Recurrent conditional random field for language understanding

K. Yao, Baolin Peng, G. Zweig, Dong Yu, Xiaolong Li, Feng Gao
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引用次数: 128

Abstract

Recurrent neural networks (RNNs) have recently produced record setting performance in language modeling and word-labeling tasks. In the word-labeling task, the RNN is used analogously to the more traditional conditional random field (CRF) to assign a label to each word in an input sequence, and has been shown to significantly outperform CRFs. In contrast to CRFs, RNNs operate in an online fashion to assign labels as soon as a word is seen, rather than after seeing the whole word sequence. In this paper, we show that the performance of an RNN tagger can be significantly improved by incorporating elements of the CRF model; specifically, the explicit modeling of output-label dependencies with transition features, its global sequence-level objective function, and offline decoding. We term the resulting model a “recurrent conditional random field” and demonstrate its effectiveness on the ATIS travel domain dataset and a variety of web-search language understanding datasets.
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用于语言理解的循环条件随机场
递归神经网络(RNNs)最近在语言建模和单词标注任务中创造了创纪录的表现。在单词标注任务中,RNN与传统的条件随机场(CRF)类似,用于为输入序列中的每个单词分配标签,并且已被证明明显优于CRF。与crf相比,rnn以在线方式运行,在看到单词时立即分配标签,而不是在看到整个单词序列之后。在本文中,我们证明了通过结合CRF模型的元素可以显著提高RNN标记器的性能;具体来说,输出标签依赖关系的显式建模与转换特征,它的全局序列级目标函数,和离线解码。我们将生成的模型称为“循环条件随机场”,并在ATIS旅行领域数据集和各种网络搜索语言理解数据集上证明了其有效性。
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