Causal Disentanglement with Network Information for Debiased Recommendations
Paras Sheth, Ruocheng Guo, Lu Cheng, Huan Liu, K. Sel\c{c}uk Candan

TL;DR
This paper introduces a causal disentanglement approach leveraging network information to address hidden confounders, improving the debiasing of recommender systems and enhancing recommendation fairness.
Contribution
It proposes a novel method that uses network data and causal disentanglement to better account for hidden confounders in debiased recommendations.
Findings
Improved recommendation accuracy on real-world datasets.
Effective mitigation of popularity bias.
Enhanced modeling of user-item interactions.
Abstract
Recommender systems aim to recommend new items to users by learning user and item representations. In practice, these representations are highly entangled as they consist of information about multiple factors, including user's interests, item attributes along with confounding factors such as user conformity, and item popularity. Considering these entangled representations for inferring user preference may lead to biased recommendations (e.g., when the recommender model recommends popular items even if they do not align with the user's interests). Recent research proposes to debias by modeling a recommender system from a causal perspective. The exposure and the ratings are analogous to the treatment and the outcome in the causal inference framework, respectively. The critical challenge in this setting is accounting for the hidden confounders. These confounders are unobserved, making it…
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Taxonomy
TopicsRecommender Systems and Techniques · Advanced Graph Neural Networks · Stochastic Gradient Optimization Techniques
MethodsALIGN
