ATM Service Analysis Using Predictive Data Mining
Commenced in January 2007
Frequency: Monthly
Edition: International
Paper Count: 32799
ATM Service Analysis Using Predictive Data Mining

Authors: S. Madhavi, S. Abirami, C. Bharathi, B. Ekambaram, T. Krishna Sankar, A. Nattudurai, N. Vijayarangan

Abstract:

The high utilization rate of Automated Teller Machine (ATM) has inevitably caused the phenomena of waiting for a long time in the queue. This in turn has increased the out of stock situations. The ATM utilization helps to determine the usage level and states the necessity of the ATM based on the utilization of the ATM system. The time in which the ATM used more frequently (peak time) and based on the predicted solution the necessary actions are taken by the bank management. The analysis can be done by using the concept of Data Mining and the major part are analyzed based on the predictive data mining. The results are predicted from the historical data (past data) and track the relevant solution which is required. Weka tool is used for the analysis of data based on predictive data mining.

Keywords: ATM, Bank Management, Data Mining, Historical data, Predictive Data Mining, Weka tool.

Digital Object Identifier (DOI): doi.org/10.5281/zenodo.1091228

Procedia APA BibTeX Chicago EndNote Harvard JSON MLA RIS XML ISO 690 PDF Downloads 5565

References:


[1] Arvind Sharma, P.C. Gupta; ‘Predicting the Number of Blood Donors through Their Age and Blood Group by using Data Mining Tool’, International Journal of Communication and Computer Technologies, Volume 01 – No.6, Issue: 02, September 2012.
[2] Oracle Data Mining Concepts, 10g Release 1 (10.1), Part Number B10698-01, ‘Predictive Data Mining Models‘, file:///H:/project/ PAPERS/New%20Mining%20Papers/Predictive%20Data%20Mining%20Models.htm
[3] Dr. Wenjia Wang; ‘Data Mining and Statistics within the Health Services’, 19/02/2010
[4] Zdravko Markov, Ingrid Russell; ‘An Introduction to the WEKA Data Mining System’, Central Connecticut State University
[5] By Wayne W. Eckerson; ‘Predictive Analytics Extending the Value of Your Data Warehousing Investment’, TDWI Best Practices Report, First quarter 2007
[6] Mehta Neel B, ‘Predictive Data Mining and Discovering Hidden Values of Data Warehouse’, ARPN Journal of Systems and Software, Volume 1 No. 1, APRIL 2011
[7] S Abdulsalam Sulaiman Olaniyi, Adewole, Kayode S, Jimoh, R. G; ‘Stock Trend Prediction Using Regression Analysis –A Data Mining Approach’, ARPN Journal of Systems and Software, Volume 1 No. 4, July 2011
[8] Godswill Chukwugozie Nsofor; ‘A Comparative Analysis Of Predictive Data-Mining Techniques’, August, 2006
[9] Ghulam Mujtaba Shaikh and Tariq Mahmood; Mining and Adaptivity in Automated Teller Machines, 2012
[10] Vasumathi, Dhanavanthan, 2010, "Application of Simulation Technique in Queuing Model for ATM Facility”, Volume 1, No 3
[11] Hyun-Chul Kim, Shaoning Pang, Hong-Mo Je, Daijin Kim, and Sung-Yang Bang; Support Vector Machine Ensemble with Bagging, 2002
[12] Burges, C; ’A Tutorial on Support Vector Machines for Pattern Recognition. Data Mining and Knowledge Discovery’. 2(2) (1998) 121–167 397, 400.