Title
A brief Review of the ChaLearn AutoML Challenge: Any-time Any-dataset Learning without Human Intervention.
Abstract
The ChaLearn AutoML Challenge team conducted a large scale evaluation of fully auto-matic, black-box learning machines for feature-based classi cation and regression problems. The test bed was composed of 30 data sets from a wide variety of application domains and ranged across di erent types of complexity. Over six rounds, participants succeeded in delivering AutoML software capable of being trained and tested without human intervention. Although improvements can still be made to close the gap between human-tweaked and AutoML models, this competition contributes to the development of fully automated environments by challenging practitioners to solve problems under speci c constraints and sharing their approaches; the platform will remain available for post-challenge submissions at http://codalab.org/AutoML.
Year
Venue
Field
2016
AutoML@ICML
Data set,Computer science,Software,Artificial intelligence,Regression problems,Machine learning
DocType
Volume
Citations 
Conference
1
0
PageRank 
References 
Authors
0.34
0
13
Name
Order
Citations
PageRank
Isabelle Guyon1110331544.34
Imad Chaabane200.34
Hugo Jair Escalante393973.89
Sergio Escalera41415113.31
Damir Jajetic500.34
James Robert Lloyd61036.43
N. Maciá7434.89
Bisakha Ray831.77
Lukasz Romaszko900.34
Michèle Sebag101547138.94
Alexander Statnikov11134373.38
Sébastien Treguer1201.01
Evelyne Viegas1314012.03