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A Hybrid of Deep Sentence Representation and Local Feature Representation Model for Question Answer Selection

机译:深度句子表示与局部特征表示模型的混合体用于问题选择

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摘要

Answer selection is a one of the critical tasks in natural lan-guage processing area and it is helpful in many practical applications. To better tackle this problem, the first challenge is to effectively extract the sentence information. In this research, we propose an advanced Re-Read-CNN model which can learn a deep sentence representation and meanwhile combine the local feature representation. The experiment results on commonly used datasets have shown its effectiveness and potential for answer selection.
机译:答案的选择是自然语言处理领域的关键任务之一,在许多实际应用中很有帮助。为了更好地解决这个问题,第一个挑战是有效地提取句子信息。在这项研究中,我们提出了一种先进的Re-Read-CNN模型,该模型可以学习深度句子表示,同时结合局部特征表示。常用数据集上的实验结果表明了其有效性和选择答案的潜力。

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