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N2TM: A New Node to Trust Matrix Method for Spam Worker Defense in Crowdsourcing Environments

机译:N2TM:在众包环境中用于垃圾邮件工作者防御的信任矩阵方法的新节点

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摘要

To defend against spam workers in crowdsourcing environments, the existing solutions overlook the fact that a spam worker with guises can easily bypass the defense. To alleviate this problem, in this paper, we propose a Node to Trust Matrix method (N2TM) that represents a worker node in a crowdsourcing network as an un-manipulable Worker Trust Matrix (WTM) for identifying the worker's identity. In particular, we first present a crowdsourcing trust network consisting of requester nodes, worker nodes, and transaction-based edges. Then, we construct WTMs for workers based on the trust network. A WTM consists of trust indicators measuring the extent to which a worker is trusted by different requesters in different sub-networks. Moreover, we show the un-manipulable property and the usable property of a WTM that are crucial for identifying a worker's identity. Furthermore, we leverage deep learning techniques to predict a worker's identity with its WTM as input. Finally, we demonstrate the superior performance of our proposed N2TM in identifying spam workers with extensive experiments.
机译:为了在众包环境中防御垃圾邮件工作者,现有解决方案忽略了一个事实,即带有伪装的垃圾邮件工作者可以轻松绕过防御。为了缓解这个问题,在本文中,我们提出了一种节点信任矩阵方法(N2TM),该方法将众包网络中的一个工人节点表示为用于识别工人身份的不可操纵的工人信任矩阵(WTM)。特别是,我们首先提出了一个由请求者节点,工作节点和基于事务的边缘组成的众包信任网络。然后,我们基于信任网络为员工构建WTM。 WTM由信任指标组成,该指标衡量不同子网中不同请求者对工作人员的信任程度。此外,我们还显示了WTM的不可操纵属性和可用属性,这些属性对于识别工人的身份至关重要。此外,我们利用深度学习技术以其WTM作为输入来预测工人的身份。最后,我们通过广泛的实验证明了我们提出的N2TM在识别垃圾邮件工作者方面的卓越性能。

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