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Using Data Mining Techniques for Detecting the Important Features of the Bank Direct Marketing Data

Year 2017, Volume: 7 Issue: 2, 692 - 696, 01.06.2017

Abstract

Collection of customer information is seen necessary for development of the marketing strategies. Developing technologies are used very effectively in bank marketing campaigns as in many field of life. Customer data is stored electronically and the size of this data is so immense that to analyse it manually with a team of human analysts is impossible. In this paper, data mining techniques are used to interpret and define the important features to increase the campaign’s effectiveness, i.e. if the client subscribes the term deposit. The bank marketing dataset from the University of California at Irvine Machine Learning Repository has been used for the proposed paper. We consider two feature selection methods namely Information Gain and Chi-square methods to select the important features. The methods are compared using a supervised machine learning algorithm of Naive Bayes. The experimental results show that reduced set of features improves the classification performance.

Year 2017, Volume: 7 Issue: 2, 692 - 696, 01.06.2017

Abstract

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Details

Other ID JA73NS92YU
Journal Section Research Article
Authors

Tuba Parlar

Songül Kakilli Acaravcı This is me

Publication Date June 1, 2017
Published in Issue Year 2017 Volume: 7 Issue: 2

Cite

APA Parlar, T., & Acaravcı, S. K. (2017). Using Data Mining Techniques for Detecting the Important Features of the Bank Direct Marketing Data. International Journal of Economics and Financial Issues, 7(2), 692-696.
AMA Parlar T, Acaravcı SK. Using Data Mining Techniques for Detecting the Important Features of the Bank Direct Marketing Data. IJEFI. June 2017;7(2):692-696.
Chicago Parlar, Tuba, and Songül Kakilli Acaravcı. “Using Data Mining Techniques for Detecting the Important Features of the Bank Direct Marketing Data”. International Journal of Economics and Financial Issues 7, no. 2 (June 2017): 692-96.
EndNote Parlar T, Acaravcı SK (June 1, 2017) Using Data Mining Techniques for Detecting the Important Features of the Bank Direct Marketing Data. International Journal of Economics and Financial Issues 7 2 692–696.
IEEE T. Parlar and S. K. Acaravcı, “Using Data Mining Techniques for Detecting the Important Features of the Bank Direct Marketing Data”, IJEFI, vol. 7, no. 2, pp. 692–696, 2017.
ISNAD Parlar, Tuba - Acaravcı, Songül Kakilli. “Using Data Mining Techniques for Detecting the Important Features of the Bank Direct Marketing Data”. International Journal of Economics and Financial Issues 7/2 (June 2017), 692-696.
JAMA Parlar T, Acaravcı SK. Using Data Mining Techniques for Detecting the Important Features of the Bank Direct Marketing Data. IJEFI. 2017;7:692–696.
MLA Parlar, Tuba and Songül Kakilli Acaravcı. “Using Data Mining Techniques for Detecting the Important Features of the Bank Direct Marketing Data”. International Journal of Economics and Financial Issues, vol. 7, no. 2, 2017, pp. 692-6.
Vancouver Parlar T, Acaravcı SK. Using Data Mining Techniques for Detecting the Important Features of the Bank Direct Marketing Data. IJEFI. 2017;7(2):692-6.