CALL FOR CONTRIBUTIONS

The ICML 2016 Workshop on Automatic Machine Learning (AutoML)
Collocated with ICML in New York, June 23 or 24 (TBD), 2016
Web: http://icml2016.automl.org
Email: icml2...@automl.org

----------------------------------------------------------------
Important Dates:
 Submission deadline: 1 May, 2016, 11:59pm UTC-12 (May 1 anywhere in the
world)
 Notification: 10 May, 2016
 Submission deadline (late breaking papers): 1 June, 2016, 11:59pm UTC-12
 Notification (late breaking papers): 10 June, 2016
----------------------------------------------------------------

Workshop topic:
Machine learning has been very successful, but its successes rely on human
machine learning experts to define the learning problem, select, collect
and preprocess the training data, choose appropriate ML architectures (deep
learning, random forests, SVMs, …) and their hyperparameters, and finally
evaluate the suitability of the learned models for deployment. As the
complexity of these tasks is often beyond non-experts, the rapid growth of
machine learning applications has created a demand for off-the-shelf
machine learning methods that are more bullet-proof and can be used easily
without expert knowledge. We call the resulting research area that targets
progressive automation of machine learning AutoML.

AutoML aims to automate many different stages of the machine learning
process, and encourages contributions in any of the following (or related)
areas:
- Model selection, hyper-parameter optimization, and model search
- Meta learning and transfer learning
- Representation learning and automatic feature extraction / construction
- Demonstrations (demos) of working AutoML systems
- Automatic generation of workflows / workflow reuse
- Automatic problem "ingestion" (from raw data and miscellaneous formats)
- Automatic feature transformation to match algorithm requirements
- Automatic detection and handling of skewed data and/or missing values
- Automatic acquisition of new data (active learning, experimental design)
- Automatic report writing (providing insight on automatic data analysis)
- Automatic selection of evaluation metrics / validation procedures
- Automatic selection of algorithms under time/space/power constraints
- Automatic prediction post-processing and calibration
- Automatic leakage detection
- Automatic inference and differentiation
- User interfaces for AutoML

We especially encourage demos of working AutoML systems; demo proposals are
submitted through an accompanying paper. We also encourage the participants
of the AutoML challenge (http://automl.chalearn.org/) to submit a paper.
The best 2-3 papers will be invited for oral plenary presentation. All
other accepted papers will be presented as posters and short poster
spotlight presentations. We plan to invite the authors of high-quality
submissions to submit extended versions of their work for another round of
reviews and publication in the post-workshop proceedings.
For submission details please see http://icml2016.automl.org.

Invited speakers:
- Ryan Adams
- Nando de Freitas (conditional on attending ICML)
- Zoubin Ghahramani (conditional on attending ICML)
- Kevin Leyton-Brown (conditional on attending ICML)
- Kate Smith-Miles
- Alexandre Statnikov: The AutoML Challenge

Chairs: Frank Hutter, Lars Kotthoff, Joaquin Vanschoren
Organizing committee: Pavel Brazdil, Rich Caruana, Christophe
Giraud-Carrier, Isabelle Guyon, Balazs Kegl
_______________________________________________
uai mailing list
uai@ENGR.ORST.EDU
https://secure.engr.oregonstate.edu/mailman/listinfo/uai

Reply via email to