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Estimating U.S. Pollution Liabilities by Simulation. Christopher Diamantoukos, FCAS, MAAA. Introduction. Approach to solving the problems encountered in the estimation of Environmental Pollution costs or liabilities
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Estimating U.S. Pollution Liabilities by Simulation Christopher Diamantoukos, FCAS, MAAA
Introduction • Approach to solving the problems encountered in the estimation of Environmental Pollution costs or liabilities • Review the process and the structure of a pollution cost simulation model (PCSM) • Relevance to actuaries and past studies
Overview of Process • Analysis, research, and the Scientific Method • Estimating parameters • Specialized analyses or subsystems • Modeling techniques
Estimating Parameters • Site Costs, number of sites: fundamental frequency and severity approach tends to be empirical • Legal issues relating to coverage for transfer of liability (triggers, conditions, exclusions, contribution over time) tend to be subjective
Specialized Subsystems • Site cost variability • Coverage Defense Module (CDM) • PRP and ultimately responsible parties’ shares • Estimating costs and frequencies among states
Modeling Techniques • Beta distribution and shares • Credibility used for cost differentiation among states • Team approach: RODS, CDM, Aliases
Exposure Model • Sites and costs: the proximate exposure base • Translation to entities (PRPs) • Allocation of liability over “time” • Liability transfer through insurance or other “risk transfer agreements” • Insurance losses never used
Linear Flow of the PCSM • Site cleanup costs at CERCLA (EPA) level • PRP shares • Coverage Defense Module (CDM) • Loss (Cost) Adjustment Expenses and distribution of costs across years • Either one of: • State costs to get countrywide estimate, or • Insurance portfolio attachment
The Observations List • Magnitude • CDM Effects • Underlying Limits: the double-edged sword • Complements aggregate level exposure analysis • State variability tends to be overstated
Beyond the Paper • State sites: the future? • Distributions, characterization, and classification • Stochastic modeling: cooperative processing • Samples and biases