ExcUseMe: Asking Users to Help in Item Cold-Start Recommendations

M. Aharon, Oren Anava, Noa Avigdor-Elgrabli, Dana Drachsler-Cohen, Shahar Golan, O. Somekh
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引用次数: 30

Abstract

The item cold-start problem is of a great importance in collaborative filtering (CF) recommendation systems. It arises when new items are added to the inventory and the system cannot model them properly since it relies solely on historical users' interactions (e.g., ratings). Much work has been devoted to mitigate this problem mostly by employing hybrid approaches that combine content-based recommendation techniques or by devoting a portion of the user traffic for exploration to gather interactions from random users. We focus on pure CF recommender systems (i.e., without content or context information) in a realistic online setting, where random exploration is inefficient and smart exploration that carefully selects users is crucial due to the huge flux of new items with short lifespan. We further assume that users arrive randomly one after the other and that the system has to immediately decide whether the arriving user will participate in the exploration of the new items. For this setting we present ExcUseMe, a smart exploration algorithm that selects a predefined number of users for exploring new items. ExcUseMe gradually excavates the users that are more likely to be interested in the new items and models the new items based on the users' interactions. We evaluated ExcUseMe on several datasets and scenarios and compared it to state-of-the-art algorithms. Experimental results indicate that ExcUseMe is an efficient algorithm that outperforms all other algorithms in all tested scenarios.
ExcUseMe:请求用户在项目冷启动建议中提供帮助
项目冷启动问题是协同过滤(CF)推荐系统中的一个重要问题。当新物品被添加到库存中,系统不能正确地建模时,它就会出现,因为它仅仅依赖于历史用户的交互(例如,评级)。为了缓解这个问题,已经做了很多工作,主要是采用结合基于内容的推荐技术的混合方法,或者将一部分用户流量用于探索,以收集随机用户的交互。我们专注于现实在线环境中的纯CF推荐系统(即,没有内容或上下文信息),其中随机探索是低效的,而仔细选择用户的智能探索至关重要,因为新项目的巨大流动性和短寿命。我们进一步假设用户一个接一个地随机到达,系统必须立即决定到达的用户是否会参与新物品的探索。对于这种设置,我们提出了ExcUseMe,这是一种智能探索算法,它选择预定义数量的用户来探索新项目。ExcUseMe逐步挖掘出对新商品更有可能感兴趣的用户,并根据用户的交互对新商品进行建模。我们在几个数据集和场景上评估了ExcUseMe,并将其与最先进的算法进行了比较。实验结果表明,ExcUseMe是一种高效的算法,在所有测试场景下都优于所有其他算法。
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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