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Probable Maximum Loss Estimation/Bevis
Metodebevisregistrering

Probable Maximum Loss Estimation

Probable maximum loss (PML) estimation reads a tail loss, the loss associated with a chosen rare return period or exceedance probability, from the loss exceedance curve produced by a probabilistic risk or catastrophe model. Where average annual loss summarizes the mean of the loss distribution, PML characterizes its extreme: a 1-in-250-year PML is the loss level exceeded with one percent probability in a year (a 0.4 percent probability for 1-in-250). Patricia Grossi and Howard Kunreuther's 2005 volume sets out PML and the exceedance-probability curve as core catastrophe-model outputs, and Kirsten Mitchell-Wallace and colleagues' 2017 practitioner's guide details how the industry computes and uses PML, including the crucial distinction between occurrence and aggregate exceedance. PML is the metric that drives solvency capital, reinsurance purchase, risk appetite, and regulatory stress tests, because catastrophe risk is about surviving the rare bad year, not the average one. It is a percentile (value-at-risk) of the loss distribution and therefore inherits both the power and the fragility of tail estimation. Defining it precisely, return period, occurrence versus aggregate, and uncertainty, is essential to using it responsibly.

Sources recorded, not reviewed

Kilderegistrering

Citater kopieret ordret fra metodens kilderegistrering. Ingen påstandsniveauverifikation er udledt heraf.

Probable Maximum Loss Estimation (Return-Period Tail Loss from a Risk Model)
Taksonomisk metoderegistrering · process-pipeline / disaster-studies
  • Grossi, P., & Kunreuther, H. (Eds.) (2005). Catastrophe Modeling: A New Approach to Managing Risk. Springer. · ISBN 9780387241050
  • Mitchell-Wallace, K., Jones, M., Hillier, J., & Foote, M. (Eds.) (2017). Natural Catastrophe Risk Management and Modelling: A Practitioner's Guide. Wiley-Blackwell. · ISBN 9781118906040
Åbn fuld metode

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Relaterede metoder

Genereret fra metodegrafen og vist som maskinelt foreslåede relationer — ingen bevispåstand er udledt.

Taxonomic bucketAverage Annual Loss Estimationmachine-suggested · Relational suggestion, not evidence.Same method familyCatastrophe Risk Modelingmachine-suggested · Relational suggestion, not evidence.Same method familyExposure Modeling (Disaster Risk)machine-suggested · Relational suggestion, not evidence.Same method familyHAZUS Loss Estimationmachine-suggested · Relational suggestion, not evidence.

Bevisstatus

Sources recorded, not reviewed

Bibliographic sources are present. Claim-level evidence review has not been performed.

Kilder

2 registrerede citater, kopieret fra metodens kilderegistrering.

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