Announcement: SOA releases passing candidate numbers for April 2024 Exam PA.

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  • How to Prevent the Big Mistake
    of those entities that possess guaranteed mortality death bene- fit (GMDB) risk have been well documented; ... regulatory require- ment. It can be argued that the U.S. indus- try’s troubles with GMDB started with enterprising ...

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    • Authors: Edward Betteto
    • Date: Mar 2003
    • Competency: External Forces & Industry Knowledge>Actuarial theory in business context; Strategic Insight and Integration>Big picture view; Technical Skills & Analytical Problem Solving>Incorporate risk management; Technical Skills & Analytical Problem Solving>Problem analysis and definition
    • Publication Name: Reinsurance News
    • Topics: Enterprise Risk Management; Finance & Investments>Asset liability management; Finance & Investments>Portfolio management - Finance & Investments; Finance & Investments>Risk measurement - Finance & Investments; Modeling & Statistical Methods>Sensitivity testing; Modeling & Statistical Methods>Stochastic models
  • Actuarial Model Component Design
    Actuarial Model Component Design The article describes the key components of actuarial ... Component Design By William Cember and Jeffrey Yoon A s managers of risk, most actuaries are tasked with answer-ing ...

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    • Authors: Bill Cember, Jeffrey Yoon
    • Date: Nov 2017
    • Competency: Results-Oriented Solutions>Actionable recommendations; Technical Skills & Analytical Problem Solving>Innovative solutions; Technical Skills & Analytical Problem Solving>Problem analysis and definition; Technical Skills & Analytical Problem Solving>Process and technique refinement
    • Publication Name: The Modeling Platform
    • Topics: Modeling & Statistical Methods>Asset modeling; Modeling & Statistical Methods>Deterministic models; Modeling & Statistical Methods>Forecasting; Modeling & Statistical Methods>Sensitivity testing; Modeling & Statistical Methods>Stochastic models