Classical recommender system methods typically face the filter bubble problem when users only receive recommendations of their familiar items, making them bored and dissatisfied. To address the filter bubble problem, unexpected recommendations have been proposed to recommend items significantly deviating from user's prior expectations and thus surprising them by presenting "fresh" and previously unexplored items to the users. In this paper, we describe a novel Personalized Unexpected Recommender System (PURS) model that incorporates unexpectedness into the recommendation process by providing multi-cluster modeling of user interests in the latent space and personalized unexpectedness via the self-attention mechanism and via selection of an appropriate unexpected activation function. Extensive offline experiments on three real-world datasets illustrate that the proposed PURS model significantly outperforms the state-of-the-art baseline approaches in terms of both accuracy and unexpectedness measures. In addition, we conduct an online A/B test at a major video platform Alibaba-Youku, where our model achieves over 3\% increase in the average video view per user metric. The proposed model is in the process of being deployed by the company.
翻译:经典推荐系统方法通常面临过滤泡沫问题,因为用户只收到熟悉项目的建议,使他们感到无聊和不满意。为了解决过滤泡沫问题,提出了意外建议,以建议与用户先前的期望大相径庭的项目,从而通过向用户提供“新鲜”和以前未探索的项目而给人以惊喜。在本文中,我们描述了一个新的个人化的意外建议系统(PURS)模式,将意外情况纳入建议进程,通过自我注意机制和选择适当的意外启动功能,提供潜在空间用户兴趣和个性化意外情况的多集群模型。关于三个真实世界数据集的广泛离线实验表明,拟议的PURS模式在准确性和意外性措施方面大大优于最先进的基线方法。此外,我们在一个主要的视频平台Alibaba-Youku(Alibaba-Youku)进行在线A/B测试,我们的模型在每一个用户指标的平均视频视图中增加了3 ⁇ 以上。提议的模型正在由公司部署。