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Enhancing the performance of sentiment analysis task on product reviews by handling both local and global context

机译:通过处理本地和全局上下文来提高情绪分析任务在产品评论上的性能

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摘要

Commonly, product review analysis includes extracting sentiment from product documents. The contextual aspect contained in a review document has potential to improve results obtained by the sentiment analysis task. In this regard, this paper proposes an approach that takes into account both local and global context. The main contribution of this work is threefold. Firstly, local context is defined and the graph-based word sense disambiguation (WSD) method is extended to assign the correct sense of a word in the context of a sentence. Secondly, global context is defined for addressing contextual issues related to the specific domain of a review document by using an improved SentiCircle-based method. Thirdly, a weighted mean-based strategy to determine sentiment value at document level is presented. Several experiments were conducted to assess the proposed method. Overall, the proposed method outperformed the baseline method in the metrics of precision, recall, F-measure and accuracy.
机译:通常,产品评论分析包括从产品文档中提取情感。审阅文档中包含的上下文方面可能会改善情绪分析任务获得的结果。在这方面,本文提出了一种兼顾本地和全球背景的方法。这项工作的主要贡献是三方面的。首先,定义了局部上下文,并扩展了基于图的词义消歧(WSD)方法以在句子的上下文中分配正确的词义。其次,定义全局上下文,以使用改进的基于SentiCircle的方法解决与审阅文档的特定领域相关的上下文问题。第三,提出了一种基于加权均值的策略来确定文档级别的情感价值。进行了几次实验,以评估提出的方法。总体而言,所提出的方法在精度,召回率,F度量和准确性等指标上均优于基线方法。

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