HMDA Workshop Part IV: Fair Lending & HMDA - MBAAL

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HMDA Workshop Part IV: Fair Lending & HMDA Sunday, Sept. 18, 2016, 4:45 pm Moderator: Richard H. Harvey, Jr., Chief Compliance Officer, Colonial Savings, F.A. Panelists: Melanie Brody, Partner, Mayer Brown LLP Kitty Ryan, Counsel, BuckleySandler LLP Michael S. Taliefero, Managing Director, ComplianceTech

Fourth Session The new HMDA data like the current data has significant implications for fair lending and Community Reinvestment Act (CRA) compliance. This session considers: Legal overview of HMDA, fair lending and CRA currently; Implications of new data on fair lending and CRA claims; and Implications of new data on fair lending analysis.

Legal Background

Fair Lending and HMDA September 18, 2016 Presented by Melanie Brody Partner Mayer Brown LLP

Legal Overview: Fair Lending Laws, CRA and HMDA The federal Equal Credit Opportunity Act (ECOA) and Fair Housing Act (FHA) prohibit discrimination in, among other things, residential mortgage transactions on the basis of race, national origin and other basis. The Community Reinvestment Act (CRA) is incentivizes depository institutions to help meet the credit needs of the communities in which they operate, including low- and moderate-income neighborhoods. The Home Mortgage Disclosure Act (HMDA) requires most entities that make dwelling-secured loans to collect and report a series of data points, including applicant race and ethnicity, about each covered loan application they receive.

Use of HMDA Data – Overview CFPB & DOJ enforcement officials say they have “ramped up investigations of the mortgage space” with regard to fair lending Primary legal theories of illegal lending discrimination: Overt discrimination Disparate treatment Disparate impact Regulators and enforcement agencies use HMDA data to identify institutions with potential fair lending issues Regulators must obtain “HMDA plus” data to perform a more robust analysis

Use of HMDA Data – Common Fair Lending Claims Pricing Minorities pay more on average than non-minorities for same product or service Results from LO discretion & use of overages, discretionary concessions, use of brokers w/ different pricing, or use of multiple rate sheets in same lending area Underwriting Different standards & overlays that may treat minorities differently or may have a discriminatory impact (e.g., FICO score restrictions, maternity leave, disability payments)

Use of HMDA Data – Common Fair Lending Claims Steering & Reverse Redlining Minority consumers steered to less desirable loan products or terms Certain loan products offered only in predominately minority areas Redlining Minorities have limited or no access to credit as compared to nonminorities Few branch office locations in predominately minority neighborhoods Percentage of loans made to non-minorities as compared to percentage made to minorities

HMDA Data and Fair Lending Screening HMDA data can be used to identify institutions with potential fair lending issues that warrant further review: Denial disparities Pricing disparities Market penetration concerns Anomalies in rates of application disposition Interagency Fair Lending Examination Procedures: Scoping: Indicators of potential redlining include: Significant differences, as revealed in HMDA data, in the numbers of applications received, withdrawn, approved but not accepted, and closed for incompleteness or loans originated in those areas in the institution’s market that have relatively high concentrations of minority group residents compared with areas of relatively low concentrations of minority area residents.

HMDA Data and Fair Lending Enforcement For most issues, current HMDA data is sufficient only for identifying institutions that have potential fair lending risk; typically more data and other information is needed to determine whether a disparity observed in HMDA data is explainable or a genuine fair lending concern. However, HMDA data is used both to identify potential redlining risk and to support redlining claims. Recent settlements illustrate some of the ways that government agencies analyze HMDA data to evaluate redlining: “Analysis of Hudson City’s mortgage applications . . .as compared to its peers showed disparities in lending to majority-Black and Hispanic neighborhoods between Hudson City and its peers. These disparities show that there were applicants seeking mortgage loans in majority-Black and Hispanic areas . . .” Peer example: 0.1% of loan applications came from high-Black and Hispanic areas in the Camden MSA compared to 4.4% for the Bank’s peers (44 times as many).

HMDA Data and Fair Lending Enforcement Associated Bank (HUD): Compared to other lenders, Associated Bank’s lending in majority-minority census tracts was lower than in other neighborhoods. Peer example: Compared to other lenders, Associated Bank’s lending in majorityminority census tracts was lower than in other neighborhoods. Eagle Bank (DOJ) Eagle Bank served the credit needs of majority-white census tract residents in the St. Louis MSA to a significantly greater extent than it served the needs of majority-black census tract residents. Peer example: 1.9% of Eagle Bank’s applications were from majority black census tracts whereas 11.1% of comparable lenders’ applications were from majority black census tracts (five times as many).

New Data: Fair Lending and CRA Implications

New HMDA Data: Fair Lending and CRA Implications Today: “The HMDA data alone cannot be used to determine whether a lender is complying with fair lending laws. They do not include many potential determinants of loan application and pricing decisions, such as the applicant’s credit history, the debt-to-income ratio, the loan-tovalue ratio, and others.” (FFIEC Press Release 2015) Tomorrow:

New Data Implications: Pricing Rate spread: APR vs. APOR APOR based on Freddie’s Primary Mortgage Market Survey Not “apples to apples” for open-end and non-GSE products Upfront costs from TRID plus interest rate Comparisons across prohibited bases groups (race etc.) Comparisons across census tracts and MSAs Comparisons to peers

New Data Implications—Expanded Products HELOCs—What will your data look like? Application and denial rates Rate spread/pricing Underwriting Peer comparisons Compared to closed-end products Cash out refinancings vs. second-lien home equity liens Steering

New HMDA Data: Implications for HMDA and CRA Location: Regulators focus on census tracts for CRA, and for traditional redlining analyses The new HMDA data will contain property address Regulators may focus on activity around branches and storefronts; they may require new retail locations to remedy redlining HMDA will show the NMLS ID number for the loan officer; and will show wholesale v. retail activity

New HMDA Data: Implications for HMDA and CRA Meeting credit needs through loans and purchases Regulators count loans originated and purchased loans as part of a bank’s CRA examination The ULI will allow regulators to determine whether banks are buying and selling loans to boost their CRA ratings HMDA will reveal steering towards certain products with greater granularity

New HMDA: Implications for Fair Lending Analysis

The New HMDA: Implications for Fair Lending Analysis April 3, 2016 Presented by Michael Taliefero Managing Director ComplianceTech

Questions/Observations Is the new HMDA really new for purposes of comprehensive fair lending analysis? Reporting – Yes Analysis – No and Yes How will the new HMDA affect fair lending analyses?

Impact of New HMDA on Analysis False positives Peer analysis Different redlining claims? More Age and national origin discrimination claims? More claims based on discriminatory overrides?

New HMDA: Impact on analyses generally 1. Bivariate analyses to determine statistically significance differences among groups. 2. Multivariate analysis ease such as linear and logistic regression 3. High side/low side override analyses 4. Matched pair analyses/comparative-transactional file review 5. All of the above but limited to specific Channels or individual MLO's 6. Mapping market presence/penetration analyses for evidence of redlining

Conclusion: Be Thankful Better information Every lender will be judged by a similar yardstick Expectations of lender are clearer Analyses will be more predictable resulting in maturing of fair lending discipline and culture Encourages strategic lending and access to credit for all

Advantages of Reviewing HMDA Data Early for Fair Lending Considerations

Reviewing HMDA Data Early - Advantages What are the advantages to reviewing HMDA Data early for Fair Lending Considerations? Determine Fair Lending risk exposures from periodic review of HMDA data reports: 25

Reviewing HMDA Data Early - Advantages Analysis will help in connecting Fair Lending risk exposures to better mitigation controls The average days to origination or loan denial as compared to peer banks based on applicant income and / or GMI categories as a level of service indicator (look for outliers) GMI data recording – Is your frontline entering the data correctly? Test for accuracy Review both Application and Loan Origination Reports by GMI code as part of the Fair Lending overview 26

Reviewing HMDA Data Early - Advantages Data reviews can serve as an early warning indicator for potential Fair Lending and CRA evaluation issues Your bank’s level of market penetration into new market areas, majority minority areas or underserved census tracts Actual dispersion of loans along product lines and census tract income categories (Low-Mod) Preview your bank’s applications and loan originations by GMI vs. peer banks in the same geographic market service areas for Fair Lending and CRA analysis 27

Reviewing HMDA Data Early - Advantages Run periodic reports Periodic reports can assist in the establishment of training objectives and resources to address data quality issues (either drilling for persistent problems or for evidence of improvement) 28

Reviewing HMDA Data Early – Secondary Considerations The Federal Reserve Board suggests, “compliance officers should periodically evaluate HMDA data to ensure that all relevant product lines are included and that the data include all loan applications that are originated, denied, or withdrawn.” (Omission Testing) Citation: Consumer Compliance Outlook 2009 – Fourth Quarter Issue quarter/q4 01/ 29

Reviewing HMDA Data Early – Secondary Considerations Early reviews will help identify training gaps based on the results of data accuracy. Also, for the next couple of years, updated HMDA Data input training will be necessary. Especially for various loan production and business line personnel prior to the regulatory changes related to the new HMDA data field requirements becoming effective. 30

Questions 31

Fair Lending & HMDA Sunday, Sept. 18, 2016, 4:45 pm Moderator: Richard H. Harvey, Jr., Chief Compliance Officer, Colonial Savings, F.A. . Early reviews will help identify training gaps based on the results of data accuracy. Also, for the next couple of years, updated HMDA Data input

Related Documents:

A submission has been created and is ready for file upload. File Now Refile This Guide is current as of January 2020 and has not been updated to reflect amendments made to Regulation C by the 2020 HMDA thresholds final rule issued by the Bureau in April 2020. For more information on the HMDA thresholds final rule, see

All columns (except Reasons for Denial) must be completed for each entry. See the instru . Example of Application Denied 03/20/2012 . A GUIDE TO. HMDA Reporting . Getting It Right! Edition effective January 1, 2013 (for HMDA submissions due March 1, 2014 or later)

HMDA Data Collected in 2021 a This chart is intended to be used as a reference tool for data points required to be collected, recorded, and reported under Regulation C, as amended by the HMDA Rules issued on October 15,

A financial institution must retain its full (unmodified) HMDA-LAR for at least three years for examination purposes. It must also be prepared to make each modified HMDA-LAR available for three years and each FFIEC disclosure statement available for five years.

loan records and then laboriously geocode them — that is, assign them to census tracts. A check with our regions last week showed that HMDA is most heavily used by our examiners in the New York, Chicago and other big-city regions. We find that HMDA is primarily an urban tool. Our examiners use HMDA data in three ways in connection with CRA.

3 2020 REPORTABLE HMDA DATA: A REGULATORY AND REPORTING OVERVIEW REFERENCE CHART - VERSION 1.1, OCTOBER 16, 2020 . Data point Regulation C references Description Filing instructions b Reporting "Not Applicable" c or "Exempt" d NULI. If not reporting a ULI per the 2018 HMDA Rule, assign and report a NULI that: 1.

The PowerPoint slides and corresponding transcript from the webinar are provided on. the following pages. A recording of this webinar is located at. . including staff training and information technology changes related to first- time HMDA reporting. HMDA Webinar 1 Transcript 35

original reference. Referencing another writer’s graph. Figure 6. Effective gallic acid on biomass of Fusarium oxysporum f. sp. (Wu et al., 2009, p.300). A short guide to referencing figures and tables for Postgraduate Taught students Big Data assessment Data compression rate Data processing speed Time Efficiency Figure 5. Data processing speed, data compression rate and Big Data assessment .