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CFP Special Issue of MLJ on Metalearning and Algorithm Selection

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Christophe Giraud-Carrier

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Nov 4, 2015, 7:24:43 AM11/4/15
to Metalearning and Algorithm Selection
Apologies for any cross-posting.

CFP for Special Issue on Metalearning and Algorithm Selection of Machine Learning Journal

Papers are solicited describing recent work in the area of algorithm selection and configuration which arises in many diverse domains, such as machine learning, data mining, optimization and satisfiability solving. Metalearning leverages knowledge of past algorithm applications for selecting the best techniques for the current problem. The aim of this call is to gather submissions that discuss diverse approaches for the algorithm selection and configuration problem, with the aim of identifying the potentially best algorithm(s) for a new task, based on meta-level information and prior or current experiments.  Many contemporary problems require that solutions be elaborated in the form of workflows which include different processes or operations, including configuration of algorithms or preprocessing, besides simple algorithm selection.  Constructing such workflows requires extensive expertise. Contributions are welcome that address how approaches to algorithm selection and configuration could be extended to this more challenging setting.  Potential authors may consider the following list of topics as guidance when preparing the submission. This list is not exhaustive, as other topics that are strongly associated with algorithm selection and meta-learning may also be considered.
Algorithm / Model selection and configuration
Meta-learning and exploitation of meta-knowledge
Experimentation and evaluation of learning processes
Hyper-parameter optimization
Planning to learn and to construct workflows
Exploitation of ontologies of tasks and methods
Exploitation of benchmarks and experimentation
Representation of learning goals and states in learning
Control and coordination of learning processes
Meta-reasoning
Layered learning
Multi-task and transfer learning
Learning to learn

Deadlines
Paper submission:  10 February 2016 
Acceptance decision: 31 April 2016 

Submission process
Authors should follow the standard procedure for submitting papers to MLJ, and use the Editorial Manager (EM)  (http://MACH.edmgr.com/), identifying Article Type as  Metalearning and Algorithm Selection.


Editors
Pavel Brazdil, University of Porto, Portugal, pbrazdil AT inescporto.pt
Christophe Giraud-Carrier, Brigham Young University, USA

Reviewing process and reviewers
An experienced team of reviewers with expertise in metalearning will carry out the review of all papers according to MLJ standards. All reviewing will be done in collaboration with the Journal Editorial Office (JEO).
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