Inferring win-lose product network from user behavior

S. Iitsuka, Kazuya Kawakami, S. Hagiwara, T. Kawakami, Takayuki Hamada, Y. Matsuo
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引用次数: 2

Abstract

Various data mining techniques to extract product relations have been examined, especially in the context of building intelligent recommender systems. Most such techniques, however, specifically examine co-occurrences of browsed or purchased products on e-commerce websites, which provide little or no useful information related to the direct relation of superiority or the factor which forms that superiority. For marketers and product managers, understanding the competitive advantages of a given product is important to consolidate their product differentiation strategies. As described in this paper, we propose a win-lose relation, a new product relation analysis method that retrieves the superiority relation between competitive products in terms of product attractiveness. Our proposed method uses the difference between user browsing and purchasing behaviors, assuming that a purchased product is superior to products that are browsed but not purchased. We also propose superiority factor analysis to examine keywords that represent the superiority factor by mining product reviews. We evaluate our methods using an actual dataset from Zexy, the largest wedding portal website in Japan. Our experimental evaluation revealed that our proposed method can estimate actual user preferences observed from a user study using only log data. Results also show that our proposed method raises the accuracy of superiority factor extraction by around 17% by considering the win-lose relation of products.
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从用户行为推断产品的输赢网络
各种提取产品关系的数据挖掘技术已经被研究,特别是在构建智能推荐系统的背景下。然而,大多数这样的技术专门检查电子商务网站上浏览或购买的产品的共同出现,这些网站提供很少或根本没有与优势的直接关系或形成优势的因素有关的有用信息。对于营销人员和产品经理来说,了解特定产品的竞争优势对于巩固他们的产品差异化策略非常重要。如本文所述,我们提出了一种新的产品关系分析方法——输赢关系,它从产品吸引力的角度来检索竞争产品之间的优势关系。我们提出的方法利用用户浏览和购买行为之间的差异,假设购买的产品优于浏览但未购买的产品。我们还提出了优势因子分析法,通过挖掘产品评论来检验代表优势因子的关键词。我们使用来自日本最大的婚礼门户网站Zexy的实际数据集来评估我们的方法。我们的实验评估表明,我们提出的方法可以仅使用日志数据从用户研究中观察到的实际用户偏好。结果还表明,通过考虑产品的输赢关系,我们提出的方法将优势因子提取的准确率提高了17%左右。
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