Traditional recommender systems are typically passive in that they try to adapt their recommendations to the user's historical interests. However, it is highly desirable for commercial applications, such as e-commerce, advertisement placement, and news portals, to be able to expand the users' interests so that they would accept items that they were not originally aware of or interested in to increase customer interactions. In this paper, we present Influential Recommender System (IRS), a new recommendation paradigm that aims to proactively lead a user to like a given objective item by progressively recommending to the user a sequence of carefully selected items (called an influence path). We propose the Influential Recommender Network (IRN), which is a Transformer-based sequential model to encode the items' sequential dependencies. Since different people react to external influences differently, we introduce the Personalized Impressionability Mask (PIM) to model how receptive a user is to external influence to generate the most effective influence path for the user. To evaluate IRN, we design several performance metrics to measure whether or not the influence path can smoothly expand the user interest to include the objective item while maintaining the user's satisfaction with the recommendation. Experimental results show that IRN significantly outperforms the baseline recommenders and demonstrates its capability of influencing users' interests.
翻译:传统建议系统一般是被动的,因为它们试图使其建议适应用户的历史利益。然而,对于商业应用,例如电子商务、广告布局和新闻门户,非常可取的做法是能够扩大用户的利益,以便他们能够接受他们原先不知道或有兴趣增加客户互动的项目。在本文件中,我们介绍了一种新的建议模式,目的是通过逐步向用户推荐一系列仔细选择的项目(称为“影响路径”)来主动引导用户喜欢一个特定的目标项目。我们建议采用基于转换器的顺序模式,用于编码项目的相继依赖关系。由于不同的人对外部影响的反应不同,我们采用了个性化的抑制软件(PIM),以模拟用户接受外部影响以产生对用户最有效的影响路径。为了评估IRN,我们设计了几种业绩计量,以衡量影响路径能否顺利扩大用户的兴趣,从而将客观的IR利益纳入到项目中,同时以显著地影响用户的满意度来显示其基准结果。