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Aspect-Based Sentiment Classification Using Interactive Gated Convolutional Network

机译:基于基于互动门控卷积网络的基于方面的情绪分类

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摘要

Aspect-based sentiment classification aims to detect the sentiment polarity of a target in a given context. Most previous approaches use long short-term memory (LSTM) and attention mechanisms to predict the sentiment polarity of targets, which are usually complex and need more training time. Some previous approaches are based on convolutional neural networks (CNN) and gating mechanisms, which are much simpler, efficient and takes lesser convergence time than LSTM due to parallelized computations during training. However, such CNN-based networks ignore the separate modeling of targets via context-specific representations. In this paper, we propose a novel interactive gated convolutional network (IGCN) that uses a bidirectional gating mechanism to learn mutual relation between the target and corresponding review context. IGCN also uses positional information of context words with respect to the given target, POS tags, and domain-specific word embeddings for predicting the sentiment of a target. The experimental results on SemEval 2014 datasets show the effectiveness of our proposed IGCN model.
机译:基于方面的情绪分类旨在在给定的上下文中检测目标的情感极性。最先前的方法使用长短期内存(LSTM)和注意机制来预测目标的情感极性,这通常是复杂的并且需要更多的训练时间。一些以前的方法基于卷积神经网络(CNN)和门控机构,其比训练期间并行化计算导致的LSTM更简单,有效,并且收敛时间较小。然而,这种基于CNN的网络通过上下文特定的表示忽略了目标的单独建模。在本文中,我们提出了一种新颖的互动门控卷积网络(IGNN),它使用双向门控机制来学习目标与相应审查上下文之间的相互关系。 IGCN还使用关于给定的目标,POS标记和域特定字嵌入的上下文单词的位置信息,以预测目标的情绪。 Semeval 2014数据集的实验结果表明了我们所提出的IGCN模型的有效性。

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