方面类别检测

R. Patel, Dhaval Bhoi, Dr. Amit Thakkar
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引用次数: 1

摘要

基于方面的情感分析(ABSA)的主要子任务是方面检测(ACD)。由于分类固有的主观性,以及类别重叠的存在,这是一个难以解决的挑战。基于规则的技术以及其他机器学习方法已被用于解决ACD,其中大多数是统计行为。本文采用了一种基于关联规则的方法。我们开发了一种混合原则策略,结合了关联规则挖掘和语义关联来解决关联规则的统计限制。我们采用词嵌入的概念来实现语义连接。实验使用SemEval数据集进行,该数据集是用于特征分类的标准化数据集。我们发现语义连接如何通过补充统计关联来帮助提高分类准确性。该方法优于几种统计方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Aspect Category Detection
The major subtask of Sentiment analysis based on aspects (ABSA) is the category of aspectdetection (ACD). Due to the subjectivity inherent in categorizing, as well as the occurrence of overlapping classes, it is a difficult challenge to solve. Rule-based techniques, as well as other machine learning approaches, have been used to tackle ACD, and a majority of them are statistical behavior. We employed an association rulebased method in this article. We developed a mixed principle strategy that incorporates both association rule mining and semantics associations to address the statistical limitations of association rules. We employed the concept of word-embed for semantic linkages. The experiments were carried out using the SemEval dataset, which is a standardized set of data for categorizing features industry. We discovered how semantic connections could help to enhance classification accuracy by complementing statistical associations. The proposed method outperforms several statistical methods.
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