Recommender system has become an inseparable part of online shopping and its usability is increasing with the advancement of these e-commerce sites. An effective and efficient recommender system benefits both the seller and the buyer significantly. We considered user activities and product information for the filtering process in our proposed recommender system. Our model has achieved inspiring result (approximately 58% true-positive and 13% false-positive) for the data set provided by RecSys Challenge 2015. This paper aims to describe a statistical model that will help to predict the buying behavior of a user in real-time during a session.
翻译:推荐人系统已成为在线购物不可分割的一部分,随着这些电子商务网站的进步,其可用性正在增加。一个高效高效的推荐人系统对卖方和买方都大有裨益。我们考虑在推荐人系统中为过滤过程提供用户活动和产品信息。我们的模型已经为RecSys Challenge 2015提供的数据集取得了令人鼓舞的结果(约58%为真实阳性,13%为虚假阳性 ) 。 本文旨在描述一个统计模型,帮助预测会议期间用户的实时购买行为。