Enhancing the Understanding of E-commerce Reviews through Aspect Extraction Techniques: A BERT-Based Approach

L. Davoodi
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Abstract

The growth of online customer reviews on e-commerce platforms has led to an overwhelming volume and variety of data, making manual analysis impractical for both consumers and managers. Consequently, machine learning techniques, such as Aspect-Based Sentiment Analysis (ABSA), have gained prominence for their ability to determine sentiment at the aspect level. This study aims to fine-tune natural language processing models for aspect extraction in e-commerce customer reviews. We manually annotated 2781 online user review sentences in English and employed different extensions of the BERT model to identify implicit and explicit aspects. This approach diverges from prior studies, as our dataset comprises real user reviews from five prominent e-commerce platforms. The findings demonstrate the models’ effectiveness in extracting aspects from diverse e-commerce user reviews, yielding a deeper understanding of user-generated content and customer satisfaction trends, and providing valuable insights for managerial decision-making. This study contributes to the ABSA literature and offers practical implications for e-commerce platforms aiming to improve their products and services based on customer feedback.
通过特征提取技术加强对电子商务评论的理解:基于 BERT 的方法
随着电子商务平台上在线客户评论的增加,数据量和种类也随之激增,这使得人工分析对于消费者和管理者来说都变得不切实际。因此,基于方面的情感分析(ABSA)等机器学习技术因其在方面层面确定情感的能力而备受瞩目。本研究旨在微调自然语言处理模型,以提取电子商务客户评论中的方面。我们人工标注了 2781 个在线用户英语评论句子,并采用 BERT 模型的不同扩展来识别隐性和显性方面。这种方法不同于以往的研究,因为我们的数据集包括来自五个著名电子商务平台的真实用户评论。研究结果表明,这些模型能有效地从不同的电子商务用户评论中提取内容,加深对用户生成内容和客户满意度趋势的理解,并为管理决策提供有价值的见解。本研究为 ABSA 文献做出了贡献,并为旨在根据客户反馈改进其产品和服务的电子商务平台提供了实际意义。
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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