| Literature DB >> 33262548 |
Austan Goolsbee1,2, Chad Syverson1,2.
Abstract
The collapse of economic activity in 2020 from COVID-19 has been immense. An important question is how much of that collapse resulted from government-imposed restrictions versus people voluntarily choosing to stay home to avoid infection. This paper examines the drivers of the economic slowdown using cellular phone records data on customer visits to more than 2.25 million individual businesses across 110 different industries. Comparing consumer behavior over the crisis within the same commuting zones but across state and county boundaries with different policy regimes suggests that legal shutdown orders account for only a modest share of the massive changes to consumer behavior (and that tracking county-level policy conditions is significantly more accurate than using state-level policies alone). While overall consumer traffic fell by 60 percentage points, legal restrictions explain only 7 percentage points of this. Individual choices were far more important and seem tied to fears of infection. Traffic started dropping before the legal orders were in place; was highly influenced by the number of COVID deaths reported in the county; and showed a clear shift by consumers away from busier, more crowded stores toward smaller, less busy stores in the same industry. States that repealed their shutdown orders saw symmetric, modest recoveries in consumer visits, further supporting the small estimated effect of policy. Although the shutdown orders had little aggregate impact, they did have a significant effect in reallocating consumer visits away from "nonessential" to "essential" businesses and from restaurants and bars toward groceries and other food sellers.Entities:
Keywords: Borders; COVID; Consumer activity; Economic activity; Essential business; Lockdown; Pandemic; Shelter in place; Sheltering orders; Shutdown; States
Year: 2020 PMID: 33262548 PMCID: PMC7687454 DOI: 10.1016/j.jpubeco.2020.104311
Source DB: PubMed Journal: J Public Econ ISSN: 0047-2727
Fig. 1Aggregate consumer visits over time.
Standard policy estimate: LN (visits/day).
| (1) | (2) | (3) | (4) | |
|---|---|---|---|---|
| S-I-P Order | −0.733 | −0.569 | −0.077 | −0.082 |
| (0.015) | (0.010) | (0.012) | (0.015) | |
| State S-I-P | 0.014 | |||
| (0.018) | ||||
| ln(County deaths) | −0.075 | −0.039 | −0.039 | |
| [asinh transf] | (0.004) | (0.005) | (0.005) | |
| N | 23,865,724 | 23,865,724 | 23,865,721 | 23,865,721 |
| R2 | 0.854 | 0.860 | 0.880 | 0.880 |
| FEs | Store | Store | Store | Store |
| C-Zone x Week | C-Zone x Week | |||
| Weights: | Visits in Jan | Visits in Jan | Visits in Jan | Visits in Jan |
| Cluster SE: | County | County | County | County |
Notes: The dependent variable is log number of average consumer visits per day to the store. S-I-P Order is the measure of shelter-in-place at the county level or at the state level as described in the text. The measure of County deaths is the log of an inverse hyperbolic sine transformation of the number of deaths in the county to account for the many zeros. The standard errors are clustered at the county level.
Fig. 2Average log visits per day around S-I-P order date.
Policy estimates by source of variation: LN (visits/day).
| (1) | (2) | (3) | |
|---|---|---|---|
| Border | No Border | Exit/Repeal | |
| S-I-P Order | −0.081 | −0.075 | −0.074 |
| (0.015) | (0.018) | (0.013) | |
| Repeal Order | 0.008 | ||
| (0.020) | |||
| ln(County deaths) | −0.032 | −0.042 | −0.039 |
| [asinh transf] | (0.011) | (0.006) | (0.005) |
| N | 6,391,240 | 17,474,481 | 23,865,721 |
| R2 | 0.873 | 0.882 | 0.880 |
| FEs | Store | Store | Store |
| Weights: | CZ × Week | CZ × Week | CZ × Week |
| Cluster SE: | Visits in Jan | Visits in Jan | Visits in Jan |
| County | County | County |
Notes: The dependent variable is log number of average consumer visits per day to the store. S-I-P Order is the measure of shelter-in-place at the county level as described in the text. Repeal Order indicates locations where they repeal or let their order expire. The measure of County deaths is the log of an inverse hyperbolic sine transformation of the number of deaths in the county to account for the many zeros. The standard errors are clustered at the county level.
Shifting.
| (1) | (2) | |
|---|---|---|
| Intertemporal | Ln(Distance) | |
| S-I-P Order | −0.0565 | −0.007 |
| (0.017) | (0.015) | |
| 1 Week Ahead | 0.035 | |
| (Anticipation effect) | (0.013) | |
| ln(county deaths) | −0.039 | −0.001 |
| [asinh transf] | (0.005) | (0.005) |
| N | 23,285,721 | 17,645,439 |
| R2 | 0.880 | 0.780 |
| FEs | Store | Store |
| CZ × Week | CZ × Week | |
| Weights: | Visits in Jan | Visits in Jan |
| Cluster SE: | County | County |
Notes: The dependent variable is log number of average consumer visits per day to the store in (1) and the log of average distance traveled to the store in (2). S-I-P Order is the measure of shelter-in-place at the county level as described in the text and the time script indicates whether the measure is contemporaneous, lagged or led one week. The measure of County deaths is the log of an inverse hyperbolic sine transformation of the number of deaths in the county to account for the many zeros. The standard errors are clustered at the county level.
Fig. 3Consumer visits over time by store size/traffic.
Size of business: change LN(visits/day): Jan. to April 12.
| (1) | (2) | (3) | (4) | (5) | |
|---|---|---|---|---|---|
| EMERGENCY | SIZE | NON-RETAIL | DEATHS | S-I-P | |
| {S=1: Small 20%} | 0.491 (0.006) | 0.543 (0.008) | 0.445 (0.012) | 0.401 (0.021) | |
| {L=1: Large 20%} | −0.352 (0.013) | −0.643 (0.015) | −0.239 (0.019) | −0.243 (0.022) | |
| ln(county deaths) | −0.039 (0.005) | −0.070 (0.010) | −0.087 (0.010) | ||
| ln(county deaths) × {S=1} | 0.014 (0.005) | ||||
| ln(county deaths) × {L=1} | −0.032 (0.007) | ||||
| Emergency Declaration | −0.082 (0.034) | ||||
| S-I-P Order | −0.077 (0.012) | −0.174 (0.052) | |||
| S-I-P Order × {S=1} | 0.084 (0.022) | ||||
| S-I-P Order × {L=1} | −0.111 (0.026) | ||||
| N | 23,865,721 | 2,106,343 | 1,115,330 | 2,106,343 | 2,106,343 |
| R2 | 0.885 | 0.075 | 0.118 | 0.081 | 0.080 |
| FEs | Store, CZ × Week | CZ | CZ | CZ | CZ |
| Cluster SE: | County | County | County | County | County |
Notes: The dependent variable is the change in log number of average consumer visits per day to the store from January to the week of April 12th. The {S = 1} variable indicates a firm is in the smallest 20% of firms in its state × industry measured as total visits in the month of January. The {L = 1} variable indicates a firm in the largest 20% of firms by the same measure. The measure of County deaths is the log of an inverse hyperbolic sine transformation of the number of deaths in the county to account for the many zeros. The standard errors are clustered at the county level.
Business diversion.
| (1) | |
|---|---|
| S-I-P Order | −0.028 (0.019) |
| Restaurant Order × {Restaurant = 1} | −0.318 (0.006) |
| Restaurant Order × {Food = 1} | 0.251 (0.008) |
| Restaurant Order | 0.080 (0.012) |
| Essential Biz Order × {Essential = 1} | 0.489 (0.009) |
| Essential Biz Order | −0.419 (0.022) |
| Ln (cnty deaths) [asinh transform] | −0.035 (0.005) |
| N | 23,865,721 |
| R2 | 0.885 |
| FEs | Store |
| CZ × Week | |
| Cluster SE: | County × Essential |
Notes: The dependent variable is log number of average consumer visits per day to the store. S-I-P Order is the measure of shelter-in-place at the county level as described in the text. The other variables define essential and non-essential businesses, restaurants and bars, and non-restaurant food and beverage businesses as described in the text. The measure of County deaths is the log of an inverse hyperbolic sine transformation of the number of deaths in the county to account for the many zeros. The standard errors are clustered at the county × essential business level.
| Δln(v/day) | Δln(v/day) | ||
|---|---|---|---|
| 711190 Other Perf. Arts | −4.33 | 444210 Outdoor pwr eq stores | +0.17 |
| 711110 Theaters | −3.85 | 444220 Nurse/grdn/farm s. | +0.03 |
| 713920 Skiing facilities | −3.60 | 713910 Golf courses | +0.01 |
| 712130 Botanic gardens, zoos | −3.49 | 811411 Home &garden eq rpr | −0.18 |
| 811219 Other elec eq rpr | −3.16 | 541940 Veterinary services | −0.57 |
| 711211 Sports teams | −2.50 | 444130 Hardware store | −0.60 |
| 512131 Motion picture thtrs | −2.44 | 722320 Caterers | −0.62 |
| 448150 Clothing acc. stores | −2.35 | 447190 Gasoline stations | −0.63 |
| 711219 Other spect sports | −2.10 | 445110 Supermarkets | −0.63 |
| 713950 Bowling centers | −2.08 | 445120 Convenience stores | −0.64 |
| 448320 Luggage stores | −1.93 | 454310 Fuel dealers | −0.66 |
| 722410 Drinking places (alc) | −1.90 | 441222 Boat dealers | −0.67 |
| 448140 Family clothing s. | −1.87 | 441228 Motorcycle, atv dealers | −0.67 |
| 812990 Other pers services | −1.82 | 441310 Auto parts stores | −0.69 |
| 713940 Fitness centers | −1.75 | 446110 Pharmacies | −0.72 |