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CABB 2019 : Causal Analytics for Bioinformatics and Biomedicine 2019

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Link: https://cabbworkshop.wordpress.com/cfp/
 
When Nov 21, 2019 - Nov 21, 2019
Where San diego, US
Submission Deadline Oct 9, 2019
Notification Due Oct 15, 2019
Final Version Due Nov 1, 2019
Categories    causality   machine learning   AI
 

Call For Papers

Call For Papers
Causal Analytics for Bioinformatics and Biomedicine (CABB) is requesting papers! CABB is a workshop at IEEE BIBM 2019, which will be occurring from Nov 18 to 21 in San Diego, California. Papers must be submitted to the workshop through our online portal by September 16. A link to the portal, and all other information on the workshop, is available at the workshop website: https://cabbworkshop.wordpress.com/cfp/

CABB will promote the application of causal discovery and related methods in bioinformatics and biomedicine, identify challenges in bioinformatics and biomedicine that require the development of new causally informed algorithms, guide the field of causal analysis towards establishing best practices for the bioinformatics and biomedical domains, and provide a venue for causal analysis researchers to share and communicate their findings.

We are interested in any project where (a) causal knowledge is the ultimate goal, (b) causal structure is not assumed to be known, and (c) there is a connection to biomedicine and/or bioinformatics. Some examples of appropriate research topics are:

Development/improvement of automated causal discovery methods for biomedical data
Application or evaluation of automated causal discovery methods in the domain of biomedicine or bioinformatics
Causal effect estimation from biomedical data guided by data driven causal structure discovery
Predictive modeling applications in bioinformatics and biomedicine guided by causal structure discovery
Causal discovery leveraging combined information in prior knowledge, observational data and experimental data, and/or using data from multiple sources, measurement granularity, and data distributions

We are accepting both long and short papers. Long papers are maximum 8 pages and short papers are maximum 4 pages. Both paper types must use the IEEE BIBM format guidelines. Authors with an accepted long paper will give a short talk, while authors with an accepted short paper will present a poster. All accepted papers will be published in the proceedings of IEEE BIBM 2019.

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