Operational Risk Assessment Using Bayesian Inference with Regard to the Composition of Data Sources and the Assumption of Dependence between Experts and Internal Loss Data

In order to measure hedge funds operating under the wings of two documented, many financial institutions tend to use the loss distribution approach. But a loss distribution approach requires a large number of internal loss data in order to have the necessary performance, so due to limitations in the...

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Main Authors: Bakhtiar Ostadi, Sajad Khazayi, Ali Husseinzadeh Kashan
Format: Article
Language:fas
Published: Alzahra University 2018-04-01
Series:راهبرد مدیریت مالی
Subjects:
Online Access:http://jfm.alzahra.ac.ir/article_3227_1fd303b4b075d69ebbd1fe0e0b83f498.pdf
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spelling doaj-053e8da070474db18ff06137115fed142020-11-24T23:57:54ZfasAlzahra Universityراهبرد مدیریت مالی2345-32142538-19622018-04-0161537210.22051/jfm.2018.17227.14863227Operational Risk Assessment Using Bayesian Inference with Regard to the Composition of Data Sources and the Assumption of Dependence between Experts and Internal Loss DataBakhtiar Ostadi0Sajad Khazayi1Ali Husseinzadeh Kashan2Assistant Professor of Industrial Engineering, Faculty of Industrial and Systems Engineering, Tarbiat Modares University, Tehran, Iran,MSc student of Financial Engineering, Tarbiat Modares UniversityAssistant Professor of Industrial Engineering, Faculty of Industrial and Systems Engineering, Tarbiat Modares UniversityIn order to measure hedge funds operating under the wings of two documented, many financial institutions tend to use the loss distribution approach. But a loss distribution approach requires a large number of internal loss data in order to have the necessary performance, so due to limitations in the database operating losses and the cost of internal loss data collection, in order to increase performance and reliability the operational risk capital should be calculated from other data sources used for operational risk. The biggest challenge facing financial institutions is how to combine different data sources of operational risk. In this regard, expressed in this research has been how to combine a variety of data source. So, in this paper the parameter estimation of frequency of operational risk loss distribution approach using Bayesian inference is explored. In this research, assuming dependencies between data sources, operational risk, the experts and internal loss data is intended. To validate the estimated models for the posterior distribution of numerical tests of goodness of fit is used. In addition,  to calculate dependencies between data sources, detailed functions family of Gauss is used. The results indicate that with the assumption of experts dependence between the source data and internal data loss, by increasing the number of predictive parameters, frequency distribution, reduced the value of the parameter distribution, which represents a decrease of profile risk over time.http://jfm.alzahra.ac.ir/article_3227_1fd303b4b075d69ebbd1fe0e0b83f498.pdfOperational RiskBayesian InferenceLoss Distribution ApproachCopula
collection DOAJ
language fas
format Article
sources DOAJ
author Bakhtiar Ostadi
Sajad Khazayi
Ali Husseinzadeh Kashan
spellingShingle Bakhtiar Ostadi
Sajad Khazayi
Ali Husseinzadeh Kashan
Operational Risk Assessment Using Bayesian Inference with Regard to the Composition of Data Sources and the Assumption of Dependence between Experts and Internal Loss Data
راهبرد مدیریت مالی
Operational Risk
Bayesian Inference
Loss Distribution Approach
Copula
author_facet Bakhtiar Ostadi
Sajad Khazayi
Ali Husseinzadeh Kashan
author_sort Bakhtiar Ostadi
title Operational Risk Assessment Using Bayesian Inference with Regard to the Composition of Data Sources and the Assumption of Dependence between Experts and Internal Loss Data
title_short Operational Risk Assessment Using Bayesian Inference with Regard to the Composition of Data Sources and the Assumption of Dependence between Experts and Internal Loss Data
title_full Operational Risk Assessment Using Bayesian Inference with Regard to the Composition of Data Sources and the Assumption of Dependence between Experts and Internal Loss Data
title_fullStr Operational Risk Assessment Using Bayesian Inference with Regard to the Composition of Data Sources and the Assumption of Dependence between Experts and Internal Loss Data
title_full_unstemmed Operational Risk Assessment Using Bayesian Inference with Regard to the Composition of Data Sources and the Assumption of Dependence between Experts and Internal Loss Data
title_sort operational risk assessment using bayesian inference with regard to the composition of data sources and the assumption of dependence between experts and internal loss data
publisher Alzahra University
series راهبرد مدیریت مالی
issn 2345-3214
2538-1962
publishDate 2018-04-01
description In order to measure hedge funds operating under the wings of two documented, many financial institutions tend to use the loss distribution approach. But a loss distribution approach requires a large number of internal loss data in order to have the necessary performance, so due to limitations in the database operating losses and the cost of internal loss data collection, in order to increase performance and reliability the operational risk capital should be calculated from other data sources used for operational risk. The biggest challenge facing financial institutions is how to combine different data sources of operational risk. In this regard, expressed in this research has been how to combine a variety of data source. So, in this paper the parameter estimation of frequency of operational risk loss distribution approach using Bayesian inference is explored. In this research, assuming dependencies between data sources, operational risk, the experts and internal loss data is intended. To validate the estimated models for the posterior distribution of numerical tests of goodness of fit is used. In addition,  to calculate dependencies between data sources, detailed functions family of Gauss is used. The results indicate that with the assumption of experts dependence between the source data and internal data loss, by increasing the number of predictive parameters, frequency distribution, reduced the value of the parameter distribution, which represents a decrease of profile risk over time.
topic Operational Risk
Bayesian Inference
Loss Distribution Approach
Copula
url http://jfm.alzahra.ac.ir/article_3227_1fd303b4b075d69ebbd1fe0e0b83f498.pdf
work_keys_str_mv AT bakhtiarostadi operationalriskassessmentusingbayesianinferencewithregardtothecompositionofdatasourcesandtheassumptionofdependencebetweenexpertsandinternallossdata
AT sajadkhazayi operationalriskassessmentusingbayesianinferencewithregardtothecompositionofdatasourcesandtheassumptionofdependencebetweenexpertsandinternallossdata
AT alihusseinzadehkashan operationalriskassessmentusingbayesianinferencewithregardtothecompositionofdatasourcesandtheassumptionofdependencebetweenexpertsandinternallossdata
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