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  • Non-Parameteric Estimation for Joint Survival Distribution Using Interval-Censoring Technique
    Non-Parameteric Estimation for Joint Survival Distribution Using Interval-Censoring Technique In this paper,we present a method which first converges a two dimensional data to a univariate one ...

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    • Authors: Robert Brown, Lijia Guo, Yibing Wang
    • Date: Jan 1995
    • Competency: External Forces & Industry Knowledge>Actuarial methods in business operations
    • Publication Name: Actuarial Research Clearing House
    • Topics: Finance & Investments>Risk measurement - Finance & Investments; Modeling & Statistical Methods>Estimation methods
  • Extreme Value Statistics, Resampling, and Insolvency Testing
    Extreme Value Statistics, Resampling, and Insolvency Testing By the use of resampling and extreme value statistics we will develop a method to reduce the time and costs of testing insurance ...

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    • Authors: Steven Craighead
    • Date: Jan 1996
    • Competency: External Forces & Industry Knowledge>Actuarial methods in business operations
    • Publication Name: Actuarial Research Clearing House
    • Topics: Finance & Investments>Risk measurement - Finance & Investments; Modeling & Statistical Methods>Estimation methods
  • On Estimation of Parameters of the Pareto Distribution
    On Estimation of Parameters of the Pareto Distribution The two-parameter Pareto distribution is a commonly used model in reliability and risk modeling. Minimum variance unbiased estimates of the ...

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    • Authors: Rohan J Dalpatadu, Ashok K Singh
    • Date: Jan 1996
    • Competency: External Forces & Industry Knowledge>Actuarial theory in business context
    • Publication Name: Actuarial Research Clearing House
    • Topics: Finance & Investments>Risk measurement - Finance & Investments; Modeling & Statistical Methods>Estimation methods
  • Credibility Using Copulas
    Credibility Using Copulas This paper develops credibility using a longitudinal data framework. In a longitudinal data framework, one might encounter data from a cross-section of risk classes ...

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    • Authors: Edward Frees, PING WANG
    • Date: Sep 2008
    • Competency: External Forces & Industry Knowledge>Actuarial theory in business context
    • Topics: Finance & Investments>Risk measurement - Finance & Investments; Modeling & Statistical Methods>Bayesian methods; Modeling & Statistical Methods>Stochastic models
  • An Algebraic Reserving Method for Paid Loss Data
    An Algebraic Reserving Method for Paid Loss Data Sooner or later a casualty actuary is confronted by the question, Given a history of paid loss amounts by calendar year, what should reserves be? ...

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    • Authors: Alfred Weller
    • Date: Jan 1996
    • Competency: External Forces & Industry Knowledge>Actuarial methods in business operations
    • Publication Name: Actuarial Research Clearing House
    • Topics: Finance & Investments>Risk measurement - Finance & Investments; Modeling & Statistical Methods>Estimation methods
  • On a Class of Discrete Time Renewal Risk Models
    On a Class of Discrete Time Renewal Risk Models We consider a class of compound renewal risk process with claim waiting times have a discrete Km distribution. The classical compound binomial risk ...

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    • Authors: Shuanming Li
    • Date: Sep 2008
    • Competency: External Forces & Industry Knowledge>Actuarial theory in business context
    • Topics: Finance & Investments>Risk measurement - Finance & Investments; Modeling & Statistical Methods>Stochastic models
  • Asymptotics In The Subexponential Case
    Asymptotics In The Subexponential Case This is a summary of the presentation given during the ARC Conference. Its purpose was to give a brief introduction to subexponential behavior and to show ...

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    • Authors: DIEGO HERNANDEZRANGEL
    • Date: Jan 2000
    • Competency: External Forces & Industry Knowledge>Actuarial theory in business context
    • Publication Name: Actuarial Research Clearing House
    • Topics: Finance & Investments>Risk measurement - Finance & Investments; Modeling & Statistical Methods>Stochastic models
  • Interval Estimates for Risk Loads for Insurers
    Interval Estimates for Risk Loads for Insurers In Volume LXXV of the Proceedings there appeared a paper entitled Risk Loads for Insurers by Feldblum. Confidence intervals for the betas in TABLE 4 ...

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    • Authors: William E Bailey
    • Date: Jan 1995
    • Competency: External Forces & Industry Knowledge>Actuarial methods in business operations
    • Publication Name: Actuarial Research Clearing House
    • Topics: Finance & Investments>Risk measurement - Finance & Investments; Modeling & Statistical Methods>Estimation methods
  • A Numerical Method for Computing the Probability Distribution of Total Risk of Portfolio
    A Numerical Method for Computing the Probability Distribution of Total Risk of Portfolio In the present paper, we propose and investigate a numerical method of computing the probability ...

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    • Authors: Rohan J Dalpatadu, Andy Tsang, Ashok K Singh
    • Date: Jan 1996
    • Competency: External Forces & Industry Knowledge>Actuarial theory in business context
    • Publication Name: Actuarial Research Clearing House
    • Topics: Finance & Investments>Risk measurement - Finance & Investments; Modeling & Statistical Methods>Stochastic models
  • On The Numerical Evaluation of Survival Probabilities
    On The Numerical Evaluation of Survival Probabilities This paper introduces a new direction for evaluating numerically survival probabilities pointed out by H. Seal in his book ‘Survival ...

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    • Authors: Marc Goovaerts
    • Date: Jan 1980
    • Competency: External Forces & Industry Knowledge>Actuarial theory in business context
    • Publication Name: Actuarial Research Clearing House
    • Topics: Finance & Investments>Risk measurement - Finance & Investments; Modeling & Statistical Methods>Stochastic models