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Title: Data-Driven approaches to improve customer experience in banking: Techniques and outcomes
Authors: Ibrahim Adedeji Adeniran, Angela Omozele Abhulimen, Anwuli Nkemchor Obiki-Osafiele, Olajide Soji Osundare, Edith Ebele Agu, Christianah Pelumi Efunniyi
Journal: International journal of management & entrepreneurship research
Year: 2024
Volume: 6
Issue: 8
Language: en
The banking industry is undergoing a significant transformation driven by the integration of data-driven approaches aimed at enhancing customer experience. This evolution is essential for banks to maintain competitive advantage, foster customer loyalty, and adapt to the rapidly changing digital landscape. By leveraging vast amounts of customer data, banks can gain profound insights into customer behavior, preferences, and needs, enabling the delivery of more personalized, efficient, and secure services. This review delves into the key techniques employed in data-driven banking and the consequential outcomes. Advanced data analytics allows banks to segment their customer base into distinct groups based on demographics, behaviours, and financial needs. Techniques such as machine learning algorithms and clustering identify patterns within the data, facilitating the creation of targeted products and services. For instance, digital banking solutions can be specifically designed for tech-savvy millennials, while tailored financial advice might be more suitable for older customers. This segmentation helps in addressing the unique needs of different customer groups more effectively. Utilizing historical data, predictive models can forecast future customer behaviors and trends. This capability enables banks to anticipate customer needs, such as predicting which customers might be interested in applying for a mortgage or those who could benefit from financial advisory services. Predictive analytics also aids in identifying customers at risk of churn, allowing banks to implement retention strategies proactively. Through data-driven insights, banks can offer highly personalized experiences. Recommendation systems, akin to those used by leading e-commerce platforms, suggest relevant financial products and services based on individual customer profiles and transaction histories. This level of personalization not only enhances the customer experience but also increases the likelihood of successful cross-selling and upselling efforts. Employing Natural Language Processing (NLP) and sentiment analysis, banks can analyze customer feedback from various sources, including social media, surveys, and call center interactions. Understanding customer sentiment helps banks promptly address issues, improve customer service quality, and build stronger, positive relationships with their customers. Data-driven approaches are pivotal in identifying and mitigating fraudulent activities. Machine learning models analyze transaction patterns to detect anomalies indicative of fraud. Real-time monitoring systems can flag suspicious activities, thereby protecting customers and maintaining their trust in the banking system. Personalized and proactive service offerings significantly boost customer satisfaction. Customers appreciate tailored experiences and quick resolution of issues, leading to higher levels of satisfaction and increased brand loyalty. Automation of routine tasks and predictive maintenance of customer relationships streamline banking operations. This efficiency reduces the workload on bank staff, allowing them to focus on more complex customer needs, resulting in cost savings and improved service delivery. Predictive analytics and real-time monitoring strengthen risk management capabilities. Banks can better assess credit risks, manage fraud, and ensure compliance with regulatory requirements, thus safeguarding their assets and reputation. Effective targeting and personalization drive increased product uptake and customer retention. Enhanced cross-selling and upselling opportunities contribute to revenue growth and profitability, as banks can better match products to customer needs. Insights derived from customer data inform the development of new products and services tailored to evolving customer needs. This continuous innovation keeps banks competitive in a rapidly changing financial landscape. The integration of data-driven approaches in banking significantly enhances customer experience by providing personalized, efficient, and secure services. The application of advanced data analytics, machine learning, and NLP not only boosts customer satisfaction and loyalty but also drives operational efficiency, improves risk management, and fosters revenue growth. As banks continue to innovate with data-driven strategies, the future of customer experience in banking appears promising and dynamic. The ability to adapt and evolve with technological advancements will be crucial in maintaining a customer-centric focus and staying ahead in the competitive financial sector.
Keywords:  Data-Driven, Banking, Customer Feedback.
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