Branch Client Behavior analysis Using RFM Method (Chain Restaurant - Case Study)
In today's competitive world, applying new techniques to business development has a great impact. The restaurant industry is no exception. Therefore, in this research, using new methods of knowledge discovery and data mining, customer data of chain restaurant is investigated. The purpose of this study was to explore customer behavior patterns using data mining methods.In this study, one million and five hundred thousand customer records were reviewed in five branches of a chain restaurant and two stages of clustering modeling using RFM method and then classification modeling were performed on the data and the behavior rules chain restaurant customers were extracted. The results of this study have helped to identify the loyal and profitable customers of the chain restaurant which has led to the improvement of the profitability of the chain restaurant. One of the innovations of this research has been the communication between clustering and classification results.
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Providing a forecasting model and optimization of the cash balance of bank branches and ATMs with the approach of social responsibilities
Majid Zeinalkhani, Nasim Ghanbar Tehrani *, Seyed Hamid Reza Pasandideh, Mir Mohsen Pedram
International Journal Of Nonlinear Analysis And Applications, Oct 2024 -
Comparative Analysis of Social Capital in the Network of Charitable Organizations
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Information management,