Model Uncertainty and Selection of Risk Models for Left-Truncated and Right-Censored Loss Data
Qian Zhao,
Sahadeb Upretee,
Daoping Yu
Abstract:Insurance loss data are usually in the form of left-truncation and right-censoring due to deductibles and policy limits, respectively. This paper investigates the model uncertainty and selection procedure when various parametric models are constructed to accommodate such left-truncated and right-censored data. The joint asymptotic properties of the estimators have been established using the Delta method along with Maximum Likelihood Estimation when the model is specified. We conduct the simulation studies usin… Show more
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