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      CIRS: Bursting Filter Bubbles by Counterfactual Interactive Recommender System

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          Abstract

          While personalization increases the utility of recommender systems, it also brings the issue of filter bubbles . e.g., if the system keeps exposing and recommending the items that the user is interested in, it may also make the user feel bored and less satisfied. Existing work studies filter bubbles in static recommendation, where the effect of overexposure is hard to capture. In contrast, we believe it is more meaningful to study the issue in interactive recommendation and optimize long-term user satisfaction. Nevertheless, it is unrealistic to train the model online due to the high cost. As such, we have to leverage offline training data and disentangle the causal effect on user satisfaction.

          To achieve this goal, we propose a counterfactual interactive recommender system (CIRS) that augments offline reinforcement learning (offline RL) with causal inference. The basic idea is to first learn a causal user model on historical data to capture the overexposure effect of items on user satisfaction. It then uses the learned causal user model to help the planning of the RL policy. To conduct evaluation offline, we innovatively create an authentic RL environment (KuaiEnv) based on a real-world fully observed user rating dataset. The experiments show the effectiveness of CIRS in bursting filter bubbles and achieving long-term success in interactive recommendation. The implementation of CIRS is available via https://github.com/chongminggao/ CIRS-codes.

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          Evaluating collaborative filtering recommender systems

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            Factorization meets the neighborhood

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              Filter Bubbles, Echo Chambers, and Online News Consumption

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                Author and article information

                Contributors
                Journal
                ACM Transactions on Information Systems
                ACM Trans. Inf. Syst.
                1046-8188
                1558-2868
                January 31 2024
                August 18 2023
                January 31 2024
                : 42
                : 1
                : 1-27
                Affiliations
                [1 ]University of Science and Technology of China
                [2 ]Chongqing University
                [3 ]Zhejiang University
                [4 ]Sichuan University
                [5 ]Kuaishou Technology Co., Ltd.
                Article
                10.1145/3594871
                7f44db85-fffb-4ae1-9d5b-6b511066ee84
                © 2024
                History

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