TY - DATA T1 - Code, Data, and Experimental Results for "Boosting Revisited: Benchmarking and Advancing LP-Based Ensemble Methods" PY - 2025/10/22 AU - Fabian Akkerman AU - Julien Ferry AU - Christian Artigues AU - Emmanuel Hebrard AU - Thibaut Vidal UR - DO - 10.4121/f82dcdaa-fc94-43c5-b66d-02579bd3de4f.v1 KW - Transparent, Interpretable, Explainable ML KW - Linear programming KW - Machine Learning KW - Ensemble model N2 -
This dataset contains (1) all code needed to reproduce our results, (2) the 20 data sets on which we report results, and (3) all experiment results, related to the paper: "Boosting Revisited: Benchmarking and Advancing LP-Based Ensemble Methods" as published in TMLR, see: https://openreview.net/forum?id=lscC4PZUE4.
The code is written in Python 3.12, a README inside the zipped code folder provides more details on setting up and running the code.
In the zipped data sets folder, we provide a README with more information on our preprocessing steps and links to the orginal sources from which we retrieved the data sets.
Each experiment is outputted to a JSON file. We include both the results as reported in the paper (the best-found hyperparameter setting) and all experiments related to other hyperparameter settings. The JSON files are organized in zipped folders per experiment type. See the README for further details.
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