首页> 外文会议>International conference on computer analysis of images and patterns;CAIP 2011 >From Points to Nodes: Inverse Graph Embedding through a Lagrangian Formulation
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From Points to Nodes: Inverse Graph Embedding through a Lagrangian Formulation

机译:从点到节点:通过拉格朗日公式嵌入逆图

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In this paper, we introduce a novel concept: Inverse Embedding. We formulate inverse embedding in the following terms: given a set of multi-dimensional points coming directly or indirectly from a given spectral embedding, find the mininal complexity graph (following a MDL criterion) which satisfies the embedding constraints. This means that when the inferred graph is embedded it must provide the same distribution of squared distances between the original multi-dimensional vectors. We pose the problem in terms of a Lagrangian and find that a fraction of the multipliers (the smaller ones) resulting from the deterministic annealing process provide the positions of the edges of the unknown graph. We proof the convergence of the algorithm through an analysis of the dynamics of the deterministic annealing process and test the method with some significant sample graphs.
机译:在本文中,我们介绍了一个新颖的概念:逆嵌入。我们用以下术语来表示逆嵌入:给定一组直接或间接来自给定频谱嵌入的多维点,找到满足嵌入约束的最小复杂度图(遵循MDL准则)。这意味着当嵌入推断图时,它必须在原始多维矢量之间提供平方距离的相同分布。我们用拉格朗日法提出问题,发现确定性退火过程所产生的乘数的一小部分(较小的乘数)提供了未知图的边的位置。我们通过确定性退火过程的动力学分析来证明算法的收敛性,并使用一些有效的样本图对该方法进行测试。

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