کلیدواژهها
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Customer behavior, Segmentation, Customer relationship management (CRM), Similarity measures, Time series, Time series clustering
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چکیده
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Purpose – The purpose of this paper is to propose a new methodology that handles the issue of the dynamic
behavior of customers over time.
Design/methodology/approach – A new methodology is presented based on time series clustering to
extract dominant behavioral patterns of customers over time. This methodology is implemented using bank
customers’ transactions data which are in the form of time series data. The data include the recency (R),
frequency (F) and monetary (M) attributes of businesses that are using the point-of-sale (POS) data of a bank.
This data were obtained from the data analysis department of the bank.
Findings – After carrying out an empirical study on the acquired transaction data of 2,531 business
customers that are using POS devices of the bank, the dominant trends of behavior are discovered using
the proposed methodology. The obtained trends were analyzed from the marketing viewpoint. Based
on the analysis of the monetary attribute, customers were divided into four main segments, including
high-value growing customers, middle-value growing customers, prone to churn and churners. For
each resulted group of customers with a distinctive trend, effective and practical marketing
recommendations were devised to improve the bank relationship with that group. The prone-to-churn
segment contains most of the customers; therefore, the bank should conduct interesting promotions to
retain this segment.
Practical implications – The discovered trends of customer behavior and proposed marketing
recommendations can be helpful for banks in devising segment-specific marketing strategies as they illustrate
the dynamic behavior of customers over time. The obtained trends are visualized so that they can be easily
interpreted and used by banks. This paper contributes to the literature on customer relationship management
(CRM) as the proposed methodology can be effectively applied to different businesses to reveal trends in
customer behavior.
Originality/value – In th
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