Please use this identifier to cite or link to this item: http://repository.futminna.edu.ng:8080/jspui/handle/123456789/10415
Title: Comparative Analysis of Performance of Different Machine Learning Algorithms for Prediction of Success of Bank Telemarketing
Authors: Mohammed, Aliyu Aishatu
Olalere, Morufu
Mohammed, Abdullahi Ibrahim
Keywords: Telemarketing
Random Forest
Data Mining
Prediction
Machine Learning
Issue Date: Jun-2019
Abstract: The development in technology has brought revolution in many area of endeavours across the globe. In recent years, telemarketing has been a popular method of marketing in bank industry. Telemarking is a method of direct marketing in which a salesclerk beseech potential clienteles to buy products or services by means of phone calls. For effective managerial decision, prediction of success of bank telemarketing becomes necessary. Hence, there is need for prediction approach that will predict success of bank telemarketing with high predictive accuracy. As a result, various researchers have proposed different approaches for prediction of success of telemarketing. Machine learning approach is one of the famous approaches used by the previous researchers in this area. Different prediction algorithms have been employed, though not many of these algorithms have been applied in this area. To identify the best machine learning algorithms among the already used and unused becomes impossible. Consequently, this study presents comparative analysis of performance of different machine learning algorithms for prediction of success of bank telemarketing. To achieve this, a dataset of 45,221 instances with 17 attributes was used to train these algorithms in WEKA environment. The performance of each algorithm was measured in terms of Accuracy, Precision, Recall and F- Measure. Our performance evaluation analysis revealed that Random Forest performed best in terms of accuracy while Voted perceptron has lowest accuracy. In terms of precision rate, SMO perform best while Voted perceptron has lowest performance in terms of precision rate. It is our hope that this study will go a long way in assisting future researchers and bank industry in the selection of predictive algorithms.
URI: http://repository.futminna.edu.ng:8080/jspui/handle/123456789/10415
Appears in Collections:Cyber Security Science

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