Discovery Science 2022

When:
22/04/2022 all-day
2022-04-22T02:00:00+02:00
2022-04-22T02:00:00+02:00

Date : 2022-04-22
Lieu : Montpellier, France

The 25th International Conference on Discovery Science (DS 2022)

https://ds2022.sciencesconf.org/

Montpellier, France, October, 10-12, 2022

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COVID-19
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We hope that by October the world will have returned to normality and we can welcome you in Montpellier. However, in case the COVID-19 risk persists and traveling is difficult, DS 2022 will take place either as a mixed event by offering both remote and on site presentation options or as a fully online event in the worst case. The accepted papers will still be published by Springer and the special issue will proceed as announced. In these challenging times that the whole of humanity is going through, we hope that all of you are safe and remain healthy.

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::: Scope :::
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The 25th International Conference on Discovery Science (DS 2022) provides an open forum for
intensive discussions and exchange of new ideas among researchers working in the area of Discovery Science. The scope of the conference includes the development and analysis of methods for discovering scientific knowledge, coming from machine learning, data mining, intelligent data analysis, big data analysis as well as their application in various scientific domains.

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::: Submission Topics :::
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We invite submissions of research papers addressing all aspects of discovery science: papers that focus on the analysis of different types of massive and complex data, including structured, spatio-temporal and network data. We would also like to encourage contributions from the areas of computational scientific discovery, mining scientific data, computational creativity and discovery informatics.
We particularly welcome papers addressing applications from different domains of science including biomedicine and life sciences, astronomy, physics, chemistry, as well as social sciences. Applications to massive, heterogeneous, continuous or imprecise data sets are of particular interests. Possible topics include, but are not limited to:

Knowledge discovery, machine learning and statistical methods
Ubiquitous Knowledge Discovery
Data Streams, Evolving Data and Models
Change Detection and Model Maintenance
Active Knowledge Discovery
Information extraction from scientific literature
Knowledge discovery from heterogeneous, unstructured and multimedia data
Data and knowledge visualization
Planning to Learn
Knowledge Transfer
Computational Creativity
Human-machine interaction for knowledge discovery and management
Evaluation of models and predictions in discovery setting
Causality modelling
AutoML, meta-learning, planning to learn
Explainable AI, interpretability of machine learning and deep learning models
Learning from complex data
Graphs, networks, linked and relational data
Spatial, temporal and spatiotemporal data
Unstructured data, including textual and web data
Multimedia data
AI frameworks for discovery in scientific domains
Biomedical knowledge discovery, analysis of (multi)omics, micro-array, gene deletion, gene set enrichment data
Machine Learning for High-Performance Computing, Grid and Cloud Computing
Applications of the above techniques in scientific domains, such as
Physical sciences (e.g., materials sciences, particle physics)
Life sciences (e.g., systems biology/systems medicine)
Environmental sciences
Life Sciences
Natural and social sciences

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::: Publishing :::
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Traditionally the proceedings of DS series appear in the Lecture Notes in Artificial Intelligence Series by Springer-Verlag. In addition, authors of best papers will be invited to submit their extended versions to a special issue on Discovery Science of the Machine Learning journal published by Springer. Fast Track Processing will be used to have them reviewed and published.

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::: IMPORTANT DATES :::
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Abstract submission: May 23, 2022
Full paper submission: May 30, 2022
Notification: July 20, 2022
Camera ready version, author registration: August 8, 2022
Conference: October 10-12, 2022

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::: Submission guidelines :::
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Regular research papers may contain up to fifteen (15) pages and must be formatted according to the layout supplied by Springer-Verlag for the Lecture Notes in Computer Science series. The Program Committee reserves the right to offer acceptance as Short Papers (10 pages in the Proceedings) to some submissions. The reviews are single-blind. You do not need to anonymize your submission.
Submitted papers may not have appeared in or be under consideration for another workshop, conference or a journal, nor may they be under review or submitted to another forum during the DS 2022 review process.
We encourage all authors to include their individual ORCID in their address information.
Authors can submit their regular papers via our submission page through Easychair:

https://easychair.org/my/login_author?sum=073323801fd3b7125c2b6cc57ecf0a6f;conference=267691

Authors of accepted papers must submit along with the final version of their paper a consent to publish, filled and signed. Authors of accepted papers are expected to register to the conference and present their work (see author registration date).

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Special issue and Best Student Paper Award
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The authors of a number of selected papers presented at DS 2022 will be invited to submit extended versions of their papers for possible inclusion in a special issue of Machine Learning journal (published by Springer) on Discovery Science. Fast-track processing will be used to have them reviewed and published.
There will be an award for the Best Student Paper in the value of 555 Euro sponsored by Springer.

Dino Ienco (PC Co-Chairs DS)
Pascal Poncelet (PC Co-Chairs DS)
Sašo Džeroski (General Chair DS)

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