Shortest Path Distance Approximation Using Deep Learning Techniques

Fatemeh Salehi Rizi, Jörg Schlötterer, M. Granitzer
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引用次数: 25

Abstract

Computing shortest path distances between nodes lies at the heart of many graph algorithms and applications. Traditional exact methods such as breadth-first-search (BFS) do not scale up to contemporary, rapidly evolving today's massive networks. Therefore, it is required to find approximation methods to enable scalable graph processing with a significant speedup. In this paper, we utilize vector embeddings learnt by deep learning techniques to approximate the shortest paths distances in large graphs. We show that a feedforward neural network fed with embeddings can approximate distances with relatively low distortion error. The suggested method is evaluated on the Facebook, BlogCatalog, Youtube and Flickr social networks.
使用深度学习技术的最短路径距离逼近
计算节点之间的最短路径距离是许多图算法和应用程序的核心。传统的精确方法,如广度优先搜索(BFS),不能适应当代快速发展的大规模网络。因此,需要找到近似方法,使可扩展的图形处理具有显著的加速。在本文中,我们利用深度学习技术学习的向量嵌入来近似大图中的最短路径距离。我们证明了嵌入的前馈神经网络可以以相对低的失真误差近似距离。建议的方法在Facebook, BlogCatalog, Youtube和Flickr社交网络上进行了评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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