Explaining the categories of support vector machine and neural network for Ranking of bank branches

Message:
Article Type:
Research/Original Article (بدون رتبه معتبر)
Abstract:
There is a lot of information in the banking industry that is of particular importance in identifying it. The use of data mining techniques not only improves quality but also leads to competitive advantages and market positioning. By using data mining and in order to analyze patterns and trends, banks can predict the accuracy of how bank branches are ranked. In this paper, the branches of one of the large commercial banks (number of selected branches 1825 branches and the number of features used 57 features) were performed on real data using support vector machine categories and multi layer perceptron neural network. The evaluation results related to the support vector machine showed that this classifier has lower efficiency for the proposed method. However, the use of neural networks and its combination with PCA showed that it has high performance criteria. Values related to efficiency and accuracy were obtained using neural network with very high accuracy.
Language:
Persian
Published:
Journal of Strategic Management in Industrial Systems, Volume:15 Issue: 53, 2020
Pages:
53 to 70
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