The "Why" Behind the "No"
Explaining loan denials cut support calls by 32%
[[chp]]AI[[/chp]] [[chp]]Fintech[[/chp]] [[chp]]iOS/Android[[/chp]]

LendingClub is a U.S. digital lending platform and marketplace bank with over 5M members, offering personal loans, auto refinancing, small business, medical, and education financing alongside full-service checking and savings.
Senior Product Designer (Me)
2x Product Designers (Mid-Level)
2x UX Researchers
Product Manager
2x AI/ML Engineers
Compliance/Legal Advisor
XAI UX (Explainable AI)
Service Design
Data Ethics
Regulatory/Compliance UX
Design Systems
The platform used an AI model to underwrite loans and credit cards. Customers got a simple approved/denied answer with little context. Denied applicants felt the process was a "black box". Trust fell. Legal risk rose because lending laws require specific reasons for adverse actions. Loan officers also struggled to understand or defend model outputs.
The golden question:
How might we design AI credit decisions that are transparent, fair, compliant and helping users act, even when the answer is "no"?
We did mixed‑methods research to learn what "fair and clear" means to real people, because we needed the explanations to teach, not just tell.
We tested for comprehension, perceived fairness, and actionability.
Product leadership: Set the future vision for lending transparency, created alignment with execs and Legal, and motivated the group with workshops and prototypes.
Cross‑org influence: Partnered with Support, Risk, and Legal to ship a transparency playbook and updated denial messages.
Coaching: Mentored a mid‑level designer in systems thinking and content design; co‑authored microcopy standards for "reasons".
System design: Built a reason code dictionary and XAI components that now power all lending lines.
UX & interaction: Holistic flows from soft‑pull to adverse action; quick scan patterns; detail‑on‑demand.
Visual craft: High‑contrast, accessible bars and badges; used the platform’s design system with careful hierarchy and motion.
Business literacy: Defined outcome metrics with PM and Ops; tied clarity and support savings to ROI.
Domain expertise: Explainable AI + compliance + lending flows, codified as reusable frameworks and copy patterns.