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Abstract
The ChaLearn AutoML Challenge (The authors are in alphabetical order of last name, except the first author who did most of the writing and the second author who produced most of the numerical analyses and plots.) (NIPS 2015 – ICML 2016) consisted of six rounds of a machine learning competition of progressive difficulty, subject to limited computational resources. It was followed by a one-round AutoML challenge (PAKDD 2018). The AutoML setting differs from former model selection/hyper-parameter selection challenges, such as the one we previously organized for NIPS 2006: the participants aim to develop fully automated and computationally efficient systems, capable of being trained and tested without human intervention, with code submission. This chapter analyzes the results of these competitions and provides details about the datasets, which were not revealed to theparticipants. The solutions of the winners are systematically benchmarked over all datasets of all rounds and compared with canonical machine learning algorithms available in scikit-learn. All materials discussed in this chapter (data and code) havebeen made publicly available at http://automl.chalearn.org/.
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| automl-on-madeline | djajetic | Duration: 5842.12 Rank (AutoML5): 3.00 Set1 (F1): 0.7531 Set2 (PAC): 0.3905 Set3 (AUC): 0.6875 Set4 (ABS): 0.3067 Set5 (BAC): 0.5517 |
| automl-on-madeline | aad_freiburg | Duration: 5942.22 Rank (AutoML5): 1.60 Set1 (F1): 0.7947 Set2 (PAC): 0.4061 Set3 (AUC): 0.5543 Set4 (ABS): 0.2957 Set5 (BAC): 0.5900 |
| automl-on-madeline | postech.mlg_exbrain | Duration: 3343.64 Rank (AutoML5): 5.20 Set1 (F1): 0.7542 Set2 (PAC): 0.2802 Set3 (AUC): 0.3333 Set4 (ABS): 0.1507 Set5 (BAC): 0.5564 |
| automl-on-madeline | abhishek4 | Duration: 4353.45 Rank (AutoML5): 4.60 Set1 (F1): 0.7565 Set2 (PAC): 0.0172 Set3 (AUC): 0.2911 Set4 (ABS): 0.2791 Set5 (BAC): 0.5595 |
| automl-on-madeline | reference_mb | Duration: 4889.14 Rank (AutoML5): 5.20 Set1 (F1): 0.7005 Set2 (PAC): 0.3698 Set3 (AUC): 0.6776 Set4 (ABS): 0.2507 Set5 (BAC): 0.4618 |
| automl-on-madeline | marc.boulle | Duration: 4603.81 Rank (AutoML5): 6.40 Set1 (F1): 0.7005 Set2 (PAC): 0.3698 Set3 (AUC): -1.0000 Set4 (ABS): 0.2507 Set5 (BAC): 0.4618 |
| automl-on-madeline | reference | Duration: 4416.40 Rank (AutoML5): 4.40 Set1 (F1): 0.7556 Set2 (PAC): 0.0343 Set3 (AUC): 0.2927 Set4 (ABS): 0.2790 Set5 (BAC): 0.5601 |
| automl-on-madeline | reference_ls | Duration: 5879.88 Rank (AutoML5): 4.00 Set1 (F1): 0.7062 Set2 (PAC): 0.3708 Set3 (AUC): 0.5384 Set4 (ABS): 0.2856 Set5 (BAC): 0.5580 |
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