RecSys Challenge 2015 and the YOOCHOOSE Dataset

David Ben-Shimon, Alexander Tsikinovsky, Michael Friedmann, Bracha Shapira, L. Rokach, J. Hörle
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引用次数: 107

Abstract

The 2015 ACM Recommender Systems Challenge offered the opportunity to work on a large-scale e-commerce dataset from a big retailer in Europe which is accepting recommender system as a service from YOOCHOOSE. Participants tackled the problem of predicting what items a user intends to purchase, if any, given a click sequence performed during an activity session on the e-commerce website. The challenge ran for seven months and was very successful, attracting 850 teams from 49 countries which submitted a total of 5,437 solutions. The winners of the challenge scored approximately 50% of the maximum score, which we considered as an impressive achievement. In this paper we provide a brief overview of the challenge and its results.
RecSys挑战2015和youchoose数据集
2015年ACM推荐系统挑战赛提供了在欧洲一家大型零售商的大型电子商务数据集上工作的机会,该零售商正在接受youchoose的推荐系统作为服务。参与者解决的问题是,在电子商务网站上的一个活动会话中,给定一个点击序列,预测用户打算购买什么商品(如果有的话)。比赛持续了7个月,非常成功,吸引了来自49个国家的850个团队,共提交了5,437个解决方案。挑战的获胜者得分大约是最高分数的50%,我们认为这是一个令人印象深刻的成就。在本文中,我们简要概述了这一挑战及其结果。
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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