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Artificial Graph Dataset Generator

This Python package generates synthetic graphs with a fixed graph edit distance. The generated datasets can be used to robustly train deep learning algorithms to compute the graph edit distance between two graphs. The same datasets can be used to compare different graph edit distance algorithms. Two methods are implemented: Once and All. In the Once method, the input parameters are an input graph called the seed and a stay probability (a numerical value between zero and one). The All method requires an input graph called Seed and a flip probability (a numerical value between zero and one). For the Once and All methods, it is also possible to specify the number of samples that each method must generate. The code is written in Python and can be run on modest hardware. edit distance of two graphs (GED)

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  • Once_All_MCMC_Samplers

    GitHub repo containing the Python Implementation of Once and All strategies

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Additional Info
Field Value
Accessibility Both
AccessibilityMode Download
Associate Project FAIR
Basic rights Making available to the public
CreationDate 2025-03-26 14:00
Creator De Meo, Pasquale, pdemeo@unime.it, orcid.org/0000-0001-7421-216X
Field/Scope of use Any use
Group Others
Owner De Meo, Pasquale, pdemeo@unime.it, orcid.org/0000-0001-7421-216X
Programming Language Python
SoBigData Node SoBigData IT
SoBigData Node SoBigData EU
Sublicense rights No
Territory of use World Wide
Thematic Cluster Social Network Analysis [SNA]
system:type Method
Management Info
Field Value
Author De Meo Pasquale
Maintainer De Meo Pasquale
Version 1
Last Updated 31 March 2025, 09:05 (CEST)
Created 27 March 2025, 14:35 (CET)