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The Rising Residential Concentration of Joblessness in Urban America: 1980 to 2000

The Rising Residential Concentration of Joblessness in Urban America: 1980 to 2000. Christopher H. Wheeler* Federal Reserve Bank of St. Louis July 2007. *The views expressed herein do not represent the official positions of the Federal Reserve Bank of St. Louis or the Federal Reserve System.

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The Rising Residential Concentration of Joblessness in Urban America: 1980 to 2000

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  1. The Rising Residential Concentration of Joblessness in Urban America:1980 to 2000 Christopher H. Wheeler* Federal Reserve Bank of St. Louis July 2007 *The views expressed herein do not represent the official positions of the Federal Reserve Bank of St. Louis or the Federal Reserve System.

  2. Unemployment • Basic economic indicator • Tends to signify whether times are good (expansion) or bad (recession) • Not only varies with the business cycle • At any time, it varies from place to place

  3. Example: April-May 2007

  4. Variation Within Cities • Neighborhoods also tend to vary in terms of the unemployment rates of their residents • Some have virtually no unemployment • Some have extremely high rates

  5. Example: Block Groups, 2000

  6. Some Comments • Not surprising: individuals sort residentially along many dimensions -Income, wealth, race • Decades of research has examined these patterns • Few studies have looked at differences in neighborhood-level unemployment

  7. Q: Why should we care about unemployment differences? A: The characteristics of our neighborhoods, including the unemployment rate, tend to influence the labor market outcomes we experience.

  8. Some Evidence • Peer Effects Case and Katz (1991) show that the prevalence of certain behaviors (e.g. school attendance, employment status) promote similar behavior within neighborhoods

  9. Some Evidence • Social Networks Granovetter (1995) finds that workers locate jobs primarily through personal contacts, many of whom live nearby

  10. Some Evidence • Localized Spillovers Topa (2001) finds evidence that high levels of unemployment in a neighborhood tend to make unemployment more likely in adjacent neighborhoods

  11. Implication • Individuals in neighborhoods with a high incidence of unemployment may find it extremely difficult to find work • Few networks • Negative peer effects • Negative views held by employers about individuals from certain neighborhoods

  12. An Additional Concern ▪ The extent to which unemployment is concentrated residentially has risen in recent decades

  13. Evidence, 1980-2000 • 361 U.S. metropolitan areas • Approximately 166,000 block groups • Data from Decennial U.S. Census • Compiled by GeoLytics – consistent geographic definitions across all years

  14. Evidence, 1980-2000 • Unemployment rate of median unemployedworker’s neighborhood 1980: 7.5% (U.S. rate = 6.9%) 2000: 7.9% (U.S. rate = 5.9%)

  15. Evidence, 1980-2000 • 90th percentile of distribution of block group unemployment 1980: 11% (U.S. rate = 6.9%) 2000: 12.5% (U.S. rate = 5.9%) • 10th percentile of distribution of block group unemployment 1980: 3.7% (U.S. rate = 6.9%) 2000: 1.3% (U.S. rate = 5.9%)

  16. Figure 1: Neighborhood Unemployment Percentiles 0.14 0.12 0.1 p90 0.08 p50 p10 0.06 0.04 0.02 0 1980 1990 2000 Year

  17. Evidence, 1980-2000 • Difference between 90th percentile and the 10th percentile 1980: 7.3 percentage points 2000: 11.2 percentage points

  18. Alternative Measure of Unemployment Concentration • Index of Dissimilarity • Ranges between 0 and 1 • Commonly interpreted as fraction of unemployed that must be relocated across neighborhoods for the unemployed to be evenly distributed across a metro area

  19. Evidence, 1980-2000 • Index of Dissimilarity - Average across 361 metro areas 1980: 0.18 1990: 0.27 2000: 0.31

  20. Local Trends: Little Rock

  21. Local Trends: Louisville

  22. Local Trends: Memphis

  23. Local Trends: St. Louis

  24. Q: Why have we seen this trend?

  25. Correlates of Neighborhood Unemployment • Exercise: attempt to identify some features of high- and low- unemployment neighborhoods • Characteristics: income, demographics, commuting time, educational attainment, industry of employment

  26. Analytical Method • Regression of block group unemployment rate on block group characteristics • Pooled sample: 1980, 1990, 2000 • Account for time trends • Account for metropolitan area-specific effects

  27. Results

  28. Results

  29. Results

  30. Results

  31. Results

  32. Selected Characteristics, Little Rock

  33. Selected Characteristics, Little Rock

  34. Selected Characteristics, Louisville

  35. Selected Characteristics, Louisville

  36. Selected Characteristics, Memphis

  37. Selected Characteristics, Memphis

  38. Selected Characteristics, St. Louis

  39. Selected Characteristics, St. Louis

  40. Theories of Rising Unemployment Concentration (1) Urban decentralization (sprawl) (2) Changing industrial structure and unionization (3) Rising segregation by income and education

  41. Urban Decentralization • As people and jobs spread out from city centers to suburban areas, some are left without access to work • Spatial Mismatch • Some reasons: transportation, networking, negative stereotypes

  42. Preliminary Evidence ♦Statistical analysis shows some indication that longer commutes (30 + minutes) are positively associated with unemployment

  43. Industrial Structure and Unionization • Makeup of U.S. economy has changed • Decline in manufacturing, rise in services • Drop of union activity • Employment opportunities for some have decreased more than for others • If these people live in different neighborhoods, residential differences in unemployment may be the result of these economic shifts

  44. Preliminary Evidence ♦Statistical analysis shows some indication that high-unemployment neighborhoods tend to have more manufacturing workers

  45. Segregation by Income and Education • Rising unemployment concentration may reflect changes in where people with different levels of education and income live • College-educated have done very well in last 30 years • They could be moving into ‘exclusive’ areas

  46. Preliminary Evidence ♦Statistical analysis shows strong association between unemployment and both income and education

  47. Analysis of Unemployment Concentration • Regression of concentration in a metro area on its basic characteristics: • Population density • Industrial composition and union activity • Measures of income and education segregation • Other: demographics, overall unemployment, year- and metro area-specific effects

  48. Findings

  49. Findings

  50. Findings

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