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Ranking in Co-effecting Multi-object/Link Types Networks

机译:共同影响多对象/链接类型网络中的排名

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摘要

Research on link based object ranking attracts increasing attention these years, which also brings computer science research and business marketing brand-new concepts, opportunities as well as a great deal of challenges. With prosperity of web pages search engine and widely use of social networks, recent graph-theoretic ranking approaches have achieved remarkable successes although most of them are focus on homogeneous networks studying. Previous study on co-ranking methods tries to divide heterogeneous networks into multiple homogeneous sub-networks and ties between different sub-networks. This paper proposes an efficient topic biased ranking method for bringing order to co-effecting heterogeneous networks among authors, papers and accepted institutions (journals/conferences) within one single random surfer. This new method aims to update ranks for different types of objects (author, paper, journals/conferences) at each random walk.
机译:近年来,基于链接的对象排名研究受到越来越多的关注,这也带来了计算机科学研究和商业营销的全新概念,机遇以及诸多挑战。随着网页搜索引擎的繁荣和社交网络的广泛使用,尽管大多数图论排名方法都集中在同类网络研究上,但近来的图论排名方法却取得了显著成就。先前关于联合排序方法的研究试图将异构网络划分为多个同构子网络以及不同子网络之间的联系。本文提出了一种有效的主题偏见排序方法,用于使单个随机浏览者中的作者,论文和公认的机构(期刊/会议)之间的异类网络共同生效。这种新方法旨在在每次随机行走时更新不同类型的对象(作者,论文,期刊/会议)的等级。

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