CALL FOR CONTRIBUTIONS

The ICML 2015 Workshop on Automatic Machine Learning (AutoML)
Collocated with ICML in Lille, France on Saturday, July 11, 2015
Web: http://icml2015.automl.org
Email: icml2...@automl.org

----------------------------------------------------------------
Important Dates:
  Submission deadline: 1 May, 2015, 11:59pm UTC-12
  Notification: 10 May, 2015
  Submission deadline (late breaking papers): 8 June, 2015, 11:59pm UTC-12
  Notification (late breaking papers): 18 June, 2015
----------------------------------------------------------------

Workshop Overview:
Machine learning has achieved considerable successes in recent years, but
these successes crucially rely on human machine learning experts, who
select appropriate features, workflows, machine learning paradigms,
algorithms, and their hyperparameters. 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 can be
used easily and 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, such as:

- Model selection, hyper-parameter optimization, and model search
- Representation learning and automatic feature extraction / construction
- Reusable workflows and automatic generation of workflows
- Meta learning and transfer learning
- Automatic problem "ingestion" (from raw data and miscellaneous formats)
- Feature coding/transformation to match requirements of different learning
algorithms
- Automatically detecting and handling skewed data and/or missing values
- Automatic leakage detection
- Matching problems to methods/algorithms (beyond regression and
classification)
- Automatic acquisition of new data (active learning, experimental design)
- Automatic report writing (providing insight on the data analysis
performed automatically)
- User interfaces for AutoML (e.g., “Turbo Tax for Machine Learning”)
- Automatic inference and differentiation
- Automatic selection of evaluation metrics
- Automatic creation of appropriately sized and stratified train,
validation, and test sets
- Parameterless, robust algorithms
- Automatic selection of algorithms to satisfy time/space/power constraints
at train-time or at run-time
- Run-time protection wrappers to detect data shift and other causes of
prediction failure

We encourage contributions in any of these areas; for submission details
please see http://icml2015.automl.org.

Invited speakers:
- David Duvenaud: Automatic Model Construction with Gaussian Processes
- Matt Hoffman: Bandits and Bayesian optimization for AutoML
- Jürgen Schmidhuber (tentative)
- Michele Sebag: Algorithm Recommendation as Collaborative Filtering
- Joaquin Vanschoren: OpenML: A Foundation for Networked & Automatic
Machine Learning

Organizers:
- Frank Hutter
- Balazs Kégl
- Rich Caruana
- Isabelle Guyon
- Hugo Larochelle
- Evelyne Viegas
_______________________________________________
uai mailing list
uai@ENGR.ORST.EDU
https://secure.engr.oregonstate.edu/mailman/listinfo/uai

Reply via email to