This paper provides a practical approach to construct and learn a Bayesian network model that will enable an operational risk manager communicate actionable operational risk information for informed decision making by senior managers. Bayesian networks and their application in operational risk management has been widely studied; however, literature and research has predominantly focused on their application in modeling and measuring operational risk for capital calculation purposes. We detail the approach to construct and learn a BN model, from an incident database, using the machine learning capabilities in the R package bnlearn. The modeling and the inference capabilities of the Bayesian Networks can be applied to business-as-usual risk m...
We live in an era where every human entity, from a simple citizen to the head of an entity as large ...
AbstractThis study aims to develop a Bayesian methodology to identify, quantify and measure operatio...
This study aims to develop a Bayesian methodology to identify, quantify and measure operational risk...
Operational risk is managed through internal/external loss data, key risk indicators, risk and contr...
This paper describes the development of a tool, based on a Bayesian network model, that provides pos...
This paper is concerned with the design of a Bayesian network structure that is suitable for operati...
The research represents the extension of a Bayesian Network (BN) model for operational risk quantifi...
This chapter introduces Bayesian belief and decision networks as quantitative management tools for o...
The Basel Committee on Banking Supervision has released, in the last few years, recommen- dations fo...
The Basel Committee on Banking Supervision has released, in the last few years, recommen- dations fo...
The article provides a short overview of methods for constructing mathematical models in the form of...
According to different typologies of activity and priority, risks can assume diverse meanings and it...
According to different typologies of activity and priority, risks can assume diverse meanings and it...
A aplicação de Redes Bayesianas como modelo causal em Risco Operacional e extremamente atrativa do p...
A aplicação de Redes Bayesianas como modelo causal em Risco Operacional e extremamente atrativa do p...
We live in an era where every human entity, from a simple citizen to the head of an entity as large ...
AbstractThis study aims to develop a Bayesian methodology to identify, quantify and measure operatio...
This study aims to develop a Bayesian methodology to identify, quantify and measure operational risk...
Operational risk is managed through internal/external loss data, key risk indicators, risk and contr...
This paper describes the development of a tool, based on a Bayesian network model, that provides pos...
This paper is concerned with the design of a Bayesian network structure that is suitable for operati...
The research represents the extension of a Bayesian Network (BN) model for operational risk quantifi...
This chapter introduces Bayesian belief and decision networks as quantitative management tools for o...
The Basel Committee on Banking Supervision has released, in the last few years, recommen- dations fo...
The Basel Committee on Banking Supervision has released, in the last few years, recommen- dations fo...
The article provides a short overview of methods for constructing mathematical models in the form of...
According to different typologies of activity and priority, risks can assume diverse meanings and it...
According to different typologies of activity and priority, risks can assume diverse meanings and it...
A aplicação de Redes Bayesianas como modelo causal em Risco Operacional e extremamente atrativa do p...
A aplicação de Redes Bayesianas como modelo causal em Risco Operacional e extremamente atrativa do p...
We live in an era where every human entity, from a simple citizen to the head of an entity as large ...
AbstractThis study aims to develop a Bayesian methodology to identify, quantify and measure operatio...
This study aims to develop a Bayesian methodology to identify, quantify and measure operational risk...