Credit history Bad credit history can discourage an individual s chances of being approved for a loan.

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history Bad credit history can discourage an individual s chances of being approved for a loan. Collateral This is any asset that can be converted to a cash value that can be used to secure a loan. Collateral can serve as a reason for loan denial if it has no monetary value, or is appraised too low for the value of the loan. - While HMDA has its own category for other reasons for denial, the other category used for the charts and tables in this section includes: employment history, insufficient cash, unverifiable information, credit application incompletion, mortgage insurance denial, and HMDA s other category. The following sections show the breakdowns of reasons for denial for all loan types in general, by race/ethnicity, by income, and by gender. General Reasons for Denial The greatest percentage of denials for all loan types fell under the other category (36%), with another third of the denials being due to credit history issues. The remaining denials were almost evenly split between collateral and debt-to-income ratios. Figure 185 provides an illustration of the breakdown of reasons for denial, for all loan types applied for. Figure 185: Reasons for Loan Denial (Total Denials) 14% 36% History 33% Collateral 17% Guaranteed loans were denied mostly for either debt-to-income ratio issues, or something identified in the other category. One-fifth of the denials were 153

due to debt-to-income ratio issues. The following figure provides the breakdown of the reasons for denial of guaranteed loans. Figure 186: Reasons for Denial of Guaranteed Loans 37% 22% Collateral 2% History 39% Similarly to guaranteed loan denials, when looking at reasons for the denial of conventional loans, results are the same, with credit history issues and other being the biggest reasons. income ratio problems, however, decreased as a reason. Figure 187 provides the visual breakdown for the denial of conventional loans. Figure 187: Reasons for Denial of Conventional Loans 38% 14% Collateral 9% History 39% For reasons for denial of refinance loans, while the other category was the biggest reason, both credit history and collateral issues accounted for over 2% of denials. The following pie chart illustrates this breakdown. A 154

majority of denials of home improvement loans were due to credit history issues, with debt-to-income ratios responsible for another fifth of the reasons (see Figure 189). Figure 188: Reasons for Denial of Refinance Loans 37% 13% History 29% Collateral 21% Figure 189: Reasons for Denial of Home Improvement Loans 19% 21% Collateral 8% History 52% Reasons for Loan Denial by Race/Ethnicity Guaranteed loans For African Americans who applied for guaranteed loans, almost half (47.5%) were denied because of credit history issues. For Hispanics, the greatest reason for denial fell in the other category. As with African Americans, white applicants also saw the most denials due to credit history problems. Those applicants in the other race/ethnicity category also reported credit history as the greatest reason for guaranteed loan denial. Figure 19 155

provides visual representations of the number of applicants in each race/ethnicity category by reason for denial of guaranteed loans. Table 48: Reasons for Denial of Guaranteed Loans by Race/Ethnicity Race/ History Collateral Total Ethnicity # % # % # % # % # % Black 23 19.2 57 47.5 1.8 39 32.5 12 1 Hispanic 18 26.9 18 26.9 1 1.5 3 44.8 67 1 White 44 2.3 88 4.6 5 2.3 8 36.9 217 1 8 24.2 11 33.3. 14 42.4 33 1 Unknown 5 29.4 7 41.2 2 11.8 3 17.6 17 1 Total 98 21.6 181 39.9 9 2. 166 36.6 454 1 Figure 19: Amounts of Guaranteed Loans Denied, by Reason and Race/Ethnicity Guaranteed Loans 1 8 6 4 2 History Collateral Black Hispanic White Unknow n Conventional loans Similar to what was seen with guaranteed loan denials, when breaking down reasons for denial of conventional loans, for African Americans the greatest reason was due to credit history (41%). The greatest reason for denial that Hispanic loan applicants faced fell again in the other category, while white applicant denials were due to credit history problems. Those applicants classified as other in terms of race/ethnicity also had the greatest percentage of loan denials due to credit history. Figure 191 shows the breakdown of reasons for denial by numbers of applicants for each race/ethnic group. Table 49: Reasons for Denial of Conventional Loans by Race/Ethnicity Race/ 156

Ethnicity History Collateral Total # % # % # % # % # % Black 59 12.6 192 41. 39 8.3 178 38. 468 1 Hispanic 19 14.2 43 32.1 12 9. 6 44.8 134 1 White 296 14.8 781 39.1 173 8.7 745 37.3 1995 1 47 13.6 139 4.3 34 9.9 125 36.2 345 1 Unknown 18 14.3 4 31.7 14 11.1 54 42.9 126 1 Total 439 14.3 1195 39. 272 8.9 1162 37.9 368 1 Figure 191: Amounts of Conventional Loans Denied, by Reason and Race/Ethnicity Conventional Loans 1 8 6 4 2 History Collateral Black Hispanic White Unknow n Refinance loans Looking at reasons for the denial of refinance loans, credit history was the largest reason for denial for African American applicants. Reasons for denial falling under the other category were the largest for Hispanic applicants, while whites were split evenly between credit history issues and other as the greatest reasons for denial. For applicants in the other race/ethnicity category, almost one-half of denials were due to other reasons (43.6%). Figure 192 provides the breakdown of denials by individual numbers for each race/ethnic group. Table 5: Reasons for Denial of Refinance Loans by Race/Ethnicity Race/ 157

Ethnicity History Collateral Total # % # % # % # % # % Black 169 15.4 421 38.3 174 15.8 336 3.5 11 1 Hispanic 29 17.9 49 3.2 32 19.8 52 32.1 162 1 White 775 15.5 1631 32.6 966 19.3 1624 32.5 4996 1 246 7.9 76 22.7 8 25.8 1354 43.6 316 1 Unknown 65 8.2 157 19.9 11 13.9 457 57.9 789 1 Total 1284 12.6 2964 29.2 282 2.5 3823 37.7 1153 1 Figure 192: Amounts of Refinance Loans Denied, by Reason and Race/Ethnicity Refinance Loans 2 15 1 5 History Collateral Black Hispanic White Unknow n Home Improvement Loans The largest reason for home improvement loan denial for all race/ethnicity categories (excluding unknowns) was credit history issues. Figure 193 provides a visual representation of the actual totals for each denial reason, by race/ethnicity. Table 51: Reasons for Denial of Home Improvement Loans by Race/Ethnicity Race/ 158

Ethnicity History Collateral Total # % # % # % # % # % Black 3 2.8 86 59.7 9 6.3 19 13.2 144 1 Hispanic 5 26.3 7 36.8 2 1.5 5 26.3 19 1 White 113 2.4 27 48.6 65 11.7 17 19.3 555 1 94 22.1 238 56. 14 3.3 79 18.6 425 1 Unknown 6 14.6 9 22. 6 14.6 2 48.8 41 1 Total 248 2.9 61 51.5 96 8.1 23 19.4 1184 1 Figure 193: Amounts of Home Improvement Loans Denied, by Reason and Race/Ethnicity Home Improvement Loans 3 25 2 15 1 5 History Collateral Black Hispanic White Unknown Reasons for Loan Denial by Guaranteed Loans For applicants earning less than 5% of the median annual income, reasons for guaranteed loan denial fell largely in the other category (41.9%), with the next largest reason being credit history (33.5%). For all other income brackets, the largest reason for denial for this loan type was credit history (with the 8% to 99% of median income bracket also seeing an equal amount of denials due to credit history and also other reasons). Figure 194 provides the visual breakdown of reasons for denial by income. Table 52: Reasons for Denial for Guaranteed Loans, By 159

Compared to Median of History Collateral Total MSA # % # % # % # % # % Less than 5% 35 22.6 52 33.5 3 1.9 65 41.9 155 1 5% to 79% 48 25.8 8 43. 2 1.1 56 3.1 186 1 8% to 99% 11 16.7 27 4.9 1 1.5 27 4.9 66 1 1% to 119% 2 8.7 13 56.5. 8 34.8 23 1 12% or More 1 5. 9 45. 3 15. 7 35. 2 1 Unknown 1 25... 3 75. 4 1 Total 98 21.6 181 39.9 9 2. 166 36.6 454 1 Figure 194: Amounts of Guaranteed Loans Denied, by Reason and Guaranteed Loans 9 8 7 6 5 4 3 2 1 History Collateral Less than 5% 5% to 79% 8% to 99% 1% to 119% 12% or More Unknown Conventional Loans For the first three income brackets, the largest reason for the denial of conventional loans was credit history. The top 2 income brackets, however, saw a larger percentage of denials falling into the other denial category. Figure 195 shows the numbers of applicants by income level and reason for denial. Table 53: Reasons for Denial for Conventional Loans, By 16

Compared to Median of History Collateral Total MSA # % # % # % # % # % Less than 5% 188 17.8 428 4.6 67 6.4 371 35.2 154 1 5% to 79% 134 14. 394 41.2 88 9.2 341 35.6 957 1 8% to 99% 35 9.9 153 43.2 33 9.3 133 37.6 354 1 1% to 119% 25 12.9 61 31.4 19 9.8 89 45.9 194 1 12% or More 47 11.2 129 3.8 57 13.6 186 44.4 419 1 Unknown 1 11.1 3 33.3 8 8.9 42 46.7 9 1 Total 439 14.3 1195 39. 272 8.9 1162 37.9 368 1 Figure 195: Amounts of Conventional Loans Denied, by Reason and Conventional Loans 5 4 3 2 1 History Collateral Less than 5% 5% to 79% 8% to 99% 1% to 119% 12% or More Unknow n Refinance Loans For all of the income brackets except for those earning less than 5% of the median annual income, the biggest reason for the denial of refinance loans fell into the other category. The lowest income bracket, however, had approximately the same amount of denials due to other reasons (31.4%) as to credit history problems (31.9%). Figure 196 shows the numbers of applicants falling into each income bracket, broken down by reason for denial. Table 54: Reasons for Denial for Refinance Loans, By 161

Compared to Median of History Collateral Total MSA # % # % # % # % # % Less than 5% 381 2.2 61 31.9 311 16.5 593 31.4 1886 1 5% to 79% 372 14.4 757 29.4 526 2.4 921 35.8 2576 1 8% to 99% 2 13.8 447 3.9 36 21.2 493 34.1 1446 1 1% to 119% 119 11.4 318 3.4 222 21.2 387 37. 146 1 12% or More 188 7.4 668 26.2 573 22.5 1117 43.9 2546 1 Unknown 24 3.7 173 26.5 144 22.1 312 47.8 653 1 Total 1284 12.6 2964 29.2 282 2.5 3823 37.7 1153 1 Figure 196: Amounts of Refinance Loans Denied, by Reason and Refinance Loans 12 1 8 6 4 2 History Collateral Less than 5% 5% to 79% 8% to 99% 1% to 119% 12% or More Unknown Home Improvement Loans For all income brackets, the largest reason for denial of home improvement loans was credit history. In fact, for the first 3 income categories, this reason was responsible for a majority of all denials for this loan type. See Figure 197 for the breakdown in numbers rather than percentages. Table 55: Reasons for Denial for Home Improvement Loans, By 162

Compared to Median of History Collateral Total MSA # % # % # % # % # % Less than 5% 78 23.4 186 55.9 1 3. 59 17.7 333 1 5% to 79% 81 24.2 181 54. 23 6.9 5 14.9 335 1 8% to 99% 35 2.5 87 5.9 19 11.1 3 17.5 171 1 1% to 119% 22 18.5 54 45.4 9 7.6 34 28.6 119 1 12% or More 31 14.1 99 45. 34 15.5 56 25.5 22 1 Unknown 1 16.7 3 5. 1 16.7 1 16.7 6 1 Total 248 2.9 61 51.5 96 8.1 23 19.4 1184 1 Figure 197: Amounts of Home Improvement Loans Denied, by Reason and Home Improvement Loans 2 15 1 5 History Collateral Less than 5% 5% to 79% 8% to 99% 1% to 119% 12% or More Unknow n Reasons for Loan Denial by Gender Guaranteed Loans When breaking down reasons for the denial of guaranteed loans by gender, males and females biggest reasons were different from one another. While females denials of guaranteed loans centered more around credit history more than any other reason, males denials fell more into the other category. As for joint-filers, their reasons for denial of this loan type centered more on credit history. Figure 198 provides the visual breakdown in numbers. Table 56: Reasons for Denial for Guaranteed Loans, By Gender Gender 163

History Collateral Total # % # % # % # % # % Male 42 23.2 64 35.4 4 2.2 71 39.2 181 1 Female 35 24. 65 44.5 2 1.4 44 3.1 146 1 Joint 18 15.9 48 42.5 3 2.7 44 38.9 113 1 Unknown 3 21.4 4 28.6. 7 5. 14 1 Total 98 21.6 181 39.9 9 2. 166 36.6 454 1 Figure 198: Amounts of Guaranteed Loans Denied, by Reason and Gender Guaranteed Loans 8 7 6 5 4 3 2 1 History Collateral Male Female Joint Unknown Conventional Loans When comparing genders and the breakdown of denials of conventional loans, the largest percentage of denials for males fell under the other category (4.3%), while females saw the largest percentage of denials (41.3%) due to credit history. Joint-filers saw their biggest reasons for denial as other and credit history as well. Figure 199 illustrates the breakdown in actual numbers of applicants by gender and reason for denial. Table 57: Reasons for Denial for Conventional Loans, By Gender Gender 164

History Collateral Total # % # % # % # % # % Male 162 14. 433 37.3 97 8.4 468 4.3 116 1 Female 138 15.6 364 41.3 7 7.9 31 35.1 882 1 Joint 11 13.7 31 38.6 78 9.7 35 38. 83 1 Unknown 29 13. 88 39.5 27 12.1 79 35.4 223 1 Total 439 14.3 1195 39. 272 8.9 1162 37.9 368 1 Figure 199: Amounts of Conventional Loans Denied, by Reason and Gender Conventional Loans 5 4 3 2 1 History Collateral Male Female Joint Unknow n Refinance Loans Exploring reasons for the denial of conventional loans, males, females, and joint-filers all experienced the largest percentages of denials due to other reasons. Another third of denials for all 3 categories, however, were due to credit history. Figure 2 illustrates the breakdown in actual numbers of applicants by gender and reason for denial. Table 58: Reasons for Denial for Refinance Loans, By Gender Gender 165

History Collateral Total # % # % # % # % # % Male 386 13.6 854 3.2 498 17.6 193 38.6 2831 1 Female 311 16.7 613 33. 275 14.8 658 35.4 1857 1 Joint 48 12.9 134 32.8 64 19.2 117 35.1 3153 1 Unknown 179 7.7 463 2. 75 3.5 965 41.7 2312 1 Total 1284 12.6 2964 29.2 282 2.5 3823 37.7 1153 1 Figure 2: Amounts of Refinance Loans Denied, by Reason and Gender Refinance Loans 12 1 8 6 4 2 History Collateral Male Female Joint Unknown Home Improvement Loans Finally, when breaking down reasons for the denial of home improvement loans by gender, close to a majority of reasons for females, males, and jointfilers were because of credit history (5.6%, 49.8%, and 46.1%, respectively). Figure 21 illustrates the breakdown in actual numbers of applicants by gender and reason for denial. Table 59: Reasons for Denial for Home Improvement Loans, By Gender Gender 166

History Collateral Total # % # % # % # % # % Male 45 18.4 124 5.6 3 12.2 46 18.8 245 1 Female 58 25.8 112 49.8 13 5.8 42 18.7 225 1 Joint 6 21.4 129 46.1 35 12.5 56 2. 28 1 Unknown 85 19.6 245 56.5 18 4.1 86 19.8 434 1 Total 248 2.9 61 51.5 96 8.1 23 19.4 1184 1 Figure 21: Amounts of Home Improvement Loans Denied, by Reason and Gender Home Improvement Loans 3 25 2 15 1 5 History Collateral Male Female Joint Unknown 167

168