Some of the data underlying the publication "Fighting the curse of dimensionality: A machine learning approach to finding global optima"
doi:10.4121/17111648.v1
The doi above is for this specific version of this dataset, which is currently the latest. Newer versions may be published in the future.
For a link that will always point to the latest version, please use
doi: 10.4121/17111648
doi: 10.4121/17111648
Datacite citation style:
Julian Schumann (2021): Some of the data underlying the publication "Fighting the curse of dimensionality: A machine learning approach to finding global optima". Version 1. 4TU.ResearchData. dataset. https://doi.org/10.4121/17111648.v1
Other citation styles (APA, Harvard, MLA, Vancouver, Chicago, IEEE) available at Datacite
Dataset
The data assembled here should allow the reproduction of the Figures 4 and 6 from the mentioned paper. The corresponding code can be found at https://github.com/julianschumann/ae-opt.
history
- 2021-12-03 first online, published, posted
publisher
4TU.ResearchData
format
.h5
.npy
organizations
TU Delft, Faculty of Mechanical, Maritime and Materials Engineering (3mE)
DATA
files (2)
- 100,151,460 bytesMD5:
8fb59bbe5abe4db98ebb65ed936749be
Sample_data_4.zip - 254,026,315 bytesMD5:
bbf5589067cd62dddacb466fa34ba434
Sample_data_6.zip -
download all files (zip)
354,177,775 bytes unzipped