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Simulating risk measures via asymptotic expansions for relative errors
Author(s) -
Jiang Wei,
Kou Steven
Publication year - 2021
Publication title -
mathematical finance
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.98
H-Index - 81
eISSN - 1467-9965
pISSN - 0960-1627
DOI - 10.1111/mafi.12304
Subject(s) - quantile , expected shortfall , value at risk , mathematics , class (philosophy) , econometrics , approximation error , computer science , mathematical optimization , statistics , risk management , economics , finance , artificial intelligence
Risk measures, such as value‐at‐risk and expected shortfall, are widely used in finance. With the necessary sample size being computed using asymptotic expansions for relative errors, we propose a general framework to simulate these risk measures for a wide class of dependent data. The asymptotic expansions are new even for independent and identical data. An extensive numerical study is conducted to compare the proposed algorithm against existing algorithms, showing that the new algorithm is easy to implement, fast and accurate, even at the 0.001 quantile level. Applications to the estimation of intra‐horizon risk and to a comparison of the relative errors of value‐at‐risk and expected shortfall are also given.
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