推荐系统
计算机科学
选择(遗传算法)
差异(会计)
估计员
估计量的偏差
过程(计算)
机器学习
人工智能
最小方差无偏估计量
统计
数学
操作系统
会计
业务
作者
Xiaojie Wang,Rui Zhang,Yu Sun,Jianzhong Qi
出处
期刊:Web Search and Data Mining
日期:2021-03-08
被引量:15
标识
DOI:10.1145/3437963.3441799
摘要
Recommendation datasets are prone to selection biases due to self-selection behavior of users and item selection process of systems. This makes explicitly combating selection biases an essential problem in training recommender systems. Most previous studies assume no unbiased data available for training. We relax this assumption and assume that a small subset of training data is unbiased. Then, we propose a novel objective that utilizes the unbiased data to adaptively assign propensity weights to biased training ratings. This objective, combined with unbiased performance estimators, alleviates the effects of selection biases on the training of recommender systems. To optimize the objective, we propose an efficient algorithm that minimizes the variance of propensity estimates for better generalized recommender systems. Extensive experiments on two real-world datasets confirm the advantages of our approach in significantly reducing both the error of rating prediction and the variance of propensity estimation.
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