A major challenge in collaborative filtering methods is how to produce recommendations for cold items (items with no ratings), or integrate cold item into an existing catalog. Over the years, a variety of hybrid recommendation models have been proposed to address this problem by utilizing items' metadata and content along with their ratings or usage patterns. In this work, we wish to revisit the cold start problem in order to draw attention to an overlooked challenge: the ability to integrate and balance between (regular) warm items and completely cold items. In this case, two different challenges arise: (1) preserving high quality performance on warm items, while (2) learning to promote cold items to relevant users. First, we show that these two objectives are in fact conflicting, and the balance between them depends on the business needs and the application at hand. Next, we propose a novel hybrid recommendation algorithm that bridges these two conflicting objectives and enables a harmonized balance between preserving high accuracy for warm items while effectively promoting completely cold items. We demonstrate the effectiveness of the proposed algorithm on movies, apps, and articles recommendations, and provide an empirical analysis of the cold-warm trade-off.
翻译:合作过滤方法的一个主要挑战是如何为冷藏物品(没有评级的项目)提出建议,或将冷藏物品纳入现有的目录。多年来,提出了各种混合建议模式,通过利用物品的元数据和内容及其评级或使用模式来解决这一问题。在这项工作中,我们希望重新研究冷冻起始问题,以提请注意一个被忽视的挑战:(正常的)热物品和完全冷却物品的整合和平衡能力。在这种情况下,出现了两种不同的挑战:(1) 保持温暖物品的高质量性能,(2) 学习向有关用户宣传冷冻物品。首先,我们表明这两个目标事实上相互冲突,它们之间的平衡取决于业务需要和手头应用程序。我们提出一个新的混合建议算法,将这两个相互冲突的目标联系起来,并在保持高精度的热物品和有效促进完全冷藏物品之间取得协调的平衡。我们展示了拟议的电影、应用和文章建议的算法的有效性,并对冷温交易提供经验分析。