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IPC: A Benchmark Data Set for Learning with Graph-Structured Data
Other Publications (Forschungsberichte o. ä.)
 
ID 4526722
Author(s) Ferber, Patrick; Ma, Tengfei; Huo, Siyu; Chen, Jie; Katz, Michael
Author(s) at UniBasel Ferber, Patrick
Year 2019
Title IPC: A Benchmark Data Set for Learning with Graph-Structured Data
Journal/Series title Proceedings in the ICML 2019 Workshop on Learning and Reasoning with Graph-Structured Representations
Pages 6
Publisher AAAI Press
ISSN/ISBN 2334-0843
URL https://graphreason.github.io/papers/5.pdf
Keywords Graph-Structured Data, Data Set, Machine Learning, International Planning Competition
Abstract Benchmark data sets are an indispensable ingredient of the evaluation of graph-based machine learning methods. We release a new data set, compiled from International Planning Competitions (IPC), for benchmarking graph classification, regression, and related tasks. Apart fromthe graph construction (based on AI planning problems) that is interesting in its own right, the data set possesses distinctly different characteristics from popularly used benchmarks. The dataset, named IPC, consists of two self-contained versions, grounded and lifted, both including graphs of large and skewedly distributed sizes,posing substantial challenges for the computation of graph models such as graph kernels and graph neural networks. The graphs in this data set are directed and the lifted version is acyclic, offering the opportunity of benchmarking specialized models for directed (acyclic) structures. Moreover, the graph generator and the labelingare computer programmed; thus, the data set may be extended easily if a larger scale is desired.
edoc-URL https://edoc.unibas.ch/74628/
Full Text on edoc Available
ISI-Number INSPEC:18962676
 
   

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