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Multi-Entity Aspect-Based Sentiment Analysis with Context, Entity, Aspect Memory and Dependency Information

机译:具有上下文,实体,方面内存和依赖项信息的基于多方面方面的情感分析

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摘要

Fine-grained sentiment analysis is a useful tool for producers to understand consumers' needs as well as complaints about products and related aspects from online platforms. In this article, we define a novel task named "Multi-Entity Aspect-Based Sentiment Analysis (ME-ABSA)". It investigates the sentiment towards entities and their related aspects. It makes the well-studied aspect-based sentiment analysis a special case of this type, where the number of entities is limited to one. We contribute a new dataset for this task, with multi-entity Chinese posts in it. We propose to model context, entity, and aspect memory to address the task and incorporate dependency information for further improvement. Experiments show that our methods perform significantly better than baseline methods on datasets for both ME-ABSA task and ABSA task. The in-depth analysis further validates the effectiveness of our methods and shows that our methods are capable of generalizing to new (entity, aspect) combinations with little loss of accuracy. This observation indicates that data annotation in real applications can be largely simplified.
机译:细粒度的情感分析是生产者了解消费者需求以及在线平台对产品和相关方面的投诉的有用工具。在本文中,我们定义了一个新颖的任务,名为“基于多实体方面的情感分析(ME-ABSA)”。它调查了对实体及其相关方面的看法。经过精心研究的基于方面的情感分析是这种类型的特殊情况,其中实体的数量限制为一个。我们为此任务提供了一个新的数据集,其中包含多实体中文帖子。我们建议对上下文,实体和方面内存进行建模以解决任务,并合并依赖项信息以进一步改进。实验表明,对于ME-ABSA任务和ABSA任务,我们的方法在数据集上的性能明显优于基线方法。深入分析进一步验证了我们方法的有效性,并表明我们的方法能够在不损失准确性的情况下推广到新的(实体,方面)组合。该观察表明,可以大大简化实际应用程序中的数据注释。

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