speeches · August 9, 1994
Speech
Alan Greenspan · Chair
For release on delivery
10 00 A M . E D T
August 10. 1994
Statement by
Alan Greenspan
Chairman, Board of Governors of the Federal Reserve System
Before the
Commerce, Consumer, and Monetary Affairs Subcommittee
of the
Committee on Government Operations
U S House of Representatives
August 10, 1994
I thank the committee for this opportunity to
reflect on some broader aspects of monetary policy making
As requested, I intend to examine the role of forecasting
and the use of economic statistics in making monetary
policy
There has never been a time when economic
understanding was all encompassing, activity was measured
with unerring precision, and forecasting was flawless The
critical question facing the current generation of policy
makers--and that appears to have motivated this hearing--is
Has the pace of technology, which has substantially
integrated world economies and brought many new products to
market, significantly impaired our understanding of how the
economic system works, how available data relate to the true
economy, and how policy should be implemented7
Forecasting and Policy Making
Economists have always struggled to understand the
effects of innovations in behavior, instruments, and
institutions Many analysts, despairing of reaching a
usable understanding, have endeavored to substitute a "rule"
for monetary policy to eliminate a need to analyze or to
forecast economic developments What has become
increasingly clear is that no simple guide would enable us
to put monetary policy on automatic pilot In principle,
such a rule might be relied upon more readily if there were
only one ultimate policy objective, as would be the case if
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price stability were mandated However, in this country,
the Federal Reserve Act specifies multiple objectives for
monetary policy Some analysts, even in the case of these
multiple objectives, have advocated that the use of a single
variable as an intermediate target would eliminate the need
to forecast and enable monetary policy makers to follow
automatically only one policy guide in their effort to
stabilize the economy But implicit in the use of any such
potential target is the presumption that the past
relationship of the variable to the economy would continue
to hold, and that, itself, is a forecast
The forecasting records of some of those proposed
variables--including the financial aggregates Ml, M2, and
domestic nonfinancial debt--strongly suggest that following
a rule involving just one target would be inadequate to
steer the U S economy Even more complex rules, involving
multiple policy guides or automatic feedback from economic
outcomes, would be insufficiently responsive to changing
economic structures For monetary policy purposes, there
appears to be no recourse but to form a conceptual framework
that identifies the various important forces influencing the
future course of the economy and, hence, can be used in
forecasting. In that process, money and credit aggregates
play a substantial role and have proved over the years to be
useful in framing the relevant conceptual understanding of
the way that the American economy functions
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In their efforts to understand the economy,
analysts have tried to take advantage of new technology,
including the manifold increase in computing power
Econometricians have devised complicated mathematical models
that purport to describe relationships within the American
economy While these models serve many useful purposes, no
matter how elaborate they may be, they are generally too
simple to capture the evolving complexities of our economy
History teaches us that the underlying structure of the
economy is in a continuing state of flux, current estimates
of key parameters describing the basic relationships are
based on past experience and need to be viewed skeptically
when making policy for the future As a consequence,
alternative approaches to inferring the evolving structure
of the economy are required
The appropriateness of monetary policy will depend
on how successful we are in understanding the complex forces
that are currently driving the economy In the process of
reaching such an understanding, we do not rely on a single,
point forecast of economic activity Instead, recognizing
the uncertainty around any given forecast, we endeavor to
look at a range of forecasts and to form judgments of their
relative probabilities Based on those judgments, we
implement policy to meet national economic objectives But
we also recognize the inevitability of errors in forecasts
Policy making requires an assessment of the consequences of
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various policy alternatives should they prove to be wrong
We must ask ourselves How difficult would it be to reverse
policy mistakes and at what cost7
Measurement and Policy Making
When forming an assessment of the economy's
structure, we have to recognize that the economic outcomes
of human decision making-- spending, production, asset
holdings, and prices--are measured imperfectly, adding noise
and, in some instances, systematic biases to reported
statistics. From the viewpoint of an analyst, such as
myself, who has spent much of his career closely tracking
the regular cycle of economic releases, the list of
shortcomings in U S economic data is depressingly long
There are biases in aggregate price indexes, incomplete
reporting of international transactions, a significant
amount of mere interpolation in the service portion of our
national income accounts, uneven coverage of the financial
accounts of households and firms, and unreported economic
activity
Breakthroughs in computing hardware, software, and
communication technologies may allow data collection to be
more precise, but these and other innovations make the
economy more difficult to measure This results, in large
part, because output of goods and services is increasingly
becoming more conceptual than physical over time The part
of the real value of output which reflects ideas rather than
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bulk has increased immeasurably this century As a
consequence, the units of output have become ever more
difficult to identify One ton of 99 7 percent pure
aluminum is fairly well defined with respect to quantity and
quality A computer program is not Clearly, unless output
is unambiguously defined, the concept of price is vague
Moreover, the conceptualization of output is one of the
factors that has been associated with substantial increases
in the quality of goods and services Measurement of the
extent of that improvement, quite obviously, is problematic,
and. in turn, has critical implications for aggregate price
indexes Any imprecision in those calculations of prices
translates directly into uncertainty in the real values of
output and productivity
There are many hopeful signs that improvements m
technology and advances in the practice of measurement are
being reflected in improved economic statistics For
example, the development of the Employment Cost Index by the
Bureau of Labor Statistics has added importantly to our
understanding of trends in labor costs The BLS has also
been able to raise significantly the response rate for the
first estimate of monthly employment in its establishment
survey, thereby improving noticeably the quality of that
timely indicator of economic activity Similarly, the
development of hedonic estimates of price change for
computing equipment by the Bureau of Economic Analysis has
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paid off in a better understanding of trends in real
investment spending and inflation Nonetheless, as I shall
discuss later, more work needs to be done
The Conduct of Policy
Recognizing that economic understanding is
imperfect and measurement is imprecise is not a reason to
despair about conducting monetary policy Imprecision in
published data on the macroeconomy does not pose a crippling
hardship When there is systematic bias in reported
statistics, we can take that into account as well For
example, most price indexes tend to overstate inflation
They generally lag behind in recognizing shifts toward
lower-cost retailers, they are also slow to incorporate new
goods and, thus, miss the typical price declines that are
posted in the earliest phase of the product cycle
We are careful to recognize that information on the
state of the economy comes from a variety of sources of
varying degrees of accuracy Some data provide full
coverage and are quite accurate, such as motor vehicle
assemblies and sales Other data, such as estimates of U S
currency held abroad, are subject to considerable error
Often before statistics from systematic samples on sales,
employment, and prices are available, less accurate, so-
called anecdotal information can be quite useful as a
preliminary indicator of emerging trends One important
source of such information is the reports that are received
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frotn our Reserve Banks through their extensive contacts in
their communities In addition, we frequently tap trade
groups and advisory councils for timely indications of what
is going on out in the field Such detailed readings of
firm behavior are important, for example, in indicating when
inflation pressures are beginning to mount
The historical record shows that higher price
inflation tends to surface only as the business cycle
matures Thus, by the time that aggregate price indexes
reveal that inflation is on the upswing, many imbalances
that are costly to rectify have developed already Hence,
information on firm behavior and signals from financial and
commodity markets may warn about the development or easing
of bottlenecks sooner than highly aggregative readings on
unemployment, national income, prices, or the traditional
monetary aggregates
On balance, imprecision in the measurement of key
economic magnitudes does complicate the job of policy
making, Making inferences about the future is always harder
when readings on the economy are contaminated by measurement
error However, because of our ability to consult a variety
of sources, the adverse effects of such mismeasurement are
kept to a minimum I am not aware that forecasting the
American economy is currently any more difficult or, for
that matter, any easier that it was, say, several decades
ago
Course of Action
When considering steps to improve the measurement
and interpretation of economic statistics, we must recognize
that there are budget constraints The staff at the various
agencies responsible for gathering and interpreting economic
statistics are working hard and are making progress within
those constraints I can think of no better area for
additional research than in the construction of price
indexes, in part because of the widespread extent of
indexation in the federal government's accounts Given the
considerable body of research indicating that systematic
biases may exist in measurement of price change in the
Consumer Price Index, it will be an important task of staff
at the BLS to address this problem in coming years
Another step to enhance data interpretation is to
process information from futures, forward, and options
markets intensively Derivatives markets potentially
provide central banks with new opportunities to gauge market
sentiment as to the future movements of a variety of
interest rates, equity prices, foreign exchange rates, and
commodity prices and to measure the strength of those market
convictions Moreover, financial innovation holds the
promise of opening new windows on economic behavior,
particularly should markets develop in price-indexed debt or
in futures on such items as home prices, GDP, and the
components of spending As to futures markets, we must
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await the ingenuity of private parties in the financial
sector As to indexed debt, the Treasury could issue
obligations that have interest and principal payments
related to consumer prices
Conclusion
Having reflected on forecasting and economic
statistics in the conduct of monetary policy, I remain
confident in just one prediction Future Fed chairmen will
tell your successors on this panel that economic forecasting
is still uncertain and that the consequences of monetary
policy vary over time. The U.S economy is complex and
evolving Keeping pace with that change will require our
continuing efforts to understand how the economy works and
to adapt our data-gathering procedures accordingly
Cite this document
APA
Alan Greenspan (1994, August 9). Speech. Speeches, Federal Reserve. https://whenthefedspeaks.com/doc/speech_19940810_greenspan
BibTeX
@misc{wtfs_speech_19940810_greenspan,
author = {Alan Greenspan},
title = {Speech},
year = {1994},
month = {Aug},
howpublished = {Speeches, Federal Reserve},
url = {https://whenthefedspeaks.com/doc/speech_19940810_greenspan},
note = {Retrieved via When the Fed Speaks corpus}
}