Title of article
An Application of Stochastic Approximation in Simulated Method of Moments
Author/Authors
Salavati, Erfan Department of Mathematics - Amir Kabir University of Technology - Tehran, Iran , Mohseni, Nazanin Department of Mathematics - Amir Kabir University of Technology - Tehran, Iran
Pages
16
From page
57
To page
72
Abstract
Identifying the structures of dependence between financial assets is one of the interesting topics to researchers. However, there are challenges to this purpose. One of them is the modelling of heavy tail distributions. Distributions of financial assets generally have heavier tails than other distributions, such as exponential distributions. Also, the dependence of financial assets in crashes is stronger than in booms and consequently the skewed parameter in the left tail is more.To address these challenges, there is a function called Copula. So, copula functions are suggested for modelling dependency structure between multivariate data without any assumptions on marginal distributions, which they solve the problems of dependency measures such as linear correlation coefficient. Also, tail dependency measures have analytical formulas with copula functions. In general, the copula function connects the joint distribution functions to the marginal distribution of every variables.With regard, we have introduced a factor copula model that is useful for models where variables are based on latent factor structures. Finally, we have estimated the parameters of factor copula by Simulated method of Moment, Newton-Raphson method and Robbins-Monroe algorithm and have compared the results of these methods to each other.
Keywords
Robbins-Monroe Algorithm , CRASH , Heavy Tail , Factor Copula , Simulated Method of Moment , Newton-Raphson Method
Journal title
Journal of Mathematics and Modeling in Finance
Serial Year
2021
Record number
2702865
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