TL;DR
This paper introduces a user-controllable recommender system that actively involves users in mitigating filter bubbles, improving recommendation relevance and diversity without sacrificing accuracy, through a causality-enhanced inference framework.
Contribution
It proposes a novel UCRS prototype with user controls and a causality-based inference method to dynamically adjust recommendations in response to user inputs.
Findings
Effective mitigation of filter bubbles demonstrated.
Improved recommendation diversity and accuracy.
Responsive adjustments based on user controls.
Abstract
Recommender systems usually face the issue of filter bubbles: overrecommending homogeneous items based on user features and historical interactions. Filter bubbles will grow along the feedback loop and inadvertently narrow user interests. Existing work usually mitigates filter bubbles by incorporating objectives apart from accuracy such as diversity and fairness. However, they typically sacrifice accuracy, hurting model fidelity and user experience. Worse still, users have to passively accept the recommendation strategy and influence the system in an inefficient manner with high latency, e.g., keeping providing feedback (e.g., like and dislike) until the system recognizes the user intention. This work proposes a new recommender prototype called UserControllable Recommender System (UCRS), which enables users to actively control the mitigation of filter bubbles. Functionally, 1) UCRS…
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