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ECML PKDD (journal track) 2021 : European Conference on Machine Learning and Principles and Practice of Knowledge Discovery in Databases

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Link: https://2021.ecmlpkdd.org/?page_id=1341
 
When Sep 13, 2021 - Sep 17, 2021
Where Bilbao, Spain
Submission Deadline TBD
Categories    machine learning   data mining   knowledge discovery
 

Call For Papers

**Our apologies if you receive multiple copies of this CFP**

*CALL FOR PAPERS*
the journal track of the European Conference on Machine Learning and Principles and Practice of Knowledge Discovery in Databases (ECML PKDD 2021), Bilbao, Spain.
https://2021.ecmlpkdd.org/

*SCOPE AND MOTIVATION*
This event is the premier European machine learning and data mining conference. The papers accepted for the journal track will be published in the Machine Learning Journal and the Data Mining and Knowledge Discovery Journal. Papers on all topics related to machine learning, knowledge discovery and data mining are invited. However, given the special nature of the journal track, only papers that satisfy the quality criteria of journal papers and at the same time lend themselves to conference talks will be considered.

*IMPORTANT DATES*
- ***Continuous Submissions *** from September 2020 to early May 2021.
- Initial Decision: approximately 10 weeks after each cut off date in the submission period.
- Notification of Acceptance: revised papers will be re-reviewed and accepted papers, especially those that were submitted to the later deadlines, may be included in the ECMLPKDD 2022 special issue.
- Conference: 13th to the 17th of September 2021.

For more information on submitting a paper to the Journal Track ECML PKDD 2021 please visit (https://2021.ecmlpkdd.org/?page_id=1341).

*ORGANIZING COMMITTEE*
Jose A. Lozano, Basque Center for Applied Mathematics, Spain.
Nuria Oliver, Vodafone and Data-Pop Alliance, UK.
Fernando Pérez-Cruz, Swiss Data Science Center, Switzerland.
Stefan Kramer, Johannes Gutenberg Universität Mainz, Germany.
Jeese Read, École Polytechnique, France.
Sergio Escalera, Universitat de Barcelona, Spain.
Heike Tratmaun, Universitat Münster, Germany.
Annalisa Appice, Università degli Studi di Bari, Italy.
Jose A. Gámez, Universidad de Castilla-La Mancha, Spain.
Iñaki Inza, University of the Basque Country, Spain.
Alexander Mendiburu, University of the Basque Country, Spain.
Santiago Mazuelas, Basque Center for Applied Mathematics, Spain.
Aritz Pérez, Basque Center for Applied Mathematics, Spain.
Sophie Burkhardt, Johannes Gutenberg Universität Mainz, Germany.
Julia Sidorova, Universidad Complutense de Madrid, Spain.
Alipio Jorge, University of Porto, Portugal.
Yun Sing Koh, University of Auckland, New Zealand.
Tania Cerquitelli, Politecnico di Torino, Italy.
Jeronimo Hernandez, Spanish National Research Council, Spain.
Zahra Ahmadi, Johannes Gutenberg Universität Mainz, Germany.

We look forward to welcoming you in Bilbao.

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