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

机译:基于多实体的基于方面的情绪分析,具有上下文,实体和方面存储器

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Inspired by recent works in Aspect-Based Sentiment Analysis (ABSA) on product reviews and faced with more complex posts on social media platforms mentioning multiple entities as well as multiple aspects, we define a novel task called Multi-Entity Aspect-Based Sentiment Analysis (ME-ABSA). This task aims at fine-grained sentiment analysis of (entity. aspect) combinations, making the well-studied ABSA task a special case of it. To address the task, we propose an innovative method that models Context memory, Entity memory and Aspect memory, called CEA method. Our experimental results show that our CEA method achieves a significant gain over several baselines, including the state-of-the-art method for the ABSA task, and their enhanced versions, on datasets for ME-ABSA and ABSA tasks. The in-depth analysis illustrates the significant advantage of the CEA method over baseline methods for several hard-to-predict post types. Furthermore, we show that the CEA method is 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:灵感来自近期基于方面的情感分析(ABSA)的产品评论,并面临着在社交媒体平台上提到多个实体以及多个方面的更复杂的帖子,我们定义了一种名为基于多实体宽方的情感分析的新型任务( ME-ABSA)。这项任务旨在对(实体。方面)组合的细粒度的情感分析,使得学习的ABSA任务是一个特殊的案例。要解决任务,我们提出了一种创新方法,该方法模拟上下文内存,实体内存和方向存储器,称为CEA方法。我们的实验结果表明,我们的CEA方法实现了几个基线的显着增益,包括ABSA任务的最先进的方法,以及其增强版本,在ME-ABSA和ABSA任务的数据集上。深入分析说明了CEA方法对几种硬质预测柱类型的基线方法的显着优点。此外,我们表明CEA方法能够概括为新(实体,方面)组合,几乎没有准确性损失。此观察表明可以在很大程度上简化实际应用中的数据注释。

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