RecSys挑战2022:时尚购买预测

Nick Landia, Frederick Cheung, Donna North, Saikishore Kalloori, Abhishek Srivastava, B. Ferwerda
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引用次数: 4

摘要

RecSys 2022挑战赛是时尚领域的一项基于会话的推荐任务。数据集由Dressipi提供。给定由视图和购买组成的会话数据,以及表示项目时尚特征的内容数据,任务是预测在会话结束时购买了哪个项目。这个挑战持续了3个月,有一个公开的排行榜和一个独立的隐藏测试集的最终结果。有超过300个团队向排行榜提交了解决方案,大约50个团队向最终测试集提交了解决方案。获胜团队的MRR得分为0.216,这意味着正确的目标项目在预测列表中平均排名第五。我们在本文的解决方案中确定了一些有趣的共同主题,并在研讨会上提出了获胜的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RecSys Challenge 2022: Fashion Purchase Prediction
The RecSys 2022 Challenge was a session-based recommendation task in the fashion domain. The dataset was supplied by Dressipi. Given session data consisting of views and purchases, as well as content data representing the fashion characteristics of the items, the task was to predict which item was purchased at the end of the session. The challenge ran for 3 months with a public leaderboard and final result on a separate hidden test set. There were over 300 teams that submitted a solution to the leaderboard and about 50 that submitted a solution for the final test set. The winning team achieved a MRR score of 0.216 which means that the correct target item was on average ranked 5th in the list of predictions. We identify some interesting common themes among the solutions in this paper and the winning approaches are presented in the workshop.
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