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Discriminative Neural Sentence Modeling by Tree-Based Convolution

机译:基于树卷积的歧视性神经句子建模

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This paper proposes a tree-based con-volutional neural network (TBCNN) for discriminative sentence modeling. Our model leverages either constituency trees or dependency trees of sentences. The tree-based convolution process extracts sentences structural features, which are then aggregated by max pooling. Such architecture allows short propagation paths between the output layer and underlying feature detectors, enabling effective structural feature learning and extraction. We evaluate our models on two tasks: sentiment analysis and question classification. In both experiments, TBCNN outperforms previous state-of-the-art results, including existing neural networks and dedicated feature/rule engineering. We also make efforts to visualize the tree-based convolution process, shedding light on how our models work.
机译:本文提出了一种基于树的Con-Volutional神经网络(TBCNN),用于辨别句子建模。我们的模型利用了句子的选区树或依赖树。基于树的卷积过程提取句子结构特征,然后通过MAX池聚合。这种架构允许输出层和基础特征检测器之间的短传播路径,实现有效的结构特征学习和提取。我们在两个任务中评估我们的模型:情绪分析和问题分类。在两个实验中,TBCNN优于先前的最先进的结果,包括现有的神经网络和专用特征/规则工程。我们还努力可视化基于树的卷积过程,阐明了我们的模型如何工作。

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