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Application of kernels to link analysis

机译:内核在链接分析中的应用

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The application of kernel methods to link analysis is explored. In particular, Kandola et al.'s Neumann kernels are shown to subsume not only the co-citation and bibliographic coupling relatedness but also Kleinberg's HITS importance. These popular measures of relatedness and importance correspond to the Neumann kernels at the extremes of their parameter range, and hence these kernels can be interpreted as defining a spectrum of link analysis measures intermediate between co-citation/bibliographic coupling and HITS. We also show that the kernels based on the graph Laplacian, including the regularized Laplacian and diffusion kernels, provide relatedness measures that overcome some limitations of co-citation relatedness. The property of these kernel-based link analysis measures is examined with a network of bibliographic citations. Practical issues in applying these methods to real data are discussed, and possible solutions are proposed.
机译:探索了核方法在链接分析中的应用。特别是,Kandola等人的Neumann内核不仅显示了共引和书目耦合的相关性,而且还包含了Kleinberg的HITS重要性。这些流行的相关性和重要性度量在其参数范围的极限处对应于Neumann核,因此,这些核可以解释为定义了介于共引/书目耦合和HITS之间的一系列链接分析度量。我们还表明,基于图拉普拉斯算子的内核(包括正则化拉普拉斯算子和扩散内核)提供了克服共引相关性某些局限性的相关性度量。这些基于内核的链接分析方法的属性通过书目引用网络进行检查。讨论了将这些方法应用于实际数据的实际问题,并提出了可能的解决方案。

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