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EvoApps-EML 2020 : EvoApps Special Session on Evolutionary Machine Learning | |||||||||||
Link: http://www.evostar.org/2020/evoapps/eml/ | |||||||||||
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Call For Papers | |||||||||||
The Special Session on Evolutionary Machine Learning (EML) of Evo Apps will provide a specialized forum of discussion and exchange of information for researchers interested in exploring approaches that combine nature and nurture, with the long-term goal of evolving Artificial Intelligence (AI).
Giving response to the growing interest in the area, and consequent advances of the state-of-the-art, the special session covers theoretical and practical advances on the combination of Evolutionary Computation (EC) and Machine Learning (ML) techniques. Topics of interest include, but are not limited to: - EC as an ML technique: Using EC to solve typical ML tasks such as Classification or Clustering - EC applied ML algorithms: Neuroevolution, Feature Selection, Feature Engineering, Evolutionary Adversarial Models - ML applied to EC: Surrogate-model design by ML for EC, Learning Problem Structure, ML for Diversity, Designing Search Strategies, Predicting Promising Regions, Using ML to Decrease Computational Effort - Real world applications issues: EC for Fairness, Robustness, Trustworthiness and Explainability; Green EML - Emerging topics: EC for AutoML; EC for Transfer Learning; EC for Multitasking; Evolving Learning Functions, Neurons and Linkage; EC for Verification and Validation of ML Important Dates Extended! Submission deadline: 15 November 2019 Evo*: 15-17 April 2020 Submission details: Submissions must be original and not published elsewhere. They will be peer reviewed by members of the program committee. The reviewing process will be double-blind, so please omit information about the authors in the submitted paper. Submit your manuscript in Springer LNCS format and provide up to five keywords in your Abstract. Page limit: 16 pages Submission link: https://easychair.org/conferences/?conf=evo2020 Organizers Penousal Machado Wolfgang Banzhaf |
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