Barriers to employment, welfare time-limit exemptions and material hardship among long-term welfare recipients in California.

Similar documents
by sheldon danziger and rucker c. johnson

Income, Employment, and Welfare Receipt. After Welfare Reform: Evidence. from the Three-City Study. Bianca Frogner Johns Hopkins University

Discussion Comments on Rebecca Blank, What Did the 1990s Welfare Reform Accomplish? Robert Haveman University of Wisconsin-Madison

New Federalism National Survey of America s Families

Demographic and Economic Characteristics of Children in Families Receiving Social Security

CalWORKs. Program and Budget History

Living Arrangements, Doubling Up, and the Great Recession: Was This Time Different?

WHERE ARE THEY NOW? Assessing the Impact of Welfare Reform on Former Recipients,

NBER WORKING PAPER SERIES TRENDS IN THE LEVEL AND DISTRIBUTION OF INCOME SUPPORT. Robert A. Moffitt John Karl Scholz

40 Hour Work Rule: Implications for Families and Children

Results from the South Carolina ERA Site

Assessing the Impact of On-line Application on Florida s Food Stamp Caseload

Data and Methods in FMLA Research Evidence

Does It Pay to Move from Welfare to Work? Reply to Robert Moffitt and Katie Winder

Changes in TANF Work Requirements Could Make Them More Effective in Promoting Employment

LURIE INSTITUTE FOR DISABILITY POLICY

WHAT S IN THE PROPOSED FY 2016 BUDGET FOR TEMPORARY ASSISTANCE FOR NEEDY FAMILIES (TANF)?

Health and the Future Course of Labor Force Participation at Older Ages. Michael D. Hurd Susann Rohwedder

The Interaction of Workforce Development Programs and Unemployment Compensation by Individuals with Disabilities in Washington State

APPENDIX B ISSUES IN TABULATION CLAIM EXPENDITURES AND IDENTIFYING UNIQUE CLAIMANTS

BEFORE AND AFTER TANF: THE UTILIZATION OF NONCASH PUBLIC BENEFITS BY WOMEN LEAVING WELFARE IN WISCONSIN

The Limits of Relocation Employment and Family Well-Being among Former Madden/Wells Residents

Twenty Years After the Welfare to Work Act: Effects on Work and Poverty

HMIS Annual Assessment/Update Form

Profile of Ohio s Medicaid-Enrolled Adults and Those who are Potentially Eligible

Focus. Focus+ Disconnected Americans NEW THIS ISSUE!

Does It Pay to Move from Welfare to Work?

Key State TANF Policies Affecting Microenterprise. California

What is the Federal EITC? The Earned Income Tax Credit and Labor Market Participation of Families on Welfare. Coincident Trends: Are They Related?

The Changing Incidence and Severity of Poverty Spells among Female-Headed Families

Food Security of SNAP Recipients Improved Following the 2009 Stimulus Package

Fact Sheet March, 2012

1. Who is entering the data into this survey? Note: This should be the name of the Navigator, NOT the name of the client.

Workforce Innovation and Opportunity Act Eligibility

Does It Pay to Move from Welfare to Work? A Comment on Danziger, Heflin, Corcoran, Oltmans, and Wang. Robert Moffitt Katie Winder

A DECADE OF WELFARE REFORM: FACTS AND FIGURES

TANF at 20: Time to Create a Program that Supports Work and Helps Families Meet Their Basic Needs

California has one of the largest economies in the world and is home to incredible prosperity,

IBO. Despite Recession,Welfare Reform and Labor Market Changes Limit Public Assistance Growth. An Analysis of the Hudson Yards Financing Plan

COMBINED MANUAL DESCRIPTION OF CHANGES ATTACHMENT REVISED SECTIONS ISSUED 04/2018

MEMORANDUM A FRAMEWORK FOR PREPARING COST ESTIMATES FOR SSDI $1 FOR $2 GRADUAL REDUCTION DEMONSTRATION PROPOSALS

Working Paper Demetra Smith Nightingale Sarah Hutcheon. Johns Hopkins University Institute for Policy Studies. June 2009

820 First Street, NE, Suite 510, Washington, DC Tel: Fax:

HEALTH INSURANCE COVERAGE AMONG WORKERS AND THEIR DEPENDENTS IN NEW YORK,

SNAP Eligibility and Participation Dynamics: The Roles of Policy and Economic Factors from 2004 to

Comparing Estimates of Family Income in the Panel Study of Income Dynamics and the March Current Population Survey,

FOOD STAMP USE AMONG FORMER WELFARE RECIPIENTS. Cynthia Miller Cindy Redcross Christian Henrichson. February 2002

Results from the Post-Assistance Self-Sufficiency (PASS) Program in Riverside, California

2009 Vermont Household Health Insurance Survey: Comprehensive Report

Testimony of Yaida Ford, Staff Attorney. Legal Aid Society of the District of Columbia 1

The State of the Safety Net in the Post- Welfare Reform Era

Benefits Planning, Assistance and Outreach. V. Monthly Income

Room Attendant Training Program

DESIGNING SOLELY STATE-FUNDED PROGRAMS Implementation Guide for One Win-Win Solution for Families and States By Liz Schott and Sharon Parrott

Did the Social Assistance Take-up Rate Change After EI Reform for Job Separators?

Understanding Participation in SSI. Kathleen McGarry University of California, Los Angeles and NBER and Robert F. Schoeni University of Michigan

Financial Benefits. In This Section You Will Find Information On:

The Relationship between Income and Material Hardship

The Cross-State Study of Time-Limited Welfare Welfare Time Limits: An Interim Report Card. Dan Bloom

Economic success among TANF participants: How we measure it matters

The disconnected population in Tennessee

WHAT S IN THE FISCAL YEAR 2013 BUDGET FOR TANF?

Key State TANF Policies Affecting Microenterprise: Colorado

Health Policy Research Brief

Food Stamps. Training Manual. NOTES Presented by:

Household Income Trends March Issued April Gordon Green and John Coder Sentier Research, LLC

New Rates for Income Assistance on Reserve in British Columbia

GAO VOCATIONAL REHABILITATION

Poverty Facts, million people or 12.6 percent of the U.S. population had family incomes below the federal poverty threshold in 2004.

The Minnesota and Federal Dependent Care Tax Credits

Testimony for Public Hearing on the FY 2014 Budget of the Department of Human Services

Intensive work search regime

INTRODUCTION NEW YORK STATE SURPLUS SPENDING. Continued on page 4. New York State Programmed TANF Surplus (Dollars in millions)

Frequently Asked Questions (FAQs) DEPENDENT CARE REIMBURSEMENT PLAN (D-Care)

Agenda Item # Page # CHAIR AND MEMBERS COMMUNITY AND PROTECTIVE SERVICES COMMITTEE MEETING ON NOVEMBER 24,2008

REDUCING POVERTY AND PROMOTING SOCIAL INCLUSION

Key Policy Issues for the. Next Phase of Welfare Reform

The Relationship between Psychological Distress and Psychological Wellbeing

Report on the Outcomes and Characteristics of TANF Leavers

Left Out of the Boom Economy: UI Recipients in the Late 1990s

TRENDS IN FSP PARTICIPATION RATES: FOCUS ON SEPTEMBER 1997

The JOBS Evaluation: Monthly Participation Rates in Three Sites and Factors Affecting Participation Levels in Welfare-to-Work Programs

New Federalism. Left Behind or Staying Away? Eligible Parents Who Remain Off TANF. National Survey of America s Families THE URBAN INSTITUTE

Household Income Trends April Issued May Gordon Green and John Coder Sentier Research, LLC

Financial Benefits. In This Section You Will Find Information On:

Health Insurance Coverage in Oklahoma: 2008

The Minnesota and Federal Dependent Care Tax Credits

Differentials in pension prospects for minority ethnic groups in the UK

Federal Reauthorization of Welfare Reform

Policy Brief. protection?} Do the insured have adequate. The Impact of Health Reform on Underinsurance in Massachusetts:

THE NEGATIVE IMPACT OF FULL-FAMILY SANCTIONS ON THE TEMPORARY ASSISTANCE FOR NEEDY FAMILIES PROGRAM IN TEXAS

13.0 SUPPORTIVE SERVICES

BEYOND WELFARE: NEW OPPORTUNITIES TO USE TANF TO HELP LOW-INCOME WORKING FAMILIES OVERVIEW

Briefing for MSPs Scottish Government Debate on Universal Credit Roll-Out, Tuesday 3 October Child Poverty Action Group

SHELTER PLUS CARE REFERRAL/APPLICATION PACKET

Poverty and income inequality in Scotland:

FOOD STAMP OVERPAYMENT ERROR RATE HITS RECORD LOW

GAO GENDER PAY DIFFERENCES. Progress Made, but Women Remain Overrepresented among Low-Wage Workers. Report to Congressional Requesters

Summative Evaluation of EI Parental Benefits

Copies can be obtained from the:

Transcription:

Barriers to employment, welfare time-limit exemptions and material hardship among long-term welfare recipients in California. Jane Mauldon University of California Berkeley Rebecca London Stanford University Jon Stiles University of California Berkeley Poverty researchers in the United States are increasingly focused on the disconnected poor : families, typically headed by single mothers, who are neither working nor receiving welfare. Many of these families have timed out or have been sanctioned off the rolls. The labor market participation of very poor single mothers during the decade after welfare reform increased substantially, but even in periods of low unemployment, approximately 2.2 million singlemother households raising between them 4 million children -- were disconnected. 1 A proposal attracting considerable interest is to create a program of short-term income assistance that would provide more intensive employment services, as well as strategies to address health, mental health and physical health problems, for these families. Disconnected parents employment barriers would be assessed, and based on that assessment they would be enrolled in this new and specialized temporary assistance program, and provided income supports and case management. Like many other states, California has adopted a TANF program (CalWORKs) that permits a set of exemptions from the time limit similar to the eligibility criteria that have been proposed for a short-term non-welfare assistance program to aid very poor nonworking parents (see, e.g., Blank, 2007). These exemptions are for: a disabling (but short-term) physical or mental health problem; care giving responsibilities for a sick child or other family member; and a recent history of domestic violence. Implementing a program of short-term welfare assistance for families with such barriers requires that welfare staff are able to accurately identify these cases. How accurately and completely California welfare staff have made these identifications is a central topic of this paper. The second part of the paper explores the impacts of barriers on earnings and on material hardships. The data are from an evaluation of the CalWORKs welfare time limit. We link administrative welfare and UI data spanning three years collected from six that together capture more than half of California s welfare caseload to a two-wave survey of a random sample of recipients (n=1080 for most of these analyses) selected from the administrative data, who were approaching the five-year welfare time limit. 1 Blank and Kovak, 2007. Policy Brief: Helping Disconnected Single Mothers At www.npc.umich.edu/publications/policy_briefs/brief10/policy_brief10.pdf

Exemptions and Employment Barriers A wealth of research has established that long-term welfare recipients are held back in the labor market by a number of barriers, including health problems, mental health difficulties, caregiving obligations, and domestic violence. Respondents to this survey follow this pattern, as the results in Exhibit 6 show. This table reports the prevalence at both survey waves of the eight employment barriers the survey explored. These are: whether the respondent s ability to work was limited by physical or mental health problems; whether s/he had at least two indicators of poor mental health other than work limitation due to mental health (including meeting criteria for clinical depression); whether her spouse or cohabiting partner was limited by physical or mental health problems; whether she was primary caregiver for a disabled spouse or other adult in the household; whether she had a disabled child for whom she was primary caregiver, or whose health problems interfered with her ability to work; or whether she had experienced an episode of domestic violence in the preceding year. Several of these barriers are measured in the survey in multiple ways. We selected the measure that most strongly predicted reduced earnings or hours of work; that is, we attempted to identify measure that actually corresponded to the notion of a work barrier. 2 The estimated impacts on earnings and employment are reported later in the report. We find remarkable consistency between the two surveys in rates at which the various problems show up, even though different people have those problems. Between one-third and half of respondents who had a problem in one year did not report it the next year (and conversely, one-third to one-half people with a problem in Wave 2 did not have it at Wave 1) but the overall prevalence of most problems changed very little from year to year. About onequarter reported an employment-limiting physical health problem, one in six had an employment-limiting mental health problem and another one-third had a less severe mental health problem, one-quarter of spouses/partners had a work-limiting health or mental health problem, 11 percent had a disabled child whose condition interfered with work, another 11 percent had experienced recent domestic violence, and so on. More than half (56 percent) of the sample had at least one of these barriers at Wave 1. One-quarter (26 percent) had exactly one barrier, one-sixth (16 percent) had two, and one-seventh (14 percent) had three or four. The prevalence of barriers fell modestly- but significantly between the two waves, because of a decline in reported depression within the past year (where the depression was not serious enough for the respondent to consider it employment-limiting. Fewer respondents at Wave 2 than at Wave 1 reported depression had been depressed within the preceding year. 3 2 Earlier publications from this project used somewhat different definitions of barriers. Our choice to define barriers in terms of survey items that most closely predict reduced earnings is an attempt to provide an empirical basis for the definition of barrier.. 3 The barrier measure of other mental health problems is constructed as a scale from a number of questions, and we defined a barrier as corresponding to a score of 2 or more. These questions include questions about anxiety, stress and depression, and include the CIDI diagnostic inventory for major depression in the past year. It is plausible that this apparent decline in recent or current depression is only an artifact of the time frame referenced in the question: the average time between interviews was 11, not 12 months, and respondents at Wave 2 probably

Exhibit 1 Barriers at Wave 1 and Wave 2 Had barrier in Wave 1 Had barrier in Wave 2 Had this barrier in both waves % of those with barrier in Wave 1 who also had barrier in Wave 2 Respondent s work is limited by physical health 23.1% 251% 15.1% 67.8% Respondent s work is limited by mental health 15.3% 17.0% 9.3% 59.0% Other mental health problems: Respondent had at least two indicators of poor mental health other than 32.8% 23.0% 14.7% 46.1% a report of work limitation due to mental health Spouse/partner s work is limited by physical health 6.7% # 6.6% # 4.0% # 60.5% Spouse/partner s work is limited by mental health 3.6% # 3.8% # 1.9% # 59.0% Child has health condition that interferes with R s ability to work, or R is primary caregiver for disabled 11.0% 10.6% 5.9% 49.7% child Any domestic violence in preceding 12 months 11.2% 8.4% 4.2% 37.0% Respondent is primary caregiver for disabled spouse or other adult 4.6% 3.6% 1.5% 32.7% At least one of these eight barriers. 56.1% 50.3% 38.3% 67.8% Sample size 1552 1156 #The prevalence of conditions among spouse/partners is reported for the entire sample; rates would be about three times higher if calculated only for the 34 percent of the cases who had a spouse or cohabiting partner. The listed barriers potentially qualify recipients for an exemption from the time limit. Exemptions are important not only because they stop the clock, and thereby extend the time a family can receive a full-family rather than a safety-net grant, but also because a client who is identified for an exemption is likely to also be steered towards services to address the barrier. These might include health care and mental health care, domestic violence counseling, or, if disabling conditions are severe, support in applying for SSI or SSDI. The report prior to this one explored the data on exemptions in some detail. We do not recapitulate that discussion here, but summarize only the key results. Approximately onequarter (24 percent) of the people who in the survey reported barriers had received an exemption. (Of those who reported no barrier, 4 percent had an exemption, and half of these are domestic violence exemptions.). Reporting two or more barriers, or reporting a barrier at both Wave 1 and Wave 2 (which would suggest a more persisent and, perhaps, severe problem) have only a small impact on the chances of receiving an exemption. thought about the period only since the last interview. In contrast, respondents to Wave 1 may have telescoped, reporting episodes of depression as if they were within the last 12 months when in fact they were more distant.

Counties vary widely in the rate at which they award exemptions. In fact, among those with a barrier at Wave 1, the strongest predictor of receiving an exemption is county of residence: this is more significant than (for example) whether the barrier persists to the Wave 2 interview, or whether the person has two or more barriers. Regression models show that cases with exemptions for disability or care giving are significantly more likely to continue on CalWORKs (and have higher grants) a year later than cases with no exemptions. Exhibit 2 groups the six study into those with low rates of exemption, those with average rates, and those with high rates. The high-exemption exempt at more than double the rate of the low-exemption, a larger difference than the gap in exemption rates by type of barrier. Although domestic violence and care giving for children have lower exemption rates (at about 20 percent) than physical and health limitations (with exemption rates over 30 percent) these differentials pale in comparison to the gap between highexemption and low-exemption. Exhibit 2 Exemptions for Specific Barriers, by County Type Percentage of respondents with an exemption for one of the three types of barriers, before the survey or up to six months after survey All Low-exempting Mid-exempting High-exempting All surveyed cases 16.4% 10.9% 18.2% 23.7% Respondent has at least one of the eight barriers. Respondent s work is limited by physical health Respondent s work is limited by mental health Has at least one indicator of poor mental health other than work limitation due to mental health Spouse/partner s work is limited by physical health Spouse/partner s work is limited by mental health Child has health condition that interferes with R s ability to work Any domestic violence in preceding 12 months Respondent is primary caregiver for disabled spouse or other adult None of these barriers and no others identified 23.6% 15.4% 24.8% 30.7% 30.8% 26.5% 31.3% 42.4% 30.5% 36.5% 24.5% 38.1% 22.1% 17.0% 23.7% 28.4% 33.7% 15.2% 23.9% 58.0% 34.7% 16.7% 25.0% 58.8% 19.7% 13.6% 26.1% 10.5% 20.8% 15.7% 22.4% 28.6% 30.8% 21.4% 17.4% 55.6% 3.6% 0.8% 4.2% 0.8%

Sample size 1187 412 548 177 The measures selected from the survey to identify the barriers are with average earnings and hours of work significantly lower than those without the barrier in simple bivariate comparisons,, some of which are shown in Exhibit 3. That table reports average earnings and hours for cases with and without various barriers at Waves 1 and 2, separating single parents from couples and matching the Wave 1 barriers 1 to outcomes at Wave 1, and barriers reported at Wave 2 to outcomes for Wave 2. Exhibit 3 Average Earnings and Work Hours, for Groups with Barriers Single in both waves Married./cohabiting in both waves Wave 1 Wave 2 Wave 1 Wave 2 Wave 1 Wave 2 Wave 1 Wave 2 Average monthly earnings Average weekly work hours Average monthly earnings Average weekly work hours Averages for entire sample $302 $386 12.3 13.4 $702 $946 24.7 30.2 No barriers: Respondent s work is not limited by any of the following barriers: Earnings and work hours: $384*** $488*** 15.4*** 16.3*** $849*** $1081*** 29.1** 34.8** Respondent s work is limited by at least one of the eight barriers: Earnings and work hours: $244*** $313*** 10.0*** 11.3*** $579*** $838*** 21.0** 26.4** Selected types of Barriers: Respondent s work is limited by physical health Earnings and work hours: $206*** $208*** 8.1*** 8.3*** $325*** $750(*) 18.5** 24.4* Respondent s work is limited by mental health Earnings and work hours: $146*** $147*** 5.9*** 6.2*** $315*** $612* 19.6* 20.1** Respondent had two or more indicators of poor mental health other than a report of work limitation due to mental health problems Earnings and work hours: $217*** $220*** 9.3*** 10.1*** $550* $945 23.9 30.7 Spouse/partner s work is limited by physical health Earnings and work hours: -- -- -- -- $510* $468*** 16.8*** 17.6*** Spouse/partner s work is limited by mental health Earnings and work hours: -- -- -- -- $329*** $430*** 14.1*** 17.2*** Sample size 800 803 802 803 292 292 296 296 Exempted cases (almost all of whom have barriers) : Exempted for disability Percent with this exemption 10% 14% Earnings and work hours: $120*** $105*** 3.9*** 6.0*** $357** $575** 15.1*** 21.0* Exempted for care giving Percent with this exemption 3% 3% Earnings and work hours: $125* $106** 5.5* 5.2** $215** $195*** 14.4 * 8.8*** Exempted for domestic violence Percent with this exemption 4% 3% Earnings and work hours: $364 $191* 12.3 8.6(*) $828 $1166 30.6 38.1

Exempted for being Cal-Learn/high school student, age>=60, non-parent caregiver Percent w/ one of these exemptions 1% 2% Earnings and work hours: $171 $413 6.1 11.9 $615 $1155 29.9 41.3 Sample size 570 570 570 570 212 212 226 226 In Exhibit 4, the impacts of barriers on employment outcomes are estimated using multivariate models that control for demographic traits, county of residence and other (non-welfare) income. Exhibit 4 Regression Estimates of Impacts of Barriers on Earnings and Work Hours Impact on Monthly After-Tax Earnings (including partner s if married/cohabiting) Model 1: barriers Model 2, including and demographics exemptions Impact on Weekly Work Hours (including partner s if married/cohabiting) Model 1: barriers Model 2, including and demographics exemptions Average monthly earnings; average weekly work hours Wave 1 Wave 2 Wave 1 Wave 2 Wave 1 Wave 2 Wave 1 Wave 2 $413 $543 $413 $543 16.6 19.7 16.6 19.7 Exempted for being Cal- Learn/high school student, -- -- -$100 $152 -- -- -0.6 5.8 age>=60, non-parent caregiver Exempted for disability, caregiving, domestic violence -- -- -$93(*) -$175** -5.0** -5.5** Respondent s work is limited by physical health -$121** -$94(*) -$110** -$78** -5.0*** -4.3** -4.4** -3.8* Respondent s work is limited by mental health -$139* -$138* -$135** -$132* -4.7** -5.4** -4.5** -5.2** Had two or more indicators of poor mental health other than -$63(*) -$61 -$58 -$58-1.8-2.0-1.5-2.0 report of work limitation Spouse s work limited by physical health $27 -$315** $51 -$211(*) -5.4(*) -8.5* -4.3-7.2* Spouse s work limited by mental health -$268* $94 -$265* $84-4.0 2.4-3.8 2.1 R is primary caregiver for spouse or other adult in -$29 -$224(*) -$29 -$265** 3.7-4.4 3.7-4.0 household Child s disability/limitation requires R as caregiver or -$6 -$191** -$8 -$186** -0.7-4.0* -0.8-3.8* interferes w/r s ability to work Any domestic violence in preceding 12 months, single -$90(*) -$21-82(*) -$21-2.6-0.3-2.1-0.2 Any domestic violence in -$22 -$106 -$29 -$103 0.0 13.4* -0.6 13.5*

preceding 12 months, couple Sample size 1176 1144 1176 1144 1038 1026 1038 1026 Barrier as measured in Wave 1, if (W ave 1 models; as measured in in Wave 2, if Wave 2 models. All factors entered simultaneously Other covariates: County of residence; demographic variables (race/ethnicity, childrens number and ages, language of interview, immigrant status, education level, married/partnered); amount of own other (non-welfare) income, spouse s other (non-welfare) income, and child support in Wave 1 OR in Wave 2. Stars indicate that mean is statistically different from the group without that characteristic. *** p<.001 ** p<0.01 * p<0.05 Once again, the consistency of findings across the two survey waves is remarkable, at least for the more frequently-reported barriers: health and mental health limitation of respondent.. As noted earlier, average earnings and hour worked were higher at Wave 2 than Wave 1, and this is also true for cases with barriers. However, average earnings were some 36 percent lower at both waves for single parents with barriers (compared to those with no barrier) and slightly less, by 32 percent (Wave 1) or 22 percent (Wave 2), among couples where at least one had a barrier. Among all the barriers, mental health problems apparently had the greatest impact on earnings. Because of the very high correlations between some of the variables (especially between mental health and physical health work limitations for respondents, and for spouses) some variables are non-significant, and some have implausible signs. Nevertheless, the regression estimates overall provide a convincing supplement to the comparisons of raw differences in means. The fact that so many of the barriers show large and significant signs even when included in a regression model with other barriers and with exemption information suggests that each barriers captures a different dimension of labor market difficulties.