Optimized Deep Neural Network Based Predictive Model for Customer Attrition Analysis in the Banking Sector

Author:

Hegde Sandeepkumar1,Mundada Monica R.2

Affiliation:

1. Department of Computer Science and Engineering, M.S Ramaiah Institute of Technology, Bengaluru, Karnataka Affiliated to Visvesvaraya Technological University, Belagavi, Karnataka, India

2. Department of Computer Science and Engineering, M S Ramaiah Institute of Technology Affiliated to Visvesvaraya Technological University, Belagavi, Karnataka, India MSR Nagar 560054, Bengaluru, Karnataka, India

Abstract

Background: In recent time with the growth of the technology and the business model, customer attrition analysis is considered as a very important metric which decides the revenues and profitability of the organization. It is applicable for all the business domains irrespective of the size of the business even including the start-ups. Because about 65% revenue for the organization comes from the existing customer. The goal of the customer attrition analysis is to predict the customer who is likely to exit or churn from the current business organization. In this research work, the literature review is carried out to explore the related work which has been already carried out in the field of customer attrition analysis. The literature review also focuses on some of the patents which are issued in the area of customer attrition or churn analysis. The goal of the research paper is to predict accurately the customer attrition rate in the Banking Sector. Objective: The main objective of this paper is to predict accurately the attrition rate in the Banking sector using an optimized deep feed-forward neural network. Methods: In the proposed work the predictive machine learning model is implemented using the optimized deep feed-forward neural network having five hidden layers in it. The model is trained using Adam optimizer algorithm to obtain the optimal accuracy. The Banking Churn data set is passed as input to the Optimized Deep Feed Forward Neural Network Model. In order to perform the comparative analysis, the same data set is passed as input to the other machine learning algorithm such as Decision Tree, Logistic Regression, Gaussian Naïve Bayes, and Artificial Neural Network. Results: The test results indicate that the proposed optimized deep feedforward neural Network model performed better in accuracy compared to existing machine learning techniques. Conclusion: The proposed optimized deep neural network model is an accurate model for customer attrition analysis in the Banking sector compared to the existing machine learning techniques.

Publisher

Bentham Science Publishers Ltd.

Subject

General Engineering

Reference25 articles.

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