Dr. L. Kuladeep Kumar, Dr. D.Venkatesh, Dr.J. Katyayani, Dr.Sreenivasulu Sunkara, Dr Gowthami
{"title":"A Study on Customer Segmentation for Banking Sector Through Cluster Analysis: Ethical Implications","authors":"Dr. L. Kuladeep Kumar, Dr. D.Venkatesh, Dr.J. Katyayani, Dr.Sreenivasulu Sunkara, Dr Gowthami","doi":"10.52783/cana.v31.999","DOIUrl":null,"url":null,"abstract":"The banking industry, inherently customer-focused, relies on understanding and fulfilling the diverse needs of its clientele for success. Customization of offerings is crucial for banks serving individuals, families, or businesses across various financial stages. Client segmentation stands out as a primary strategy in achieving this customization. By categorizing customers based on shared characteristics, banks can deploy targeted marketing efforts, allocate resources efficiently, and deliver tailored banking experiences. In the contemporary banking landscape, where vast amounts of data are generated daily, thorough analysis is indispensable. Customized business strategies have become increasingly vital amidst intensifying industry competition. Customer segmentation serves as a pivotal aspect of market research, facilitating the grouping of customers based on common characteristics and behaviors. This segmentation enables banks to tailor marketing campaigns to suit the distinct requirements and preferences of each segment. This study focuses on employing cluster analysis, a statistical technique for organizing data points, to achieve efficient client segmentation in the banking sector. Specifically, we utilize the K-means algorithm, a popular clustering method, to categorize clientele into discrete groups based on transaction history, banking preferences, and demographic data. To ensure the accuracy and robustness of our segmentation methodology, sophisticated machine learning techniques like the Elbow and Silhouette methods are employed. These techniques enable the evaluation of clustering effectiveness and determination of the optimal number of clusters. Our objective is to utilize machine learning to identify meaningful and actionable customer groups, guiding banks' strategic decision-making processes. The segmentation approach outlined in this study empowers banks to optimize services and elevate customer satisfaction levels. By aligning offerings with the specific needs of each segment, banks can cultivate stronger customer relationships, drive revenue growth, and gain a competitive advantage in the dynamic banking landscape.","PeriodicalId":40036,"journal":{"name":"Communications on Applied Nonlinear Analysis","volume":" 7","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-07-17","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Communications on Applied Nonlinear Analysis","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.52783/cana.v31.999","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q4","JCRName":"Mathematics","Score":null,"Total":0}
引用次数: 0
Abstract
The banking industry, inherently customer-focused, relies on understanding and fulfilling the diverse needs of its clientele for success. Customization of offerings is crucial for banks serving individuals, families, or businesses across various financial stages. Client segmentation stands out as a primary strategy in achieving this customization. By categorizing customers based on shared characteristics, banks can deploy targeted marketing efforts, allocate resources efficiently, and deliver tailored banking experiences. In the contemporary banking landscape, where vast amounts of data are generated daily, thorough analysis is indispensable. Customized business strategies have become increasingly vital amidst intensifying industry competition. Customer segmentation serves as a pivotal aspect of market research, facilitating the grouping of customers based on common characteristics and behaviors. This segmentation enables banks to tailor marketing campaigns to suit the distinct requirements and preferences of each segment. This study focuses on employing cluster analysis, a statistical technique for organizing data points, to achieve efficient client segmentation in the banking sector. Specifically, we utilize the K-means algorithm, a popular clustering method, to categorize clientele into discrete groups based on transaction history, banking preferences, and demographic data. To ensure the accuracy and robustness of our segmentation methodology, sophisticated machine learning techniques like the Elbow and Silhouette methods are employed. These techniques enable the evaluation of clustering effectiveness and determination of the optimal number of clusters. Our objective is to utilize machine learning to identify meaningful and actionable customer groups, guiding banks' strategic decision-making processes. The segmentation approach outlined in this study empowers banks to optimize services and elevate customer satisfaction levels. By aligning offerings with the specific needs of each segment, banks can cultivate stronger customer relationships, drive revenue growth, and gain a competitive advantage in the dynamic banking landscape.