Classical accuracy-oriented Recommender Systems (RSs) typically face the cold-start problem and the filter-bubble problem when users suffer the familiar, repeated, and even predictable recommendations, making them boring and unsatisfied. To address the above issues, serendipity-oriented RSs are proposed to recommend appealing and valuable items significantly deviating from users' historical interactions and thus satisfying them by introducing unexplored but relevant candidate items to them. In this paper, we devise a novel serendipity-oriented recommender system (\textbf{G}enerative \textbf{S}elf-\textbf{S}erendipity \textbf{R}ecommender \textbf{S}ystem, \textbf{GS$^2$-RS}) that generates users' self-serendipity preferences to enhance the recommendation performance. Specifically, this model extracts users' interest and satisfaction preferences, generates virtual but convincible neighbors' preferences from themselves, and achieves their self-serendipity preference. Then these preferences are injected into the rating matrix as additional information for RS models. Note that GS$^2$-RS can not only tackle the cold-start problem but also provides diverse but relevant recommendations to relieve the filter-bubble problem. Extensive experiments on benchmark datasets illustrate that the proposed GS$^2$-RS model can significantly outperform the state-of-the-art baseline approaches in serendipity measures with a stable accuracy performance.
翻译:经典的精准性向建议系统(RSs)通常面临冷却启动问题,当用户遇到熟悉、重复甚至可预测的建议时,过滤器泡沫问题,使建议变得枯燥和不满意。为了解决上述问题,建议Serendipive导向RSs建议具有吸引力和有价值的项目,这与用户的历史互动大相径庭,从而通过引入未探索但相关的候选项目来满足它们。在本文中,我们设计了一个全新的精准性向型建议系统(\ textbf{G}Generalendial-finif{Self-tree-textb{S}S}S}iendiptionality\ textbf{R}{R}commendef{R}comeff{S}。为了提高建议性能的自我探索性偏好。这个模型提取用户的兴趣和满意性偏好,产生虚拟但邻居偏好相近的首选方法,并实现他们自己自己自定义的基调的基底基度, 也能够将更多的基调的基底缩缩缩缩缩缩的基底数据。这些偏好能将更多的基底的缩缩缩缩缩缩缩化的基底的基底的基质化数据缩缩缩缩缩缩缩成为SBISABSBSBIBIBIBIBI的缩缩缩缩缩缩的缩缩缩缩缩缩缩缩缩缩缩缩缩的缩缩缩缩缩缩。