- Süleyman Demirel Üniversitesi Fen Bilimleri Enstitüsü Dergisi
- Vol: 20 Issue: 3
- Geometrical Modification of Learning Vector Quantization Method for Solving Classification Problems
Geometrical Modification of Learning Vector Quantization Method for Solving Classification Problems
Authors : Korhan Günel, Rıfat Aşliyan, Iclal Gör
Pages : 414-420
Doi:10.19113/sdufbed.22419
View : 12 | Download : 7
Publication Date : 2016-08-22
Article Type : Other
Abstract :In this paper, a geometrical scheme is presented to show how to overcome an encountered problem arising from the use of generalized delta learning rule within competitive learning model. It is introduced a theoretical methodology for describing the quantization of data via rotating prototype vectors on hyper-spheres. The proposed learning algorithm is tested and verified on different multidimensional datasets including a binary class dataset and two multiclass datasets from the UCI repository, and a multiclass dataset constructed by us. The proposed method is compared with some baseline learning vector quantization variants in literature for all domains. Large number of experiments verify the performance of our proposed algorithm with acceptable accuracy and macro f1 scores.Keywords : Machine learning, Learning vector quantization, Geometrical learning approach