TL;DR
This paper introduces DITaR, a novel method for precisely identifying and rectifying harmful fake orders in sequential recommender systems, enhancing robustness without retraining models.
Contribution
It proposes a dual-view detection approach that filters truly harmful fake orders for targeted rectification, maintaining data integrity and system performance.
Findings
DITaR outperforms existing methods in recommendation accuracy.
It improves computational efficiency and robustness against fake orders.
Experiments validate the effectiveness of the proposed approach.
Abstract
Fake orders pose increasing threats to sequential recommender systems by misleading recommendation results through artificially manipulated interactions, including click farming, context-irrelevant substitutions, and sequential perturbations. Unlike injecting carefully designed fake users to influence recommendation performance, fake orders embedded within genuine user sequences aim to disrupt user preferences and mislead recommendation results, thereby manipulating exposure rates of specific items to gain competitive advantages. To protect users' authentic interest preferences and eliminate misleading information, this paper aims to perform precise and efficient rectification on compromised sequential recommender systems while avoiding the enormous computational and time costs of retraining existing models. Specifically, we identify that fake orders are not absolutely harmful - in…
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