Why income predicted almost nothing — and what actually did.
Eight synthetic personas spanning ₹9,500 to ₹48,000 monthly income were exposed to four shock events designed to stress-test AutoPay retention across a realistic range of financial and social triggers. The lowest-income persona — a domestic worker on ₹12,000/mo — was the most churn-resistant. The highest-income persona — an IT manager on ₹48,000/mo — churned on day 67 after a ₹505 paper loss.
The difference was not financial capacity. It was the nature of the saving identity each persona had built. Meena Kumari, the ASHA worker on ₹9,500/mo, saved through a 52-day stipend delay by borrowing from a self-help group to maintain her deposit. Vikram Nair, earning five times more, disengaged the moment his performance identity was disrupted.
The study found six of eight churns were friction-driven, not intentional. Mandate expiry (S3) produced the widest single-shock impact — churn risk of 4/10 or higher for six of eight personas — most of whom had no intention to stop saving. The primary product failure was not in motivation. It was in the renewal flow.
Simulatte builds synthetic micro-savers, trust-network-dependent users, and performance-identity customers for any financial product — then stress-tests retention logic before you build it into production.