Machine-Learning Credit Scores and Disparate Impact Theory

Machine-Learning Credit Scores and Disparate Impact Theory
Title Machine-Learning Credit Scores and Disparate Impact Theory PDF eBook
Author Lauri Kai
Publisher
Pages 36
Release 2018
Genre
ISBN

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This Note analyzes the effects of machine learning in the lending context and argues that the existing legal framework can address unintentional discrimination that may result from credit-scoring models developed through machine learning. Potential liability stems from increased complexity of machine-learning processes; as machine-learning algorithms become more sophisticated, it becomes more difficult to explain the results they produce. Under current law, the inability to reasonably explain or even discover the correlations between data inputs and the resulting disparate impact leaves the lender vulnerable to suit for unintentional discrimination.

Does Credit Scoring Produce a Disparate Impact?

Does Credit Scoring Produce a Disparate Impact?
Title Does Credit Scoring Produce a Disparate Impact? PDF eBook
Author Robert B. Avery
Publisher DIANE Publishing
Pages 52
Release 2010
Genre
ISBN 1437980201

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Credit Scoring in Context of Interpretable Machine Learning

Credit Scoring in Context of Interpretable Machine Learning
Title Credit Scoring in Context of Interpretable Machine Learning PDF eBook
Author Bogumił Kamiński
Publisher
Pages
Release 2020
Genre
ISBN 9788380304246

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Recent Methods from Statistics and Machine Learning for Credit Scoring

Recent Methods from Statistics and Machine Learning for Credit Scoring
Title Recent Methods from Statistics and Machine Learning for Credit Scoring PDF eBook
Author Anne Kraus
Publisher Cuvillier Verlag
Pages 166
Release 2014-07-08
Genre Mathematics
ISBN 3736947364

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Credit scoring models are the basis for financial institutions like retail and consumer credit banks. The purpose of the models is to evaluate the likelihood of credit applicants defaulting in order to decide whether to grant them credit. The area under the receiver operating characteristic (ROC) curve (AUC) is one of the most commonly used measures to evaluate predictive performance in credit scoring. The aim of this thesis is to benchmark different methods for building scoring models in order to maximize the AUC. While this measure is used to evaluate the predictive accuracy of the presented algorithms, the AUC is especially introduced as direct optimization criterion.

The Credit Scoring Toolkit

The Credit Scoring Toolkit
Title The Credit Scoring Toolkit PDF eBook
Author Raymond Anderson
Publisher Oxford University Press
Pages 791
Release 2007-08-30
Genre Business & Economics
ISBN 9780199226405

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The Credit Scoring Toolkit provides an all-encompassing view of the use of statistical models to assess retail credit risk and provide automated decisions.In eight modules, the book provides frameworks for both theory and practice. It first explores the economic justification and history of Credit Scoring, risk linkages and decision science, statistical and mathematical tools, the assessment of business enterprises, and regulatory issues ranging from data privacy to Basel II. It then provides a practical how-to-guide for scorecard development, including data collection, scorecard implementation, and use within the credit risk management cycle.Including numerous real-life examples and an extensive glossary and bibliography, the text assumes little prior knowledge making it an indispensable desktop reference for graduate students in statistics, business, economics and finance, MBA students, credit risk and financial practitioners.

Powering the Digital Economy: Opportunities and Risks of Artificial Intelligence in Finance

Powering the Digital Economy: Opportunities and Risks of Artificial Intelligence in Finance
Title Powering the Digital Economy: Opportunities and Risks of Artificial Intelligence in Finance PDF eBook
Author El Bachir Boukherouaa
Publisher International Monetary Fund
Pages 35
Release 2021-10-22
Genre Business & Economics
ISBN 1589063953

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This paper discusses the impact of the rapid adoption of artificial intelligence (AI) and machine learning (ML) in the financial sector. It highlights the benefits these technologies bring in terms of financial deepening and efficiency, while raising concerns about its potential in widening the digital divide between advanced and developing economies. The paper advances the discussion on the impact of this technology by distilling and categorizing the unique risks that it could pose to the integrity and stability of the financial system, policy challenges, and potential regulatory approaches. The evolving nature of this technology and its application in finance means that the full extent of its strengths and weaknesses is yet to be fully understood. Given the risk of unexpected pitfalls, countries will need to strengthen prudential oversight.

Credit Risk Scorecards

Credit Risk Scorecards
Title Credit Risk Scorecards PDF eBook
Author Naeem Siddiqi
Publisher John Wiley & Sons
Pages 124
Release 2012-06-29
Genre Business & Economics
ISBN 1118429168

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Praise for Credit Risk Scorecards "Scorecard development is important to retail financial services in terms of credit risk management, Basel II compliance, and marketing of credit products. Credit Risk Scorecards provides insight into professional practices in different stages of credit scorecard development, such as model building, validation, and implementation. The book should be compulsory reading for modern credit risk managers." —Michael C. S. Wong Associate Professor of Finance, City University of Hong Kong Hong Kong Regional Director, Global Association of Risk Professionals "Siddiqi offers a practical, step-by-step guide for developing and implementing successful credit scorecards. He relays the key steps in an ordered and simple-to-follow fashion. A 'must read' for anyone managing the development of a scorecard." —Jonathan G. Baum Chief Risk Officer, GE Consumer Finance, Europe "A comprehensive guide, not only for scorecard specialists but for all consumer credit professionals. The book provides the A-to-Z of scorecard development, implementation, and monitoring processes. This is an important read for all consumer-lending practitioners." —Satinder Ahluwalia Vice President and Head-Retail Credit, Mashreqbank, UAE "This practical text provides a strong foundation in the technical issues involved in building credit scoring models. This book will become required reading for all those working in this area." —J. Michael Hardin, PhD Professor of StatisticsDepartment of Information Systems, Statistics, and Management ScienceDirector, Institute of Business Intelligence "Mr. Siddiqi has captured the true essence of the credit risk practitioner's primary tool, the predictive scorecard. He has combined both art and science in demonstrating the critical advantages that scorecards achieve when employed in marketing, acquisition, account management, and recoveries. This text should be part of every risk manager's library." —Stephen D. Morris Director, Credit Risk, ING Bank of Canada