Knowledge-based graph compression using graph property on Yago

Wahyudi, M. L. Khodra, A. Prihatmanto, C. Machbub
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引用次数: 6

Abstract

It is common to find graphs with millions of nodes and edges in social networks, computer network, and knowledge bases. A number of edges and nodes that make the computational complexity becomes large beside it the number of nodes and edges that are not important difficult for us to make the process of patterning graph. We propose a compression method to eliminate unimportant nodes and edges becomes a property of the important nodes. We developed an algorithm graph property compression (GPC) to compress the compression property on the yago knowledge-based. The results of research conducted on yago compression can reduce a 42.45 % node and 47.66% edge. It is effective to reduce the size of the graph primarily unimportant node and edge.
基于Yago的基于知识的图压缩
在社交网络、计算机网络和知识库中发现具有数百万个节点和边的图是很常见的。大量的边和节点使得计算复杂度变得越来越大,而这些并不重要的边和节点的数量也给图的图案化过程带来了困难。我们提出了一种消除不重要节点的压缩方法,使边缘成为重要节点的属性。本文提出了一种基于图形属性压缩的图形属性压缩算法(GPC)。研究结果表明,yago压缩可以减少42.45%的节点和47.66%的边缘。它可以有效地减少图中主要不重要的节点和边的大小。
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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