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Optimal approximation by one Gaussian function to probability density functionsOptimal approximation by one Gaussian function to probability density functions

Other Titles
Optimal approximation by one Gaussian function to probability density functions
Authors
김광일조승연전두배
Issue Date
Sep-2023
Publisher
영남수학회
Keywords
Optimal approximation; non-normal distribution; periodically oscillating distribution; nearly-Gaussian function.
Citation
East Asian Mathematical Journal, v.39, no.5, pp 537 - 547
Pages
11
Indexed
KCI
Journal Title
East Asian Mathematical Journal
Volume
39
Number
5
Start Page
537
End Page
547
URI
https://scholarworks.gnu.ac.kr/handle/sw.gnu/68180
ISSN
1226-6973
2287-2833
Abstract
In this paper, we introduce the optimal approximation by a Gaussian function for a probability density function. We show that the ap- proximation can be obtained by solving a non-linear system of parameters of Gaussian function. Then, to understand the non-normality of the em- pirical distributions observed in financial markets, we consider the nearly Gaussian function that consists of an optimally approximated Gaussian function and a small periodically oscillating density function. We show that, depending on the parameters of the oscillation, the nearly Gaussian functions can have fairly thick heavy tails.
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Cho, Seung Yeon
자연과학대학 (수학물리학부)
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