Banking Clustering Study Based on Fuzzy C-Mean and Fuzzy Gustafson Kessel
Date
2021-03-28Author
KINANTI, Kartika Ayu
SUKARNO, Hari
UTAMI, Elok Sri
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The banking sector as one of the economic drivers plays an important role in
society. Over time, bank operations did not only raise funds from the public but
were more complex. The development of the banking industry can be seen from
the number of banks in Indonesia that have spurred the level of competition. Of
course, the bank must pay attention to its health. The use of bank soundness
level parameters or RGEC combined with clusters is interesting to study. By using
the cluster method, banks can be classified based on the parameters of their
health level. This study aims to analyze the RGEC-based bank grouping
classification generated by the Fuzzy C-Means and Fuzzy Gustafson Kessel
clustering analysis using financial ratio data on 80 conventional banks in
Indonesia. The software used in this study is Matlab r2015b. The results showed
that the FCM clustering had a smaller standard deviation than FGK so that the
first cluster in the FCM showed that the banks were in good condition compared
to the other clusters even though the overall condition of banks in Indonesia was
good when viewed from their financial performance.
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- LSP-Jurnal Ilmiah Dosen [7300]