Nalaganje ...
Mednarodni projekti vir: SICRIS

Computationally-intensive methods for the robust analysis of non-standard data (CRoNoS)

Raziskovalci (2)
št. Evidenčna št. Ime in priimek Razisk. področje Vloga Obdobje Štev. publikacijŠtev. publikacij
1.  01467  dr. Vladimir Batagelj  Matematika  Raziskovalec  2015 - 2019  980 
2.  02465  dr. Anuška Ferligoj  Sociologija  Raziskovalec  2015 - 2019  799 
Organizacije (1)
št. Evidenčna št. Razisk. organizacija Kraj Matična številka Štev. publikacijŠtev. publikacij
1.  0582  Univerza v Ljubljani, Fakulteta za družbene vede  Ljubljana  1626957  41.106 
Povzetek
Real data sets from a wide variety of fields violate the idealized assumptions inherent in standard statistical theory. Robust data analysis methodology aims to mitigate the impact of such violations. Robust methods are usually developed to handle multivariate data. However, monitoring studies often contain information such as functional, set-valued, or different kinds of incomplete data. Robust methods for these complex data types are scarce and involve critical computational challenges. New models, methods and efficient, numerically stable, and well-conditioned robust strategies are essential to improve knowledge extraction from non-perfect and non-standard datasets. Applications include the analysis of climate data, medical monitoring and diagnosis, trading and financial forecasts. The aim is to create an interactive network spanning computing, statistics, machine learning, and mathematics with the necessary expertise required to develop such strategies in close collaboration with end-users. Software and guidelines will be developed. The Action will provide European scientists with cutting-edge data analysis tools which will be suitably disseminated by disparate means such as training schools, conferences and publications. Improved decision-making tools for preventing-mitigating policies will be derived. Thus, scientific, technological and social challenges will be tackled by the creation of a proper framework to coordinate and optimize research efforts.
Zgodovina ogledov
Priljubljeno