TL;DR
This paper introduces Invariant Collaborative Filtering (InvCF), a novel framework that learns disentangled, invariant representations to address popularity distribution shifts in recommendation systems, improving generalization without prior distribution knowledge.
Contribution
InvCF is the first method to learn popularity-invariant user preferences, effectively disentangling preference and popularity features without assuming prior distribution knowledge.
Findings
Outperforms state-of-the-art baselines in popularity generalization
Demonstrates robustness across multiple datasets and evaluation settings
Visualizations confirm effective disentangled representation learning
Abstract
Collaborative Filtering (CF) models, despite their great success, suffer from severe performance drops due to popularity distribution shifts, where these changes are ubiquitous and inevitable in real-world scenarios. Unfortunately, most leading popularity debiasing strategies, rather than tackling the vulnerability of CF models to varying popularity distributions, require prior knowledge of the test distribution to identify the degree of bias and further learn the popularity-entangled representations to mitigate the bias. Consequently, these models result in significant performance benefits in the target test set, while dramatically deviating the recommendation from users' true interests without knowing the popularity distribution in advance. In this work, we propose a novel learning framework, Invariant Collaborative Filtering (InvCF), to discover disentangled representations that…
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