Committee of SGTM Neural-Like Structures with RBF kernel for Insurance Cost Prediction Task

Autor(en)
Ivan Izonin, Michal Greguš, Roman Tkachenko, Pavlo Tkachenko, Natalia Kryvinska, Pavlo Vitynskyi
Abstrakt

A new method for constructing a committee based on the use of a set of SGTM Neural-Like Structures with RBF kernel for solving regression tasks was developed. The use of the RBF kernel for the hybridization of SGTM Neural-Like Structure allows increasing the accuracy of the method, and building a committee on their basis provides results that are more efficient. Modelling of the method occurred on the real data for the task of the insurance business. The numerical values of the accuracy of the method and the speed of training procedures in comparison with the existing ones are given. The highest accuracy of our prediction method in comparison with the existing ones is established. The developed committee can be used for solving various regression and classification tasks in the field of the insurance business. It is focused on solving tasks of the large dimension. Among the possibilities to increase its efficiency is the possibility of the hardware implementation of this committee with the parallelism of processes, when for each data cluster used its processor.

Organisation(en)
Institut für Marketing und International Business
Externe Organisation(en)
Lviv Polytechnic National University, Univerzita Komenského v Bratislave
Seiten
1037-1040
Anzahl der Seiten
4
DOI
https://doi.org/10.1109/UKRCON.2019.8879905
Publikationsdatum
07-2019
Peer-reviewed
Ja
ÖFOS 2012
502052 Betriebswirtschaftslehre, 502050 Wirtschaftsinformatik
Schlagwörter
ASJC Scopus Sachgebiete
Safety, Risk, Reliability and Quality, Signal Processing, Instrumentation, Computer Vision and Pattern Recognition, Computer Networks and Communications
Link zum Portal
https://ucrisportal.univie.ac.at/de/publications/cafb1ec5-b3df-4d83-a6a4-e538a1181edc