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Fitting Class-Based Language Models into Weighted Finite-State Transducer Framework

机译:将基于类的语言模型拟合到加权有限状态换能器框架中

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摘要

In our paper we propose a general way of incorporating class-based language models with many-to-many word-to-class mapping into the finite-state transducer (FST) framework. Since class-based models alone usually do not improve the recognition accuracy, we also present a method for an efficient language model combination. An example of a word-to-class mapping based on morphological tags is also given. Several word-based and tag-based language models are tested in the task of transcribing Czech broadcast news. Results show that class-based models help to achieve a moderate improvement in recognition accuracy.
机译:在我们的论文中,我们提出了一种将基于类的语言模型与多对多单词到类的映射合并到有限状态转换器(FST)框架中的一般方法。由于仅基于类的模型通常不能提高识别准确性,因此我们还提出了一种有效的语言模型组合方法。还给出了基于形态标记的词到类映射的示例。在转录捷克广播新闻的任务中,测试了几种基于单词和基于标签的语言模型。结果表明,基于类别的模型有助于实现识别准确性的适度提高。

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