We propose the use of probabilistic programming techniques to tackle the malicious user identification problem in a recommendation algorithm. Probabilistic programming provides numerous advantages over other techniques, including but not limited to providing a disentangled representation of how malicious users acted under a structured model, as well as allowing for the quantification of damage caused by malicious users. We show experiments in malicious user identification using a model of regular and malicious users interacting with a simple recommendation algorithm, and provide a novel simulation-based measure for quantifying the effects of a user or group of users on its dynamics.
翻译:我们提议在建议算法中使用概率编程技术来解决恶意用户识别问题,概率编程比其他技术具有许多优势,包括但不限于提供一个分解的表述方式,说明恶意用户在结构化模式下的行为方式,并允许对恶意用户造成的损害进行量化。 我们展示了恶意用户识别实验,使用的模型是经常和恶意用户与简单的推荐算法互动,我们提供了一种基于模拟的新方法,用以量化用户或用户群体对其动态的影响。