speeches · March 27, 2003
Speech
Alan Greenspan · Chair
For release on delivery
1 p.m. EST
March 28, 2003
Remarks by
Alan Greenspan
Chairman
Board of Governors of the Federal Reserve System
at the
Federal Reserve System's Community Affairs Research Conference
Seeds of Growth
Sustainable Community Development:
What Works, What Doesn't and Why
Washington, D.C.
March 28, 2002
It is a pleasure to join this group of dedicated researchers, bankers, community leaders,
and policymakers interested in the worthwhile and challenging process of program assessment.
Meaningful program review can be achieved only through measurement and critical analysis.
Systematic research of community economic development programs has been limited.
Accordingly, your challenge is to vastly expand the information base.
Measuring the Impact of Community Economic Development Programs
The overarching objective of community economic development and empowerment is to
help underserved populations accumulate assets and improve their economic well-being.
Measuring the results of programs dedicated to such goals is essential to maximizing the impact
of these programs and managing scarce resources. Meeting the goals, particularly in areas and
among populations where biases and negative perceptions may have contributed to market
failures, helps people improve their financial standing, regardless of their current economic
status.
For nearly four decades, numerous policies and programs have been implemented with
the intent of increasing economic opportunity. They have used a variety of management and
funding strategies, ranging from federal government appropriations to debt and equity financing
from private sources. Nevertheless, despite the broad spectrum of programs, the length of time
they have been in place, and the array of funding participants, empirical research quantifying
their impact is rare, regardless of whether government agencies, nonprofit organizations, or
private entities sponsor the programs. The lack of measurement is particularly regrettable for
government-sponsored programs, because quantifying their impact is crucial to the legislative
process.
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When a bill is proposed in Congress, the nature of the problem and the factors presumed
to be contributing to that problem typically are explicitly stated. And generally there is a
projection of the outcomes that would indicate success. This process of problem diagnosis,
program justification, and projection of results, if fully embraced, provides a cost-benefit
structure for assessing a program's value. The program can be judged worthwhile when the data
demonstrate that the benefits exceed the costs, including the opportunity costs of any investment.
Even with such a framework, conducting research on community development and
economic empowerment programs can be challenging, in part because the effects these programs
intend to achieve are often quite difficult to measure and may not become apparent for relatively
long periods of time. Initiatives aimed at complex economic and social challenges that were
decades in the making require, more than likely, many years to achieve their goals. Unlike the
standards for macroeconomic performance, virtually no specifically defined standards exist for
monitoring the value of social and economic improvement programs.
For community development researchers, the challenge is to develop parameters that can
be used to objectively assess the value of their programs. For example, the measures that
affordable housing organizations use could illustrate the extent to which their programs have, or
have not, increased homeownership rates and property values, reduced crime, improved school
performance, or spurred new private-sector investment in a disadvantaged neighborhood.
Effective research must isolate the variables that best convey the impact of a program,
define the specific data that must be collected, and develop a system for maintaining and
retrieving the data over time. In other words, the challenge is to quantify the marginal effect of a
program. The value of such a system is clear. So too, however, is the complexity of creating it.
Consider, for example, the difficulty of measuring the marginal impact of a financial education
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program. It requires unique data collection techniques and unconventional tracking systems to
gauge the benefit to an individual derived from making informed financial decisions that resulted
from that educational program.
Socioeconomic Trends in Central Cities
The relative paucity of data and research on community development programs has
limited the ability to fully demonstrate their impact and credibly differentiate those that are
successful from those that are ineffective. Undeniably, impressive local community
development initiatives have been undertaken, and individual testimonials reveal advances in the
economic well-being of many of the beneficiaries. However, the absence of formal data
collection and research for the numerous neighborhood revitalization efforts over the past several
decades has resulted in a reliance on mostly anecdotal reporting at a neighborhood or individual
level. Anecdotal information is not without value. It offers clues to the construction of a more
formal statistical analysis. But, as I am sure all of you have experienced, anecdotes can be
selective and can convey a false message of the success or failure of a community development
program.
Given the lack of data demonstrating outcomes from new initiatives, the inclination is to
examine existing data to identify trends in areas where community development organizations
have been a consistent presence for some time. One hopes that broad positive trends that cannot
be understood fully from conventional market forces will suggest the possibility of community
development being at least a partial explanation of these trends. Since most community
development initiatives focus on urban areas, data on socioeconomic trends in central cities may
offer some insight into the influence of local economic and social programs. For example,
Census statistics compiled for the State of the Cities database of the Department of Housing and
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Urban Development (HUD) show that increases in the rates of change in homeownership in
central cities slightly exceeded the increases in suburban communities between 1970 and 2000.
The Federal Reserve Board's 2001 Survey of Consumer Finances concluded that between
1998 and 2001, families in the lowest quintile of the income distribution increased their rate of
homeownership nearly 5 percent, saw their median income grow more than 14 percent, and
realized a 25 percent gain in their median net worth.
Although these gains in homeownership rates in central cities and the economic progress
of lower-income families are encouraging, other data covering a longer time frame are less
sanguine. In particular, HUD's State of the Cities database indicates that residents in central
cities barely increased their real median family income between 1969 and 1999, while families in
suburban communities did appreciably better. In addition, the poverty rate in central cities,
according to this database, increased 23 percent during this thirty-year period, while it decreased
7 percent in suburban areas.
These seemingly contradictory data undermine efforts to plan an appropriate course of
action. The absence of credible data clearly renders researchers unable to attribute the gains to a
particular program or the continued challenges to a particular failure.
In weighing the implications of recent trends in data, it is important to factor in the
presence of changes in external market influences. For example, advances in mortgage
underwriting and delivery systems have resulted in increased availability of funding for
homeownership. Community development investors' funding strategies have also changed
considerably over this thirty-year span.
At the Federal Reserve, economists strive to identify the appropriate variables for
assessing the impact of regulations, in particular the Community Reinvestment Act (CRA). In
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addition to the research presented at this conference, Federal Reserve economists have
undertaken studies to assess whether the CRA causes banks to provide a mortgage subsidy and to
determine the performance and profitability of CRA-eligible loans. But the lack of broad data
management systems to identify and track the performance and profitability of most CRA-
eligible loans presents researchers with a challenge, as does the need to focus on changes that
can truly be attributed to the CRA, rather than to changing market forces.
Information Gains in Community Development
While empirical research on specific community development programs is limited,
insights nonetheless have been gained from experience over the past several decades. Many
community development corporations (CDCs) have modified their strategies and their structures
accordingly. Most notably, CDCs have realized the necessity of diversifying their funding
sources and reducing their reliance on government funding, which is vulnerable to the vagaries
of shifting political priorities. In seeking to ensure continued financial support for their
programs, community development leaders have expanded their range of financing and, in the
process, have gained a better understanding of the risk tolerance and return requirements of their
various capital providers.
In addition to diversifying funding sources, community developers have also sought to
broaden their financing strategies. They once viewed debt as the primary, if not the sole, vehicle
available for capitalizing community development efforts, but now recognize the vital role of
equity investment in helping communities withstand economic downturns. New sources of
equity—community development venture capital funds and secondary markets that securitize
community development loan pools-have become available to energize market forces in
economically distressed neighborhoods.
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Advances in technology have significantly improved the identification and development
of new financing strategies. With increased information-processing capacity, loan portfolio
managers can better assess risk and monitor credit performance. Additionally, the ever-
increasing availability of data facilitates the development of neighborhood profiles that can be
useful in understanding and tracking community socioeconomic trends. For example, the cross-
referencing of data sets on mortgage lending patterns, business start-ups, and employment
figures against crime statistics and property values can provide a valuable perspective.
Benefits of Research
Many valuable lessons have been learned in community development over the years.
And the dissemination and application of such lessons as they emerge are essential to improving
program effectiveness. Formal research can accelerate the rate of such learning. Only through a
comprehensive understanding of the outcomes of a program can success be emulated and failures
reduced.
By consistently and reliably measuring outcomes, and thus helping current and
prospective investors better assess their risks and predict their returns, community development
organizations can attract more funding. Such accountability is crucial for any organization,
regardless of its size.
In addition to increasing funding options, research can also increase the scope and scale
of programs. As effective strategies are identified, they can be replicated and incorporated into
efforts in other communities, as well as by organizations seeking to develop programs to address
related issues.
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The Process of Measuring Outcomes
As I noted earlier, it is important to establish formal procedures for program assessment.
At the start of a program, the nature of the problem should be identified, as well as the
presumptions of the various causes of that problem. With a clearer understanding of the issues,
policymakers and community leaders are better able to devise a strategy for overcoming the
problem. Finally, a well-constructed program must include a projection of its benefits to serve as
a benchmark for later evaluation.
In conclusion, I want to emphasize the importance of the role of the interpreter of the
research. Analysts must be scrupulously honest in characterizing research results, or their work
becomes advocacy and is no longer research. This objectivity is paramount because research
findings from previous efforts become the basis for subsequently targeting scarce resources to
their highest and best use. Such objectivity requires great discipline and integrity on the part of
the researcher; it requires that researchers resist any innate desire to characterize results in the
most, or least, favorable light possible. An understanding of the findings, positive or negative, is
the greatest contribution of research. The failure of a program is not a research failure; it is a
source of information. And acknowledgement of unadulterated research findings, regardless of
how disappointing, contributes to a foundation of knowledge upon which future successes can be
built. I often say at the end of a day that I learned a great deal. Unfortunately, most of what I
learned was that what I thought I knew at the beginning of the day was false.
In the quest to do good for our society's most vulnerable populations and communities-
the objective compelling the work of this group—we must embrace the challenge to develop
objective and quantifiable standards to assess community development programs. Ultimately,
such research is the only means for determining whether we are making advances in overcoming
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failures in distressed neighborhoods and improving access to economic opportunities for
traditionally underserved populations. I applaud your efforts and look forward to learning of
your future progress.
Cite this document
APA
Alan Greenspan (2003, March 27). Speech. Speeches, Federal Reserve. https://whenthefedspeaks.com/doc/speech_20030328_greenspan
BibTeX
@misc{wtfs_speech_20030328_greenspan,
author = {Alan Greenspan},
title = {Speech},
year = {2003},
month = {Mar},
howpublished = {Speeches, Federal Reserve},
url = {https://whenthefedspeaks.com/doc/speech_20030328_greenspan},
note = {Retrieved via When the Fed Speaks corpus}
}