Metropolis Algorithms for Representative Subgraph Sampling

‏‏‎ ‎ 2020 Christian HüblerHans-Peter KriegelKarsten BorgwardtZoubin Ghahramani

While data mining in chemoinformatics studied graph data with dozens of nodes, systems biology and the Internet are now generating graph data with thousands and millions of nodes. Hence data mining faces the algorithmic challenge of coping with this significant increase in graph size: Classic algorithms for data analysis are often too expensive and too slow on large graphs... (read more)

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