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California State Auditor Logo COMMITMENT • INTEGRITY • LEADERSHIP

In-Home Supportive Services Program
It Is Not Providing Needed Services to All Californians Approved for the Program, Is Unprepared for Future Challenges, and Offers Low Pay to Caregivers

Report Number: 2020-109

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Appendix A

Survey of Counties Regarding IHSS

We surveyed directors of county IHSS programs to obtain additional information on how the IHSS program is performing statewide. We received 51 responses, and seven counties did not respond: Fresno, Lassen, Modoc, Placer, San Mateo, Sierra, and Solano. Table A provides a selection of questions and summarizes county answers.

Table A

Selected Answers From the Survey of Counties
Please note that where answers are not Yes/No, respondents were allowed to select more than one answer.
Does your county have a sufficient number of IHSS caregivers to provide all approved services to each IHSS recipient?
The percentages shown here are out of total respondents, 51.
NUMBER PERCENT
Yes 19 37%
No 32 63
If no, what hurdles exist that prevent your county from having enough caregivers for each recipient to receive all approved services?
The percentages shown here are out of total “No” respondents, above, 32.
NUMBER PERCENT
Insufficient pay rates to attract caregivers. 14 44%
Difficulty matching caregivers with recipients in isolated geographic areas. 26 81
Recipients with specific or challenging needs that few caregivers can or will satisfy. 30 94
Recipients are reluctant to hire nonfamily members as caregivers. 10 31
Caregivers do not have enough time to provide services to all recipients. 16 50
Other* 18 56
If no, other than maintaining the mandated registry of caregivers, what activities has the county undertaken to ensure each recipient has a provider?
The percentages shown here are out of total “No” respondents, above, 32.
NUMBER PERCENT
When recipients indicate short-term or specific needs, notify them of caregivers who can deliver services as needed. 26 81%
Assist recipients in interviewing caregivers. 25 78
We have taken no additional steps. 1 3
Other 23 72
Has your county performed any analysis to identify how many caregivers it needs currently and in the future?
The percentages shown here are out of total respondents, 51.
NUMBER PERCENT
Yes 2 4%
No 49 96
Does your county actively recruit caregivers?
The percentages shown here are out of total respondents, 51.
NUMBER PERCENT
Yes 45 88%
No 45 12%
What obstacles, if any, do recipients in your county typically face in hiring caregivers?
The percentages shown here are out of total respondents, 51.
NUMBER PERCENT
Insufficient pay rates to draw applicants. 22 43%
Potential caregivers may not have knowledge of the program. 14 27
Potential caregivers do not pass background checks. 11 22
Potential caregivers do not have transportation. 29 57
Potential caregivers are unwilling to provide care in certain geographic areas. 45 88
Potential caregivers are unwilling to provide certain types of care. 42 82
Other 20 39
Has your county created a plan to account for future growth in the number of recipients in your county?
The percentages shown here are out of total respondents, 51.
NUMBER PERCENT
Yes 4 8%
No 47 92
Has your county performed any analysis to identify its future budgetary needs for the IHSS program?
The percentages shown here are out of total respondents, 51.
NUMBER PERCENT
Yes 14 27%
No 37 73
What concerns, if any, does your county have with its county contribution payments to the State?
The percentages shown here are out of total respondents, 51.
NUMBER PERCENT
None, there are no concerns with the county contribution. 14 27%
The county contribution penalizes the county for negotiated increases in wages. 15 29
The county contribution inflation rate is arbitrary and does not reflect realities in the county. 27 53
The county contribution does not reflect actual program costs. 26 51
Other§ 24 47

Source: Auditor analysis of county survey responses.

* Counties listed several additional hurdles that prevent them from having enough caregivers, including the COVID pandemic and the caregiver’s inability to complete their background check.

† Counties reported several other steps they took to ensure that each recipient has a caregiver, including that the public authority contacts recipients to better understand their hiring needs and providing caregiver recommendations to recipients.

‡ Counties reported several other obstacles that recipients face when hiring caregivers, including that some caregivers are unwilling or unable to pay for a background check.

§ Counties reported several other concerns with the county contribution, including its unpredictable nature, that it does not correlate to the realignment base, and that state allocations are insufficient.


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Appendix B

County IHSS Populations and Performance Metrics

The Audit Committee asked us to provide a variety of information related to IHSS populations and performance metrics. The following tables summarize additional or more detailed results of our review of data related to the IHSS populations and performance metrics.

Table B.1

The Overall Number of Authorized Hours Not Provided Increased Between 2015 and 2019
2015 2019
COUNTY AUTHORIZED HOURS PROVIDED HOURS DIFFERENCE PERCENTAGE OF AUTHORIZED HOURS NOT PROVIDE AUTHORIZED HOURS PROVIDED HOURS DIFFERENCE PERCENTAGE OF AUTHORIZED HOURS NOT PROVIDED
Alameda 27,699,069 26,239,186 1,459,883 5% 34,542,303 32,307,236 2,235,067 6%
Alpine 28,670 27,747 923 3 28,546 27,574 972 3
Amador 254,536 241,095 13,441 5 397,265 371,670 25,595 6
Butte 5,179,122 4,958,298 220,824 4 5,364,090 5,063,563 300,527 6
Calaveras 440,439 416,704 23,735 5 589,614 559,765 29,849 5
Colusa 139,063 119,626 19,437 14 340,838 318,370 22,468 7
Contra Costa 9,460,235 9,015,226 445,009 5 14,232,654 13,167,108 1,065,546 7
Del Norte 524,385 501,878 22,507 4 606,537 582,042 24,495 4
El Dorado 1,564,393 1,511,045 53,348 3 2,416,545 2,332,701 83,844 3
Fresno 19,312,101 18,782,620 529,481 3 28,608,173 27,708,588 899,585 3
Glenn 634,768 602,205 32,563 5 769,898 723,391 46,507 6
Humboldt 1,919,902 1,764,651 155,251 8 2,793,535 2,559,540 233,995 8
Imperial 4,857,191 4,755,612 101,579 2 6,606,213 6,468,131 138,082 2
Inyo 163,464 147,506 15,958 10 203,995 182,369 21,626 11
Kern 4,134,188 3,973,487 160,701 4 9,416,063 8,748,498 667,565 7
Kings 2,096,066 2,012,112 83,954 4 3,441,272 3,297,510 143,762 4
Lake 2,754,551 2,631,031 123,520 4 2,968,445 2,812,899 155,546 5
Lassen 179,323 172,317 7,006 4 231,430 217,263 14,167 6
Los Angeles 226,780,272 219,182,471 7,597,801 3 291,929,309 283,021,908 8,907,401 3
Madera 1,946,516 1,860,971 85,545 4 2,758,274 2,645,947 112,327 4
Marin 2,237,161 2,132,082 105,079 5 2,497,071 2,344,087 152,984 6
Mariposa 213,764 209,244 4,520 2 354,342 331,896 22,446 6
Mendocino 2,159,003 2,010,563 148,440 7 2,296,328 2,130,115 166,213 7
Merced 3,131,631 3,009,596 122,035 4 3,799,322 3,648,242 151,080 4
Modoc 85,172 78,135 7,037 8 193,411 183,343 10,068 5
Mono 50,665 48,851 1,814 4 52,507 50,304 2,203 4
Monterey 4,392,101 4,249,592 142,509 3 6,303,741 6,115,148 188,593 3
Napa 1,482,768 1,434,300 48,468 3 1,764,120 1,660,626 103,494 6
Nevada 886,464 847,246 39,218 4 844,071 802,553 41,518 5
Orange 26,801,852 25,016,981 1,784,871 7 41,315,549 39,082,983 2,232,566 5
Placer 4,106,491 3,978,314 128,177 3 6,364,662 6,102,582 262,080 4
Plumas 322,901 302,592 20,309 6 399,286 368,843 30,443 8
Riverside 30,153,378 28,942,908 1,210,470 4 50,218,411 48,385,172 1,833,239 4
Sacramento 29,941,130 29,049,376 891,754 3 41,537,689 40,238,254 1,299,435 3
San Benito 760,831 735,011 25,820 3 826,475 789,029 37,446 5
San Bernardino 31,254,378 30,229,611 1,024,767 3 44,444,956 42,866,454 1,578,502 4
San Diego 28,979,647 27,947,145 1,032,502 4 39,463,190 37,948,092 1,515,098 4
San Francisco 24,763,481 23,458,848 1,304,633 5 28,233,554 26,884,997 1,348,557 5
San Joaquin 6,080,578 5,840,280 240,298 4 7,952,765 7,581,942 370,823 5
San Luis Obispo 2,203,212 2,091,462 111,750 5 2,742,328 2,624,372 117,956 4
San Mateo 5,821,686 5,514,749 306,937 5 7,637,085 7,304,711 332,374 4
Santa Barbara 3,572,189 3,405,447 166,742 5 4,382,499 4,125,687 256,812 6
Santa Clara 23,506,657 22,519,972 986,685 4 35,652,022 34,102,657 1,549,365 4
Santa Cruz 3,137,991 2,979,588 158,403 5 3,429,624 3,153,759 275,865 8
Shasta 3,505,889 3,362,997 142,892 4 4,278,714 4,041,440 237,274 6
Sierra 39,601 36,912 2,689 7 53,443 49,496 3,947 7
Siskiyou 532,175 492,243 39,932 8 639,753 595,706 44,047 7
Solano 5,708,046 5,501,307 206,739 4 7,185,453 6,875,431 310,022 4
Sonoma 6,731,314 6,454,524 276,790 4 8,612,697 8,167,172 445,525 5
Stanislaus 6,001,204 5,764,981 236,223 4 8,325,044 7,887,891 437,153 5
Sutter 1,166,519 1,124,526 41,993 4 1,462,948 1,381,572 81,376 6
Tehama 1,105,774 1,053,656 52,118 5 1,570,273 1,470,632 99,641 6
Trinity 202,813 187,877 14,936 7 245,641 226,504 19,137 8
Tulare 2,762,742 2,595,488 167,254 6 6,006,782 5,649,047 357,735 6
Tuolumne 372,870 340,587 32,283 9 572,579 513,943 58,636 10
Ventura 5,919,667 5,647,497 272,170 5 9,438,129 8,992,967 445,162 5
Yolo 2,935,329 2,805,649 129,680 4 3,874,233 3,674,987 199,246 5
Yuba 775,185 746,553 28,632 4 1,075,896 1,000,476 75,420 7
STATEWIDE 583,872,513 561,062,478 22,810,035 4 794,291,592 762,469,185 31,822,407 4

Source: Auditor’s analysis of Social Services’ CMIPS II data.

Table B.2

Varying Numbers of Recipients in All Counties Experienced Gaps in Care
2015 2019
COUNTY MONTHLY AVERAGE RECIPIENTS MONTHLY AVERAGE RECIPIENTS WITHOUT IHSS CARE MONTHLY AVERAGE RECIPIENTS MONTHLY AVERAGE RECIPIENTS WITHOUT IHSS CARE
Alameda 21,553 1,560 25,388 2,382
Alpine 27 2 24 2
Amador 233 26 330 41
Butte 3,766 378 4,015 406
Calaveras 385 35 445 42
Colusa 164 35 269 35
Contra Costa 8,812 664 11,419 1,268
Del Norte 346 27 381 34
El Dorado 1,022 80 1,392 116
Fresno 16,132 731 21,414 1,148
Glenn 471 40 539 50
Humboldt 1,748 286 2,149 343
Imperial 5,658 219 6,540 217
Inyo 141 29 151 26
Kern 4,382 296 8,319 923
Kings 1,982 163 2,699 205
Lake 2,100 170 2,285 188
Lassen 183 19 216 29
Los Angeles 210,093 9,668 236,443 10,179
Madera 1,884 117 2,281 149
Marin 1,840 168 2,028 222
Mariposa 163 7 247 30
Mendocino 1,802 217 1,845 241
Merced 3,171 235 3,518 239
Modoc 93 15 140 12
Mono 31 4 31 3
Monterey 4,464 278 5,242 273
Napa 1,104 66 1,246 121
Nevada 713 65 708 62
Orange 26,989 2,773 34,509 3,010
Placer 2,632 171 3,627 316
Plumas 319 43 352 51
Riverside 27,392 1,820 37,980 2,513
Sacramento 24,041 1,312 29,955 1,645
San Benito 603 33 654 54
San Bernardino 26,884 1,490 34,200 2,066
San Diego 27,171 1,811 31,797 2,194
San Francisco 23,072 1,721 23,251 1,726
San Joaquin 6,255 471 7,176 553
San Luis Obispo 1,848 197 1,971 185
San Mateo 4,690 389 5,623 426
Santa Barbara 3,272 304 3,704 396
Santa Clara 21,580 1,338 26,114 1,681
Santa Cruz 2,573 272 2,901 444
Shasta 3,052 260 3,439 385
Sierra 32 5 44 8
Siskiyou 570 83 618 86
Solano 4,251 289 5,209 387
Sonoma 5,701 445 6,401 612
Stanislaus 6,507 436 7,687 679
Sutter 1,084 91 1,317 130
Tehama 983 105 1,203 153
Trinity 183 26 236 33
Tulare 3,157 366 4,981 530
Tuolumne 364 63 463 81
Ventura 5,031 414 7,196 583
Yolo 2,471 213 2,816 271
Yuba 720 48 946 106
STATEWIDE 527,890 32,589 628,074 40,290

Source: Auditor analysis of Social Services’ CMIPS II data.

Table B.3

Counties Did Not Meet the 30-Day Deadline for Approving Applications for New Recipients
2015 2019
COUNTY NUMBER OF NEW RECIPIENTS AVERAGE DAYS FROM APPLICATION TO APPROVAL NUMBER OF NEW RECIPIENTS AVERAGE DAYS FROM APPLICATION TO APPROVAL
Alameda 3,184 82 3,208 61
Alpine 2 12 4 45
Amador 55 47 52 43
Butte 702 51 513 55
Calaveras 84 43 96 54
Colusa 47 43 68 60
Contra Costa 1,216 104 1,763 144
Del Norte 47 41 66 51
El Dorado 221 64 253 73
Fresno 3,010 78 3,427 73
Glenn 84 42 74 44
Humboldt 416 49 370 46
Imperial 697 148 950 123
Inyo 18 44 32 32
Kern 972 69 2,245 83
Kings 346 68 464 84
Lake 401 46 323 53
Lassen 41 55 52 65
Los Angeles 25,329 90 27,480 66
Madera 270 125 373 89
Marin 247 62 261 78
Mariposa 21 36 53 51
Mendocino 302 63 293 66
Merced 551 68 533 74
Modoc 22 35 24 52
Mono 11 62 4 60
Monterey 680 77 863 55
Napa 165 56 171 56
Nevada 148 63 125 58
Orange 4,320 80 4,645 66
Placer 463 75 553 71
Plumas 69 45 69 53
Riverside 5,149 68 6,533 56
Sacramento 3,580 97 4,778 63
San Benito 84 81 110 83
San Bernardino 4,281 72 5,445 85
San Diego 3,784 70 5,387 60
San Francisco 2,031 49 2,221 61
San Joaquin 964 117 1,084 156
San Luis Obispo 305 95 326 62
San Mateo 934 50 1,012 54
Santa Barbara 487 56 670 64
Santa Clara 3,116 109 3,585 83
Santa Cruz 352 82 391 81
Shasta 508 49 652 39
Sierra 11 42 8 42
Siskiyou 118 48 121 49
Solano 725 96 721 87
Sonoma 897 84 869 83
Stanislaus 855 115 1,087 117
Sutter 173 50 234 94
Tehama 174 56 218 65
Trinity 31 58 47 85
Tulare 704 79 1,073 131
Tuolumne 47 69 87 65
Ventura 945 54 1,102 55
Yolo 331 78 400 74
Yuba 119 38 143 135
STATEWIDE 74,846 82 87,711 72

Source: Auditor analysis of Social Services’ CMIPS II data.

Table B.4

Counties Did Not Meet the 15-Day Deadline for Ensuring Prompt Care for New Recipients Who Did Not Receive Services Until After They Entered the Program
2015 2019
COUNTY NUMBER OF NEW RECIPIENTS* AVERAGE DAYS FROM APPROVAL TO FIRST SERVICE NUMBER OF NEW RECIPIENT* AVERAGE DAYS FROM APPROVAL TO FIRST SERVICE
Alameda 598 132 602 56
Alpine 0 N/A 1 334
Amador 27 64 11 46
Butte 175 68 121 55
Calaveras 20 59 24 49
Colusa 12 191 18 55
Contra Costa 227 123 224 67
Del Norte 20 29 18 60
El Dorado 51 101 45 59
Fresno 278 89 249 46
Glenn 20 94 25 49
Humboldt 126 157 107 51
Imperial 105 33 90 27
Inyo 12 130 14 50
Kern 159 77 322 58
Kings 57 80 46 54
Lake 88 103 63 48
Lassen 13 44 14 40
Los Angeles 2,366 120 2,369 57
Madera 19 82 32 76
Marin 78 57 61 49
Mariposa 5 67 17 67
Mendocino 80 69 54 63
Merced 95 96 69 36
Modoc 16 47 11 43
Mono 5 31 0 N/A
Monterey 75 48 117 41
Napa 36 54 51 49
Nevada 42 52 34 66
Orange 719 153 695 48
Placer 74 80 96 49
Plumas 22 34 17 53
Riverside 664 67 801 51
Sacramento 503 87 505 45
San Benito 14 127 15 35
San Bernardino 483 75 609 55
San Diego 752 73 991 50
San Francisco 416 70 459 39
San Joaquin 112 97 113 54
San Luis Obispo 68 72 69 60
San Mateo 203 123 206 42
Santa Barbara 128 76 135 48
Santa Clara 449 111 394 57
Santa Cruz 79 108 86 70
Shasta 143 45 194 34
Sierra 8 25 1 6
Siskiyou 38 48 42 35
Solano 133 114 84 61
Sonoma 204 78 147 58
Stanislaus 125 125 125 52
Sutter 71 44 45 60
Tehama 58 68 52 50
Trinity 7 76 7 56
Tulare 169 96 152 50
Tuolumne 14 52 16 110
Ventura 192 97 159 50
Yolo 76 69 72 50
Yuba 59 44 47 52
STATEWIDE 10,788 98 11,143 52

Source: Auditor analysis of Social Services’ CMIPS II data.

* This table only includes new recipients who started receiving services after being approved for IHSS services.

While not shown in the above tables, counties approved more than 12,700 recipients in 2019 who had not yet received services when we reviewed the CMIPS II data in June 2020. Thus the 2019 averages will increase once these recipients receive services.

Table B.5

Most Counties Have Experienced Significant Growth In Their IHSS Programs Since 2015
COUNTY GROUP 2015 2019 PERCENTAGE INCREASE FROM 2015 TO 2019
Alameda Caregivers 23,548 26,754 14%
Alameda Recipients 24,489 28,618 17
Alpine Caregivers 36 27 -25
Alpine Recipients 32 28 -13
Amador Caregivers 231 320 39
Amador Recipients 295 389 32
Butte Caregivers 4,491 4,583 2
Butte Recipients 4,507 4,829 7
Calaveras Caregivers 453 492 9
Calaveras Recipients 470 531 13
Colusa Caregivers 148 285 93
Colusa Recipients 209 350 67
Contra Costa Caregivers 9,910 12,001 21
Contra Costa Recipients 10,108 13,016 29
Del Norte Caregivers 420 473 13
Del Norte Recipients 406 451 11
El Dorado Caregivers 1,255 1,682 34
El Dorado Recipients 1,224 1,651 35
Fresno Caregivers 17,967 22,923 28
Fresno Recipients 18,536 24,114 30
Glenn Caregivers 545 609 12
Glenn Recipients 562 614 9
Humboldt Caregivers 1,867 2,350 26
Humboldt Recipients 2,147 2,591 21
Imperial Caregivers 5,513 6,393 16
Imperial Recipients 6,320 7,337 16
Inyo Caregivers 131 146 11
Inyo Recipients 178 178 0
Kern Caregivers 5,050 8,468 68
Kern Recipients 5,374 10,106 88
Kings Caregivers 2,163 2,953 37
Kings Recipients 2,337 3,107 33
Lake Caregivers 2,504 2,505 0
Lake Recipients 2,510 2,637 5
Lassen Caregivers 197 233 18
Lassen Recipients 234 278 19
Los Angeles Caregivers 191,913 222,529 16
Los Angeles Recipients 233,346 260,971 12
Madera Caregivers 2,005 2,540 27
Madera Recipients 2,170 2,635 21
Marin Caregivers 1,992 2,052 3
Marin Recipients 2,131 2,313 9
Mariposa Caregivers 215 279 30
Mariposa Recipients 193 293 52
Mendocino Caregivers 1,964 1,962 0
Mendocino Recipients 2,111 2,128 1
Merced Caregivers 3,329 3,839 15
Merced Recipients 3,791 4,126 9
Modoc Caregivers 87 170 95
Modoc Recipients 118 171 45
Mono Caregivers 37 40 8
Mono Recipients 42 40 -5
Monterey Caregivers 4,729 5,560 18
Monterey Recipients 5,192 6,029 16
Napa Caregivers 1,436 1,515 6
Napa Recipients 1,276 1,415 11
Nevada Caregivers 912 838 -8
Nevada Recipients 867 839 -3
Orange Caregivers 25,734 32,847 28
Orange Recipients 30,784 38,870 26
Placer Caregivers 3,340 4,152 24
Placer Recipients 3,151 4,203 33
Plumas Caregivers 342 367 7
Plumas Recipients 396 419 6
Riverside Caregivers 29,057 39,266 35
Riverside Recipients 32,480 43,929 35
Sacramento Caregivers 26,951 34,019 26
Sacramento Recipients 27,380 34,111 25
San Benito Caregivers 703 766 9
San Benito Recipients 688 757 10
San Bernardino Caregivers 28,457 35,805 26
San Bernardino Recipients 31,446 39,384 25
San Diego Caregivers 27,898 32,946 18
San Diego Recipients 31,103 36,417 17
San Francisco Caregivers 23,915 25,520 7
San Francisco Recipients 25,581 25,538 0
San Joaquin Caregivers 6,785 7,760 14
San Joaquin Recipients 7,422 8,369 13
San Luis Obispo Caregivers 1,979 2,169 10
San Luis Obispo Recipients 2,138 2,307 8
San Mateo Caregivers 5,666 6,900 22
San Mateo Recipients 5,591 6,597 18
Santa Barbara Caregivers 3,466 3,764 9
Santa Barbara Recipients 3,833 4,309 12
Santa Clara Caregivers 23,714 29,528 25
Santa Clara Recipients 24,374 29,169 20
Santa Cruz Caregivers 2,899 2,951 2
Santa Cruz Recipients 2,981 3,311 11
Shasta Caregivers 3,483 3,894 12
Shasta Recipients 3,651 4,112 13
Sierra Caregivers 37 52 41
Sierra Recipients 44 54 23
Siskiyou Caregivers 556 609 10
Siskiyou Recipients 703 757 8
Solano Caregivers 5,106 6,050 18
Solano Recipients 5,075 5,971 18
Sonoma Caregivers 6,298 6,660 6
Sonoma Recipients 6,602 7,174 9
Stanislaus Caregivers 6,564 7,573 15
Stanislaus Recipients 7,498 8,700 16
Sutter Caregivers 1,244 1,441 16
Sutter Recipients 1,280 1,595 25
Tehama Caregivers 1,131 1,408 24
Tehama Recipients 1,166 1,455 25
Trinity Caregivers 187 231 24
Trinity Recipients 216 296 37
Tulare Caregivers 3,211 5,113 59
Tulare Recipients 3,800 5,875 55
Tuolumne Caregivers 398 485 22
Tuolumne Recipients 444 554 25
Ventura Caregivers 5,376 7,646 42
Ventura Recipients 5,943 8,263 39
Yolo Caregivers 2,864 3,291 15
Yolo Recipients 2,861 3,222 13
Yuba Caregivers 834 1,026 23
Yuba Recipients 867 1,140 31
STATEWIDE Caregivers 525,166 628,281 20
STATEWIDE Recipients 594,848 701,548 18

Source: Auditor analysis of Social Services’ CMIPS II data.

Note: Statewide totals do not equal the county totals because recipients may move between counties and caregivers may provide services to multiple recipients in different counties.


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Appendix C

Comparison of Living Wage to Actual Caregiver Wages in California Counties

The Audit Committee asked us to provide information related to caregiver wages. Table C indicates the actual caregiver wages and living wage in all 58 counties as of 2019. Our selected counties Butte, Kern, San Diego and Stanislaus, are indicated in blue shading.

Table C

Counties Did Not Pay IHSS Caregivers a Living Wage In 2019
COUNTY IHSS CAREGIVER WAGE COUNTY LIVING WAGE* AMOUNT BY WHICH LIVING WAGE EXCEEDS CAREGIVER WAGE CAREGIVER WAGE AS A PERCENTAGE OF LIVING WAGE
Alameda $12.50 $25.38 $12.88 49%
Alpine $12.00 $18.99 $6.99 63%
Amador $12.00 $19.55 $7.55 61%
Butte $12.00 $20.04 $8.04 60%
Calaveras $12.00 $19.42 $7.42 62%
Colusa $12.00 $19.00 $7.00 63%
Contra Costa $12.25 $25.38 $13.13 48%
Del Norte $12.00 $19.09 $7.09 63%
El Dorado $12.00 $20.53 $8.53 58%
Fresno $12.00 $19.22 $7.22 62%
Glenn $12.00 $18.32 $6.32 66%
Humboldt $12.00 $19.19 $7.19 63%
Imperial $12.00 $18.98 $6.98 63%
Inyo $12.00 $19.26 $7.26 62%
Kern $12.00 $18.84 $6.84 64%
Kings $12.00 $19.49 $7.49 62%
Lake $12.00 $18.99 $6.99 63%
Lassen $12.00 $18.38 $6.38 65%
Los Angeles $12.60 $23.26 $10.66 54%
Madera $12.00 $19.23 $7.23 62%
Marin $14.20 $31.00 $16.80 46%
Mariposa $12.00 $19.00 $7.00 63%
Mendocino $12.00 $19.52 $7.52 61%
Merced $12.00 $18.63 $6.63 64%
Modoc $12.00 $17.64 $5.64 68%
Mono $12.00 $20.38 $8.38 59%
Monterey $12.50 $22.31 $9.81 56%
Napa $12.10 $22.64 $10.54 53%
Nevada $12.00 $20.18 $8.18 59%
Orange $12.00 $24.89 $12.89 48%
Placer $12.00 $20.53 $8.53 58%
Plumas $12.00 $19.05 $7.05 63%
Riverside $12.00 $20.64 $8.64 58%
Sacramento $13.00 $20.53 $7.53 63%
San Benito $12.00 $22.86 $10.86 52%
San Bernardino $12.00 $20.64 $8.64 58%
San Diego $12.50 $24.62 $12.12 51%
San Francisco $15.00 $31.00 $16.00 48%
San Joaquin $12.00 $19.59 $7.59 61%
San Luis Obispo $13.00 $22.03 $9.03 59%
San Mateo $13.90 $31.00 $17.10 45%
Santa Barbara $12.10 $25.12 $13.02 48%
Santa Clara $13.00 $29.39 $16.39 44%
Santa Cruz $12.46 $26.29 $13.83 47%
Shasta $12.60 $19.15 $6.55 66%
Sierra $12.00 $20.63 $8.63 58%
Siskiyou $12.00 $18.34 $6.34 65%
Solano $12.50 $21.95 $9.45 57%
Sonoma $13.00 $23.68 $10.68 55%
Stanislaus $12.00 $19.44 $7.44 62%
Sutter $12.00 $18.59 $6.59 65%
Tehama $12.00 $18.32 $6.32 66%
Trinity $12.50 $18.36 $5.86 68%
Tulare $12.00 $18.76 $6.76 64%
Tuolumne $12.50 $19.40 $6.90 64%
Ventura $12.78 $23.12 $10.34 55%
Yolo $12.00 $20.84 $8.84 58%
Yuba $12.00 $18.59 $6.59 65%
STATEWIDE $12.29 $21.19 $8.90 58%

Source: Auditor analysis of Social Services’ data and the MIT living wage data.

* The living wage framework was created by MIT to identify the minimum employment earnings necessary to meet a family’s basic needs; it uses geographically specific expenditures related to likely minimum food, childcare, health insurance, housing, and other basic costs.


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Appendix D

Effect of Reducing the Inflation Factor on Certain Counties

As we note in the main report, since 2012, the State’s method of calculating county contributions for IHSS funding has created significant disparities in the individual proportions of funding that counties provide to the IHSS program. Statewide IHSS costs have increased because of changes such as implementation of the Affordable Care Act and the State’s expansion of Medi-Cal, both of which increased the number of recipients, as well as increases in the number of hours of care recipients receive and increases in caregiver wages. However, although all counties’ IHSS costs have increased, growth in costs has not been proportional across counties because of variations in local populations and local caregiver wages. Despite this, since 2012 the State’s annual inflation factor has applied a flat percentage increase to the amount each county pays the State, regardless of the extent of the growth of its program costs. Over time, these disparities have resulted in some counties paying significantly more or less than their share of the overall IHSS program costs would suggest.

Although before 2012 each county paid the State a set proportion of about 18 percent of their overall IHSS program costs, by fiscal year 2018–19, counties paid between 6 percent and 29 percent of their costs, depending on how much faster or slower their costs grew compared to the State’s annual inflation factor. Returning to the pre‑2012 funding system would require some counties to pay over $20 million more annually. As the revenues from sources the Legislature dedicated to counties to support the program have not increased as rapidly as the program itself, it is unlikely that counties would be able to bear the expense of these increases, as Finance has noted. However, without state action, these disparities in the proportions that counties pay will continue to grow.

Immediately eliminating proportional overpayments by counties would require the State to increase its support of the program by $86 million per year, based on fiscal year 2018–19 ratios. However, by adjusting the IHSS inflation factor annually based on the availability of dedicated county funds and annual county program growth, as we recommend at the end of Chapter 2, the State could gradually move to a more equitable funding model. Selectively reducing the inflation factor for counties paying more than their proportional share would allow the State to gradually reduce overpayments. For example, by temporarily eliminating the inflation factor for 18 counties that pay more than their share, by year five overpayments would be eliminated for 12 of the 18 counties, and reduced for the remaining six counties, at a cost to the State of $215 million. Likewise, an annual review of the availability of dedicated funds may allow the State to increase the percentage of support paid by those counties not currently paying a proportional share. Table D demonstrates the effect a decrease in inflation factors at selected counties would have on the counties and the associated costs to the State.

Table D

Eliminating the Inflation Factor for Counties Paying More Than Their Share Would Gradually Reduce Overpayments

This is a table showing the effects of the current inflation factor and its temporary elimination on certain counties.

Source: Social Services’ communications with counties and IHSS program data.

Note: This example is based on fiscal year 2018–19 county IHSS costs and contributions. We project future county costs based on historical growth rates, and use the State’s current 4 percent annual inflation factor, which we reduce to 0 percent for counties that pay proportionally more than their share.



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Appendix E

Scope and Methodology

The Audit Committee directed the State Auditor to examine the expenditure of state funds for the IHSS program at four counties selected by the State Auditor. Table E below lists the objectives that the Audit Committee approved and the methods we used to address them.

Table E

Audit Objectives and the Methods Used to Address Them
AUDIT OBJECTIVE METHOD
1 Review and evaluate the laws, rules, and regulations significant to the audit objectives. Identified and reviewed relevant federal and state laws, rules, and regulations related to the IHSS program.
2 Analyze the counties’ expenditures of IHSS funding, including the counties’ costs to administer IHSS and the amount of funds paid for providers’ wages and benefits. Also, determine whether counties are spending all IHSS funding each year.
  • Interviewed relevant staff at each of the selected counties, IHSS public authorities, and Social Services.
  • Reviewed financial documentation at the selected counties and public authorities. Reviewed Social Services’ IHSS data for the most recent five fiscal years. Determined the following: the percent of budgeted expenditures spent, expenditures on IHSS provider salary and benefits, administrative expenditures, and the costs related to the public authorities.
  • Reviewed Social Services’ county expense claim system data to compare selected county administrative expenses to statewide averages.
3 Determine whether each county uses IHSS funding for anything other than provider wages, benefits, and county administrative costs. If so, assess the rationale for other uses.
  • Reviewed state law and found that the State funds IHSS caregivers wages and benefits, and that counties do not receive this funding from the State.
  • Interviewed relevant staff at each of the selected counties and public authorities.
  • Reviewed county financial documentation to identify any usage of IHSS funds for purposes not directly related to IHSS administration or benefits during the past five fiscal years.
  • Reviewed a minimum of 95 percent of the dollar amount of each selected county’s IHSS administrative expenses to determine if the expenses were within allowable categories for IHSS under the State’s claiming rules. Compared counties financial documentation with expenditures they reported to Social Services.
4 Identify trends in the number of IHSS providers and recipients within each county. Assess whether each county has a shortage of providers given the IHSS hours authorized for recipients.
  • Interviewed relevant staff at Social Services and their contracted data experts as we developed our methodology and performed our analysis.
  • Used data acquired from Social Services’ CMIPS II system as of June 2020 to determine the number of providers, recipients, approved hours, and hours provided at our selected counties for the past five calendar years. Also determined trends for providers, recipients, approved hours, and hour usage. To account for delays in providers submitting timesheets, we included all timesheet data through June 2020 but limited our analysis to services rendered through December 2019.
  • Interviewed county staff to determine the rationale for differences in budgeted versus actual expenditures and care hours and for any shortages of providers.
  • Conducted analysis to determine the extent of provider availability and associated trends.
  • Conducted data reliability assessment testing of CMIPS II data using data from our selected counties and internal dataset verification.
  • Surveyed counties throughout the State to determine whether gaps in care exist and the extent of current planning efforts, as well as to gain perspective related to their administration, hours utilization, recruitment, retention, and potential best practices.
5 Determine the average minimum wage of each county and compare it to the average wage rate for providers in each county. To the extent possible, determine the cost of living within each county and compare that to the average provider wage rate in that county.
  • Determined minimum wages in all counties for the most recent five calendar years. Used Social Services’ data to determine average provider wages in all counties over the past five fiscal years.
  • Reviewed publicly available living wage analysis, including analysis previously conducted at universities. Conducted analysis comparing current wage data and living wage data by county for all counties. Further, compared current wage data to other data sets such as federal per diem, and federal poverty threshold.
6 Identify and assess the biggest challenges to increasing IHSS provider wages within each county.
  • Interviewed the provider union for our selected counties to determine challenges to IHSS provider wage increases.
  • Utilized our survey of counties throughout the State to gain perspective on the extent of current planning to
  • increase provider wages at all counties, and on the challenges to increasing IHSS wages.
  • Reviewed the State’s IHSS funding mechanisms to determine whether they discourage counties from increasing provider wages.
7 Determine the costs incurred by each county to recruit and provide training to new IHSS providers.
  • Interviewed relevant staff, and to the extent it was available reviewed financial documentation related to recruiting and training efforts at each of the selected counties.
  • Reviewed available county financial documentation. Determined that counties we reviewed perform minimal recruitment and do not track recruitment expenses.
  • Determined that training costs in Butte and Kern counties were minimal. Found that Stanislaus has a memorandum of understanding with its caregiver union for the union to provide health and safety training for costs not to exceed $40,000 per year. Found that the San Diego County Public Authority has staff and other resources dedicated for training, but we were unable to determine their costs based on the financial documents the county provided.
  • Used our survey of counties throughout the state to gain perspective and unaudited data related to recruitment and training issues and expenses.
8 To the extent possible, determine what challenges exist for IHSS recipients including, but not limited, to those without family support—when hiring and retaining providers. Specifically, assess the effect of wages on hiring and retention.
  • Used data obtained from Social Services’ CMIPS II data system to determine the average time between selected milestones including from application to initial home visit, home visit to approval for services, and approval until the provision of initial services. Conducted interviews at our selected counties and Social Services to determine the cause of delays.
  • Used data obtained from Social Services’ CMIPS II data system to determine retention rate of providers at each counties in the State. To the extent possible, filtered data for recipients to determine turnover rate for those utilizing family support. We found that the providers who were family members had similar retention rates to providers who were not family members.
  • Identified and interviewed a selection of nonrelated IHSS caregivers who left the program while their associated care recipient remained and determined the reason for their departure.
  • Analyzed county complaint policies and processes. Requested plans from the four selected counties related to resolving issues with recruiting and retaining providers, including potential increases to wages. Surveyed counties about lack of available planning.
  • Requested planning documents at our selected counties related to pending increases in recipients. Surveyed counties about lack of planning.
  • Surveyed counties throughout the State to determine any potential challenges IHSS recipients experienced when hiring and retaining providers. Further, surveyed counties on potential challenges related to collective bargaining agreements.
  • Analyzed gaps between IHSS provider wages and the living wage. Compared gaps against the retention rates of counties. Reviewed outside analysis related to IHSS worker availability. Our review did not identify a causal link, likely due to the disparity between existing wages and the living wage at all counties. However, we did note that counties with a smaller gap between the living wage and provider wage in some cases had greater retention for paid providers in the later years of our review.
9 Determine how long it takes for new providers, on average, to receive their first timesheet. To the extent possible, assess the impact that this timeline has on hiring and recruiting new non‑family IHSS providers.
  • Interviewed relevant staff at Social Services and their contracted data experts as we developed our methodology and performed our analysis.
  • Used data from Social Services’ CMIPS II system to determine average time from initial hire until the issuance of timesheets for providers in our selected counties. Reviewed the length of time from initial eligibility to first timesheet, and calculated the average number of hours worked by providers within the selected counties. To the extent possible, filtered Social Services’ data to determine whether providers were non‑family providers.
  • Used data from Social Services’ CMIPS II system to determine the number of approved providers in the selected counties who never received a time card and those that only worked for a limited period.
  • Reviewed selected county and public authority onboarding materials and related policies and procedures to determine their compliance with state law.
  • Analyzed the amount of time it took new IHSS caregivers to receive their first timesheets. Interviewed former non‑family IHSS caregivers to determine their reasons for leaving the program. No information identified to establish a causal link between potential timesheet delays and caregiver hiring and retention.
10 Review and assess any other issues that are significant to the audit.
  • Interviewed relevant staff at Social Services and their contracted data experts as we developed our methodology and performed our analysis.
  • Reviewed the State’s IHSS funding mechanisms to determine whether incentives exist for counties to limit IHSS services.
  • Reviewed the State’s IHSS funding mechanisms to determine whether they were equitable and provide for stable county IHSS funding.

Source: Audit Committee’s audit request number 2020-109, planning documents, and information identified in the table column titled Method.

Assessment of Data Reliability

The U.S. Government Accountability Office, whose standards we are statutorily required to follow, requires us to assess the sufficiency and appropriateness of computer‑processed information that we use to support our findings, conclusions, and recommendations. In performing this audit, we relied on IHSS program eligibility and timesheet data from Social Services’ CMIPS II system to calculate various program statistics and to evaluate trends about providers and recipients in the program. To evaluate these data, we reviewed existing information about the data, interviewed staff knowledgeable about the data, performed electronic testing of the data, and conducted accuracy testing on a selection of key data elements. We found that these data were of undetermined reliability. Although this determination may affect the precision of the numbers we present, sufficient evidence exists in total to support our audit finds, conclusions, and recommendations.

In addition, we obtained electronic expenditure data from each of the four counties we reviewed. We performed data validation and verification through logic testing of key elements. We determined that those data were reliable for the purposes of this audit.



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