Self Organizing Maps (SOM) for Design Selection in Multi-Objective Optimization using modeFRONTIER

Author(s):  
Sumeet Parashar ◽  
Nader Fateh ◽  
Valentino Pediroda ◽  
Carlo Poloni
2021 ◽  
pp. 1-1
Author(s):  
Ladislav Knebl ◽  
Jan Barta ◽  
Gerd Bramerdorfer ◽  
Ondrej Vitek ◽  
Cestmir Ondrusek

Author(s):  
Shahar Chen ◽  
David Amid ◽  
Ofer M. Shir ◽  
Lior Limonad ◽  
David Boaz ◽  
...  

2019 ◽  
Vol 10 (4) ◽  
pp. 18-37
Author(s):  
Farid Bourennani

Nowadays, we have access to unprecedented quantities of data composed of heterogeneous data types (HDT). Heterogeneous data mining (HDM) is a new research area that focuses on the processing of HDT. Usually, input data is transformed into an algebraic model before data processing. However, how to combine the representations of HDT into a single model for a unified processing of big data is an open question. In this article, the authors attempt to find answers to this question by solving a data integration (DI) problem which involves the processing of seven HDT. They propose to solve the DI problem by combining multi-objective optimization and self-organizing maps to find optimal parameters settings for most accurate HDM results. The preliminary results are promising, and a post processing algorithm is proposed which makes the DI operations much simpler and more accurate.


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