亚色影库app

An open access publication of the 亚色影库app & Sciences
Winter 2020

What鈥檚 Policy Got to Do with It? Race, Gender & Economic Inequality in the United States

Authors
Jamila Michener and Margaret Teresa Brower
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Abstract

In the United States, economic inequality is both racialized and gendered, with Black and Latina women consistently at the bottom of the economic hierarchy. Relative to men (across racial groups) and White women, Black and Latina women often have less-desirable jobs, lower earnings, and higher poverty rates. In this essay, we draw attention to the role of the state in structuring such inequality. Specifically, we examine how public policy is related to racial inequities in economic positions among women. Applying an intersectional lens to the contemporary landscape of economic inequality, we probe the associations between public policies and economic outcomes. We find that policies have unequal consequences across subgroups of women, providing prima facie evidence that state-level decisions about how and where to invest resources have differential implications based on women鈥檚 race and ethnicity. We encourage scholars to use aspects of our approach as springboards for better specifying and identifying the processes that account for heterogeneous policy effects across racial subgroups of women.

Jamila Michener is an assistant professor in the Department of Government at Cornell University. She is the author of Fragmented Democracy: Medicaid, Federalism, and Unequal Politics (2018) and has published in such journals as Political Behavior, Policy Studies Journal, and the Journal of Health, Politics, Policy and Law.

Margaret Teresa Brower is a Ph.D. candidate and Urban Fellow at the University of Chicago. She has published in such journals as Journal of College and Character, Change: The Magazine of Higher Learning, and Diversity & Democracy.

In the United States, economic inequality is both racialized and gendered.1 This means that the intersecting categories of race and gender are systematically associated with wide disparities in economic outcomes. For example, women across racial groups earn less income than men, but Black and Latina women earn less than both White women and Black and Latino men.2 Similar patterns occur across a variety of economic indicators. In terms of income, poverty, and employment, Black and Latina women remain marginalized: they have the lowest earnings, face the most intense occupational segregation, and have the highest poverty rates.3

Sociologists, economists, and other social scientists have identified a host of factors that explain the relative economic status of Black and Latina women. Racial discrimination, constrained social networks, labor market inequities, and much more underlie the processes that generate disparate material outcomes for Women of Color.4 Still, there is a lot we do not know about the mechanisms that stratify Black and Latina women. In particular, scholars have an inadequate understanding of how public policy affects women鈥檚 economic positioning by gender and race.

In this essay, we investigate whether and how social and economic policies differentially shape women鈥檚 economic positioning across racial and ethnic groups. We begin by charting disparities between White women and Women of Color across a range of key economic indicators including educational attainment, employment, wages, and poverty. Then, we assess statistical associations between economic outcomes and state-level policies for White, Black, and Latina women. We find substantial heterogeneity in the relationships between economic policies (such as minimum wage laws and disability insurance), social policies (such as cash, food, and medical assistance), and the economic status of women across racial and ethnic groups. Our empirical and theoretical approach is grounded in the concept of intersectionality, a framework developed by Black feminist scholars to capture how a multiplicity of intersecting social identities determine one鈥檚 power, life experiences, political interests, and more.5 By adopting an intersectional approach, scholars can study heterogeneous groups with more nuance, remaining attentive to various junctions of different social positions and categories. Applying the lens of intersectionality to questions about economic inequality prompts us to investigate the ways that Women of Color鈥搒pecifically Latina and Black women鈥揳re affected by social and economic policies relative to their White counterparts. Doing so reveals the complex role of the state in gendering and racializing economic inequality.

Numerous factors shape race and gender inequalities in economic outcomes, but we stress the role of policy, bringing the state more into view.6 Concentrating on social and economic policies鈥損rimary levers through which government determines and regulates access to resources鈥搃s important for three reasons.

First, policy is uniquely vital to producing and reducing inequality. The state wields enormous power to differentially determine the fortunes of its denizens.7 The New Deal of the 1930s offers especially pertinent lessons on how policy can create, maintain, and exacerbate racialized and gendered economic inequality.8 One of the centerpieces of the New Deal鈥揝ocial Security/OAI (Old Age Insurance)鈥搃ncluded provisions that disqualified workers in the agricultural and domestic industries.9 These provisions meant that nine out of ten African American women workers were automatically rendered ineligible.10 Social Security did not incorporate domestic workers until 1948 and agricultural laborers were left out until 1950.11 Despite its prominent status as 鈥渢he closest thing to a race-blind social program the United States has ever known,鈥 Social Security was marked by inequity at its origins. This was particularly consequential for Black women, who lost state-based financial resources for well over a decade during a time when others were gaining them.12 Policy matters for inequality.

The second reason we center policy in our analytical approach is because it is amenable to change. When the design or implementation of policy exacerbates inequality, policy-makers, advocates, and other engaged members of the political community can work to modify and improve it. The ability of such actors to advance change hinges upon knowledge about how public policy affects economic inequality. To extend the previous example with a more contemporary focus, Social Security continues to have disproportionate effects on Americans by race and ethnicity, with lower total benefit amounts for People of Color.13 This disparity is no longer the result of occupational exclusion. Instead, it stems from larger structural realities: Black and Latino Americans spend fewer years in the workforce, make less income from work, and do not live as long as their White counterparts.14 Unless we are attentive to such policy inequities, we can neither conceptualize nor configure policy to account for such disproportionalities.15

The third reason we emphasize policy is because it reflects and affects democracy. Political institutions that are part and parcel of the democratic process produce and enable economic inequality. Federalism, for instance, exacerbates racialized economic inequality through social policy. Historically, Aid for Dependent Children (cash assistance) resulted in unbalanced welfare coverage by race and ethnicity, with Black Americans receiving significantly less than their White counterparts.16 More contemporary cash assistance programs, such as Aid to Families with Dependent Children (AFDC) and its successor Temporary Assistance for Needy Families (TANF), have also been marked by the institution of federalism in ways that reinforce economic disparities by geography, race, and ethnicity.17 Even in-kind benefits like health insurance proliferate such inequities through the mechanism of federalism.18 These differential outcomes by state reveal the ways policies are shaping Americans differently within a federated political structure. By determining access to and experiences with government resources meant to bolster economic security, the political institutions that contour the delivery of public policy both reflect and affect democratic politics. Such processes of policy feedback鈥搕he term used to describe the recursive relationship between policy and politics鈥揾ave profound implications for democracy.19 Given the relationship between policy and democracy, it is imperative to assess the connections between public policy, economic inequality, race, and gender.

When the economy goes through a process of restructuring, resulting changes affect individuals differently based on their gender, class, race, and ethnic positioning in the social hierarchy. For example, the industrial restructuring of the economy between the 1970s and 1990s had disparate effects on Americans by race and gender.20 Sociologist Irene Browne found that processes of reindustrialization during this period disproportionately affected young Black women who experienced high increases in unemployment as a result of the expansion of retail trade industries.21 Young White women were not similarly affected. Although the 1980s are often depicted as an era that reduced economic inequalities for women, Black women actually experienced greater economic inequality, decreased earnings, and increased unemployment during this time.22

The 2007 recession is another important instance of how economic conditions divergently shape the lives of women. During the recession, Black and Latina women across levels of educational attainment experienced the highest unemployment rates compared with women from other racial and ethnic groups.23 Even after the recession officially ended, the unemployment rates for Latina and Black women remained high: the number of Latina and Black young women who were unemployed increased from 25.3 percent in 2007 to 40.5 percent in 2010.24 Similarly, while the postrecession poverty gap between men and women reached a historic low in 2010 (with 16.2 percent of women and 14.0 percent of men living in poverty), poverty rates were highest among Latina and Black women.25 Both historical and contemporary economic shifts highlight the exceptionally precarious position of Women of Color in the American economy.

Public policies are widely purported to provide stability and security in the face of such precarity. But do policies counterbalance the racial disproportionalities of the economy or do they perpetuate such imbalances? This question is too large for any single essay. Thus, we focus deliberately on social and economic policies designed to support those who are most vulnerable to shifts in the economy, with an emphasis on the divergent implications of such policies for women who are differentially positioned within the labor market.

The social policies we are most concerned with are those primarily directed at helping people to secure the necessities of material survival like food, medical care, and cash. Key social policies include the Supplemental Nutrition Assistance Program (SNAP), TANF, Medicaid, and the Special Supplemental Nutrition Program for Women, Infants, and Children (WIC). In contrast, the economic policies we emphasize are less oriented toward providing specific material resources and more geared toward shaping the structure and returns of the labor market. Such economic policies include minimum wage laws, prevailing wage laws, workers compensation policies, and disability insurance policies. Admittedly, some policies鈥搇ike the earned income tax credit (EITC)鈥搒traddle the boundaries of the policy domains we delineate. Notwithstanding the fluidity of the division between social and economic policies, highlighting this difference is useful for several reasons.

First, it maps onto practice. Many scholars, practitioners, and policy-makers implicitly (and sometimes explicitly) consider these policy realms as separate domains. Second, these policy categories have different implications for the experiences and needs of women. Social policies generally meet the basic needs of women across various strata of the labor market, with a particular applicability to women living in or near poverty. Economic policies are most relevant to women who are (or have recently been) employed, particularly those occupying low-wage jobs.

This distinction informs the design of the empirical analysis that we offer below by helping us to develop expectations about how policies should affect women. In particular, we anticipate that social policies will matter most for women who are unemployed and economic policies will be most consequential for women who are employed. Indeed, social policies provide unemployed women with supplemental income, resources, and public services (such as food stamps and Medicaid) while economic policies tend to provide benefits associated with being employed (such as tax credits and workers compensation).

In addition to these core assumptions concerning labor market positioning and policy type, we also expect that both social and economic policies will have distinct implications for women across racial groups. Existing research provides us with a basis for anticipating dissimilar policy effects across racial and ethnic groups. For example, recent studies indicate that TANF, a particularly salient social policy, exacerbates the Black-White child poverty gap.26 Even more generally, access to the benefits that Latina and Black women disproportionately rely on is often quite constrained: research suggests that 88 percent of women in poverty with children鈥搈any of whom are Women of Color鈥揳re not receiving social benefits like cash assistance or food and nutritional benefits.27

Economic policies follow a similar pattern. In the 1970s and 1980s, economic nondiscrimination policies such as the Equal Employment Opportunity Act (EEO) were used as a political tool to reduce gender inequality in the labor force. Yet these policies did not shift racialized inequality among women.28 While the EEO had the largest effect on Black women鈥檚 economic position compared with White women, Black women still experienced less wage gains overall compared with White women.29 Moreover, decades after the EEO, Black and Latina women continued to experience labor market discrimination, which affected their employment status, wage earnings, and economic mobility.30

Altogether, interdisciplinary research on race and public policy gives us substantial reason to expect that both social and economic policies will have differential consequences across racial and ethnic groups.

To explore this hypothesis, we begin with a description of the contemporary landscape of economic inequality across these groups. We highlight four dimensions of economic status for Black, White, and Latina women: 1) educational attainment; 2) employment status; 3) earnings; and 4) poverty level. These dimensions are not exhaustive; there are other metrics relevant to economic positioning. Still, taken together, these outcomes highlight separate, interrelated, and complementary elements of economic standing. Notably, they are each to some degree a function of both economic conditions and policy realities. Educational attainment is a first-order foundation of economic positioning that affects (albeit differentially across groups) one鈥檚 economic trajectory across the life course. The federal government along with states and localities play a large part in determining access to and quality of education. Employment status is determined by factors including educational attainment, national and local labor market conditions, and (crucially) economic policies such as nondiscrimination policies, laws regulating contracts, and much more. Similarly, one鈥檚 work income is a product of both individual-level and macroeconomic factors, but is also contingent on a wide range of policy interventions such as minimum wage statutes. Finally, the extent to which a person is living below the poverty line is influenced by all of the other dimensions we consider (education, employment, wages) and is also significantly conditioned by public policy.

Patterns of inequality between women of different racial groups are widely reported but often in a piecemeal fashion and rarely with an eye toward an intersectional assessment of women鈥檚 economic positioning. We bring together baseline economic data to paint a comprehensive picture. As expected, we find substantial racial disparities across each of the dimensions noted above. Figures 1鈥4 illustrate these outcomes.

First, there are wide disparities in educational attainment. Figure 1 shows that in 2017, White women led the way in terms of the share of women (ages twenty-five and older) with a bachelor鈥檚 degree (34 percent). Black women were significantly less likely to obtain this degree (24 percent) and Latina women almost half as likely as White women to obtain a bachelor鈥檚 degree (18 percent).

Similar patterns emerge with employment. Figure 2 displays the share of women who reported being unemployed in 2016. Even during this postrecession time of economic upsurge, Black women had the highest rate of unemployment (7.8 percent), followed by Latina women (6.3 percent). White women had the lowest unemployment rate (4.2 percent).

Turning to earnings, Figure 3 charts the wide disparity in median earnings between White, Black, and Latina women. In 2017, White women鈥檚 weekly earnings were $814 per week, compared with $673 for Black women and $618 for Latina women.

Finally, a look at poverty uncovers comparable patterns. Figure 4 highlights racial differences in poverty rates. In 2013, White women had the lowest poverty rate (11.7 percent), followed by Latina women (24 percent) and Black women (25.7 percent). It is quite striking that White women are less than half as likely as either Black women or Latina women to be living in poverty.

The patterns shown above are not surprising, but they are important. Disparities among groups of women are often muted or overlooked in favor of comparisons with men. White men generally outpace all women economically.31 Black men sometimes fare worse than Black women (especially with respect to educational outcomes).32 Comparisons to men across and within racial groups are often highlighted over and above differences between women. By focusing on comparisons among women, we show that across most metrics of economic well-being, Black and Latina women are considerably disadvantaged.

What role does public policy play in structuring this state of affairs? Making strong causal arguments is beyond the scope of this essay. It is difficult enough to make a convincing case that a single policy intervention has affected a single economic outcome for a single racial group. We cannot offer causal evidence that a set of economic and social policies caused aggregate changes in multiple patterns of inequality across numerous groups of women. Instead, we offer correlational analyses to make a prima facie case that state-level social and economic policies have varied implications across groups of women. We argue that this highlights the need for careful thinking about the heterogeneity of policy effects. We cannot fully explain why the specific patterns we find exist. Instead, we use these analyses as a springboard for encouraging further exploration of the policy dimensions of racial differences in economic outcomes.

Our immediate empirical objective is to gauge whether state-level social policies have varying associations with women鈥檚 economic status across racial groups. Our emphasis is on the racially heterogeneous individual-level upshots of state-level policy. This means that we are not primarily concerned with whether receiving a particular policy benefit at the individual level is associated with improved individual-level economic positioning. Rather, we highlight whether the type or generosity of benefits at the state level correlates with individual-level economic status. Put most straightforward, we consider the consequences of state-policy choices for individual-level outcomes.

Empirically identifying the relationship between economic status and public policy is difficult for numerous reasons.33 In particular, economic status is correlated with both access to and experiences with public policy, especially at the individual level. Using state-level policies as our main independent variables helps to mitigate this. More substantively, taking this approach allows us to consider the consequences of state-level policy regimes for women across racial groups. This is in line with our larger emphasis: not on the discrete 鈥渆ffects鈥 of any single policy for an individual person who receives that policy benefit, but on the overarching role of social and economic policy in structuring outcomes for women.

We also recognize that one鈥檚 economic position is complex and not dependent on one factor, such as wages or poverty. Thus, we make the choice to include an index variable that accounts for this complexity. We conceptualize economic status as an (additive) function of three factors that each (dichotomously) reflect an important aspect of respondents鈥 position in the economy: 1) whether a respondent had any education beyond high school; 2) whether a respondent is below or above the official poverty line; and 3) whether a respondent earns a wage above the median of sampled respondents. We chose to include dichotomous measures of these outcomes because these markers (such as having college experience or being below or above the poverty line) are often associated with substantial differences in economic trajectory.34 The index we created gauges respondents鈥 combined positioning in each of these domains. Increasing scores indicate more 鈥減ositive鈥 economic status (the highest-scoring respondents have an education beyond high school, wages above the median, and are not living in poverty).

To construct this economic status index, we used 2009 individual-level micro-data from the Annual Social and Economic Supplement of the Current Population Survey (CPS) available through the Integrated Public Use Microdata Series (IPUMS).35 The CPS contains responses from over seventy-five thousand Black, White (non-Hispanic), and Hispanic/Latina women across the United States.36 We selected 2009 as the year for our analysis both for ease and for its theoretical value. Our honesty about presenting correlations (as opposed to causal estimates) follows from this choice. Coming at the tail end of the most recent recession (2007鈥2009), 2009 was one of the most difficult years in recent economic memory, and the supportive and stabilizing effects of public policy were acutely important during this time. We thus underscore a time that is especially significant vis-脿-vis how policy operates when women are most vulnerable in the larger economy.

Our key independent variables gauge social and economic policy at the state level. These variables come from multiple sources, but each is housed in the Correlates of State Policy database.37 Our social policy variables include measures of states鈥 provision of food assistance (levels of SNAP and WIC participation), cash (TANF benefit levels), and health care (proportion of population with any public health insurance). Our economic policy variables include measures of the state EITC rate; the availability of state disability insurance; an indicator of whether the state minimum wage is above the federal minimum; an indicator of whether a state has prevailing wage laws; and a measure of states鈥 average amount for unemployment compensation. Finally, we incorporate a basic set of controls at the individual level (from the CPS), including age, marital status, number of children, citizenship status, disability status; and at the state level (from the Correlates of State Policy data set), including state poverty rate and state general expenditures.38

To examine the correlations between economic status and state policy, we employ multilevel regression.39 Following the theoretical expectations described earlier, we model economic status separately for each racial/ethnic subgroup as well as for women who are employed and unemployed.

Recall that the goal of these models is to assess the heterogeneity of correlations between women鈥檚 economic status and state-level public policy across racial groups. Tables 1 and 2 along with Figure 5 illustrate significant heterogeneity.40 We can neither explain nor account for each of the correlations. Instead, we describe some notable patterns. State TANF policy has few significant correlations with women鈥檚 economic status, with one exception: a marginally significant economic boost for unemployed Latina women.41 Higher levels of state SNAP benefits are moderately (positively) correlated with economic positioning for employed White women. More expansive WIC policy appears to correlate significantly (and positively) to economic status for unemployed Black and White women. State provisions of public health insurance are associated with more positive economic status for unemployed Latina women. A higher state EITC rate stands out as having positive associations with improved economic status for employed Black and White women, and even for unemployed Black women. However, the EITC is not correlated with Latina women鈥檚 economic positioning. State minimum wage laws that are above the federal minimum wage are associated with economic improvements for both employed and unemployed White women, while prevailing wage laws are (marginally) negatively correlated with economic positioning for employed White women. State unemployment compensation is (marginally) negatively correlated with unemployed Latina women鈥檚 economic status.

 

While we offer no easy takeaways, our central argument is that women鈥檚 economic positioning and the policies that shape it are heterogenous across racial and ethnic groups. We offer an index variable as a way of measuring the complex positionality of women in the economy. Our goal in doing so is not to determine a perfect measurement of economic standing, but to account for the multidimensionality of women鈥檚 economic positionality in the United States. When we study the relationship between this positionality and public policies, we find considerable differences among women.

Indeed, we find that public policies have significant (positive and negative) relationships with women鈥檚 economic position that differ by race and ethnicity. Although Latina and Black women share many similarities in terms of how they are disadvantaged by the labor market, their economic positions have very different relationships with social and economic policies. For Latina women, TANF and public health insurance are positively correlated with their economic position while for Black women, WIC and EITC are positively correlated. Meanwhile, though both White and Black unemployed women鈥檚 economic positions are positively correlated with state WIC policy, no such correlation exists for Latina women. These outcomes are important because they illustrate that differences among women鈥搕heir employment status, race, ethnicity鈥搖nderlie variation in the relationships between their economic standing and policies that are facially neutral.

We do not attempt to determine the causal mechanisms driving these differences among women. Instead, we point to well-established mechanisms from previous literature to make sense of the observed inequities. Political institutions like federalism and partisanship both structure and incentivize unequal policy benefits, divergent policy experiences, and inequitable policy outcomes for people across states, localities, and demographic categories. These institutional parameters map onto state racial and ethnic composition. In this way, institutions and the forms of policy design and implementation that they enable shape the extent to which policy is either a buffer against inequality or a channel through which it operates. We provide state-level policy analyses to highlight some of these processes, not to determine the specific mechanisms driving inequality among women, but to illustrate that state policy regimes have racialized consequences for women鈥檚 economic standing.

One of our key contributions here is to underscore the policy implications of an intersectional approach to economic inequality. Women of Color are in a uniquely precarious economic position in the United States. Making significant progress with regard to poverty reduction and economic mobility hinges in significant part on their economic status and trajectory. More fully understanding that trajectory 鈥揳nd the policy avenues for altering it鈥搑equires attentiveness to how policy operates across racial groups. Moreover, the dual policy dimensions we concentrate on here (social policies and economic policies) are often considered separately, either with respect to individual policies or with respect to only one policy dimension. Though the correlations we highlight should not be taken at face value, they do provide prima facie evidence that in the realms of both social policy and economic policy, the choices that we make about how and where to invest have differential consequences for racial disparities among women. We hope to encourage scholars to ask why, to delve more deeply into specific mechanisms, and to more thoroughly identify the processes that account for heterogeneous policy effects across racial groups. Racial equitability is one important metric by which we can prioritize and assess policy. First, however, we must ask and answer many more questions about the contours of racially heterogeneous policy effects.

Endnotes

  • 1Joseph G. Altonji and Rebecca M. Blank, 鈥淩ace and Gender in the Labor Market,鈥 in Handbook of Labor Economics, vol. 3, ed. Orley Ashenfelter and David Card (Amsterdam: Elsevier, 1995): 3143鈥3259; Teresa L. Amott and Julie A. Matthaei, Race, Gender, and Work: A Multi-Cultural Economic History of Women in the United States (Boston: South End Press, 1996); Irene Browne, ed., Latinas and African American Women at Work: Race, Gender, and Economic Inequality (New York: Russell Sage Foundation, 2000); Leslie McCall, Complex Inequality: Gender, Class and Race in the New Economy (New York: Routledge, 2001); and Donald Tomaskovic-Devey, Gender & Racial Inequality at Work: The Sources and Consequences of Job Segregation (Ithaca: Cornell University Press, 1993).
  • 2Dedrick Asante-Muhammad, 鈥,鈥 Prosperity Now, March 29, 2018.
  • 3Ibid; Will McGrew, 鈥溾 (Washington, D.C.: Washington Center for Equitable Growth, 2018).
  • 4Though the umbrella category 鈥淲omen of Color鈥濃搘hich we capitalize as a label referring to multiple racial groups鈥搃ncludes Asian American and Native American women, we focus here on comparisons between White women, Black women, and Latina women. This is in part because Asian American and Native American women have distinctive economic outcomes and relationships to public policy, so the factors we point to here operate differently enough for them that it is not appropriate simply to fold them into the analysis. In addition, data on the economic status of Asian American and Native American women are sparser and less comprehensive. Ultimately, our hope is that by shining a spotlight on the policy dimensions of race, gender, and economic inequality, we create scholarly and intellectual space for others to examine and highlight the dynamics among groups of women that we do not consider here. Altonji and Blank, 鈥淩ace and Gender in the Labor Market鈥; Enobong Branch, Opportunity Denied: Limiting Black Women to Devalued Work (New Brunswick, N.J.: Rutgers University Press, 2011); and Margery Austin Turner, Michael Fix, and Raymond J. Struyk, Opportunities Denied, Opportunities Diminished: Racial Discrimination in Hiring (Washington, D.C.: The Urban Institute, 1991).
  • 5Hajer Al-Faham, Angelique Davis, and Rose Ernst, 鈥淚ntersectionality: From Theory to Practice,鈥 Annual Review of Law and Social Science 15 (2019): 247鈥265; Cathy J. Cohen, The Boundaries of Blackness: AIDS and the Breakdown of Black Politics (Chicago: University of Chicago Press, 1999); Patricia Hill Collins, 鈥淚ntersections of Race, Class, Gender, and Nation: Some Implications for Black Family Studies,鈥 Journal of Comparative Family Studies 29 (1) (1998): 27鈥36; Kimberle虂 Williams Crenshaw, 鈥淢apping the Margins: Intersectionality, Identity Politics, and Violence against Women of Color,鈥 Stanford Law Review 43 (6) (1991): 1241鈥1299; Ange-Marie Hancock, 鈥淚ntersectionality as a Normative and Empirical Paradigm,鈥 Politics & Gender 3 (2) (2007): 248鈥254; and Jamila Michener, Andrew Dilts, and Cathy Cohen, 鈥淎frican-American Women: Intersectionality in Politics,鈥 in Oxford Handbook of African American Citizenship, 1865鈥揚resent, ed. Henry Louis Gates Jr., Claude Steele, Lawrence D. Bobo, et al. (New York: Oxford University Press, 2012).
  • 6We follow sociologist Bob Jessop in defining the state in terms of four key elements: 鈥(1) a politically organized coercive, administrative and symbolic apparatus endowed with general and specific powers; (2) a clearly demarcated core territory under more or less uncontested continuous control . . . (3) a stable population under which the state鈥檚 political authority and decisions are binding鈥; and (4) it is an 鈥渋dea鈥 that 鈥渄enotes the political imaginary.鈥 Bob Jessop, 鈥淪tate Theory,鈥 in Handbook on Theories of Governance, ed. Christopher Ansell and Jacob Torfing (Northampton, Mass.: Edward Elgar Publishing, Inc., 2016), 72鈥73.
  • 7Jamila Michener, 鈥淪ocial Class and Racialized Political Experience,鈥 The Forum 15 (1) (2017): 93鈥110.
  • 8Price Fishback, 鈥淗ow Successful Was the New Deal? The Microeconomic Impact of New Deal Spending and Lending Policies in the 1930s,鈥 Journal of Economic Literature 55 (4) (2017): 1435鈥1485; Ira Katznelson, When Affirmative Action Was White: An Untold History of Racial Inequality in Twentieth-Century America (New York: W. W. Norton & Company, 2005); Robert Lieberman, Shifting the Color Line: Race and the American Welfare State (Cambridge, Mass.: Harvard University Press, 2001); and Suzanne Mettler, Dividing Citizens: Gender and Federalism in New Deal Public Policy (Ithaca, N.Y.: Cornell University Press, 1998).
  • 9Linda Gordon, Pitied but Not Entitled: Single Mothers and the History of Welfare, 1890鈥1935 (New York: Free Press, 1994); and Mettler, Dividing Citizens.
  • 10Mettler, Dividing Citizens.
  • 11Harmony Goldberg, 鈥溾楶repare to Win鈥: Domestic Workers United鈥檚 Strategic Transition Following Passage of the New York Domestic Workers鈥 Bill of Rights,鈥 in New Labor in New York: Precarious Workers and the Future of the Labor Movement, ed. Ruth Milkman and Ed Ott (Ithaca, N.Y.: Cornell University Press, 2014), 268鈥288.
  • 12Robert C. Lieberman, 鈥淩ace and the Organization of Welfare Policy,鈥 in Classifying by Race, ed. Paul E. Peterson (Princeton, N.J.: Princeton University Press, 1995), 156鈥187; and Mettler, Dividing Citizens.
  • 13Alexa A. Hendley and Natasha F. Bilimoria, 鈥淢inorities and Social Security: An Analysis of Ethnic Differences in the Current Program,鈥 Social Security Bulletin 62 (2) (1999): 59; and Eugene C. Steuerle, Karen E. Smith, and Caleb Quakenbush, 鈥溾 (Washington, D.C.: The Urban Institute, 2013).
  • 14Ibid.
  • 15Jamila Michener, 鈥淧olicy Feedback in a Racialized Polity,鈥 Policy Studies Journal 47 (2) (2019): 423鈥450.
  • 16Robert C. Lieberman and John S. Lapinski, 鈥淎merican Federalism, Race and the Administration of Welfare,鈥 British Journal of Political Science 31 (2) (2001): 303鈥329.
  • 17Zachary Parolin, 鈥淭emporary Assistance for Needy Families and the Black-White Child Poverty Gap in the United States,鈥 Socio-Economic Review (2019), https://doi.org/10.1093/ser/mwz025; and Joe Soss, Richard C. Fording, and Sanford F. Schram, Disciplining the Poor: Neoliberal Paternalism and the Persistent Power of Race (Chicago: University of Chicago Press, 2011).
  • 18Jamila Michener, Fragmented Democracy: Medicaid, Federalism, and Unequal Politics (New York: Cambridge University Press, 2018).
  • 19Suzanne Mettler, Soldiers to Citizens: The GI Bill and the Making of the Greatest Generation (New York: Oxford University Press, 1998); Michener, Fragmented Democracy; and Joe Soss, Unwanted Claims: The Politics of Participation in the U.S. Welfare System (Ann Arbor: University of Michigan Press, 2000).
  • 20Francine D. Blau and Andrea H. Beller, 鈥淏lack-White Earnings over the 1970s and 1980s: Gender Differences in Trends,鈥 The Review of Economics and Statistics 74 (2) (1992): 276鈥286; Irene Browne, 鈥淥pportunities Lost? Race, Industrial Restructuring, and Employment among Young Women Heading Households,鈥 Social Forces 78 (3) (2000): 907鈥929; Harry J. Holzer, What Employers Want: Job Prospects for Less-Educated Workers (New York: Russell Sage Foundation, 1996); Chinhui Juhn, Kevin M. Murphy, and Brooks Pierce, 鈥淲age Inequality and the Rise in Returns to Skill,鈥 Journal of Political Economy 101 (3) (1993): 410鈥442; and Lawrence F. Katz and Kevin M. Murphy, 鈥淐hanges in Relative Wages, 1963鈥87: Supply and Demand Factors,鈥 QuarterlyJournal of Economics 107 (1) (1992): 35鈥78.
  • 21Irene Browne, Latinas and African American Women at Work: Race, Gender, and Economic In颅equality (New York: Russell Sage Foundation, 2000).
  • 22Francine D. Blau and Lawrence M. Kahn, 鈥淪wimming Upstream: Trends in the Gender Wage Differential in the 1980s,鈥 Journal of Labor Economics 15 (1) (1997): 1鈥42; Mary Corcoran, 鈥淭he Economic Progress of African American Women,鈥 in Latinas and African American Women at Work, ed. Browne, 35鈥60; and Diana Furchtgott-Roth and Christine Stolba, Women鈥檚 Figures: The Economic Progress of Women in America (Washington, D.C.: AEI Press, 1996).
  • 23Andrew Sum and Ishwar Khatiwada, 鈥淭he Nation鈥檚 Underemployed in the 鈥楪reat Recession鈥 of 2007鈥09,鈥 Monthly Labor Review 133(11) (2010): 3鈥15.
  • 24Chandra Childers and Gladys McLean, 鈥淏lack and Hispanic Women Lag in Recovering from the Recession鈥 (Washington, D.C.: Institute for Women鈥檚 Policy Research, 2017).
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  • 33Attempting to measure how individual-level policy benefits affect individual-level economic outcomes using cross sectional data is not optimal. Such a setup is flawed (in part) because it necessitates that our independent and dependent variables are difficult to disentangle. Economic status is part of what determines whether one can get access to social policies, so measuring how said policies affect economic status at the individual level would conflate the right- and left-hand sides of our regression models. Our alternative, using state-level policies as the main independent variables, does not exempt us from such concerns, but it helps. The distinction between our outcomes and predictors is more marked when we measure policies at the state level, since this shifts us from assessing how receiving SNAP, Medicaid, or other policies affect economic status for an individual to examining how varying state investments in those policies shape outcomes differentially for individual women.
  • 34Michael R. Carter and Christopher B. Barrett, 鈥淭he Economics of Poverty Traps and Persistent Poverty: An Asset-Based Approach,鈥 The Journal of Development Studies 42 (2) (2006): 178鈥199; and Emily Pressler, Cybele Raver, and Michael D. Masucci, 鈥淚ncreasing Low-Income Mothers鈥 Educational Attainment: Implications for Anti-Poverty Programs and Policy,鈥 Journal of Applied Research on Children 7 (1) (2016): 1鈥26.
  • 35Sarah Flood, Miriam King, Steven Ruggles, and J. Robert Warren, Integrated Public Use Microdata Series, Current Population Survey, Version 4.0 [machine-readable database] (Minneapolis: University of Minnesota, 2015).
  • 36An individual was considered 鈥渘on-Hispanic white鈥 if they did not report Hispanic ethnicity and indicated being White only, not in combination with any other race group. Anyone who self-identified as Hispanic but did not identify as White was considered Hispanic. Individuals categorized as Black were those who identified as Black only. Mixed-raced individuals, though important, were not included in the analyses.
  • 37Marty P. Jordan and Matt Grossmann, The Correlates of State Policy Project v.2.1 (East Lansing, Mich.: Institute for Public Policy and Social Research, 2017).
  • 38We selected individual-level (level 1) controls that were important aspects of determining women鈥檚 economic position and state-level (level 2) controls that were related to states鈥 level of need (poverty) and to their general economic capacity (general expenditures).
  • 39Multilevel modeling is appropriate given the nested structure of the state (individuals within states). For more on this, see Stephen Raudenbush and Anthony S. Byrk, Hierarchical Linear Models: Applications and Data Analysis Methods (New York: Sage Publications, 2002).
  • 40These estimates represent statistical correlations between a range of variables (listed on the left side of the table) and women鈥檚 economic position (across the indicated racial groups). Each correlation is an estimate of a single variable鈥檚 relationship to women鈥檚 economic position (while holding the other variables constant).
  • 41Marginal correlations indicate a significance level of p<0.1.