Implicit Aspect Extraction in Product Reviews Using FIN Algorithm

Diah Hevyka Maylawati, W. Maharani, I. Asror
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引用次数: 2

Abstract

Online transactions are growing very rapidly right now. Every online transaction is often accompanied by a review. Product reviews from buyers can be used by sellers as feedback. Product reviews provide information as a consideration for decision making for potential buyers to find out the strengths and weaknesses of the product. Identifying specific product features from reviews written by buyers becomes a solution to make it easier to find information. Aspect-based extraction in sentiment analysis is divided into two, explicit aspects and implicit aspects. The explicit aspect is the explicit aspect in the sentence while the implicit aspect is the aspect that is implied in the sentence. The extraction carried out in this study is based on implicit aspects to determine its features because the majority of existing studies extract explicit aspects. Implicit extraction aspects of product reviews using the FIN algorithm in association rule mining. The dataset is in English text where to extract features using TF-IDF and select features using Particle Swarm optimization. Selected features are grouped using k-Means. After features are grouped based on their value, an associative rule is made using the FIN algorithm. The minimum support value applied and the number of sentence variations cause the accuracy value obtained by 0.678.
基于FIN算法的产品评论隐式方面提取
现在网上交易增长非常迅速。每笔网上交易通常都伴随着评论。买家的产品评论可以被卖家用作反馈。产品评论提供信息作为决策的考虑,为潜在的买家找出产品的优点和缺点。从买家写的评论中识别特定的产品特性成为一种更容易找到信息的解决方案。情感分析中基于方面的提取分为显性方面和隐性方面两个方面。显性方面是句子中的显性方面,隐性方面是句子中隐含的方面。由于现有的研究大多是提取显性方面,因此本研究是基于隐性方面来确定其特征的。在关联规则挖掘中使用FIN算法隐式提取产品评论方面。数据集为英文文本,使用TF-IDF提取特征,使用Particle Swarm优化选择特征。选择的特征使用k-Means进行分组。根据特征值对特征进行分组后,使用FIN算法生成关联规则。应用的最小支持值和句子变化的数量导致得到的精度值为0.678。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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