{"id":127522,"identifier":"TIZ9II","persistentUrl":"https://doi.org/10.18710/TIZ9II","protocol":"doi","authority":"10.18710","publisher":"DataverseNO","publicationDate":"2022-03-30","storageIdentifier":"S3://10.18710/TIZ9II","datasetVersion":{"id":3943,"datasetId":127522,"datasetPersistentId":"doi:10.18710/TIZ9II","storageIdentifier":"S3://10.18710/TIZ9II","versionNumber":1,"versionMinorNumber":1,"versionState":"RELEASED","lastUpdateTime":"2023-09-28T22:42:39Z","releaseTime":"2023-09-28T22:42:39Z","createTime":"2023-09-28T16:19:27Z","publicationDate":"2022-03-30","citationDate":"2022-03-30","license":{"name":"CC0 1.0","uri":"http://creativecommons.org/publicdomain/zero/1.0","iconUri":"https://licensebuttons.net/p/zero/1.0/88x31.png"},"fileAccessRequest":true,"metadataBlocks":{"citation":{"displayName":"Citation Metadata","name":"citation","fields":[{"typeName":"title","multiple":false,"typeClass":"primitive","value":"Benchmark dataset for graph classification"},{"typeName":"subtitle","multiple":false,"typeClass":"primitive","value":"Replication Data for: Pyramidal Reservoir Graph Neural Network"},{"typeName":"author","multiple":true,"typeClass":"compound","value":[{"authorName":{"typeName":"authorName","multiple":false,"typeClass":"primitive","value":"Bianchi, Filippo Maria"},"authorAffiliation":{"typeName":"authorAffiliation","multiple":false,"typeClass":"primitive","value":"UiT The Arctic University of Norway"},"authorIdentifierScheme":{"typeName":"authorIdentifierScheme","multiple":false,"typeClass":"controlledVocabulary","value":"ORCID"},"authorIdentifier":{"typeName":"authorIdentifier","multiple":false,"typeClass":"primitive","value":"0000-0002-7145-3846"}}]},{"typeName":"datasetContact","multiple":true,"typeClass":"compound","value":[{"datasetContactName":{"typeName":"datasetContactName","multiple":false,"typeClass":"primitive","value":"Bianchi, Filippo Maria"},"datasetContactAffiliation":{"typeName":"datasetContactAffiliation","multiple":false,"typeClass":"primitive","value":"UiT The Arctic University of Norway"},"datasetContactEmail":{"typeName":"datasetContactEmail","multiple":false,"typeClass":"primitive","value":"filippo.m.bianchi@uit.no"}}]},{"typeName":"dsDescription","multiple":true,"typeClass":"compound","value":[{"dsDescriptionValue":{"typeName":"dsDescriptionValue","multiple":false,"typeClass":"primitive","value":"
This repository contains datasets to quickly test graph classification algorithms, such as Graph Kernels and Graph Neural Networks.
\n\nThe purpose of this dataset is to make the features on the nodes and the adjacency matrix to be completely uninformative if considered alone. Therefore, an algorithm that relies only on the node features or on the graph structure will fail to achieve good classification results.
\n\nA more detailed description of the dataset construction can be found on the Github page (https://github.com/FilippoMB/Benchmark_dataset_for_graph_classification), in the original publication and in the original publication: Bianchi, Filippo Maria, Claudio Gallicchio, and Alessio Micheli. \"Pyramidal Reservoir Graph Neural Network.\" Neurocomputing 470 (2022): 389-404, and in the README.txt file.
"},"dsDescriptionDate":{"typeName":"dsDescriptionDate","multiple":false,"typeClass":"primitive","value":"2022-03-17"}}]},{"typeName":"subject","multiple":true,"typeClass":"controlledVocabulary","value":["Mathematical Sciences"]},{"typeName":"keyword","multiple":true,"typeClass":"compound","value":[{"keywordValue":{"typeName":"keywordValue","multiple":false,"typeClass":"primitive","value":"Graph classification"}},{"keywordValue":{"typeName":"keywordValue","multiple":false,"typeClass":"primitive","value":"Machine Learning"}},{"keywordValue":{"typeName":"keywordValue","multiple":false,"typeClass":"primitive","value":"Graph Neural Networks"}}]},{"typeName":"publication","multiple":true,"typeClass":"compound","value":[{"publicationCitation":{"typeName":"publicationCitation","multiple":false,"typeClass":"primitive","value":"Bianchi, Filippo Maria, Claudio Gallicchio, and Alessio Micheli. \"Pyramidal Reservoir Graph Neural Network.\" Neurocomputing 470 (2022): 389-404."},"publicationIDType":{"typeName":"publicationIDType","multiple":false,"typeClass":"controlledVocabulary","value":"doi"},"publicationIDNumber":{"typeName":"publicationIDNumber","multiple":false,"typeClass":"primitive","value":"10.1016/j.neucom.2021.04.131"},"publicationURL":{"typeName":"publicationURL","multiple":false,"typeClass":"primitive","value":"https://doi.org/10.1016/j.neucom.2021.04.131"}}]},{"typeName":"language","multiple":true,"typeClass":"controlledVocabulary","value":["English"]},{"typeName":"producer","multiple":true,"typeClass":"compound","value":[{"producerName":{"typeName":"producerName","multiple":false,"typeClass":"primitive","value":"UiT The Arctic University of Norway"},"producerAbbreviation":{"typeName":"producerAbbreviation","multiple":false,"typeClass":"primitive","value":"UiT"},"producerURL":{"typeName":"producerURL","multiple":false,"typeClass":"primitive","value":"https://en.uit.no/"}}]},{"typeName":"distributor","multiple":true,"typeClass":"compound","value":[{"distributorName":{"typeName":"distributorName","multiple":false,"typeClass":"primitive","value":"UiT The Arctic University of Norway"},"distributorAffiliation":{"typeName":"distributorAffiliation","multiple":false,"typeClass":"primitive","value":"UiT The Arctic University of Norway"},"distributorURL":{"typeName":"distributorURL","multiple":false,"typeClass":"primitive","value":"https://dataverse.no/dataverse/uit"}}]},{"typeName":"depositor","multiple":false,"typeClass":"primitive","value":"Bianchi, Filippo Maria"},{"typeName":"dateOfDeposit","multiple":false,"typeClass":"primitive","value":"2022-03-17"},{"typeName":"kindOfData","multiple":true,"typeClass":"primitive","value":["Synthetic data"]},{"typeName":"software","multiple":true,"typeClass":"compound","value":[{"softwareName":{"typeName":"softwareName","multiple":false,"typeClass":"primitive","value":"Python (Numpy)"}}]}]}},"files":[{"description":"Dataset description","label":"00README.txt","restricted":false,"version":1,"datasetVersionId":3943,"dataFile":{"id":128691,"persistentId":"doi:10.18710/TIZ9II/RUL6SV","pidURL":"https://doi.org/10.18710/TIZ9II/RUL6SV","filename":"00README.txt","contentType":"text/plain","filesize":10950,"description":"Dataset 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Filippo Maria, 2022, \"Benchmark dataset for graph classification\", https://doi.org/10.18710/TIZ9II, DataverseNO, V1"}}