speeches · May 6, 2018
Regional President Speech
Charles L. Evans · President
Monetary Policy and the Crosswinds of Change
Charles L. Evans
President and Chief Executive Officer
Federal Reserve Bank of Chicago
Federal Reserve Bank of Atlanta Conference
Machines Learning Finance. Will They Change the Game?
Amelia Island, FL
May 7, 2018
FEDERAL RESERVE BANK OF CHICAGO
The views expressed today are my own and not necessarily
Those of the Federal Reserve System or the FOMC.
Monetary Policy and the Crosswinds of Change
Charles L. Evans
President and Chief Executive Officer
Federal Reserve Bank of Chicago
Introduction
Before I begin, let me remind you that my comments here today are my own and do not
necessarily reflect the views of the Federal Reserve System or the Federal Open
Market Committee (FOMC). This session is about how machine learning (ML) and
related automation may potentially influence the macroeconomy and, in response, how
central banks should conduct monetary policy. As we’ve heard at this conference,
innovations in machine learning and artificial intelligence (AI) are big news. And they
provide lots of opportunities and challenges for economists.
First, let’s consider the opportunities: We now have access to masses of new data and
better computing power. This is really cool for me and my staff as we are data users—
after all, most economists are data scientists. These tools are great for basic economic
research, especially for the work of microeconomists. But there’s lots of scope for
macroeconomists as well. Some of these data may help us more precisely identify key
policymaking parameters—for example, how consumer spending and business
spending respond to tax changes.
These tools may also help improve our ability to forecast short-term movements in the
economy. In particular, we could see some exciting new indicators of the business cycle
derived from new sources of big data. Here, though, there may be limits to what we can
learn from big data, at least for a while. The business cycle is in essence about small
data. There just haven’t been a lot of business cycles, and each one has idiosyncratic
features. And big data weren’t available during past business cycles, so cross-cycle
comparisons are not possible. We’re stuck with this situation.
But this session isn’t really about the use of big data. It’s about the consequences of
large-scale technological innovation. So, now let’s discuss the challenges: Such
innovation could create challenges for monetary policymakers if it leads to hard-to-
identify changes in the structure of macroeconomic relationships that might influence
the business cycle. And in the end, that’s what we monetary policy folks are concerned
about—the business cycle.
The potential structural changes that come with innovation can affect the evolution of
inflation and employment. As such, they may have implications for the achievement of
our dual mandate objectives of maximum employment and price stability. For instance,
these changes could generate headwinds for inflation that mean we might need to
provide more accommodation to reach our inflation target than we have in the past. But
we don’t know that. Perhaps these forces will lead to higher inflationary pressures that
policy might have to counteract. There’s a lot we don’t really understand yet.
2
Dealing with an evolving economic structure is an old problem
Of course, making policy in the presence of a changing economy is nothing new; we
have dealt with lots of structural changes before. History offers plenty of examples.
Chairman Greenspan (1998) grappled with this issue almost 20 years ago when he
considered the possibility of a “new economy.” He said, and I quote:
There is no question that events are continually altering the
shape and nature of our economic processes, especially the
extent to which technological breakthroughs have advanced and
perhaps, most recently, even accelerated the pace of
conceptualization of our gross domestic product. We have
dramatically reduced the size of our radios, for example, by
substituting transistors for vacuum tubes. Thin fiber-optic cable
has replaced huge tonnages of copper wire. New architectural,
engineering, and materials technologies have enabled the
construction of buildings enclosing the same space but with far
less physical material than was required, say, 50 or 100 years
ago. Most recently, mobile phones have been markedly
downsized as they have been improved. As a consequence, the
physical weight of our GDP is growing only very gradually. The
exploitation of new concepts accounts for virtually all of the
inflation-adjusted growth in output.1
Going back even further, more than 50 years ago, a Time magazine article on “the
automation jobless” reported that “automation may prevent the economy from creating
enough new jobs… . In the past, new industries hired far more people than those they
put out of business. But this is not true of many of today's new industries.”2 Sounds
familiar, doesn’t it? And in 1964 these concerns were broad enough to warrant the
creation of a presidential commission to study the implications of new technologies.3
Influences on the economy and policymaking
We don’t know how various innovations will ultimately play out and how they will affect
the economy. Figuring out the effects of these developments is complicated: The sign,
magnitude, and timing of their impact are all uncertain.
Technological advances can lead to conflicting effects. For instance, internet commerce
may make markets more competitive. This might lead to lower prices and push inflation
lower in the short run. But it may also allow companies to price-discriminate better,
making markets less competitive and leading to higher average prices.
1 Greenspan (1998).
2 Time Inc. (1961).
3 The National Commission on Technology, Automation, and Economic Progress was established by
President Lyndon B. Johnson on August 19, 1964. For further details, see Johnson (1964).
3
I would also note that a decent-size literature has emerged on the rise of industry
concentration in general, not just in internet retailing. This is an issue economists are
thinking about a good deal, but there is as yet no consensus.4
These new technologies can affect the natural rate of unemployment too. The natural
rate of unemployment is the unemployment rate that would prevail in an economy
making full use of its productive resources. We sometimes refer to this natural rate as
u*. Online job boards and other technology may be improving matching efficiency. If so,
u* would be lower. But these new technologies can also cause u* to rise. This would
happen, for example, if people become more specialized and labor markets become
less fluid as a result.
We’ve struggled to understand the effects of changing u* before. In the 1990s, there
were indications that the rise of labor market intermediaries such as temporary help
firms was lowering the natural rate. And in 2010, an increase in vacancy measures
without a drop in unemployment led some to conclude the natural rate had risen.
Dynamic issues related to innovation may also cause difficulties for policymakers
because some effects might be different in the short run than in the long run. For
instance, firms might be charging low prices today to acquire a first-mover advantage in
certain markets. They might for a time operate at a loss. But if successful in establishing
a foothold, they hope to charge higher prices and be more profitable in the future.
Technological change also poses important challenges for the standard statistical
measures of prices. Here too the effects can go both ways.5 On one side, standard
measures might not be factoring in correctly the time cost borne by the user. For
instance, when booking your travel tickets online, you cut out the intermediary, and that
is probably efficient as a whole; but you also have to do more work for yourself than you
used to. The same is true for pumping your own gas or using the self-checkout line. If
not accounted for, this would understate inflation. But we might also be overstating
inflation by not incorporating quality improvements, increased varieties of products, the
value of free content, and the like. Of course, in either direction, such inflation
mismeasurement has consequences for output mismeasurement as well.
Monetary policy relies on the economic relationships between the tools we control—for
instance, the short-term interest rate—and our policy objectives. Technological
innovation may be changing these relationships. For example, it must be much easier
for firms to change online prices than it is for them to change prices in a physical store.
That might make prices in the overall economy less sticky, which would change the
parameters of the Phillips curve relationship that is important to much of monetary
policy analysis.6 But this is pure conjecture at this stage.
4 See, for example, De Loecker and Eeckhout (2017) and Karabarbounis and Neiman (2018).
5 For a discussion, see Brynjolfsson, Rock, and Syverson (2017).
6 The Phillips curve is a statistical relationship that describes a negative correlation between inflation and
unemployment—that is, lower unemployment is associated with higher price and wage inflation. It is often
drawn as a negatively sloped curve that has a measure of labor market tightness, such as the
4
Outcome-based policy is a robust response
Technological advances create a difficult picture to read and present a challenge for
policymakers.
The FOMC’s goal is to reach the center of the bull’s-eye where the economy is at its
natural rate of unemployment and inflation is 2 percent. The inflation target is the choice
of the central bank. As I’ve just discussed, technological change could have some effect
on the natural rate of unemployment. It could also influence how the economy responds
to monetary policy adjustments—and thus the speed at which we are able to obtain our
policy objectives. However, the magnitudes and even the signs of these effects are
highly uncertain.
One message is that following a fixed rule to determine the setting of our instruments
may not be the best strategy to follow in a changing environment. In general, such
changes can reduce the effectiveness of a strict instrument-setting rule or, at times,
even make it counterproductive. For instance, it would be a mistake to set policy
unemployment rate, on the horizontal axis and a measure of wage or price inflation on the vertical axis.
See Phillips (1958).
5
according to a Taylor rule with a 2 percent intercept if we think the equilibrium funds rate
is different from 2 percent—perhaps, for example, because of the influences of
technological change and its diffusion on the economy.7
And, while machine learning and artificial intelligence might become helpful in
identifying emerging trends, I don’t see them coming up with a better rule that will
replace us central bankers any time soon! We economists have a lot of experience data
mining—and we know the pitfalls of taking it out of sample in a changing environment.
Fundamentally, what’s important is the Fed’s ability to deliver on our mandated policy
goals of full employment and price stability. A policy focused on hitting mandated
outcomes and managing risks against adverse scenarios—something I often refer to as
outcome-based policy—can avoid missteps that might come from strict adherence to a
fixed policy rule. Execution of outcome-based policy often requires using informed
discretion in instrument setting. And by doing so, a central bank can do a better job in
delivering on its ultimate employment and inflation targets.
Indeed, we may never be able to come up with good estimates of how the various
crosscurrents associated with AI and ML are affecting the aggregate economy. But we
will be able to observe whether our current policy coincides with restrictive,
disinflationary financial conditions or with undesired inflationary pressures. We can then
adjust the setting of policy accordingly.
So, while structural change may make our task more challenging, it’s something we
have been dealing with for a long time. And hopefully, we can continue to navigate our
way through it by keeping a close eye on our policy objectives.
References
Brynjolfsson, Erik, Daniel Rock, and Chad Syverson, 2017, “Artificial intelligence and
the modern productivity paradox: A clash of expectations and statistics,” National
Bureau of Economic Research, working paper, No. 24001, November, available online,
http://www.nber.org/papers/w24001.pdf.
De Loecker, Jan, and Jan Eeckhout, 2017, “The rise of market power and the
macroeconomic implications,” National Bureau of Economic Research, working paper,
No. 23687, August, available online, http://www.nber.org/papers/w23687.pdf.
Greenspan, Alan, 1998, “Question: Is there a new economy?,” remarks by the Federal
Reserve Chairman at the Haas Annual Business Faculty Research Dialogue, University
of California, Berkeley, CA, September 4, available online,
https://fraser.stlouisfed.org/scribd/?item_id=8646&filepath=/files/docs/historical/greensp
an/Greenspan_19980904.pdf.
7 The equilibrium federal funds rate is the funds rate associated with a neutral monetary policy (policy that
is neither expansionary nor contractionary).
6
Johnson, Lyndon B., 1964, remarks by the President of the United States upon signing
the bill creating the National Commission on Technology, Automation, and Economic
Progress, White House, Washington, DC, August 19, available online,
http://www.presidency.ucsb.edu/ws/?pid=26449.
Karabarbounis, Loukas, and Brent Neiman, 2018, “Accounting for factorless income,”
National Bureau of Economic Research, working paper, No. 24404, March, available
online, http://www.nber.org/papers/w24404.pdf.
Phillips, A. W., 1958, “The relation between unemployment and the rate of change of
money wage rates in the United Kingdom, 1861–1957,” Economica, new series, Vol. 25,
No. 100, pp. 283–299.
Time Inc., 1961, “Business: The automation jobless,” Time, Vol. 77, No. 9, February 24,
available online, http://content.time.com/time/subscriber/article/0,33009,828815-
1,00.html.
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Cite this document
APA
Charles L. Evans (2018, May 6). Regional President Speech. Speeches, Federal Reserve. https://whenthefedspeaks.com/doc/regional_speeche_20180507_charles_l_evans
BibTeX
@misc{wtfs_regional_speeche_20180507_charles_l_evans,
author = {Charles L. Evans},
title = {Regional President Speech},
year = {2018},
month = {May},
howpublished = {Speeches, Federal Reserve},
url = {https://whenthefedspeaks.com/doc/regional_speeche_20180507_charles_l_evans},
note = {Retrieved via When the Fed Speaks corpus}
}