Because financial crises are characterized by dangerous rare events that occur more frequently than those predicted by models with finite variances, we investigate the underlying stochastic process generating these events. In the 1960s Mandelbrot [Mandelbrot B (1963)
J Bus
36:394–419] and Fama [Fama EF (1965)
J Bus
38:34–105] proposed a symmetric Lévy probability distribution function (PDF) to describe the stochastic properties of commodity changes and price changes. We find that an asymmetric Lévy PDF,
, characterized by infinite variance, models several multiple credit ratios used in financial accounting to quantify a firm’s financial health, such as the Altman [Altman EI (1968)
J Financ
23:589–609]
Z
score and the Zmijewski [Zmijewski ME (1984)
J Accounting Res
22:59–82] score, and models changes of individual financial ratios, Δ
X
i
. We thus find that Lévy PDFs describe both the static and dynamics of credit ratings. We find that for the majority of ratios, Δ
X
i
scales with the Lévy parameter
α
≈ 1, even though only a few of the individual ratios are characterized by a PDF with power-law tails
with infinite variance. We also find that α exhibits a striking stability over time. A key element in estimating credit losses is the distribution of credit rating changes, the functional form of which is unknown for alphabetical ratings. For continuous credit ratings, the Altman
Z
score, we find that
P
(Δ
Z
) follows a Lévy PDF with power-law exponent
α
≈ 1, consistent with changes of individual financial ratios. Estimating the conditional
P
(Δ
Z
|
Z
) versus
Z
, we demonstrate how this continuous credit rating approach and its dynamics can be used to evaluate credit risk.
</jats:p