Title: Selected Demographics
1Access to Opportunity in the Twin Cities
Metropolitan Area-Myron Orfield-
2Overall Growth Patterns
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10Poverty and Race
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16- Minneapolis Schools
- Segregation by race and income has intensified in
City schools
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32- Similar patterns are apparent
- in many inner-ring suburbs
- Northwest Suburbs
- Race and Ethnicity
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44Northwest SuburbsFree Lunch Eligibility
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54Southwest SuburbsRace and Ethnicity
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66Southwest Suburbs Free Lunch Eligibility
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76How Does This Happen?
- Pervasive Housing Discrimination
- Steering
- Discrimination in sales and rentals
- Mortgage discrimination
- Consequences
- Whites steered away
- Housing prices suffer and residents lose home
equity the main source of wealth for
middle-class households - Poor move in
- Schools lose income and racial diversity
- Process perpetuates itself
77How Does This Happen?
- The Association between racial segregation of
African American students and poverty intensified
during the 1990s in the Twin Cities Metropolitan
Area - In 1992, 55 of students in predominantly Black
schools were eligible for the free lunch program - By 2002, the percentage had grown to 73
- Free lunch eligibility rates declined in all
other school types (predominantly White,
White/Hispanic integrated, White/Black
integrated, White/Other integrated and
Multi-ethnic - In 2002, 53 of Black students went to elementary
schools with free lunch eligibility rates greater
than 40, compared to 5 for White students
78How Does This Happen?
- Public Programs
- Low-Income Housing Tax Credits
- Section 8 Housing Vouchers
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83How Does This Happen?
- Decisions by School Districts
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85What Can We Do?
- Work as a region to integrate our schools and
neighborhoods - Segregation in schools and neighborhoods are
closely related. - Guaranteed access to integrated schools helps
neighborhoods to remain integrated.
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89Fiscal Capacity and Fiscal Stress
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94Fiscal Inequality and the Fiscal Disparities
Program
- Despite the fact that fragmentation correlates
with fiscal inequality, the Twin Cities metro
compares relatively well to other regions,
ranking 6th best - Its Gini coefficient is 35 lower than predicted
by its fragmentation rate, largely as the result
of the Fiscal Disparities Program - But we could do better. Portland, which has no
tax base sharing program has a Gini 50 lower
than predicted
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97 The Fiscal Disparities Program currently
reduces inequality (measured by the Gini
coefficient) in the 7-county area by about 20.
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99- Adding the collar counties a low tax capacity
part of the region to the program would further
reduce inequality. - If the collar counties were part of Fiscal
Disparities - 78 of 88 collar county municipalities would be
net beneficiaries and the typical net increase in
tax base would be 11 percent - 80 percent of collar county population is in
these municipalities
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101Community Classification
- Grouped all of the municipalities in the
11-county metropolitan area by - Tax Capacity per household
- Jobs per household
- Poverty rate
- Household growth from 1993 to 2003
- Household density
- Median age of housing
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104Access to Growing Job Centersin the Suburbs
105- Important trends in the Twin Cities affecting
access to jobs for minority and low-income
populations - Continuing decentralization of jobs and
population - Increasing traffic congestion, especially in
suburban areas where jobs are growing most
quickly - Lack of affordable housing in highest-opportunity
parts of the region
106Twin Cities Job Centers
- Defined as contiguous Traffic Analysis Zones
(TAZs) with greater than average numbers of jobs
per square mile. Large job agglomerations like
those in the centers of Minneapolis and St. Paul
were divided into components based on job
densities. - This yielded 41 employment centers. (See map and
table following two pages.) - Job centers are scattered across the region but
are more likely to be in the western and
southwestern parts of the region. They range in
size from 140,000 to 1,100 jobs in 2000.
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109Job Growth and Race of Workers by Type of Job
Center
- Employment centers were grouped into five
categories Central Business Districts Other
Central City Centers Inner Suburbs Middle
Suburbs and Outer Suburbs - In 2000, 24 of regional jobs were in the two
central city categories, down from 28 in 1990.
The share of jobs in the 3 suburban categories
was 28 in both years. The share outside of job
centers increased from 45 to 48. - Job center growth rates increased with distance
from the core of the region and the number of
jobs outside of job centers grew more quickly
than in any of the job center categories except
outer suburbs. Jobs were decentralizing and
becoming more diffused.
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112Race of Workers by Type of Job Center
- In 2000, Black workers were far more likely to
work in the central cities than other population
groups 40 of Blacks worked in the 2 central
city categories compared to 23 for Whites, 29
for Hispanics and 32 for other races. - Black workers were less likely than any other
group to work in middle suburb job centers, outer
suburb job centers or areas outside of job
centers the types of job centers that were
growing most rapidly.
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114Commuter-shed Analysis
- Journey-to-work data compiled at the Traffic
Analysis Zone (TAZ) level by the 1990 and 2000
Census Transportation Planning Packages was used
to analyze commuting patterns into the 22 largest
job centers. - Data for travel time from every TAZ to every
other TAZ was used to derive the areas around
each job center representing 0-20 minute, 20-30
minute, 30-40 minute and gt 40 minute commutes
into the centers. - The characteristics of the population residing
within each type of commuter shed were derived by
overlaying the commuter-sheds on 2000 Census data.
115Commuter-shed Analysis General Patterns
- The farther the job center is from the core of
the region, the less accessible the center is to
affordable housing, lower income people and
people of color. (Affordable housing rates are
highest closest to the Minneapolis CBD and the
University of Minnesota center and in the 30-40
minute commuting zone in Eden Prairie. - Commuting zones are larger for suburban centers
than urban centers in both years, reflecting
greater congestion in the core.
116Commuter-shed Analysis General Patterns
- Commuter-sheds shrunk during the 1990s
everywhere, reflecting growing traffic
congestion. Prior work showed that commuter-sheds
increased in size during the 1980s when
congestion levels were significantly lower. - Commuter-shed shrinkage was proportionately
greater in suburban job centers. Commuter-sheds
were much more similar (urban versus suburban) in
2000 than in 1990. The implication is that
congestion increased more rapidly in the suburbs,
making access from the core more difficult. - Two examples that illustrate these general
patterns are shown on the following pages the
Minneapolis CBD and the Eden Prairie job center
(a high income middle suburb).
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