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Slanderous user detection with modified recurrent neural networks in recommender system

机译:在推荐系统中具有修改的经常性神经网络的脆弱的用户检测

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摘要

We focus on how to tackle a unique multi-view unsupervised issue: slanderous user detection, with recurrent neural networks to benefit recommender systems. In real-world recommender systems, some consumers always give fake reviews and low ratings to the items they bought on purpose. In order to ensure their profits, these slanderous users make a semantic gap between their ratings and reviews to avoid detection, which makes slanderous user detection a more difficult problem. On some occasions, they give a false low rating with a positive review which confuse recommender systems, and vice versa. To address the above problem, in this paper, we propose a novel recommendation framework: Slanderous user Detection Recommender System (SDRS). In SDRS, we design a Hierarchical Dual-Attention recurrent Neural network (HDAN) with a modified GRU (mGRU) to compute an opinion level for reviews. Then a joint filtering method is proposed to catch the gap between ratings and reviews. With joint filtering, slanderous users can be detected and omitted. Finally, a modified non-negative matrix factorization is proposed to make recommendations. Extensive experiments are conducted in four datasets: Amazon, Yelp, Taobao, and Jingdong, in which the results demonstrate that our proposed method can detect slanderous users and make accurate recommendations in a uniform framework. Also, with slanderous user detection, some state-of-the-art recommendation systems can be benefited. Keywords: Slanderous user detection Recommender systems Recurrent neural networks (C) 2019 Elsevier Inc. All rights reserved.
机译:我们专注于如何应对独特的多视图无监督问题:诽谤用户检测,具有经常性的神经网络来利用推荐系统。在现实世界推荐系统中,一些消费者始终为他们购买的物品提供假审查和低评级。为了确保他们的利润,这些诽谤的用户在他们的评级和评论之间进行了语义差距,以避免检测,这使得令人疲倦的用户检测更难的问题。在某些情况下,它们给出了一个虚假的低评级,并对建议系统混淆的积极审查,反之亦然。为了解决上述问题,在本文中,我们提出了一种新颖的推荐框架:诽谤用户检测推荐系统(SDR)。在SDR中,我们使用修改的GRU(MGRU)设计了分层双关注经常性神经网络(HDAN),以计算评论的意见水平。然后提出了一种联合滤波方法,以捕获评级和评论之间的差距。通过联合过滤,可以检测和省略稳定的用户。最后,提出了修改的非负矩阵分解来提出建议。广泛的实验是在四个数据集:亚马逊,yelp,淘宝和景东进行的,其中结果表明我们的建议方法可以检测诽谤的用户,并在统一的框架中做出准确的建议。此外,随着速度的用户检测,一些最先进的推荐系统可以受益。关键词:诽谤用户检测推荐系统经常性神经网络(c)2019 Elsevier Inc.保留所有权利。

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