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Ranking Web Pages Using Machine Learning Approaches

机译:使用机器学习方法对网页进行排名

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摘要

One of the key components which ensures the acceptance of web search service is the web page ranker - a component which is said to have been the main contributing factor to the early successes of Google. It is well established that a machine learning method such as the Graph Neural Network (GNN) is able to learn and estimate Google's page ranking algorithm. This paper shows that the GNN can successfully learn many other web page ranking methods e.g. TrustRank, HITS and OPIC. Experimental results show that GNN may be suitable to learn any arbitrary web page ranking scheme, and hence, may be more flexible than any other existing web page ranking scheme. The significance of this observation lies in the fact that it is possible to learn ranking schemes for which no algorithmic solution exists or is known.
机译:确保网页搜索服务被接受的关键组件之一是网页排名器-据说这是导致Google早期成功的主要因素。众所周知,诸如Graph神经网络(GNN)之类的机器学习方法能够学习和估计Google的页面排名算法。本文表明,GNN可以成功学习许多其他网页排名方法,例如TrustRank,HITS和OPIC。实验结果表明,GNN可能适合于学习任何任意的网页排名方案,因此比任何其他现有的网页排名方案都更灵活。该观察的重要性在于以下事实:可以学习不存在算法解决方案或未知算法的排名方案。

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