent OOV words from the output of a hybrid decoder by applying a bottom-up clustering approach. Then, multiple instances of the same OOV word were used simultaneously to learn properties of the OOV word. The experimental results showed that the bottom-up clustering approach is very effective at detecting the recurrence of OOV words. Furthermore, by using evidence from multiple instances of the same word, the pronunciation accuracy, recovery rate and POS label accuracy of recurrent OOV words can be substantially improved.
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学习更好的反复出现的OOV单词的词汇特性
在对话中或在一段时间内,词汇外的单词可能会出现不止一次。同一个OOV单词的这种多个实例为学习该单词的词汇特性提供了有价值的信息。因此,我们研究了如何估计更好的发音,拼写和词性(词性)标签的重复OOV词。我们首先通过应用自下而上的聚类方法从混合解码器的输出中识别出重复的OOV单词。然后,同时使用同一个OOV单词的多个实例来学习该OOV单词的属性。实验结果表明,自底向上聚类方法对OOV词的重复检测是非常有效的。此外,通过使用来自同一单词的多个实例的证据,可以大大提高重复出现的OOV单词的发音准确率、回收率和POS标签准确率。
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