Symbolic Data Analysis Workshop 2022

University of Campania L. Vanvitelli, Caserta, Italy, from September 7 to 8, 2022

On behalf of the SDA 2022 Program Committee, I would like to invite you to submit an abstract to the Symbolic Data Analysis Workshop 2022. The Symbolic Data Analysis Workshop 2022 will occur at the University of Campania L. Vanvitelli, Caserta, Italy, from September 7 to 8, 2022, and is supported by the University of Campania L. Vanvitelli, Department of Mathematics and Physics. The SDA 2022 is for individuals interested in Symbolic Data Analysis and Object-oriented Data Analysis, two relatively recent fields of research and application in data science dealing with the statistical treatment of complex data. Researchers, practitioners, and developers come together at the SDA 2022 Workshop to present new and ongoing work and to discuss future directions of Symbolic Data Analysis.

The main topics of the oral presentations should cover at least one of those in the following list

  1. Aggregation tools to obtain symbolic data from standard data
  2. Exploratory data analysis tools for symbolic data
  3. Visualization of symbolic data
  4. Inference methods for symbolic data
  5. Spatial, temporal and Spatio-temporal methods extended to symbolic data
  6. Applications of symbolic data analysis
  7. Open problems involving Data Science and the use of SDA tools
  8. New software tools for SDA

For complete information about the workshop, please visit the workshop website:

https://www.matfis.unicampania.it/home-SDA2022.

To submit an abstract, please click the link OR copy and paste the URL to your browser: https://www.matfis.unicampania.it/home-SDA2022 and go to the submission page.

You can also send your abstract to sda2022workshop@gmail.com directly.

Please complete your submission before June 10, 2022.

sda/meet/sda22.txt · Last modified: 2022/06/08 04:29 by vlado
 
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