Online Product Reviews and Their Impact on Third Party Sellers Using Natural Language Processing

Akash Phaniteja Nellutla, M. Hudnurkar, S. Ambekar, A. Lidbe
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引用次数: 3

Abstract

The purpose of this paper is to gain insights from the online product reviews of e-commerce sites such as Flipkart and Amazon and analyze its impact on third party sellers. To judge the authenticity of a product, reviews are more useful than ratings, since ratings do not give a complete picture. It is always preferred to consider both the product and seller reviews to have a seamless delivery and defect less product. In this paper, natural processing methods are used to gain insights by considering online reviews of a product. Methods such as sentiment analysis, bag of words model help to understand the impact of online product reviews on the seller's ratings and their performance over some time. The reviews are categorized into positive, negative, and neutral using sentiment analysis. Further, topic modeling is done to find out the topic reviews are majorly referring to. The seller reviews for a specific product after analysis are compared with the overall seller reviews to judge the authenticity. The results of this paper would be beneficial to both the consumers and sellers.
使用自然语言处理的在线产品评论及其对第三方卖家的影响
本文的目的是从Flipkart和Amazon等电子商务网站的在线产品评论中获得见解,并分析其对第三方卖家的影响。要判断一个产品的真实性,评论比评级更有用,因为评级并不能给出一个完整的画面。它总是更倾向于考虑产品和卖家的评论,以获得无缝交付和少缺陷的产品。在本文中,使用自然处理方法通过考虑产品的在线评论来获得见解。情感分析、词包模型等方法有助于理解在线产品评论对卖家评级和一段时间内表现的影响。使用情绪分析将评论分为积极,消极和中性。进一步,进行主题建模以找出评论主要引用的主题。分析后的卖家对特定产品的评论与整体卖家评论进行比较,以判断真实性。本文的研究结果对消费者和销售者都有好处。
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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