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A linear-space algorithm for distance preserving graph embedding

机译:距离保持图嵌入的线性空间算法

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The distance preserving graph embedding problem is to embed the vertices of a given weighted graph onto points in d-dimensional Euclidean space for a constant d such that for each edge the distance between their corresponding endpoints is as close to the weight of the edge as possible. if the given graph is complete, that is, if the weights are given as a full matrix, then multi-dimensional scaling [Trevor Cox, Michael Cox, Multidimensional Scaling, second ed., Chapman & Hall CRC, 2001] can minimize the sum of squared embedding errors in quadratic time. A serious disadvantage of this approach is its quadratic space requirement. In this paper we develop a linear-space algorithm for this problem for the case when the weight of any edge can be computed in constant time. A key idea is to partition a set of n objects into O(root n) disjoint subsets (clusters) of size O(root n) such that the minimum inter cluster distance is maximized among all possible such partitions. Experimental results are included comparing the performance of the newly developed approach to the performance of the well-established least-squares multi-dimensional scaling approach (Trevor Cox, Michael Cox, Multidimensional Scaling, second ed., Chapman & Hall CRC, 2001] using three different applications. Although least-squares multi-dimensional scaling gave slightly more accurate results than our newly developed approach, least-squares multi-dimensional scaling ran out of memory for data sets larger than 15000 vertices. (c) 2008 Elsevier B.V. All rights reserved.
机译:保留距离的图嵌入问题是将给定加权图的顶点嵌入到d维欧几里得空间中恒定d的点上,以便对于每个边缘,其相应端点之间的距离尽可能接近边缘的权重。如果给定的图是完整的,也就是说,如果权重作为一个完整的矩阵给出,则多维缩放比例[Trevor Cox,Michael Cox,多维缩放比例,第二版,Chapman&Hall CRC,2001]可以使总和最小化二次时间的嵌入误差平方。该方法的严重缺点是其二次空间需求。在本文中,针对可以在恒定时间内计算任意边缘权重的情况,我们针对此问题开发了线性空间算法。一个关键思想是将一组n个对象划分为大小为O(root n)的O(root n)个不相交的子集(簇),以使最小的群集间距离在所有此类分区中最大化。实验结果包括将新开发的方法的性能与公认的最小二乘多维缩放方法(Trevor Cox,Michael Cox,多维缩放,第二版,Chapman&Hall CRC,2001年)的性能进行比较。三种不同的应用程序。尽管最小二乘多维标度比我们新开发的方法提供了更精确的结果,但最小平方多维标度已用完了大于15000个顶点的数据集的内存(c)2008 Elsevier BV版权所有保留。

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