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The mutual information between graphs

机译:图之间的相互信息

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The estimation of mutual information between graphs has been an elusive problem until the formulation of graph matching in terms of manifold alignment. Then, graphs are mapped to multi-dimensional sets of points through structure preserving embeddings. Point-wise alignment algorithms can be exploited in this context to re-cast graph matching in terms of point matching. Methods based on bypass entropy estimation must be deployed to render the estimation of mutual information computationally tractable. In this paper the novel contribution is to show how manifold alignment can be combined with copula-based entropy estimators to efficiently estimate the mutual information between graphs. We compare the empirical copula with an Archimedean copula (the independent one) in terms of retrieval/recall after graph comparison. Our experiments show that mutual information built in both choices improves significantly state-of-the art divergences. (C) 2016 Elsevier B.V. All rights reserved.
机译:直到根据流形对齐来制定图匹配之前,图之间的相互信息的估计一直是一个难以捉摸的问题。然后,通过保留结构的嵌入图将图形映射到多维点集。在这种情况下,可以利用逐点对齐算法来根据点匹配重铸图形匹配。必须采用基于旁路熵估计的方法,以使相互信息的估计在计算上易于处理。在本文中,新颖的贡献在于展示如何将流形对齐与基于copula的熵估计器结合起来,以有效地估计图之间的互信息。在图比较之后,我们在检索/召回方面将经验语系与阿基米德语系(独立的)进行比较。我们的实验表明,在这两种选择中建立的互信息可显着改善现有技术的差异。 (C)2016 Elsevier B.V.保留所有权利。

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