Operational risk management : a practical approach to intelligent data analysis
著者
書誌事項
Operational risk management : a practical approach to intelligent data analysis
(Statistics in practice)
Wiley, 2011
- : cloth
大学図書館所蔵 全9件
  青森
  岩手
  宮城
  秋田
  山形
  福島
  茨城
  栃木
  群馬
  埼玉
  千葉
  東京
  神奈川
  新潟
  富山
  石川
  福井
  山梨
  長野
  岐阜
  静岡
  愛知
  三重
  滋賀
  京都
  大阪
  兵庫
  奈良
  和歌山
  鳥取
  島根
  岡山
  広島
  山口
  徳島
  香川
  愛媛
  高知
  福岡
  佐賀
  長崎
  熊本
  大分
  宮崎
  鹿児島
  沖縄
  韓国
  中国
  タイ
  イギリス
  ドイツ
  スイス
  フランス
  ベルギー
  オランダ
  スウェーデン
  ノルウェー
  アメリカ
注記
Includes bibliographical references and index
内容説明・目次
内容説明
Models and methods for operational risks assessment and mitigation are gaining importance in financial institutions, healthcare organizations, industry, businesses and organisations in general. This book introduces modern Operational Risk Management and describes how various data sources of different types, both numeric and semantic sources such as text can be integrated and analyzed. The book also demonstrates how Operational Risk Management is synergetic to other risk management activities such as Financial Risk Management and Safety Management. Operational Risk Management: a practical approach to intelligent data analysis provides practical and tested methodologies for combining structured and unstructured, semantic-based data, and numeric data, in Operational Risk Management (OpR) data analysis.
Key Features:
The book is presented in four parts: 1) Introduction to OpR Management, 2) Data for OpR Management, 3) OpR Analytics and 4) OpR Applications and its Integration with other Disciplines.
Explores integration of semantic, unstructured textual data, in Operational Risk Management.
Provides novel techniques for combining qualitative and quantitative information to assess risks and design mitigation strategies.
Presents a comprehensive treatment of "near-misses" data and incidents in Operational Risk Management.
Looks at case studies in the financial and industrial sector.
Discusses application of ontology engineering to model knowledge used in Operational Risk Management.
Many real life examples are presented, mostly based on the MUSING project co-funded by the EU FP6 Information Society Technology Programme. It provides a unique multidisciplinary perspective on the important and evolving topic of Operational Risk Management. The book will be useful to operational risk practitioners, risk managers in banks, hospitals and industry looking for modern approaches to risk management that combine an analysis of structured and unstructured data. The book will also benefit academics interested in research in this field, looking for techniques developed in response to real world problems.
目次
Foreword. Preface.
Introduction.
Notes on Contributors.
List of Acronyms.
PART I INTRODUCTION TO OPERATIONAL RISK MANAGEMENT.
1 Risk management: a general view (Ron S. Kenett, Richard Pike and Yossi Raanan).
1.1 Introduction.
1.2 Definitions of risk.
1.3 Impact of risk.
1.4 Types of risk.
1.5 Enterprise risk management.
1.6 State of the art in enterprise risk management.
1.7 Summary.
References.
2 Operational risk management: an overview (Yossi Raanan, Ron S. Kenett and Richard Pike).
2.1 Introduction.
2.2 Definitions of operational risk management.
2.3 Operational risk management techniques.
2.4 Operational risk statistical models.
2.5 Operational risk measurement techniques.
2.6 Summary.
References.
PART II DATA FOR OPERATIONAL RISK MANAGEMENT AND ITS HANDLING.
3 Ontology-based modelling and reasoning in operational risks (Christian Leibold, Hans-Ulrich Krieger and Marcus Spies).
3.1 Introduction.
3.2 Generic and axiomatic ontologies.
3.3 Domain-independent ontologies.
3.4 Standard reference ontologies.
3.5 Operational risk management.
3.6 Summary.
References.
4 Semantic analysis of textual input (Horacio Saggion, Thierry Declerck and Kalina Bontcheva).
4.1 Introduction.
4.2 Information extraction.
4.3 The general architecture for text engineering.
4.4 Text analysis components.
4.5 Ontology support.
4.6 Ontology-based information extraction.
4.7 Evaluation.
4.8 Summary.
References.
5 A case study of ETL for operational risks (Valerio Grossi and Andrea Romei).
5.1 Introduction.
5.2 ETL (Extract, Transform and Load).
5.3 Case study specification.
5.4 The ETL-based solution.
5.5 Summary.
References.
6 Risk-based testing of web services (Xiaoying Bai and Ron S. Kenett).
6.1 Introduction.
6.2 Background.
6.3 Problem statement.
6.4 Risk assessment.
6.5 Risk-based adaptive group testing.
6.6 Evaluation.
6.7 Summary.
References.
PART III OPERATIONAL RISK ANALYTICS.
7 Scoring models for operational risks (Paolo Giudici).
7.1 Background.
7.2 Actuarial methods.
7.3 Scorecard models.
7.4 Integrated scorecard models.
7.5 Summary.
References.
8 Bayesian merging and calibration for operational risks (Silvia Figini).
8.1 Introduction.
8.2 Methodological proposal.
8.3 Application.
8.4 Summary.
References.
9 Measures of association applied to operational risks (Ron S. Kenett and Silvia Salini).
9.1 Introduction.
9.2 The arules R script library.
9.3 Some examples.
9.4 Summary.
References.
PART IV OPERATIONAL RISK APPLICATIONS AND INTEGRATION WITH OTHER DISCIPLINES.
10 Operational risk management beyond AMA: new ways to quantify non-recorded losses (Giorgio Aprile, Antonio Pippi and Stefano Visinoni).
10.1 Introduction.
10.2 Non-recorded losses in a banking context.
10.3 Methodology.
10.4 Performing the analysis: a case study.
10.5 Summary.
References.
11 Combining operational risks in financial risk assessment scores (Michael Munsch, Silvia Rohe and Monika Jungemann-Dorner).
11.1 Interrelations between financial risk management and operational risk management.
11.2 Financial rating systems and scoring systems.
11.3 Data management for rating and scoring.
11.4 Use case: business retail ratings for assessment of probabilities of default.
11.5 Use case: quantitative financial ratings and prediction of fraud.
11.6 Use case: money laundering and identification of the beneficial owner.
11.7 Summary.
References.
12 Intelligent regulatory compliance (Marcus Spies, Rolf Gubser and Markus Schacher).
12.1 Introduction to standards and specifications for business governance.
12.2 Specifications for implementing a framework for business governance.
12.3 Operational risk from a BMM/SBVR perspective.
12.4 Intelligent regulatory compliance based on BMM and SBVR.
12.5 Generalization: capturing essential concepts of operational risk in UML and BMM.
12.6 Summary.
References.
13 Democratisation of enterprise risk management (Paolo Lombardi, Salvatore Piscuoglio, Ron S. Kenett, Yossi Raanan and Markus Lankinen).
13.1 Democratisation of advanced risk management services.
13.2 Semantic-based technologies and enterprise-wide risk management.
13.3 An enterprise-wide risk management vision.
13.4 Integrated risk self-assessment: a service to attract customers.
13.5 A real-life example in the telecommunications industry.
13.6 Summary.
References.
14 Operational risks, quality, accidents and incidents (Ron S. Kenett and Yossi Raanan).
14.1 The convergence of risk and quality management.
14.2 Risks and the Taleb quadrants.
14.3 The quality ladder.
14.4 Risks, accidents and incidents.
14.5 Operational risks in the oil and gas industry.
14.6 Operational risks: data management, modelling and decision making.
14.7 Summary.
References.
Index.
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