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APPROXIMATING THE DENSITY OF THE TIME TO RUIN VIA FOURIER-COSINE SERIES EXPANSION
by
Zhang, Zhimin
in
Actuarial science
/ Fourier transforms
/ Laplace transforms
/ Random variables
2017
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APPROXIMATING THE DENSITY OF THE TIME TO RUIN VIA FOURIER-COSINE SERIES EXPANSION
by
Zhang, Zhimin
in
Actuarial science
/ Fourier transforms
/ Laplace transforms
/ Random variables
2017
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APPROXIMATING THE DENSITY OF THE TIME TO RUIN VIA FOURIER-COSINE SERIES EXPANSION
Journal Article
APPROXIMATING THE DENSITY OF THE TIME TO RUIN VIA FOURIER-COSINE SERIES EXPANSION
2017
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Overview
In this paper, the density of the time to ruin is studied in the context of the classical compound Poisson risk model. Both one-dimensional and two-dimensional Fourier-cosine series expansions are used to approximate the density of the time to ruin, and the approximation errors are also obtained. Some numerical examples are also presented to show that the proposed method is very efficient.
Publisher
Cambridge University Press
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