通过基于用户评论的推荐发现产品

Walailak Kamlor, K. Cosh
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引用次数: 1

摘要

电子商务网站的推荐系统帮助消费者找到产品。推荐系统学习消费者行为,以便向这些消费者推荐产品。推荐系统让消费者有了发现新产品的新体验,而不需要搜索它们。在做出购买决定时,消费者通常会使用以前购买者留下的评论来帮助他们。本文介绍了推荐系统是如何帮助电子商务网站进行产品推荐的,分析了一些示例站点使用的推荐,提出了一种基于用户评论分析的推荐新技术,并对新技术的结果进行了分析。新技术包括解析评论中的文本,以基于词频的对数似然生成词云,然后使用RV系数比较产品。我们的方法自动识别相似的产品进行推荐,并且基于我们的实验结果,推荐与手动选择的产品非常匹配。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Product discovery via recommendation based on user comments
Recommendation systems on E-commerce websites help consumers to find products. A recommendation system learns consumer behavior in order to suggest products to those consumers. Recommendation systems allow consumers to have new experiences discovering new products rather than needing to search for them. When making purchase decisions consumers often use the comments left by previous buyers to help them. This paper presents how recommendation systems help E-commerce websites to recommend products, analyzes the recommendations used on some example sites and presents a new technique for recommendations based on the analysis of user comments and then analyzes the results of the new technique. The new techniques include parsing the text in comments to generate a word cloud based on the log likelihood of word frequencies, and then compares products using the RV Coefficient. Our approach automatically identifies similar products for recommendation, and based on the results of our experiment, the recommendations closely match those that would be manually chosen.
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