posted by organizer: sanchezGala || 16241 views || tracked by 6 users: [display]

INIT/AERFAI SSML 2020 : INIT/AERFAI Summer School on Machine Learning


When Jun 15, 2020 - Jun 19, 2020
Where Benicàssim (Spain)
Submission Deadline May 15, 2020
Notification Due May 15, 2020
Final Version Due May 15, 2020
Categories    machine learning   pattern recognition   data mining   big data

Call For Papers

The INIT/AERFAI Summer School on Machine Learning is organized by the Institute of New Imaging Technologies of the University Jaume I of Castelló, and co-sponsored by the Spanish Association of Pattern Recognition and Image Analysis. The focus of this Summer School is to study fundamental and advanced methods aimed at discovering new challenges and trends of Machine Learning, Data Analysis and Data Mining, from theory to practice. This event is open to graduate students, researchers and professionals who are interested in learning or refreshing their knowledge about this exciting field.

The Summer School is organized as a five-days intensive course to be held June 15-19, 2020 in Benicàssim (Spain). Leading experts in their respective areas shall give each tutorial, which may be accompanied with a practice session and/or demos in order for participants to gain a better understanding of the theory. There will also be a non-formal poster session in which the participants can present their current works and interact with their scientific peers. The best poster will be awarded with a prize.


Feature Selection and Casuality
Dr. Gavin Brown – University of Manchester (UK)

Probabilistic Graphical Models
Prof. Thomas D. Nielsen – Aalborg University (Denmark)

Ensemble Learning for Data Stream Analysis
Prof. dr. Michał Woźniak – Wroclaw University of Science and Technology (Poland)

Adversarial Machine Learning
Dr. Battista Biggio – University of Cagliari (Italy)

Semi-Supervised, Active and Transfer Learning
Dr. Marco Loog – Delft University of Technology (The Netherlands) and University of Copenhagen (Denmark)

Reinforcement Learning
Prof. Olivier Pietquin – Google Brain (France)

Multi-Criteria Decision Analysis for Machine Learning
Dr. Luis C. Dias – University of Coimbra (Portugal)

Statistical Analysis for Machine Learning Experiments
Prof. dr. Janez Demšar – University of Ljubljana (Slovenia)

Big Data Preprocessing: Smart Data
Prof. Salvador García, Dr. Julián Luengo – University of Granada (Spain)

Related Resources

IEEE COINS 2022   IEEE COINS 2022: Hybrid (3 days on-site | 2 days virtual)
Federated Learning in IOT Cybersecurity 2021   PeerJ Computer Science - Federated Learning for Cybersecurity in Internet of Things
FAIML 2022   2022 International Conference on Frontiers of Artificial Intelligence and Machine Learning (FAIML 2022)
IEEE COINS 2022   Internet of Things IoT | Artificial Intelligence | Machine Learning | Big Data | Blockchain | Edge & Cloud Computing | Security | Embedded Systems |
MLDM 2022   18th International Conference on Machine Learning and Data Mining
ICDM 2022   22th Industrial Conference on Data Mining
ICML 2022   39th International Conference on Machine Learning
ICADCML 2022   3rd International Conference on Advances in Distributed Computing and Machine Learning - 2022
IJCNN 2023   International Joint Conference on Neural Networks
MDPI computers 2022   MDPI computers Special Issue on GPU based Applications in Machine Learning - Open for submission