Adedoyin, F., Dogan, H., Akca, M. and Adedeji, A., 2026. Extending the UXR Point of View pyramid: A generative AI–augmented methodology for human-centred AI systems. In: CHI 2026, 13-17 April 2026, Barcelona.
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Official URL: https://chi2026.acm.org/workshops/accepted/
DOI: 10.1145/3772318
Abstract
Rising household debt and cost-of-living pressures in the United Kingdom have intensified the role of AI-driven financial technologies in mediating credit assessment, repayment structuring, and debt support services. These systems increasingly shape consequential financial decisions, yet they operate within complex socio-technical environments characterised by regulatory constraint, algorithmic opacity, and heightened vulnerability risk. User Experience Research (UXR) Points of View (PoVs) are critical in translating heterogeneous research evidence into strategic direction for product and governance decisions. However, the existing UXR PoV framework was not designed for AI-mediated financial systems where interpretability, fairness, and accountability are central. This paper extends the UXR PoV pyramid into an AI-augmented methodological framework for Human-Centred AI debt management technologies in the UK financial services context. We formalise (1) an AI-Augmented PoV Pyramid, (2) a structured prompt architecture for synthesis and hypothesis generation, and (3) an AI-enabled Playbook Card system that embeds Generative AI into UXR workflows while preserving traceability and ethical oversight. Generative AI is positioned not as an analytic authority, but as an epistemic support mechanism subject to human validation and regulatory awareness. By grounding the framework in debt management technologies, including affordability assessment, repayment planning, and financial stress prediction systems, this work advances UXR methodology for high-stakes financial AI environments and contributes to the evolution of responsible, AI-powered UXR practice within the CHI community. CCS CONCEPTS: Human-centred computing → Human computer interaction; Human-centred computing → User experience design; Computing methodologies → Artificial intelligence; Social and professional topics → Computing / technology policy Keywords: Human-Centred AI; Generative AI; User Experience Research; Debt Management; Financial Services; UK FinTech; Explainable AI; Socio-technical Systems; Prompt Architecture; Ethical AI
| Item Type: | Conference or Workshop Item (Paper) |
|---|---|
| Uncontrolled Keywords: | Human-Centred AI; Generative AI; User Experience Research; Debt Management; Financial Services; UK FinTech; Explainable AI; Socio-technical Systems; Prompt Architecture; Ethical AI |
| Group: | Faculty of Media, Science and Technology |
| ID Code: | 41949 |
| Deposited By: | Symplectic RT2 |
| Deposited On: | 17 Jun 2026 11:34 |
| Last Modified: | 17 Jun 2026 11:34 |
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