COVID-19 Economic and Tax Revenue Impacts: Estimates for the Commonwealth of Virginia and Localities

The Weldon Cooper Center for Public Service’s Center for Economic and Policy Studies at the University of Virginia utilized the REMI PI+ model to estimate the effects of COVID-19, both economically and fiscally, for their study of the pandemic’s impact on the Commonwealth of Virginia and its localities. Their report estimated a “moderate” recessionary scenario and a “severe” recessionary scenario, which allows researchers to interpolate or extrapolate as more national macroeconomic information becomes available. The “moderate” scenario assumed the GDP growth declines at an annual rate of 2% in 2020 and the national economy “snaps back” slightly in 2021 and 2022 before resuming baseline growth of 2% for 2023-2025. The “severe” scenario, on the other hand, assumed the 2020 decline to be -6%, therefore making it the most significant economic downturn since World War II. The report also analyzed which industries are likely to be the most affected by social-distancing procedures.

University of Virginia Weldon Cooper Center for Public Service – COVID-19 Economic and Tax Revenue Impacts: Estimates for the Commonwealth of Virginia and Localities [full PDF]

Memorandum re REMI Modeling of COVID-19 Economic Impacts

The COVID-19 pandemic is widely expected to have a variety of disruptive effects on the U.S. economy. This memorandum lays out some of the key types of disruptions and discusses how to model each of them using REMI in order to measure the full economic impact of a pandemic.

For all Tax-PI users, the calibration of your state’s budget to economic and demographic drivers will also automatically generate a calculation of the state revenue impacts of COVID-19.

This is by no means an exhaustive list, and the severity may vary across regions. REMI staff is available to provide modeling support tailored to the circumstances of your particular region.

Disruptions:

1) Increased absenteeism/loss of productivity

Discussion: Pandemics impact the survivors in several ways. Importantly, people miss work more frequently for a variety of reasons, which include recovering from a bout of the illness, taking care of an ill family member, taking precautionary measures to avoid contracting the illness, and others. This supply-side effect manifests in reduced economic output per worker. Its economic impacts depend on whether and how businesses respond. If they do not respond, then the decrease in output per worker with no change in direct employment generates a direct loss in economic output. If businesses do respond, for example by hiring additional workers to pick up the slack, then the additional labor costs raise their overall production costs, putting upward pressure on prices and making the affected region relatively less competitive against other domestic and international regions. To the extent that the pandemic has comparable effects across regions, the impact on regional competitiveness may be muted and relatively more of the cost increase may be passed on into higher prices. This consideration will be especially important for regional models that do not include the rest of the U.S. Additional discussion of this issue is provided in Section 3 below.

REMI Methodology: In order to model the direct loss in economic output, either the Output or Employment Policy Variable (PV) is appropriate, and the Industry (Exogenous Production) option should be used. These variables can be specified for any Private Non-Farm industry, so heterogeneous industrial impacts can be reflected (e.g., a freelance writer may be able to continue working from home, while a manufacturing employee would not be able to). The choice of which PV to use simply depends on the data available, as shocking one will directly impact the other via the labor productivity for the given industry in the given region. In order to model the direct loss in labor productivity to which businesses respond via hiring, the appropriate PV to use is Labor Productivity, which affects both the required employment for a given level of output and businesses’ labor costs. Again, this can be specified for any Private Non-Farm industry. It may be appropriate to use either or both of these approaches. While there is no one-size-fits-all solution, it may be useful to think of the former as more of a short-term phenomenon and the latter as more of a long-term phenomenon, making the length of the pandemic a potentially important factor in deciding how to model its impacts.

2) Changes in consumer spending

Discussion: Domestic consumer spending patterns may change as a result of the pandemic, generating demand-side effects. For example, people may put off vacations, home and durable goods purchases, restaurant meals, and other nonessential spending during a pandemic, and may replace that with increased spending on medical care and medical products (e.g., surgical masks). It is important to distinguish between deferred and reduced consumption. For example, if a couple waits to purchase their home in July instead of January, then that transaction still occurs and simply gets counted later in the year. However, it is unlikely that a family would double up on restaurant meals after the pandemic subsides to make up for their not going out to eat during the pandemic. Only the latter should be counted as a change in consumer spending, especially since REMI is an annual model.

REMI Methodology: The Consumer Spending or Tourism Spending PV’s should be used. The former allows for the modification of spending in each of the 75 detailed consumption categories in the model (which follow the BEA’s NIPA tables). The Tourism Spending PV contains four tourism spending profiles (Resident households, Business, Government, Nonresidents) based on the BEA U.S. Travel and Tourism Satellite Accounts. Both of these variables affect demand for the industries associated with the consumption categories or tourism spending profiles, which in turn impacts their economic output.

3) Supply chain disruption

Discussion: Especially now that China has become such a large and integrated piece of the world economy and its supply chains, the impact of its economic slowdown associated with mass quarantine and travel restrictions to combat the spread of COVID-19 has been felt by companies all around the world who rely on intermediate inputs sourced from Chinese manufacturers. Furthermore, as the pandemic spreads around the globe, there is the potential for supply chain disruptions to move beyond China’s borders. Depending on the severity of a given supply chain disruption, it can either raise business production costs via higher input prices or shut down production entirely if necessary parts completely run out.

REMI Methodology: In general, the Production Cost PV should be used to model higher input prices. However, as discussed above, this impacts both prices and regional competitiveness, and in the case of a pandemic in the modern interconnected global economy, it may be more appropriate to isolate the price impact and utilize the Consumer Price variable instead. The more geographically widespread the disruption, the less likely it is that regional production cost conditions change relative to one another; rather, they all rise together. In this case, the location decisions for businesses are not heavily affected and they have more leverage to pass through higher costs into price increases because costs are higher everywhere. Note that Consumer Price can be changed for the 75 detailed consumption categories, not the Private Non-Farm industries. However, the National Input-Output Matrix built into the model does have a section that corresponds each consumption category with the demand it generates for each industry, and these relationships can be used to convert increases in production costs into the corresponding changes in prices. If a supply chain disruption shuts down production entirely, then either the Output or Employment PV should be used with the Industry (Exogenous Production) option.

4) Decline in global demand

Discussion: The other key trade impact of a pandemic is that decreased economic activity abroad may decrease demand for U.S. production, thereby lowering exports and overall domestic output.

REMI Methodology: The Output or Employment PV with the Industry (International Exports) option should be utilized. It is highly likely that any available data would be in dollars of lost demand rather than in employee equivalents, in which case the Output PV would be easiest to use.

5) Increased mortality rate

Discussion: The most direct and tragic impact of a pandemic are the lives that it takes. From an economic perspective, each death generates both a supply-side and demand-side loss. On the supply-side, the individual is no longer able to participate in the labor force. On the demand-side, the individual is no longer able to purchase consumer goods and services that generate demand for the businesses that provide them.

REMI Methodology: The increased mortality rate can be modeled in REMI by decreasing the Survival Rate PV in the affected year(s). Survival Rate can be shocked individually for 808 detailed demographic groups, composed of 101 single year of age cohorts, 4 race/ethnicity categories, and 2 genders. This level of detail is particularly helpful since it can be used to reflect the more acute impact a pandemic has on vulnerable populations, which often include children and the elderly. A decrease in the Survival Rate lowers population relative to the Regional Control, and since population direct affects both the labor force and consumer spending, both the supply-side and demand-side impacts are realized simultaneously.

You can download the full PDF of this memorandum by clicking here.

Tying Office Development to Affordable Housing Production: Economic Impact Report

This report completed by the City & County of San Francisco analyzed the economic impact of a proposed ballot measure, the “San Francisco Balanced Development Act,” that would reduce the annual limit on additional new office space in the city if they did not meet a certain threshold for affordable housing production set by state and regional agencies. The measure would reduce the annual allocation of new office space in large development projects by a percentage equal to the percentage by which the city missed its annual affordable housing target in the prior year. The Office of Economic Analysis used the REMI model to estimate the net economic impact of new city legislation and found that, in the year 2040, the city’s GDP would be 8.5% smaller than the baseline. The report also found that disposable personal income would be 5.9% less, the city’s population would decrease by 5.8%, and total employment would have declined by 91,000 jobs.

City & County of San Francisco – Tying Office Development to Affordable Housing Production: Economic Impact Report [full PDF]

Make REMI Your Own: A Planning Perspective on Implementing REMI

This presentation delivered by the Atlanta Regional Commission (ARC) explores how they employ the REMI PI+ and TranSight models to produce local long-range demographic, employment and economic forecasts for the 20-county ARC region. ARC highlights their innovative approach for using the model such as collaborating and creating linkages for model application and compatibility and implementing bold decisions to utilize REMI’s creative, sophisticated and robust economic modeling software. Emphasizing REMI model features and methodologies, ARC outlines the key data development processes, study specifications, scenario tasking and analysis framework used to generate their dynamic economic forecasts.

Atlanta Regional Commission – Make REMI Your Own: A Planning Perspective on Implementing REMI [full PDF]

Economic Effects of Enacting the Raise the Wage Act on Small Businesses and the U.S. Economy

This report that was conducted by the National Federation of Independent Businesses Research Center analyzed the impact of the Raise the Wage Act on small businesses. The law requires an increase of the federal minimum wage over a six-year period from $7.25/hr. to $15.00/hr. Researchers utilized the Business Size Insight Module (BSIM) model within the larger REMI model to assess the economic and employment effects resulting from this type of federal policy. The corresponding analysis estimated that the Raise the Wage Act would decrease private sector employment by more than 1.6 million jobs while producing a total U.S. real output loss above $2 trillion. It was also determined that small businesses would be especially hurt by this legislation as businesses with less than 500 employees were forecast to experience 57% of the private sector job loss.

National Federation of Independent Business – Economic Effects of Enacting the Raise the Wage Act on Small Businesses and the U.S. Economy [full PDF]