TL;DR
This paper introduces Self-Guided Denoising Learning (SGDL), a universal, meta-learning based approach to improve the robustness of recommendation models by effectively denoising implicit feedback data.
Contribution
It proposes a novel denoising paradigm that automatically switches learning phases and adaptively selects clean data, enhancing recommendation robustness across various models.
Findings
SGDL outperforms state-of-the-art denoising methods on benchmark datasets.
The method effectively captures clean interactions for better user preference modeling.
SGDL improves robustness of multiple recommendation models with different loss functions.
Abstract
The ubiquity of implicit feedback makes them the default choice to build modern recommender systems. Generally speaking, observed interactions are considered as positive samples, while unobserved interactions are considered as negative ones. However, implicit feedback is inherently noisy because of the ubiquitous presence of noisy-positive and noisy-negative interactions. Recently, some studies have noticed the importance of denoising implicit feedback for recommendations, and enhanced the robustness of recommendation models to some extent. Nonetheless, they typically fail to (1) capture the hard yet clean interactions for learning comprehensive user preference, and (2) provide a universal denoising solution that can be applied to various kinds of recommendation models. In this paper, we thoroughly investigate the memorization effect of recommendation models, and propose a new…
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