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Towards incremental parsing of natural language using recursive neural networks

机译:使用递归神经网络实现自然语言的增量解析

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In this paper we develop novel algorithmic ideas for building a natural language parser grounded upon the hypothesis of incrementality. Although widely accepted and experimentally supported under a cognitive perspective as a model of the human parser, the incrementality assumption has never been exploited for building automatic parsers of unconstrained real texts. The essentials of the hypothesis are that words are processed in a left-to-right fashion, and the syntactic structure is kept totally connected at each step. Our proposal relies on a machine learning technique for predicting the correctness of partial syntactic structures that are built during the parsing process. A recursive neural network architecture is employed for computing predictions after a training phase on examples drawn from a corpus of parsed sentences, the Penn Treebank. Our results indicate the viability of the approach and lay out the premises for a novel generation of algorithms for natural language processing which more closely model human parsing. These algorithms may prove very useful in the development of efficient parsers. [References: 40]
机译:在本文中,我们基于增量假设,提出了用于构建自然语言解析器的新颖算法思想。尽管在认知角度下作为人类解析器的模型被广泛接受并得到实验支持,但是增量假设从未被用于构建不受约束的真实文本的自动解析器。该假设的要点是,单词以从左到右的方式处理,并且语法结构在每一步都保持完全连接。我们的建议依靠一种机器学习技术来预测在解析过程中建立的部分语法结构的正确性。在训练阶段之后,采用递归神经网络体系结构来计算预测,该预测是基于从解析的句子语料库Penn Treebank提取的示例。我们的结果表明了该方法的可行性,并为自然语言处理的新一代算法奠定了前提,该算法可以更紧密地模拟人类解析。这些算法在高效解析器的开发中可能非常有用。 [参考:40]

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