Workshop
Challenges in Machine Learning workshop (CiML 2014)
Isabelle Guyon · Evelyne Viegas · Percy Liang · Olga Russakovsky · Rinat Sergeev · Gábor Melis · Michele Sebag · Gustavo Stolovitzky · Jaume Bacardit · Michael S Kim · Ben Hamner

Fri Dec 12th 08:30 AM -- 06:30 PM @ Level 5; room 511 c
Event URL: http://ciml.chalearn.org »

Challenges in Machine Learning have proven to be efficient and cost-effective ways to quickly bring to industry solutions that may have been confined to research. In addition, the playful nature of challenges naturally attracts students, making challenge a great teaching resource. Challenge participants range from undergraduate students to retirees, joining forces in a rewarding environment allowing them to learn, perform research, and demonstrate excellence. Therefore challenges can be used as a means of directing research, advancing the state-of-the-art or venturing in completely new domains.

Yet, despite initial successes and efforts made to facilitate challenge organization with the availability of competition platforms, little effort has been put into the theoretical foundations of challenge design and the optimization of challenge protocols. This workshop will bring together workshop organizers, platform providers, and participants to discuss best practices in challenge organization and new methods and application opportunities to design high impact challenges. The themes to be discussed will include new paradigms of challenge organization to tackle complex problems (e.g. tasks involving multiple data modalities and/or multiple levels of processing).

Author Information

Isabelle Guyon (U. Paris-Saclay & ChaLearn)
Evelyne Viegas (Microsoft Research)
Percy Liang (Stanford University)
Olga Russakovsky (Princeton University)
Rinat Sergeev (Harvard)
Gábor Melis (Google Deepmind)
Michele Sebag (Universite Paris-Sud, CNRS)
Gustavo Stolovitzky (IBM Research)
Jaume Bacardit (Newcastle University)
Michael S Kim (Virginia Tech)
Ben Hamner (Kaggle)

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