研究基于最大熵符号的语言模型中的语言知识

Jia Cui, Yi Su, Keith B. Hall, F. Jelinek
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引用次数: 8

摘要

我们提出了一种新的语言模型,能够将各种类型的语言信息以标记、(词、标签)元组的形式编码。使用标记作为隐藏状态,我们的模型实际上是一个隐马尔可夫模型(HMM),产生具有平凡输出分布的单词序列。然而,转移概率是使用最大熵模型来计算的,以利用潜在的重叠特征。我们研究了具有广泛语言含义的不同类型的标签。这些模型在标准数据集上的困惑度和大词汇量语音识别系统的单词错误率方面都优于Kneser-Ney平滑n-gram模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investigating linguistic knowledge in a maximum entropy token-based language model
We present a novel language model capable of incorporating various types of linguistic information as encoded in the form of a token, a (word, label)-tuple. Using tokens as hidden states, our model is effectively a hidden Markov model (HMM) producing sequences of words with trivial output distributions. The transition probabilities, however, are computed using a maximum entropy model to take advantage of potentially overlapping features. We investigated different types of labels with a wide range of linguistic implications. These models outperform Kneser-Ney smoothed n-gram models both in terms of perplexity on standard datasets and in terms of word error rate for a large vocabulary speech recognition system.
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