A Framework to Quantify Approximate Simulation on Graph Data
Abstract
Simulation and its variants (e.g., bisimulation and degree-preserving simulation) are useful in a wide spectrum of applications. However, all simulation variants are coarse "yes-or-no" indicators that simply confirm or refute whether one node simulates another, which limits the scope and power of their utility. Therefore, it is meaningful to develop a fractional -simulation measure to quantify the degree to which one node simulates another by the simulation variant . To this end, we first present several properties necessary for a fractional -simulation measure. Then, we present , a general fractional -simulation computation framework that can be configured to quantify the extent of all -simulations. Comprehensive experiments and real-world case studies show the measure to be effective and the computation framework to be efficient.
Keywords
Cite
@article{arxiv.2010.08938,
title = {A Framework to Quantify Approximate Simulation on Graph Data},
author = {Xiaoshuang Chen and Longbin Lai and Lu Qin and Xuemin Lin and Boge Liu},
journal= {arXiv preprint arXiv:2010.08938},
year = {2020}
}