Recently, recommender system (RS) based on causal inference has gained much attention in the industrial community, as well as the states of the art performance in many prediction and debiasing tasks. Nevertheless, a unified causal analysis framework has not been established yet. Many causal-based prediction and debiasing studies rarely discuss the causal interpretation of various biases and the rationality of the corresponding causal assumptions. In this paper, we first provide a formal causal analysis framework to survey and unify the existing causal-inspired recommendation methods, which can accommodate different scenarios in RS. Then we propose a new taxonomy and give formal causal definitions of various biases in RS from the perspective of violating the assumptions adopted in causal analysis. Finally, we formalize many debiasing and prediction tasks in RS, and summarize the statistical and machine learning-based causal estimation methods, expecting to provide new research opportunities and perspectives to the causal RS community.
翻译:最近,基于因果推断的推荐制度(RS)在工业部门以及许多预测和贬低性任务中的艺术表现状况中引起了很大关注,然而,还没有建立统一的因果分析框架。许多基于因果的预测和贬低性研究很少讨论各种偏见的因果解释和相应因果假设的合理性。在本文件中,我们首先提供一个正式的因果分析框架,用于调查和统一现有的因果激励性建议方法,其中可以考虑到塞族共和国的不同情况。然后,我们提出一个新的分类,并从违反因果分析中采用的假设的角度对塞族共和国的各种偏见给出正式的因果定义。最后,我们正式确定了塞族共和国的许多因果分析和预测任务,并总结了基于统计和机械学习的因果估计方法,期望向因果的RS群体提供新的研究机会和观点。