AbstractIn the era of electronic commerce, online customer reviews (OCRs) have become a prevalent and valuable '/> Personalized recommendation based on customer preference mining and sentiment assessment from a Chinese e-commerce website
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Personalized recommendation based on customer preference mining and sentiment assessment from a Chinese e-commerce website

机译:基于来自中国电子商务网站的客户偏好挖掘和情感评估的个性化推荐

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摘要

AbstractIn the era of electronic commerce, online customer reviews (OCRs) have become a prevalent and valuable information source for both customers and merchants to make business decisions. This paper proposes an enhanced collaborative filtering approach based on sentiment assessment to discover the potential preferences of customers, and to predict customers’ future requirements for business services or products (collectively referred to as “entities”). Specifically, this approach involves three major steps: aspect-level sentiment assessment, customer preference mining and personalized recommendation. First, the aspect-level sentiment assessment transforms OCRs to a structured aspect-level review vector. Second, customer preference mining uses the vector to extract aspect-level feature words from sentiments and assigns polarity score to each sentiment. Finally, the feature words and sentiment polarity score are used to calculate customer preference and customers’ similarities. Personalized recommendation for services and products are generated according to customer similarity. Experiments are conducted based on the data from one of the most popular electronic commerce websites in China (www.JD.com). The results demonstrate that the proposed approach outperforms traditional collaborative filtering approaches in effectively recommending entities to target customers especially in the long term.
机译: Abstract 在电子商务时代,在线客户评论(OCR)已成为一种为客户和商人制定业务决策的普遍且有价值的信息源。本文提出了一种基于情感评估的增强型协作过滤方法,以发现客户的潜在偏好,并预测客户对业务服务或产品(统称为“实体”)的未来需求。具体来说,此方法涉及三个主要步骤:方面级别的情感评估,客户喜好挖掘和个性化推荐。首先,方面方面的情感评估将OCR转换为结构化方面方面的评论向量。其次,客户偏好挖掘使用向量从情感中提取方面级别的特征词,并为每个情感分配极性分数。最后,特征词和情感极性得分用于计算客户的偏好和客户的相似度。根据客户相似性生成针对服务和产品的个性化推荐。实验是根据来自中国最受欢迎的电子商务网站之一( www.JD.com )。结果表明,该方法在有效地推荐实体以目标客户为目标的情况下,优于传统的协同过滤方法。

著录项

  • 来源
    《Electronic Commerce Research》 |2018年第1期|159-179|共21页
  • 作者单位

    Department of Information Management, SHU-UTS SILC Business School, Shanghai University;

    Department of Information Management, SHU-UTS SILC Business School, Shanghai University;

    Department of Information Management, SHU-UTS SILC Business School, Shanghai University,Shanghai University and Shanghai Urban Construction (Group) Corporation Research Center for Building Industrialization, Shanghai University;

    Department of Decision and Information Sciences, School of Business Administration, Oakland University;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Online customer reviews (OCRs); Collaborative filtering; Sentiment assessment; Personalized recommendation;

    机译:在线客户评论(OCR);协作过滤;情感评估;个性化推荐;

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