2012 Joint Section Colloquium of AFIR-ERM, ASTIN and IAALS - Mexico City, Mexico
30 September – 4 October 2012
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Life Insurance
The construction of multiple decrement models from associated single decrement experiences
Speakers: Jorge Rendón Elizondo
September 30, 2012
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