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Activity Number: 566 - Analytics in Insurance Operations: Novel Statistical Methods and Applications
Type: Topic Contributed
Date/Time: Wednesday, July 31, 2019 : 2:00 PM to 3:50 PM
Sponsor: Casualty Actuarial Society
Abstract #304495
Title: A New Perspective from a Dirichlet Model for Insurance Loss Reserving
Author(s): Karthik Sriram*
Companies: Indian Institute of Management Ahmedabad
Keywords: Bayesian; Bornhuetter-Ferguson; Chain-Ladder; Dirichlet distribution; Loss reserve
Abstract:

Forecasting the outstanding claim liabilities to set adequate reserves is critical for a nonlife insurer's solvency. Chain-Ladder and Bornhuetter-Ferguson are two prominent actuarial approaches used for this task. The selection between the two approaches is often ad hoc due to different underlying assumptions. We introduce a Dirichlet model that provides a common statistical framework for the two approaches, with some appealing properties. Depending on the type of information available, the model inference naturally leads to either Chain-Ladder or Bornhuetter-Ferguson prediction. Using claims data on Worker’s compensation insurance from several US insurers, we discuss both frequentist and Bayesian inference


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