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Convolution neural network based syntactic and semantic aware paraphrase identification

机译:基于卷积神经网络的句法和语义感知短语识别

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Paraphrase identification is a fundamental task in natural language process areas. During the process of fulfilling this challenge, different features are exploited. Semantically equivalence and syntactic similarity are of the most importance. Apart from advance feature extraction, deep learning based models are also proven their promising in natural language process jobs. As a result in this research, we adopted an interactive representation to modelling the relationship between two sentences not only on word level, but also on phrase and sentence level by employing convolution neural network to conduct paraphrase identification by using semantic and syntactic features at the same time. The experimental study on commonly used MSRP has shown the proposed method's promising potential.
机译:解释识别是自然语言过程领域的基本任务。在实现这一挑战的过程中,利用不同的功能。语义上的等价和句法相似度最为意义。除了先进的特征提取外,基于深度学习的模型也被证明在自然语言过程工作中有希望。因此,我们采用了一个互动表示,不仅通过单词级别来建立两个句子之间的关系,还通过使用卷积神经网络来通过使用语义和句法特征来进行释义神经网络来进行短语和句子级别。时间。常用MSRP的实验研究表明了该方法的有希望的潜力。

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