Recent years have witnessed the emerging success of leveraging syntax graphs for the target sentiment classification task. However, we discover that existing syntax-based models suffer from two issues: noisy information aggregation and loss of distant correlations. In this paper, we propose a novel model termed Neural Subgraph Explorer, which (1) reduces the noisy information via pruning target-irrelevant nodes on the syntax graph; (2) introduces beneficial first-order connections between the target and its related words into the obtained graph. Specifically, we design a multi-hop actions score estimator to evaluate the value of each word regarding the specific target. The discrete action sequence is sampled through Gumble-Softmax and then used for both of the syntax graph and the self-attention graph. To introduce the first-order connections between the target and its relevant words, the two pruned graphs are merged. Finally, graph convolution is conducted on the obtained unified graph to update the hidden states. And this process is stacked with multiple layers. To our knowledge, this is the first attempt of target-oriented syntax graph pruning in this task. Experimental results demonstrate the superiority of our model, which achieves new state-of-the-art performance.
翻译:近些年来,在利用语法图实现目标情绪分类任务方面取得了成功。然而,我们发现,基于语法的现有模型有两个问题:信息杂乱汇总和失去遥远的关联关系。在本文中,我们提议了一个名为神经SubgraphExplorer的新颖模型,该模型(1) 通过在语法图上运行目标相关节点来减少噪音信息;(2) 将目标及其相关字词之间有益的第一阶连接引入获得的图表。具体地说,我们设计了一个多点动作评分天分仪,以评价每个字对具体目标的价值。独立动作序列通过Gumble-Softmax抽样取样,然后用于语法图和自省图。要引入目标及其相关词之间的第一阶连接,两个标点图就被合并了。最后,在获得的统一图表上进行共变,以更新隐藏的状态。这个过程由多个层次组成。对于我们的知识来说,这是我们首次尝试的面向目标的语法图图的图像运行过程,在这个任务中展示了新状态的高级性。实验结果。