This paper describes the development of a tool, based on a Bayesian network model, that provides posteriori predictions of operational risk events, aggregate operational loss distributions, and Operational Value-at-Risk, for a structured finance operations unit located within one of Australia's major banks. The Bayesian network, based on a previously developed causal framework, has been designed to model the smaller and more frequent, attritional operational loss events. Given the limited availability of risk factor event information and operational loss data, we rely on the elicitation of subjective probabilities, sourced from domain experts. Parameter sensitivity analysis is performed to validate and check the model's robustness...
This study aims to develop a Bayesian methodology to identify, quantify and measure operational risk...
This study aims to develop a Bayesian methodology to identify, quantify and measure operational risk...
This study aims to develop a Bayesian methodology to identify, quantify and measure operational risk...
This paper is concerned with the design of a Bayesian network structure that is suitable for operati...
This paper provides a practical approach to construct and learn a Bayesian network model that will e...
Operational risk is managed through internal/external loss data, key risk indicators, risk and contr...
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 research represents the extension of a Bayesian Network (BN) model for operational risk quantifi...
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...
This study aims to develop a Bayesian methodology to identify, quantify and measure operational risk...
This study aims to develop a Bayesian methodology to identify, quantify and measure operational risk...
The management of operational risk in the banking industry has undergone explosive changes over the ...
This study aims to develop a Bayesian methodology to identify, quantify and measure operational risk...
This study aims to develop a Bayesian methodology to identify, quantify and measure operational risk...
This study aims to develop a Bayesian methodology to identify, quantify and measure operational risk...
This paper is concerned with the design of a Bayesian network structure that is suitable for operati...
This paper provides a practical approach to construct and learn a Bayesian network model that will e...
Operational risk is managed through internal/external loss data, key risk indicators, risk and contr...
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 research represents the extension of a Bayesian Network (BN) model for operational risk quantifi...
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...
This study aims to develop a Bayesian methodology to identify, quantify and measure operational risk...
This study aims to develop a Bayesian methodology to identify, quantify and measure operational risk...
The management of operational risk in the banking industry has undergone explosive changes over the ...
This study aims to develop a Bayesian methodology to identify, quantify and measure operational risk...
This study aims to develop a Bayesian methodology to identify, quantify and measure operational risk...
This study aims to develop a Bayesian methodology to identify, quantify and measure operational risk...