New Metrics for Effective Detection of Shilling Attacks in Recommender Systems

T. Srikanth, M. Shashi
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引用次数: 2

Abstract

Collaborative filtering techniques are successfully employed in recommender systems to assist users counter the information overload by making accurate personalized recommendations. However, such systems are shown to be at risk of attacks. Malicious users can deliberately insert biased profiles in favor/disfavor of chosen item(s). The presence of the biased profiles can violate the underlying principle of the recommender algorithm and affect the recommendations. This paper proposes two metrics namely, Rating Deviation from Mean Bias (RDMB) and Compromised Item Deviation Analysis (CIDA) for identification of malicious profiles and compromised items, respectively. A framework is developed for investigating the effectiveness of the proposed metrics. Extensive evaluation on benchmark datasets has shown that the metrics due to their high Information Gain lead to more accurate detection of shilling profiles compared to the other state of the art metrics.
推荐系统中有效检测Shilling攻击的新指标
协同过滤技术成功地应用于推荐系统中,通过提供准确的个性化推荐来帮助用户应对信息过载。然而,这样的系统被证明存在被攻击的风险。恶意用户可以故意插入有偏见的配置文件,以支持或不支持所选项目。有偏差的配置文件的存在会违反推荐算法的基本原则,影响推荐结果。本文提出了两种指标,即rdbb (Rating Deviation from Mean Bias)和CIDA (compromise Item Deviation Analysis),分别用于识别恶意配置文件和受损项目。开发了一个框架,用于调查所建议的度量标准的有效性。对基准数据集的广泛评估表明,与其他最先进的指标相比,由于具有较高的信息增益,这些指标可以更准确地检测先令概况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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