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March 2002
Federal Reserve Bank of Dallas
New Economy, New Recession?
Last November, the Business Cycle Dating
Committee of the National Bureau of Economic Research made
an official declaration that the U.S. economy was in recession,
establishing March 2001 as the month when economic activity
peaked. With the Dating Committee’s pronouncement, the longest
economic expansion in a chronology that dates to the mid-1800s
came to an end.
During the 10-year expansion, many economists
recognized a New Economy characterized by a higher sustained
level of productivity growth brought on by new information-sharing
technologies. So what does the New Economy s "new recession"
look like?
Outline
In this presentation, we first
define a recession and examine major indicators of economic
activity used to detect turning points in the business cycle.
Then, we look at longer-term trends and investigate whether
an added degree of resilience and flexibility is evident in
the economy today. We argue that the most recent slowdown
reflects many fundamental changes in the economy and has been
tempered by the productive use of information technologies
that provide decision-makers real-time access to critical
information.
What Is a Recession?
The media’s rule of thumb is that
a recession occurs when GDP falls for at least two consecutive
quarters. By this definition, our economy has not been in
recession since the 1990–91 downturn. But this is not how
recessions are officially defined.
The Business Cycle Dating Committee
of the National Bureau of Economic Research, or NBER, is the
official arbiter of the dates that mark the onset of expansions
and contractions. And they define a recession as " a
significant decline in activity spread across the economy,
lasting more than a few months, visible in industrial production,
employment, real income, and wholesale-retail trade."
This definition makes it clear that
the depth, breadth, and duration of a downturn are key to
determining whether it will be classified as a recession.
Depth of Declines
The blue bars in Figure 1 show
the average depth of decline in each NBER series from its
peak to its trough over the six recessions prior to the most
recent downturn. On the far right of the chart, we also show
the average decline in the Conference Board’s composite Coincident
Index, which is a summary measure of economic activity. The
red bars show declines registered during the current business
cycle.
For each series, the recent decline
is smaller than the historical average decline. In fact, for
each series but one, the recent decline is smaller than every
previous cyclical decline. The exception is industrial production.
Much has been made of the fact that the recent decline in
industrial production is the longest since the Great Depression.
Less remarked upon is the fact that even for this series,
the decline to date is one of the shallowest on record. So,
by any measure, the most recent recession has been mild.
Especially during an era of rapid productivity
growth, it may be more useful to look at cyclical slowdowns
in the economy rather than outright declines in economic activity.
We define an economic slowdown as a period of weak output
growth associated with a rising unemployment rate. Intuitively,
a rising unemployment rate indicates output growth that is
too sluggish to absorb new entrants into the labor force.
It corresponds well to people’s "gut feel" that
the economy is deteriorating.
Slowdowns vs. Recessions
As shown in Figure 2, the unemployment
rate often starts rising before the start of NBER recessions
(the blue shaded bars), and sometimes continues to rise after
their end. Hence slowdowns start earlier and sometimes last
longer than NBER recessions. (See the gray shaded bars on
either side of the blue NBER recession bars.) Note that every
NBER recession is accompanied by a significant increase in
the unemployment rate, and every significant increase in the
unemployment rate has been associated with an NBER recession.
The most recent slowdown unusually
mild
Judging by the unemployment-rate
increase we’ve seen to date, the most recent slowdown is much
milder than previous slowdowns. Figure 3 shows the overall
increase in the quarterly average unemployment rate from its
lowest point to its highest for each slowdown since 1960.
The 1990 slowdown was milder than average, too.
So, what’s different? There have been
only two economic slowdowns over the last 20 years, down from
four slowdowns during the prior 20 years. Moreover, both of
the two most recent slowdown have been milder than average.
The Mildness of Recent Slowdown Reflects
Fundamental Changes
As indicated above, our view is
that the mildness of the recent slowdown reflects a more general
shift toward a less-volatile economy. The application of new
information technologies has contributed to the economy’s
greater stability, and financial deregulation and innovation
have also played roles. While both output volatility and employment
volatility have fallen, employment volatility has fallen less.
That’s because firms are more willing to hire and fire than
before. People have become more flexible, too, in their willingness
to move into and out of the labor force.
A Less Volatile Economy
The blue bars in Figure 4 how the
distribution of quarterly GDP growth rates from 1959 through
1983. For example, the height of the middle bar indicates
that GDP grew at between 2 and 4 percent per year about 20
percent of the time during the 1960s, 1970s, and early 1980s.
The height of the bar on the extreme right indicates that
GDP grew at a rate in excess of 10 percent just over 5 percent
of the time.
As shown by the red bars, the distribution
of GDP growth rates becomes much more concentrated after 1983.
For example, growth rates between 2 and 4 percent are more
than twice as common as before. (The middle red bar is more
than twice as high as the middle blue bar.) In contrast, chances
of seeing a decline in GDP—a growth rate below 0—are
less than half what they once were. More generally, the standard
deviation of GDP growth has fallen by half. Which sectors
are responsible for this reduction in volatility?
The impact of any particular sector
of the economy on GDP volatility depends on three factors.
First, it obviously depends on volatility within the sector.
The demand for toothpaste is more stable than the demand for
machine tools, so the toothpaste-producing sector contributes
less to GDP volatility than does the machine-tool sector.
Second, sector size matters. Variation in the demand for cars
is more important than is variation in the demand for bicycles
because the auto sector accounts for a much larger share of
GDP than does the bicycle sector. Finally, the impact of a
sector on the volatility of GDP depends on the correlation
between sector growth and GDP growth. A sector that is strong
when the rest of the economy is weak will tend to smooth out
fluctuations in the aggregate economy. The more variable is
growth in this sector, the better. On the other hand, variable
growth in a sector where growth is highly positively
correlated with growth in the rest of the economy is strongly
destabilizing.
We can dispose of one popular explanation
for the economy’s greater stability right off the bat. Greater
stability is often attributed to the fact that the service-producing
sector has been increasing in size relative to the volatile
goods and construction sectors. It’s a nice story. It’s consistent
with the general principles we’ve just laid out. Unfortunately,
the shift toward services just hasn’t been large enough to
be of much practical significance for GDP growth.
The blue line in Figure 5 shows a plot
of the actual rate of GDP growth from 1960 through 2001. The
reduction in volatility beginning around 1984 is obvious.
The dashed red line shows what the growth rate of GDP would
have been without a trend toward services. The differences
between the two lines are tiny. The fact is that almost all
of the economy’s increased stability is due to a sharp reduction
in the magnitude of fluctuations within the goods
and construction sectors, and not to a shift toward the production
of services.
Where, precisely, has the GDP volatility
reduction come from? In Figure 6, the bar on the far left
shows the total reduction in GDP growth volatility in percentage
points. The bars on the right show how much of this overall
reduction can be attributed to various components of GDP.
Three GDP components stand out: inventory
investment, consumer durables, and residential investment.
Together, these sectors account for more than 80 percent of
the total reduction in the volatility of GDP growth, with
just over 40 percent coming from inventory investment alone.
Underlying Sources of Improvement
That the residential-investment,
consumer durables, and inventory-investment sectors account
for most of the economy’s greater stability provides clues
about the likely underlying sources of improvement.
It is widely acknowledged that the deregulation
of deposit interest rates—a process that was not completed
until the early 1980s—reduced the sensitivity of residential
construction and consumer lending to swings in market rates.
Credit-card usage, home-equity lending,
and low-cost home refinancing have exploded over the past
20 years. Mortgages and auto loans are increasingly bundled
and turned into marketable securities. Credit-scoring allows
banks to make lending decisions quickly, accurately and cheaply.
These and similar financial innovations have dramatically
improved households’ and businesses’ access to credit, making
it easier for them to maintain spending in the face of job
loss or an unanticipated fall-off in demand.
Finally, firms have adopted improved
inventory control and management systems which have lowered
and stabilized inventory/sales ratios.
With better inventory management, we
ought to have seen goods production become smoother
relative to goods sales. As shown in the left panel
of Figure 7, that’s exactly what’s happened. Before 1984,
production growth was much more volatile than sales growth.
Since 1984, both volatilities have fallen, but the volatility
of production growth has fallen more (indeed, twice as much).
The impact of better inventory management
is especially striking in the durable-goods sector (Figure
7, right panel). Prior to 1984, production growth was nearly
twice as volatile as sales growth. Since 1984, production
and sales volatilities have been about equal. Again, both
volatilities have fallen, but the volatility of production
growth has fallen by three times as much as sales volatility.
Do these stabilizing changes in the
economy have anything to do with the spread of new technologies?
Many of the financial innovations of the 1980s and 1990s would
not have been possible without the large-scale data-management
and information-processing capabilities of the computer. Computers
and computer software are critical components of modern inventory
management as well. Thus, it is probably no coincidence that
the move to a more stable economy in the mid 1980s was preceded
by a wave of IT investment, as shown in Figure 8.
The Rest of the Story
Financial deregulation and technology-enabled
innovations in finance and inventory control are important
parts of the story, but they are not all of the story. For
one thing, food and energy prices have been less variable
since the early 1980s than they were previously. Sudden changes
in these prices disrupt the economy, so the reduction in their
variability may well have contributed to the economy’s better
performance. Work done here at the Dallas Fed suggests that
the economy has become less sensitive to oil prices than it
once was.
Monetary policy was conducted differently
in the 1980s and 1990s, too, with greater emphasis placed
on controlling inflation. As long as food and energy shocks
are small, vigorous inflation fighting makes for more stable
output growth. So the policies pursued by Paul Volcker and
Alan Greenspan have been well suited to the post-1984 economic
environment.
What Else Is Different?
Not only has output growth become
less volatile, how firms respond to a given change
in demand is different from before. Specifically, firms have
become much readier to hire and fire as demand rises and falls.
At the same time, people are showing a greater tendency to
move into or out of the labor force in response to changes
in demand. Hence, one of the distinguishing characteristics
of the U.S. economy—the flexibility of its labor market—has
been enhanced.
When a firm reduces production, it
can cut back on employee workloads by trimming hours per worker
or output per hour, or it can lay people off. The left panel
of Figure 9 shows how a 1- percentage-point reduction in GDP
growth was typically split between cutbacks in growth in productivity,
the work week, and numbers of workers during the years from
1959 through 1983. It says that about 45 percent of the slowdown
in output growth could be attributed to weaker-than- normal
growth in productivity, about 30 percent to cuts in the work
week, and only about 25 percent to weak growth in the number
of workers.
As shown in the right panel of Figure
9, since 1984 firms have relied much more heavily on changes
in the number of workers, and much less heavily on changes
in the work week, to accomplish reductions in the growth rate
of output. Growth in productivity is neither more nor less
closely tied to changes in output growth than previously.
It’s important to note that this figure does not say
that employment growth has become more variable in recent
years, only that employment-growth variability has declined
less than output-growth variability, because of more flexible
hiring and firing.
There’s been a similarly dramatic change
in how households respond to fluctuations in the economy.
As shown in Figure 10, changes in labor-force growth are much
more highly correlated with output growth since 1984 than
they were previously. The correlation coefficient between
movements in these two variables has risen from below 0 to
almost +0.6. This higher correlation means that when times
are bad, a larger fraction of laid-off workers don’t look
for alternative employment. When times are good, an expanding
labor force allows above-trend employment growth to continue
longer before the symptoms of a tight labor market emerge.
We don’t know the whys and wherefores
of this change in household behavior. Growth in the number
of two-earner families, or in the number of workers close
to retirement age, might be partly responsible.
Does the Most Recent Slowdown Measure
Up?
We’ve established that the economy
changed in important ways beginning in the mid 1980s. Now,
we’ll look at how well the most recent economic slowdown matches
the new patterns. Recall that for us a "slowdown"
is a period of below-trend output growth as signaled by a
rising unemployment rate.[1] Every significant slowdown has
been associated with an outright NBER recession, but slowdowns
often start a little earlier and sometimes last substantially
longer than recessions.
Pattern Matching
If the economy is really less volatile
than before, the recent slowdown ought to have been relatively
mild. Was it? The answer to this question is "yes"
judging by the small increase in the unemployment rate that
we’ve seen to date. GDP growth has held up unusually well,
too.
Did firms shed workers rapidly during
the slowdown? "Yes" again. Employment growth has
been weaker than was typical during past slowdowns.
Did worker productivity hold up well?
Yes. GDP per worker has increased faster during this slowdown
than during any other since 1959.
Did growth in labor-force participation
weaken? Yes, it not only weakened, it dropped, and dropped
by more than during any previous economic slowdown.
Did consumer durables purchases and
residential investment hold up well? "Yes" and "yes"
again. Both performed better than during any previous slowdown.
Finally, what of inventory investment?
Is there any evidence of better inventory controls during
the recent slowdown? Here we have a "yes, but."
Yes, the drag on the economy from inventory investment was
less than the average drag during the slowdowns of the 1960s,
70s, and 80s. Nevertheless, inventory draw downs were a major
source of weakness—much more so than during 1990.
Other Sources of Weakness in the Recent
Slowdown
Besides inventory investment, the
major drag on the economy during the recent slowdown came from
investment in equipment and software. As shown in Figure 11,
this type of investment subtracted 8 tenths of a percentage
point from GDP growth during 2001—one of the larger negative
contributions ever made by this sector.
Within equipment and software investment, IT investment
had an especially large impact on GDP growth during the recent
slowdown. Thus, as shown by the blue line in Figure 12, IT
investment added almost a full percentage point to GDP growth
during 2000 only to subtract half a percentage point from
GDP growth during 2001. The 1½ -percentage-point swing in
IT’s growth contribution accounts for over half of the slowdown
in GDP growth.
The red line in Figure 12 shows what
IT’s growth contribution would have been, had the IT sector
remained constant in size. Note that according to the red
line, the recent IT downturn was not much worse than a similar
downturn in 1975. The reason that IT has had a five-times-larger
effect on GDP growth this time around is simply because the
IT sector is five times larger now than then.
Conclusions
The evidence demonstrates that
the U.S. economy has behaved differently since the mid 1980s
than it did before. GDP growth has become less volatile. Large
increases and large decreases in GDP are both less frequent
than before. At the same time, the U.S. labor market has become
more flexible. Firms are quicker to hire and fire. Movements
into and out of the labor force are more sensitive to economic
conditions.
Improved access to credit markets and
more sophisticated inventory management—made possible by financial
deregulation and IT innovation—have made important contributions
to the economy’s increased stability.
The relative mildness of the recent
economic slowdown and recession reflect these underlying changes,
as do movements in employment and productivity growth, and
the labor-force participation rate.
The IT-investment sector itself has
had a major direct impact on the economy over the past few
years. Partly this strong impact reflects the severity of
the recent IT downturn. Partly it reflects the growing size
of the IT sector in the economy.
Looking forward, a continuation of the
strong trend productivity growth of the late 1990s will help
protect the economy from outright declines in output (and,
so, from NBER-defined recessions) but not from periods of
rising unemployment associated with slowdowns. In this sense,
the business-cycle implications of a key element of the New
Economy are limited. Fortunately, as we have seen, there is
more to the New Economy than faster productivity growth.
—Evan F. Koenig, Thomas F. Siems
and Mark A. Wynne
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| Note
- Specifically, we identify cyclical growth
slowdowns as follows. First, the final slowdown
quarter is defined to be the earliest quarter
in which the unemployment rate is within 0.2
percentage points of its cyclical peak (the
highest quarterly value between two NBER peaks).
The 0.2-percentage-point cut-off makes allowance
for the historical tendency for output growth
to pick up slightly before peaks in the unemployment
rate. Second, the final quarter of growth expansions
is required to have an unemployment rate within
0.2 percentage points of unemployment’s cyclical
trough (the lowest quarterly value between two
NBER troughs). From among these quarters, we
choose the earliest quarter such that GDP growth
remains consistently at or below its sample
mean (3.4 percent) through the subsequent NBER
peak. Using these criteria, cyclical growth
trough dates are 1961:Q1, 1970:Q4, 1975:Q2,
1980:Q3, 1982:Q4, 1992:Q1 and (tentatively)
2001:Q4. Cyclical growth peak dates are 1960:Q1,
1969:Q1, 1973:Q2, 1978:Q4, 1981:Q3, 1990:Q1,
and 2000:Q2.
About In Depth
This article is based on
a presentation by Evan F. Koenig, vice president,
Thomas F. Siems,senior economist and policy advisor
and Mark A. Wynne, assistant vice president, Research
Department, Federal Reserve Bank of Dallas.
The views expressed are
those of the authors and do not necessarily reflect
the positions of the Federal Reserve Bank of Dallas
or the Federal Reserve System. |
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