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Home / Publications / Research / Economic Brief / 2021

Economic Brief
June 2021, No. 21-19

How Macroeconomic Forecasters Adjusted During the
COVID-19 Pandemic
Article by: Paul Ho

The COVID-19 pandemic has posed substantial challenges for macroeconomic
forecasting. In the absence of a recent directly comparable episode, forecasters
have modified their models or sought additional information in data. We survey
these forecasting approaches and highlight the importance of transparency and
flexibility of assumptions. With the benefit of data over the course of the
pandemic, we can now see how different assumptions led to forecast errors that
might have been predictable at the time of the forecast.
Macroeconomic forecasting during the COVID-19 pandemic has been especially challenging.
The pandemic was a once-in-a-century health crisis that generated an unprecedented
impact on the economy. For instance, GDP contracted by an annualized rate of 33 percent
in the second quarter of 2020, more than four times as much as any quarterly drop since
1948.
Furthermore, we do not have recent examples of recessions driven by public health crises,
so forecasters had no directly comparable past data and experience that they could draw
from. As a result, not only did point forecasts become more uncertain, but quantifying this
uncertainty was unusually difficult.

How Forecasters Adjusted to the New Environment
Faced with unique circumstances, forecasters had to acknowledge the difference without
completely ignoring lessons from previous business cycles:
Should one view the COVID-19 pandemic as simply a period of high volatility?
Would economic variables comove differently than previous recessions?

Would the effects of the pandemic propagate and persist as other drivers of business
cycles do?
These questions mattered for forecasts but did not have precise answers with the scarce
amount of data available, especially in the early stages of the pandemic. How could
forecasters tackle such questions as the pandemic unfolded, acknowledge the level of
confidence in their answers and express how these questions influence their point
forecasts and associated uncertainty?
In a recent working paper, "Forecasting in the Absence of Precedent," I discuss two broad
approaches to dealing with the lack of precedent. First, forecasters used subjective
judgment or prior knowledge — typically from economic theory — to adapt their models.
Such model adjustments are most fruitful when their underlying assumptions are
transparent and acknowledge the lack of certainty.
Alternatively, forecasters found new sources of information, typically by incorporating new
data into forecasting models. For example, epidemiological and high-frequency data were
of special interest during the pandemic. However, forecasters need to know how these new
variables comove with variables of interest, which once more raises the question of model
specification and the choice of assumptions. This Economic Brief focuses on several
representative papers for each approach.

Adapting Models During Periods of High Uncertainty
When forecasters observe large swings in the economy, they need to translate their
interpretations of the data into model assumptions. While it is impossible to perfectly
model the economy, carefully crafted assumptions can allow model forecasts to be useful
even during unusual episodes such as the pandemic.
First, assumptions should be easy to communicate so audiences can put forecasts into
proper context. Specifically, even those who disagree with the model's assumptions can
infer how those assumptions might influence the forecast, allowing them to learn from the
model despite their disagreement. During the COVID-19 pandemic, such transparency has
been especially important given the high level of disagreement among economists and
policymakers.
Second, where possible, assumptions should be imposed based on probability. Rather than
insist that a feature of the economy is "definitely true," one can model that feature as being
"probably true." Uncertainty is especially relevant during an event in which the structure of
the economy is less certain. Acknowledging the uncertainty in the model translates to
forecast error bands that more accurately express the forecaster's own level of confidence.

One view of the large economic fluctuations during the pandemic is that they arose from a
sequence of large disturbances to the economy. This was featured in the 2020 working
paper "How to Estimate a VAR after March 2020" by Michele Lenza and Giorgio E. Primiceri.
This approach has several strengths:
First, it is easy to communicate, allowing the forecasts to be informative even if one did
not fully agree with the model.
Second, it widened the forecast error bands during the early stages of the pandemic,
which better reflected the forecast uncertainty at the time.
A limitation of the approach is that it keeps the rest of the structure of the economy — that
is, the type of shocks and propagation of these shocks — unchanged, an assumption that
was questionable even in the initial stages of the pandemic.
In particular, there was discussion of a swifter recovery and of different sectors in the
economy being hit as compared to past recessions. Indeed, the results from the paper
suggest that the model was unable to predict the relatively rapid decline in unemployment
after the start of the pandemic.
As an alternative, the 2020 working paper "Macroeconomic Forecasting in the Time of
COVID-19" by Primiceri and Andrea Tambalotti acknowledges the uniqueness of the
pandemic-driven recession by introducing a new shock to the model.
However, it makes strong assumptions about the behavior of that shock resembling
previous drivers of business cycles. As a result, this paper also fails to predict the rapid
decline in unemployment after the initial sharp rise in March and April 2020. A more flexible
structure that acknowledges the uncertainty about the COVID-19 shock would potentially
have improved forecasts.

Additional Information in New and Old Data Sources
While the methods above focused on modifying the model to capture changes in the
economy, there were also attempts to find additional information in new or existing data
sources. These attempts continue to rely on well-designed models to avoid bias or a false
sense of precision in forecasts.
One source that gained renewed attention during the pandemic was high-frequency data,
which provided updated snapshots of the economy before quarterly data were released. In
their working paper "Real-Time Forecasting with a (Standard) Mixed-Frequency VAR During
a Pandemic," Frank Schorfheide and Dongho Song formally incorporate these data into
their forecasts.
They have mixed success predicting second quarter 2020 values for quarterly variables,
even though they use monthly data available on June 30, 2020.

While their forecast for GDP performed well (median forecast of 12 percent below the
fourth quarter 2019 level, compared to an actual decline of 10 percent), their model
predicted a decline in investment of about double what was realized (median forecast of 22
percent below the fourth quarter 2019 level, compared to an actual decline of 9 percent).
Given the expectation that the COVID-19 recession could be shorter than typical recessions,
economic theory would have suggested that investment should have fallen less than usual.
Incorporating this knowledge into the model could have improved forecasts.
Instead of assuming that the economy behaved normally during the pandemic, a paper by
Claudia Foroni, Massimiliano Marcellino and Dalibor Stevanovic, "Forecasting the COVID-19
Recession and Recovery: Lessons from the Financial Crisis," aligns forecasts with how data
behaved during the Great Recession. They postulate that the behavior of economy during
the COVID-19 recession looks more like the Great Recession than normal times. In
particular, they modify the model parameter estimates by giving greater weight to Great
Recession observations and adjust the model forecasts based on forecast errors made by
the model during the Great Recession.
The paper predicts a decline in investment that is relatively close to the data (forecast of an
initial annualized decline of 25 percent, compared to an actual decline of 27 percent) but
substantially underpredicts the decline in GDP (forecast of an annualized decline of 10
percent, compared to an actual decline of 33 percent). As argued above, the overprediction
of the decline in investment relative to GDP could have been inferred by economic theory.

Looking Back at the Validity of Model Assumptions
Having discussed how various forecasting methods performed, it is useful to look back now
that we have observed more months of data. The 2021 paper "Modeling Macroeconomic
Variations After COVID-19" by Serena Ng conducts such an exercise using data through
December 2020, providing a retrospective view of how various assumptions in the
forecasting models held up.
She first estimates her model using macroeconomic and financial data through February
2020. She then extends the data series to December 2020 and incorporates data on COVID19 cases and hospitalizations. Comparing the two estimation exercises provides insight into
what changed in the economy during the pandemic.
After accounting for COVID-19 data, Ng finds that the comovement across variables did not
change substantially and volatility in the economy reached approximately the same peaks
seen in 1973-74, 1981-82 and 2007-09. In other words, the economy appeared to have been
hit by a single shock that could be captured by the COVID-19 data, while the typical drivers
of the economy behaved similar to how they had in the past, with variances matching
previous large recessions.

These results contrast with the assumption in Lenza and Primiceri's paper that there was an
unprecedented increase in volatility. Their estimated levels of volatility are arguably a way
for the model to capture the unique COVID-19 shock, rather than a reflection of existing
shocks simultaneously becoming more volatile.
In addition, the longer time series allows Ng to observe a proxy for the new COVID-19 shock
proposed by Primiceri and Tambalotti and to estimate its impact on macroeconomic
variables. Finally, the COVID-19 data captures the differences in the pandemic era structure
of the economy, which the Schorfheide and Song paper and the Foroni, Marcellino and
Stevanovic paper both omit from their forecast models.
It is striking that the COVID-19 data capture many of the changes in the economy. While
these data were not available in the initial stages of the pandemic, there was a wide array of
epidemiological forecasts for the path of the pandemic. However, there remained
uncertainty in the initial months of the pandemic as to how the COVID-19 variables related
to macroeconomic variables of interest. It is only with hindsight that we can estimate how
they comove.

Conclusion
During an episode like the COVID-19 pandemic with no recent precedent, information
outside typical models takes on an increased importance. The successes and failures of
various forecasting methods highlight how acknowledging the pandemic's particular
circumstances could have led to more accurate forecasts, both in terms of point forecasts
being close to actual results and error bands realistically capturing the underlying
uncertainty.
The lessons go beyond the specific context of model forecasts during the COVID-19
pandemic. Model specification is similarly important for forecasters during normal times.
While we have more data to discipline the model parameters, assumptions can mask
uncertainty and bias forecasts. Introducing additional data only improves forecasts when
paired with an appropriate model. Only models with sufficient flexibility can fully capture
the uncertainty in forecasts.
People making use of model forecasts — such as policymakers or business managers —
also need to be cognizant of these issues. Model forecasts are often examined to form
personal forecasts that incorporate other knowledge or beliefs one may have.
Understanding the assumptions underlying any forecast allows one to see potential
sources of forecasting mistakes. In addition, when using narratives or other sources of
information outside the model, how exactly these should influence forecasts should be
considered.

None of this is straightforward. Economists have had lengthy debates about how to model
the changes that led to the Great Moderation and Great Recession. There is a vast amount
of ongoing work understanding both the short- and long-term impact of the COVID-19
pandemic on the economy. Forecasters should reflect these challenges by modeling the
underlying uncertainty and communicating the inevitable assumptions clearly.
Paul Ho is an economist in the Research Department at the Federal Reserve Bank of
Richmond.
This article may be photocopied or reprinted in its entirety. Please credit the author, source,
and the Federal Reserve Bank of Richmond and include the italicized statement below.
Views expressed in this article are those of the author and not necessarily those of the Federal
Reserve Bank of Richmond or the Federal Reserve System.

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