Graph neural networks for ranking Web pages

F. Scarselli, Sweah Liang Yong, M. Gori, M. Hagenbuchner, A. Tsoi, Marco Maggini
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引用次数: 91

Abstract

An artificial neural network model, capable of processing general types of graph structured data, has recently been proposed. This paper applies the new model to the computation of customised page ranks problem in the World Wide Web. The class of customised page ranks that can be implemented in this way is very general and easy because the neural network model is learned by examples. Some preliminary experimental findings show that the model generalizes well over unseen Web pages, and hence, may be suitable for the task of page rank computation on a large Web graph.
用于网页排名的图形神经网络
最近提出了一种能够处理一般类型的图结构数据的人工神经网络模型。本文将该模型应用于万维网中定制页面排名问题的计算。可以用这种方式实现的自定义页面排名类非常通用和容易,因为神经网络模型是通过示例学习的。一些初步的实验结果表明,该模型可以很好地泛化未见过的网页,因此可以适用于大型Web图上的页面排名计算任务。
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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