Designing a Model for Implementing Digital Banking Policy Based on Using Big Data in Iranian Banking Industry

Objective In the current digital era, the immense challenges posed by technological advancements have driven significant developments, including the emergence of digital banking policies. For banks to survive and maintain their competitive edge among both new entrants and established competitors, it...

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Main Authors: Rahmatollah Gholipour Souteh, Hamed Esmaeili Rad
Format: Article
Language:fas
Published: University of Tehran 2024-11-01
Series:مدیریت دولتی
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Online Access:https://jipa.ut.ac.ir/article_99546_7742a8cc915b18661c950ab14da789b4.pdf
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author Rahmatollah Gholipour Souteh
Hamed Esmaeili Rad
author_facet Rahmatollah Gholipour Souteh
Hamed Esmaeili Rad
author_sort Rahmatollah Gholipour Souteh
collection DOAJ
description Objective In the current digital era, the immense challenges posed by technological advancements have driven significant developments, including the emergence of digital banking policies. For banks to survive and maintain their competitive edge among both new entrants and established competitors, it is essential to correctly implement digital banking strategies. This requires not only appropriate structural changes but also careful planning, the adoption of new business methods, and the use of innovative and technological tools, such as big data, to achieve strategic goals. On a broader scale, these efforts contribute to the realization of a smart economy. This research addresses the gap in existing literature regarding the lack of a digital banking policy implementation model, particularly within Iranian banks. It seeks to develop an optimal model for implementing such policies, with a special focus on the dimensions of policy implementation specific to digital banking. The research emphasizes the pivotal role of big data technology, which has received limited attention but has a significant impact on achieving the goals and ensuring the optimal implementation of digital banking. Methods This research falls within the realm of qualitative and postmodern studies, adopting an inductive approach. The research strategy employed is "Grounded Theory," specifically the emerging or classical Glaserian approach. Given that developing a foundational theory necessitates the collection of in-depth interview and textual data, the study aimed to identify the concepts, categories, and components of a digital banking implementation model leveraging big data technology. To this end, semi-structured interviews were conducted with experts in the fields of banking and financial technology. The study involved 15 accessible experts from the banking industry, selected through purposive judgment sampling. Interviews continued until theoretical saturation was reached, ensuring that the data collected was comprehensive and insightful. The research data was analyzed through a process of open, axial, and selective coding, which allowed for the extraction and categorization of key concepts. Ultimately, these efforts led to the emergence of a robust research model. Results The resulting model identifies 15 main themes, including Big Data Management, Data Governance (encompassing Data Collection, Data Refinement, Data Design and Modeling, Data Security), Data Regulation, Various Sources of Data Acquisition, Trust in Big Data Analysis, the Banking System Ecosystem, Organizational Agility, Big Data Analysis Tools, Scenario Development (practical application of data), Executive Structure, Improvement of Banks' Business, Customer Orientation, Transparency, Technological Infrastructure, and Dominant Culture. These themes were organized into six dimensions based on Glaser's 6C model, with an overarching or central category dimension forming the core of the final research model. According to this model, Big Data Management serves as the main axis around which 13 other themes revolve, acting as the model's center of gravity. This relationship is explained within the category of linkages, highlighting how these components interconnect. Conclusion The findings underscore a significant gap in the attention and application of big data technology within banks. Despite the availability of rich information and data resources in state banks, this valuable capital remains underutilized. Proper utilization of big data could create a necessary competitive advantage, enabling banks to survive and thrive amidst competition from both new and old players in the banking sector. Moreover, leveraging big data can enhance and improve customer-oriented platforms, a primary goal of digital banking, thereby facilitating better implementation of digital banking policies. The model developed through this research illustrates the integration of technological, organizational, and innovative cultural factors within state banks, all aimed at effectively utilizing big data. To optimize digital banking implementation, these factors must be prioritized within the structures of the country's state banks. The results demonstrate that Big Data Management, along with associated governance, regulatory practices, and infrastructural considerations, are crucial categories that must be meticulously observed and integrated into the operational frameworks of state banks to fully harness the potential of big data.
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spelling doaj-art-7da89b86482041f2b4b95563c0a42ebf2025-02-11T13:53:36ZfasUniversity of Tehranمدیریت دولتی2008-58772423-53422024-11-0116482585110.22059/jipa.2024.376062.350099546Designing a Model for Implementing Digital Banking Policy Based on Using Big Data in Iranian Banking IndustryRahmatollah Gholipour Souteh0Hamed Esmaeili Rad1Prof., Department of Leadership and Human Capital, Faculty of Public Administration and Organizational Sciences, College of Management, University of Tehran, Tehran, Iran.Ph.D. Candidate, Department of Public Administration, Kish International Campus, University of Tehran, Tehran, Iran.Objective In the current digital era, the immense challenges posed by technological advancements have driven significant developments, including the emergence of digital banking policies. For banks to survive and maintain their competitive edge among both new entrants and established competitors, it is essential to correctly implement digital banking strategies. This requires not only appropriate structural changes but also careful planning, the adoption of new business methods, and the use of innovative and technological tools, such as big data, to achieve strategic goals. On a broader scale, these efforts contribute to the realization of a smart economy. This research addresses the gap in existing literature regarding the lack of a digital banking policy implementation model, particularly within Iranian banks. It seeks to develop an optimal model for implementing such policies, with a special focus on the dimensions of policy implementation specific to digital banking. The research emphasizes the pivotal role of big data technology, which has received limited attention but has a significant impact on achieving the goals and ensuring the optimal implementation of digital banking. Methods This research falls within the realm of qualitative and postmodern studies, adopting an inductive approach. The research strategy employed is "Grounded Theory," specifically the emerging or classical Glaserian approach. Given that developing a foundational theory necessitates the collection of in-depth interview and textual data, the study aimed to identify the concepts, categories, and components of a digital banking implementation model leveraging big data technology. To this end, semi-structured interviews were conducted with experts in the fields of banking and financial technology. The study involved 15 accessible experts from the banking industry, selected through purposive judgment sampling. Interviews continued until theoretical saturation was reached, ensuring that the data collected was comprehensive and insightful. The research data was analyzed through a process of open, axial, and selective coding, which allowed for the extraction and categorization of key concepts. Ultimately, these efforts led to the emergence of a robust research model. Results The resulting model identifies 15 main themes, including Big Data Management, Data Governance (encompassing Data Collection, Data Refinement, Data Design and Modeling, Data Security), Data Regulation, Various Sources of Data Acquisition, Trust in Big Data Analysis, the Banking System Ecosystem, Organizational Agility, Big Data Analysis Tools, Scenario Development (practical application of data), Executive Structure, Improvement of Banks' Business, Customer Orientation, Transparency, Technological Infrastructure, and Dominant Culture. These themes were organized into six dimensions based on Glaser's 6C model, with an overarching or central category dimension forming the core of the final research model. According to this model, Big Data Management serves as the main axis around which 13 other themes revolve, acting as the model's center of gravity. This relationship is explained within the category of linkages, highlighting how these components interconnect. Conclusion The findings underscore a significant gap in the attention and application of big data technology within banks. Despite the availability of rich information and data resources in state banks, this valuable capital remains underutilized. Proper utilization of big data could create a necessary competitive advantage, enabling banks to survive and thrive amidst competition from both new and old players in the banking sector. Moreover, leveraging big data can enhance and improve customer-oriented platforms, a primary goal of digital banking, thereby facilitating better implementation of digital banking policies. The model developed through this research illustrates the integration of technological, organizational, and innovative cultural factors within state banks, all aimed at effectively utilizing big data. To optimize digital banking implementation, these factors must be prioritized within the structures of the country's state banks. The results demonstrate that Big Data Management, along with associated governance, regulatory practices, and infrastructural considerations, are crucial categories that must be meticulously observed and integrated into the operational frameworks of state banks to fully harness the potential of big data.https://jipa.ut.ac.ir/article_99546_7742a8cc915b18661c950ab14da789b4.pdfpolicy implementationdigital bankingbig data
spellingShingle Rahmatollah Gholipour Souteh
Hamed Esmaeili Rad
Designing a Model for Implementing Digital Banking Policy Based on Using Big Data in Iranian Banking Industry
مدیریت دولتی
policy implementation
digital banking
big data
title Designing a Model for Implementing Digital Banking Policy Based on Using Big Data in Iranian Banking Industry
title_full Designing a Model for Implementing Digital Banking Policy Based on Using Big Data in Iranian Banking Industry
title_fullStr Designing a Model for Implementing Digital Banking Policy Based on Using Big Data in Iranian Banking Industry
title_full_unstemmed Designing a Model for Implementing Digital Banking Policy Based on Using Big Data in Iranian Banking Industry
title_short Designing a Model for Implementing Digital Banking Policy Based on Using Big Data in Iranian Banking Industry
title_sort designing a model for implementing digital banking policy based on using big data in iranian banking industry
topic policy implementation
digital banking
big data
url https://jipa.ut.ac.ir/article_99546_7742a8cc915b18661c950ab14da789b4.pdf
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