Stabilising Lifetime PD Models under Forecast Uncertainty
Abstract
Estimating lifetime probabilities of default (PDs) under IFRS~9 and CECL requires projecting point--in--time transition matrices over multiple years. A persistent weakness is that macroeconomic forecast errors compound across horizons, producing unstable and volatile PD term structures. This paper reformulates the problem in a state--space framework and shows that a direct Kalman filter leaves non--vanishing variability. We then introduce an anchored observation model, which incorporates a neutral long--run economic state into the filter. The resulting error dynamics exhibit asymptotic stochastic stability, ensuring convergence in probability of the lifetime PD term structure. Simulation on a synthetic corporate portfolio confirms that anchoring reduces forecast noise and delivers smoother, more interpretable projections.
Cite
@article{arxiv.2509.10586,
title = {Stabilising Lifetime PD Models under Forecast Uncertainty},
author = {Vahab Rostampour},
journal= {arXiv preprint arXiv:2509.10586},
year = {2025}
}