Enhancing Stratified Graph Sampling Algorithms based on Approximate Degree Distribution
Abstract
Sampling technique has become one of the recent research focuses in the graph-related fields. Most of the existing graph sampling algorithms tend to sample the high degree or low degree nodes in the complex networks because of the characteristic of scale-free. Scale-free means that degrees of different nodes are subject to a power law distribution. So, there is a significant difference in the degrees between the overall sampling nodes. In this paper, we propose an idea of approximate degree distribution and devise a stratified strategy using it in the complex networks. We also develop two graph sampling algorithms combining the node selection method with the stratified strategy. The experimental results show that our sampling algorithms preserve several properties of different graphs and behave more accurately than other algorithms. Further, we prove the proposed algorithms are superior to the off-the-shelf algorithms in terms of the unbiasedness of the degrees and more efficient than state-of-the-art FFS and ES-i algorithms.
Cite
@article{arxiv.1801.04624,
title = {Enhancing Stratified Graph Sampling Algorithms based on Approximate Degree Distribution},
author = {Junpeng Zhu and Hui Li and Mei Chen and Zhenyu Dai and Ming Zhu},
journal= {arXiv preprint arXiv:1801.04624},
year = {2018}
}
Comments
10 pages, 23 figures, the concept of approximate degree distribution, scale-free networks, graph sampling methods, stratified technology