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The Law of Fair Lending and Equal Access

Financial Regulation and Operational Excellence November 30, 2025
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Introduction

This specialized course offers a deep dive into the legal and regulatory landscape of **Fair Lending** and the imperative of **Equal Access** to credit and financial services. It comprehensively covers anti-discrimination statutes, focusing on prohibited bases, disparate treatment, and disparate impact analysis. Participants will learn how to identify, monitor, and mitigate practices that unfairly restrict access to credit for protected classes. The training emphasizes the critical role of data analysis, internal controls, and compliance programs in upholding fair lending principles, particularly in the age of algorithmic decision-making and FinTech.

Objectives

Objectives:

Upon completion of this course, participants will be able to:

  • Interpret the key statutes, regulations, and judicial precedents governing **fair lending** and anti-discrimination in financial services.
  • Differentiate between the legal concepts of **disparate treatment** and **disparate impact** in lending decisions.
  • Identify and assess the specific prohibited bases for discrimination in credit underwriting and pricing.
  • Develop and implement robust **fair lending compliance programs**, monitoring systems, and internal controls.
  • Analyze lending data using statistical and qualitative methods to detect potential patterns of discrimination.
  • Evaluate the fair lending risks inherent in new technologies, such as **AI/Machine Learning** in credit scoring and loan application processing.
  • Apply best practices for documenting lending decisions and handling consumer complaints related to alleged discrimination.
  • Understand the regulatory enforcement process for fair lending violations and the potential for penalties and remediation.

Target Audience

  • Credit Underwriters and Loan Officers
  • Compliance Officers and Fair Lending Specialists
  • Internal Auditors and Risk Managers
  • Legal Counsel and Regulatory Affairs Professionals
  • Data Scientists and Analysts involved in Credit Scoring Model Development
  • Senior Management responsible for Credit Policy
  • Community Development and Financial Inclusion Officers
  • Regulatory Examiners from Supervisory Authorities

Methodology

  • Case Studies analyzing regulatory examinations and enforcement actions.
  • Hands-on Group Activities involving data-driven disparity testing scenarios.
  • Discussions on ethical considerations of using alternative data in credit.
  • Individual Exercises in developing a Fair Lending Risk Assessment matrix.
  • Role-playing a credit committee debate over a policy change's impact.
  • Statistical model overview for non-data scientists.

Personal Impact

  • Expertise in discerning subtle forms of discrimination in credit practices.
  • Ability to design and manage a comprehensive fair lending compliance system.
  • Enhanced skills in using data analytics to proactively identify risk.
  • Deepened understanding of the regulatory expectations for compliance professionals.
  • Improved decision-making skills in high-stakes underwriting and policy.
  • Professional recognition as a subject matter expert in fair lending and equal access.

Organizational Impact

  • Significant reduction in exposure to fair lending litigation and costly fines.
  • Strengthening of reputation as a responsible and inclusive lender.
  • Compliance with core legal requirements, avoiding regulatory sanctions.
  • Expansion of market reach by safely and fairly serving underserved communities.
  • Implementation of more ethical, transparent, and defensible credit policies.
  • Proactive identification and elimination of systemic bias in credit models.

Course Outline

Unit 1: Foundations of Fair Lending Law

Section 1: The Mandate for Equal Access
  • Historical context and the moral/economic imperative for fair lending.
  • Overview of core anti-discrimination statutes (e.g., in US, UK, EU, or regional equivalents).
  • Defining protected classes and prohibited bases for discrimination.
  • Scope of the law: Application, underwriting, pricing, and servicing.
Section 2: Legal Concepts of Discrimination
  • Understanding **Disparate Treatment** (intentional discrimination).
  • Analyzing **Disparate Impact** (neutral policy with discriminatory effect).
  • The four-part test for disparate impact and the "business necessity" defense.
  • Illustrative case law and judicial interpretation of key statutes.

Unit 2: Fair Lending Compliance Program Design

Section 1: Governance and Policy
  • Elements of a robust and defensible **Fair Lending Compliance Management System (CMS)**.
  • Developing a clear, written, non-discriminatory credit policy.
  • Training requirements for all relevant staff (underwriters, marketers, sales).
  • Role of the Board and Senior Management oversight.
Section 2: Risk Assessment and Monitoring
  • Conducting a comprehensive **Fair Lending Risk Assessment**.
  • Designing and executing annual Fair Lending compliance testing programs.
  • Reviewing marketing and advertising practices for potential targeting issues.
  • Monitoring employee compensation and incentive structures for risk.

Unit 3: Data Analysis for Fair Lending Audits

Section 1: Collection and Preparation
  • Data requirements for fair lending analysis (e.g., application, loan terms, demographics).
  • Data cleaning, integrity checks, and ensuring accurate reporting.
  • Selecting the appropriate comparator groups for analysis.
  • Using statistical tools (e.g., regression analysis) to measure disparities.
Section 2: Analyzing Lending Decisions
  • Analyzing pricing disparities (interest rates, fees, points).
  • Reviewing underwriting overrides and exception practices.
  • Examining redlining risks and branch/ATM location strategy.
  • Qualitative file review and root cause analysis of detected disparities.

Unit 4: Technology, AI, and Future Risks

Section 1: Algorithmic Bias
  • Understanding how **Machine Learning (ML)** models can perpetuate bias.
  • Techniques for mitigating bias in data selection and model training.
  • The concept of "model explainability" (XAI) in fair lending.
  • Regulatory guidance on the use of non-traditional data sources.

Unit 5: Enforcement, Remediation, and Best Practices

Section 1: Regulatory Response
  • The process of a regulatory Fair Lending Examination or Audit.
  • Best practices for responding to regulatory findings and deficiencies.
  • Developing effective **remediation plans** for proven violations.
  • Case studies of major Fair Lending settlements and consent orders.

Ready to Learn More?

Have questions about this course? Get in touch with our training consultants.

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Upcoming Sessions

13 Apr

Manchester

April 13, 2026 - April 17, 2026

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04 May

Cairo

May 04, 2026 - May 08, 2026

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25 May

Geneva

May 25, 2026 - May 29, 2026

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