241 to 250 of 846 Results
Apr 9, 2025 -
Replication Data for: An entropy-based evaluation of conceptual constraints in hybrid hydrological models
Python Source Code - 21.3 KB -
MD5: 933984ef65287c1314b907e614c6067c
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Apr 9, 2025 -
Replication Data for: An entropy-based evaluation of conceptual constraints in hybrid hydrological models
ZIP Archive - 18.4 KB -
MD5: 934d31b87c9e5e48157bfa0734edaea9
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Mar 28, 2025
Spatiotemporal ensembles often result from physical simulations. These ensembles contain many information-rich members, each corresponding to different simulation input parameters. The extensive data size makes manual analysis infeasible, necessitating automated approaches to assist the analysis. In the preceding project (PN 6-8 (I)), methods and t... |
Nov 20, 2024
This Dataverse contains replication data and visualizations from Project Network 6-15: Machine Learning and Reservoir Computing with Many-Body Dynamics. The project is part of SimTech’s Project Network 6, Machine Learning for Simulation (https://www.simtech.uni-stuttgart.de/exc/research/pn/pn6/ ). The Dataverse includes simulations of non-equilibri... |
Nov 5, 2024 -
Code and Data for: Better by default: Strong pre-tuned MLPs and boosted trees on tabular data [NeurIPS, arXiv v2]
Plain Text - 141.2 GB -
MD5: a2cd5043064bd20b28f90dc724f7a4fd
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Nov 5, 2024 -
Code and Data for: Better by default: Strong pre-tuned MLPs and boosted trees on tabular data [NeurIPS, arXiv v2]
Plain Text - 90.5 GB -
MD5: ea203d35daf3fe13e8c32b93d0488c0c
Results for inner cross-validation / refitting of RealMLP-TD and LGBM-TD. |
Nov 5, 2024 -
Code and Data for: Better by default: Strong pre-tuned MLPs and boosted trees on tabular data [NeurIPS, arXiv v2]
Plain Text - 16.7 GB -
MD5: 6caba3a60faaad1b7a91b03e06c035d2
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Nov 5, 2024 -
Code and Data for: Better by default: Strong pre-tuned MLPs and boosted trees on tabular data [NeurIPS, arXiv v2]
ZIP Archive - 1.1 MB -
MD5: e4e6f5dca291e6c59f5135ab1a1d63a8
Code for running the old version of the Grinsztajn. et al (2022) benchmark with our models. |
Nov 5, 2024 -
Code and Data for: Better by default: Strong pre-tuned MLPs and boosted trees on tabular data [NeurIPS, arXiv v2]
Gzip Archive - 87.2 MB -
MD5: 04efd949409a882d3fb3c18371d451fa
Results on the old version of the Grinsztajn et al. (2022) benchmark. |
Nov 5, 2024 -
Code and Data for: Better by default: Strong pre-tuned MLPs and boosted trees on tabular data [NeurIPS, arXiv v2]
Plain Text - 118.8 GB -
MD5: d02951865e99ef832a137804cce02b47
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