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User Model in a Box: Cross-System User Model Transfer for Resolving Cold Start Problems

机译:框中的用户模型:跨系统用户模型传输,用于解决冷启动问题

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Recommender systems face difficulty in cold-start scenarios where a new user has provided only few ratings. Improving cold-start performance is of great interest. At the same time, the growing number of adaptive systems makes it ever more likely that a new user in one system has already been a user in another system in related domains. To what extent can a user model built by one adaptive system help address a cold start problem in another system? We compare methods of cross-system user model transfer across two large real-life systems: we transfer user models built for information seeking of scientific articles in the SciNet exploratory search system, operating over tens of millions of articles, to perform cold-start recommendation of scientific talks in the CoMeT talk management system, operating over hundreds of talks. Our user study focuses on transfer of novel explicit open user models curated by the user during information seeking. Results show strong improvement in cold-start talk recommendation by transferring open user models, and also reveal why explicit open models work better in cross-domain context than traditional hidden implicit models.
机译:推荐系统在冷启动方案中面临难度,新用户只提供了几个评级。改善冷启动性能非常兴趣。同时,越来越多的自适应系统使得一个系统中的新用户更有可能已经是一个相关域中的另一系统中的用户。由一个自适应系统构建的用户模型在多大程度上有助于解决另一个系统中的冷启动问题?我们比较跨系统用户模型转移的方法,跨两个大型真实系统:我们转移了用于在Scinet探索系统中寻求科学文章的信息的用户模型,经营了超过数百万条文章,以执行冷启动推荐科学谈判在彗星谈话管理系统中,经营数百次谈判。我们的用户学习侧重于在信息寻求期间由用户策划的新型明确打开用户模型的转移。结果通过传输开放式用户模型显示冷启动谈话推荐的强烈改善,并揭示了为什么显式开放模型在跨域上下文中更好地工作,而不是传统的隐藏模型。

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