Research Article

Dollar-Value Transparency Loop: Visualizing the Customer Trust-to-Advocacy Cycle in Financial Services

Authors

  • Pradeepkumar Muni Gangabhathina Jawaharlal Nehru Technological University, India

Abstract

This article presents a comprehensive framework for enhancing customer loyalty through dollar-value transparency in financial services. By investigating the gap between customer expectations and financial institutions' communication of product benefits, we explore how personalized value quantification influences trust and loyalty metrics. The Integrated Value Transparency Framework, consisting of a Dollar Value Dashboard, AI-driven recommendation engine, behavioral nudge principles, and measurement criteria, was implemented across a pilot cohort of credit card customers. Results demonstrate significant improvements in user engagement, card usage optimization, product upgrades, and referral rates. The article identifies transparency as the strongest predictor of institutional trust, while examining ethical considerations in AI-driven recommendations, personalization-privacy balance, and scaling challenges across customer segments. The framework's effectiveness varies across financial product categories and organizational contexts, suggesting the need for tailored implementation approaches. This article contributes to the understanding of value-centered banking by establishing transparency as a foundational element in building sustainable financial relationships.

Article information

Journal

Journal of Computer Science and Technology Studies

Volume (Issue)

7 (6)

Pages

214-224

Published

2025-06-12

How to Cite

Pradeepkumar Muni Gangabhathina. (2025). Dollar-Value Transparency Loop: Visualizing the Customer Trust-to-Advocacy Cycle in Financial Services. Journal of Computer Science and Technology Studies, 7(6), 214-224. https://doi.org/10.32996/jcsts.2025.7.6.24

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Keywords:

Value Transparency, Customer Loyalty, Financial Product Design, AI-driven Personalization, Trust Elasticity