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Web Spam Detection by Probability Mapping GraphSOMs and Graph Neural Networks

机译:通过概率映射GraphSOM和图神经网络进行Web垃圾邮件检测

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In this paper, we will apply, to the task of detecting web spam, a combination of the best of its breed algorithms for processing graph domain input data, namely, probability mapping graph self organizing maps and graph neural networks. The two connectionist models are organized into a layered architecture, consisting of a mixture of un-supervised and supervised learning methods. It is found that the results of this layered architecture approach are comparable to the best results obtained so far by others using very different approaches.
机译:在本文中,我们将检测垃圾邮件的任务,结合其最佳算法来处理图域输入数据,即概率映射图自组织图和图神经网络。这两个连接主义模型被组织成一个分层的体系结构,由无监督和有监督的学习方法的混合体组成。我们发现,这种分层体系结构方法的结果可以与迄今为止其他人使用非常不同的方法获得的最佳结果相媲美。

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