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Main Authors: Du, Xiaoyu, Chen, Yingying, Zhang, Yang, Tang, Jinhui
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2412.01127
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author Du, Xiaoyu
Chen, Yingying
Zhang, Yang
Tang, Jinhui
author_facet Du, Xiaoyu
Chen, Yingying
Zhang, Yang
Tang, Jinhui
contents Sequential recommendation approaches have demonstrated remarkable proficiency in modeling user preferences. Nevertheless, they are susceptible to profile pollution attacks (PPA), wherein items are introduced into a user's interaction history deliberately to influence the recommendation list. Since retraining the model for each polluted item is time-consuming, recent PPAs estimate item influence based on gradient directions to identify the most effective attack candidates. However, the actual item representations diverge significantly from the gradients, resulting in disparate outcomes.To tackle this challenge, we introduce an INFluence Function-based Attack approach INFAttack that offers a more accurate estimation of the influence of polluting items. Specifically, we calculate the modifications to the original model using the influence function when generating polluted sequences by introducing specific items. Subsequently, we choose the sequence that has been most significantly influenced to substitute the original sequence, thus promoting the target item. Comprehensive experiments conducted on five real-world datasets illustrate that INFAttack surpasses all baseline methods and consistently delivers stable attack performance for both popular and unpopular items.
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id arxiv_https___arxiv_org_abs_2412_01127
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Precision Profile Pollution Attack on Sequential Recommenders via Influence Function
Du, Xiaoyu
Chen, Yingying
Zhang, Yang
Tang, Jinhui
Information Retrieval
Sequential recommendation approaches have demonstrated remarkable proficiency in modeling user preferences. Nevertheless, they are susceptible to profile pollution attacks (PPA), wherein items are introduced into a user's interaction history deliberately to influence the recommendation list. Since retraining the model for each polluted item is time-consuming, recent PPAs estimate item influence based on gradient directions to identify the most effective attack candidates. However, the actual item representations diverge significantly from the gradients, resulting in disparate outcomes.To tackle this challenge, we introduce an INFluence Function-based Attack approach INFAttack that offers a more accurate estimation of the influence of polluting items. Specifically, we calculate the modifications to the original model using the influence function when generating polluted sequences by introducing specific items. Subsequently, we choose the sequence that has been most significantly influenced to substitute the original sequence, thus promoting the target item. Comprehensive experiments conducted on five real-world datasets illustrate that INFAttack surpasses all baseline methods and consistently delivers stable attack performance for both popular and unpopular items.
title Precision Profile Pollution Attack on Sequential Recommenders via Influence Function
topic Information Retrieval
url https://arxiv.org/abs/2412.01127