Today's research in recommender systems is largely based on experimental designs that are static in a sense that they do not consider potential longitudinal effects of providing recommendations to users. In reality, however, various important and interesting phenomena only emerge or become visible over time, e.g., when a recommender system continuously reinforces the popularity of already successful artists on a music streaming site or when recommendations that aim at profit maximization lead to a loss of consumer trust in the long run. In this paper, we discuss how Agent-Based Modeling and Simulation (ABM) techniques can be used to study such important longitudinal dynamics of recommender systems. To that purpose, we provide an overview of the ABM principles, outline a simulation framework for recommender systems based on the literature, and discuss various practical research questions that can be addressed with such an ABM-based simulation framework.
翻译:今天对推荐人系统的研究主要基于静态的实验设计,因为实验设计不考虑向用户提供建议的潜在纵向影响,但实际上,各种重要和有趣的现象只是随着时间的推移才出现或显现出来,例如,当推荐人系统不断在音乐流站上加强已经取得成功的艺术家的受欢迎程度,或者当旨在利润最大化的建议导致消费者长期丧失信任时,我们在本文件中讨论了如何利用基于代理的建模和模拟(ABM)技术来研究推荐人系统的重要纵向动态,为此,我们概述了反弹道导弹原则,根据文献为推荐人系统勾画了一个模拟框架,并讨论了在这种基于反弹道导弹的模拟框架内可以处理的各种实际研究问题。