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SauravMaheshkar/email-Eu-25

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Hugging Face2024-04-04 更新2024-06-11 收录
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资源简介:
--- license: unknown task_categories: - graph-ml configs: - config_name: transductive data_files: - split: train path: processed/transductive/train_df.csv - split: valid path: processed/transductive/val_df.csv - split: test path: processed/transductive/test_df.csv - config_name: inductive data_files: - split: train path: processed/inductive/train_df.csv - split: valid path: processed/inductive/val_df.csv - split: test path: processed/inductive/test_df.csv - config_name: raw data_files: raw/*.txt --- Source Paper: https://arxiv.org/abs/1802.06916 ### Usage ``` from torch_geometric.datasets.cornell import CornellTemporalHyperGraphDataset dataset = CornellTemporalHyperGraphDataset(root = "./", name="email-Eu-25", split="train") ``` ### Citation ```misc @article{Benson-2018-simplicial, author = {Benson, Austin R. and Abebe, Rediet and Schaub, Michael T. and Jadbabaie, Ali and Kleinberg, Jon}, title = {Simplicial closure and higher-order link prediction}, year = {2018}, doi = {10.1073/pnas.1800683115}, publisher = {National Academy of Sciences}, issn = {0027-8424}, journal = {Proceedings of the National Academy of Sciences} } ```

许可证:未知 任务类别: - 图机器学习(Graph-ML) 配置项: - 配置名称:直推式(transductive) 数据文件: - 数据集划分:训练集,路径:processed/transductive/train_df.csv - 数据集划分:验证集,路径:processed/transductive/val_df.csv - 数据集划分:测试集,路径:processed/transductive/test_df.csv - 配置名称:归纳式(inductive) 数据文件: - 数据集划分:训练集,路径:processed/inductive/train_df.csv - 数据集划分:验证集,路径:processed/inductive/val_df.csv - 数据集划分:测试集,路径:processed/inductive/test_df.csv - 配置名称:原始数据集(raw) 数据文件:raw/*.txt 来源论文:https://arxiv.org/abs/1802.06916 ### 使用方法 python from torch_geometric.datasets.cornell import CornellTemporalHyperGraphDataset dataset = CornellTemporalHyperGraphDataset(root = "./", name="email-Eu-25", split="train") ### 引用格式 misc @article{Benson-2018-simplicial, author = {Benson, Austin R. and Abebe, Rediet and Schaub, Michael T. and Jadbabaie, Ali and Kleinberg, Jon}, title = {Simplicial closure and higher-order link prediction}, year = {2018}, doi = {10.1073/pnas.1800683115}, publisher = {美国国家科学院}, issn = {0027-8424}, journal = {美国国家科学院院刊} }
提供机构:
SauravMaheshkar
原始信息汇总

数据集概述

许可

  • 许可证:未知

任务类别

  • 图机器学习(graph-ml)

配置信息

  • 配置名称:transductive

    • 训练数据文件:processed/transductive/train_df.csv
    • 验证数据文件:processed/transductive/val_df.csv
    • 测试数据文件:processed/transductive/test_df.csv
  • 配置名称:inductive

    • 训练数据文件:processed/inductive/train_df.csv
    • 验证数据文件:processed/inductive/val_df.csv
    • 测试数据文件:processed/inductive/test_df.csv
  • 配置名称:raw

    • 原始数据文件:raw/*.txt
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