Task Similarity Aware Meta Learning for Cold-Start Recommendation

Jieyu Yang, Zhaoxin Huan, Yong He, Ke Ding, Liang Zhang, Xiaolu Zhang, Jun Zhou, Linjian Mo
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引用次数: 3

Abstract

In recommender systems, content-based methods and meta-learning involved methods usually have been adopted to alleviate the item cold-start problem. The former consider utilizing item attributes at the feature level and the latter aim at learning a globally shared initialization for all tasks to achieve fast adaptation with limited data at the task level. However, content-based methods only focus on the similarity of item attributes, ignoring the relationships established by user interactions. And for tasks with different distributions, most meta-learning-based methods are difficult to achieve better performance under a single initialization. To address the limitations mentioned above and combine the strengths of both methods, we propose a Task Similarity Aware Meta-Learning (TSAML) framework from two aspects. Specifically, at the feature level, we simultaneously introduce content information and user-item relationships to exploit task similarity. At the task level, we design an automatic soft clustering module to cluster similar tasks and generate the same initialization for similar tasks. Extensive offline experiments demonstrate that the TSAML framework has superior performance and recommends cold items to preferred users more effectively than other state-of-the-art methods.
基于任务相似度感知的冷启动推荐元学习
在推荐系统中,通常采用基于内容的方法和涉及元学习的方法来缓解项目冷启动问题。前者考虑在特征级利用项目属性,后者旨在学习所有任务的全局共享初始化,以在任务级有限的数据下实现快速自适应。然而,基于内容的方法只关注项目属性的相似性,忽略了由用户交互建立的关系。对于不同分布的任务,大多数基于元学习的方法在单一初始化下很难获得更好的性能。为了解决上述局限性并结合两种方法的优势,我们从两个方面提出了一个任务相似感知元学习(TSAML)框架。具体来说,在特征层,我们同时引入内容信息和用户-项目关系来利用任务相似性。在任务级,我们设计了一个自动软聚类模块,对相似的任务进行聚类,并为相似的任务生成相同的初始化。大量的离线实验表明,TSAML框架具有优越的性能,比其他最先进的方法更有效地向首选用户推荐冷项目。
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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