Loss Distributions

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¡ John Wiley & Sons
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Devoted to the problem of fitting parametric probability distributions to data, this treatment uniquely unifies loss modeling in one book. Data sets used are related to the insurance industry, but can be applied to other distributions. Emphasis is on the distribution of single losses related to claims made against various types of insurance policies. Includes five sets of insurance data as examples.

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Robert Vincent Hogg was an American statistician and professor of statistics of the University of Iowa. Hogg is known for his widely used textbooks on statistics and on mathematical statistics.

Stuart A. Klugman is the author of Loss Distributions, published by Wiley.

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