TRG-DAtt: The Target Relational Graph and Double Attention Network Based Sentiment Analysis and Prediction for Supporting Decision Making

Fan Chen, Jiaoxiong Xia, Honghao Gao, Huahu Xu, Wei Wei
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引用次数: 12

Abstract

The management of public opinion and the use of big data monitoring to accurately judge and verify all kinds of information are valuable aspects in the enterprise management decision-making process. The sentiment analysis of reviews is a key decision-making tool for e-commerce development. Most existing review sentiment analysis methods involve sequential modeling but do not focus on the semantic relationships. However, Chinese semantics are different from English semantics in terms of the sentence structure. Irrelevant contextual words may be incorrectly identified as cues for sentiment prediction. The influence of the target words in reviews must be considered. Thus, this paper proposes the TRG-DAtt model for sentiment analysis based on target relational graph (TRG) and double attention network (DAtt) to analyze the emotional information to support decision making. First, dependency tree-based TRG is introduced to independently and fully mine the semantic relationships. We redefine and constrain the dependency and use it as the edges to connect the target and context words. Second, we design dependency graph attention network (DGAT) and interactive attention network (IAT) to form the DAtt and obtain the emotional features of the target words and reviews. DGAT models the dependency of the TRG by aggregating the semantic information. Next, the target emotional enhancement features obtained by the DGAT are input to the IAT. The influence of each target word on the review can be obtained through the interaction. Finally, the target emotional enhancement features are weighted by the impact factor to generate the review's emotional features. In this study, extensive experiments were conducted on the car and Meituan review data sets, which contain consumer reviews on cars and stores, respectively. The results demonstrate that the proposed model outperforms the existing models.
TRG-DAtt:基于目标关系图和双注意网络的支持决策情感分析与预测
对舆情进行管理,利用大数据监测对各类信息进行准确判断和核实,是企业管理决策过程中有价值的环节。评论情感分析是电子商务发展的关键决策工具。现有的评论情感分析方法大多涉及顺序建模,但不关注语义关系。然而,汉语语义与英语语义在句子结构上是不同的。不相关的上下文词可能被错误地识别为情绪预测的线索。必须考虑目标词在评论中的影响。为此,本文提出了基于目标关系图(TRG)和双注意网络(DAtt)的情感分析TRG-DAtt模型,对情感信息进行分析,为决策提供支持。首先,引入基于依赖树的TRG,独立、全面地挖掘语义关系。我们重新定义和约束依存关系,并将其作为连接目标词和上下文词的边。其次,设计依赖图注意网络(DGAT)和交互注意网络(IAT),形成依存图注意网络,获取目标词和评论的情感特征。DGAT通过聚合语义信息对TRG的依赖性进行建模。接下来,将DGAT获得的目标情绪增强特征输入到IAT中。通过相互作用可以得到每个目标词对复习的影响。最后,通过影响因子对目标情感增强特征进行加权,生成评论的情感特征。在本研究中,我们对汽车和美团点评数据集进行了大量的实验,这两组数据集分别包含消费者对汽车和商店的评论。结果表明,该模型优于现有模型。
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