Underestimating the Pandemic: The Impact of COVID-19 on Income Distribution in the U.S. and Brazil
Abstract
:1. Introduction
2. Literature Review
3. COVID-19 in Brazil and the U.S.
3.1. Data
3.1.1. The Brazilian PNAD COVID-19 Survey
3.1.2. The U.S. Current Population Survey (CPS) and COVID-19 Supplement
3.2. Methodology
3.3. Principal Results
4. Conclusions
Author Contributions
Funding
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A. Additional Tables
July | August | September | October | November | |
---|---|---|---|---|---|
Positive for COVID-19 | 3.05 | 4.21 | 5.25 | 6.12 | 6.83 |
HH size | 2.884 | 2.877 | 2.878 | 2.878 | 2.877 |
Worked in the last week | 43.14 | 45.37 | 46.58 | 47.7 | 48.11 |
Race | |||||
White | 44.01 | 44.12 | 44.13 | 44.1 | 44.12 |
Black | 9.35 | 9.45 | 9.34 | 9.39 | 9.35 |
Asian | 0.81 | 0.79 | 0.77 | 0.77 | 0.78 |
White–Black | 45.5 | 45.31 | 45.43 | 45.42 | 45.42 |
Indigenous | 0.34 | 0.33 | 0.5 | 0.5 | 0.6 |
Area | |||||
Capital | 24.49 | 24.53 | 24.54 | 24.52 | 24.49 |
Metropolitan region, excluding the capital | 16.46 | 16.40 | 16.43 | 16.51 | 16.44 |
Integrated economic development region, excluding the capital | 0.79 | 0.79 | 0.79 | 0.79 | 0.8 |
Federation unit | 58.27 | 58.27 | 58.25 | 58.18 | 58.27 |
Urban area | 86.11 | 86.13 | 86.05 | 86.08 | 86.08 |
Rural area | 13.89 | 13.87 | 13.95 | 13.92 | 13.92 |
Relationship with HH head | |||||
HH head | 40.22 | 40.31 | 40.27 | 40.26 | 40.6 |
Spouse | 25.01 | 24.96 | 24.86 | 24.77 | 24.75 |
Child of the parent and spouse | 14.19 | 14.20 | 14.22 | 14.25 | 14.35 |
Child only of the responsible person | 10.92 | 10.93 | 11.07 | 11.14 | 11.19 |
Spouse’s child only | 1 | 0.99 | 0.99 | 0.99 | 0.96 |
Son-in-law or daughter-in-law | 1.25 | 1.20 | 1.20 | 1.2 | 1.19 |
Father, mother, stepfather, or stepmother | 1.59 | 1.56 | 1.55 | 1.55 | 1.54 |
Father/mother-in-law | 0.56 | 0.58 | 0.39 | 0.28 | 0.29 |
Grandchild | 2.24 | 2.23 | 2.26 | 2.25 | 2.27 |
Great-grandchild | 0.02 | 0.03 | 0.03 | 0.11 | 0.03 |
Brother or sister | 1.49 | 1.51 | 1.51 | 1.51 | 1.51 |
Grandfather or grandmother | 0.27 | 0.26 | 0.36 | 0.46 | 0.47 |
Other relative | 1.22 | 1.22 | 1.21 | 1.23 | 1.21 |
Age | 41.283 | 41.321 | 41.337 | 41.377 | 41.396 |
Sex | |||||
Male | 48.39 | 48.39 | 48.38 | 48.38 | 48.38 |
Female | 51.61 | 51.61 | 51.62 | 51.62 | 51.62 |
Education | |||||
Lower middle level of education | 46.96 | 46.96 | 46.99 | 46.99 | 46.95 |
Higher middle level of education | 53.04 | 53.04 | 53.01 | 53.01 | 53.05 |
Housing condition | |||||
Own—already paid | 66.05 | 66.03 | 66.22 | 66.31 | 66.56 |
Own—still paying | 7.38 | 7.42 | 7.37 | 7.34 | 7.33 |
Rented | 15.66 | 15.62 | 15.43 | 15.46 | 15.17 |
Provided by employer | 1.25 | 1.25 | 1.26 | 1.23 | 1.24 |
Granted by family member | 8.38 | 8.41 | 8.47 | 8.42 | 8.45 |
Otherwise given | 0.9 | 0.92 | 0.89 | 0.88 | 0.86 |
Other condition | 0.38 | 0.35 | 0.35 | 0.34 | 0.39 |
Septmeber 2020 | March 2021 | March 2022 | |
---|---|---|---|
HH size | 3.168 | 3.142 | 3.158 |
Age | 39.667 | 39.819 | 39.76 |
Sex | |||
Male | 48.75 | 48.74 | 48.98 |
Female | 51.25 | 51.26 | 51.02 |
Race | |||
White | 76.66 | 76.81 | 76.41 |
Black | 13.05 | 12.81 | 12.94 |
American Indian | 1.09 | 1.16 | 1.26 |
Asian | 6.33 | 6.22 | 6.4 |
Multiracial | 2.86 | 3 | 2.99 |
Marital status | |||
Married | 59.57 | 59.38 | 59.01 |
Separated | 1.39 | 1.39 | 1.34 |
Divorced | 8.2 | 8.15 | 7.88 |
Widowed | 4.78 | 4.77 | 4.85 |
Never married/single | 26.07 | 26.31 | 26.92 |
Citizenship | |||
Born in U.S. | 85.51 | 85.26 | 84.84 |
Born abroad of American parents | 0.85 | 0.78 | 0.8 |
Naturalized citizen | 7.13 | 7.15 | 7.03 |
Not a citizen | 6.51 | 6.81 | 7.34 |
Veteran status | |||
No | 94.68 | 94.62 | 94.71 |
Yes | 5.32 | 5.38 | 5.29 |
Employment status | |||
Employed | 63.92 | 64.31 | 66.18 |
Armed forces | 0.31 | 0.39 | 0.3 |
Unemployed | 3.72 | 3 | 1.86 |
Not in the labor force | 32.04 | 32.3 | 31.67 |
Education | |||
Not in universe or blank | 18.18 | 18.04 | 17.96 |
None or preschool | 0.26 | 0.26 | 0.24 |
Primary | 1.31 | 1.34 | 1.39 |
Secondary | 32.12 | 31.77 | 32.59 |
Higher | 48.13 | 48.58 | 47.82 |
Any physical or cognitive difficulty | |||
No difficulty | 90.73 | 90.53 | 89.85 |
Has difficulty | 9.27 | 9.47 | 10.15 |
Region | |||
New England division | 4.51 | 4.56 | 4.55 |
Middle Atlantic division | 12.35 | 12.02 | 12.38 |
East North Central division | 14.57 | 14.33 | 14.32 |
West North Central division | 6.58 | 6.53 | 6.63 |
South Atlantic division | 19.92 | 20.35 | 20.22 |
East South Central division | 5.8 | 5.88 | 5.82 |
West South Central division | 12.3 | 12.35 | 12.35 |
Mountain division | 7.68 | 7.82 | 7.75 |
Pacific division | 16.28 | 16.16 | 15.97 |
COVID-19 | |||
Worked remotely | |||
No | 89.57 | 90.23 | 95.13 |
Yes | 10.43 | 9.77 | 4.87 |
Unable to work | |||
No | 94.07 | 96.51 | 99.24 |
Yes | 5.93 | 3.49 | 0.76 |
Received pay for hours not worked | |||
No | 99.38 | 99.64 | 99.88 |
Yes | 0.62 | 0.36 | 0.12 |
Prevented from looking for work | |||
No | 98.63 | 98.86 | 99.74 |
Yes | 1.37 | 1.14 | 0.26 |
Gini Coefficient | Theil Index | Palma Ratio | |
---|---|---|---|
HH size | −0.00815 *** [0.001584] | −0.0108783 *** [0.0033827] | −0.12564 *** [0.022856] |
Age | 0.001797 *** [0.000573] | 0.0024449 [0.0014952] | 0.030224 *** [0.00817] |
Age squared | −0.0000166 *** [0.00000616] | −0.0000183 [0.0000166] | −0.00029 *** [0.0000877] |
Sex | |||
Male | 0 [.] | 0 [.] | 0 [.] |
Female | −0.00653 *** [0.002401] | −0.0109197 * [0.0056204] | −0.09288 *** [0.034329] |
Race | |||
White | 0 [.] | 0 [.] | 0 [.] |
Black | 0.046011 [0.006764] | 0.0769323 *** [0.0158989] | 0.653059 *** [0.098158] |
American Indian | 0.039386 *** [0.01497] | 0.0614158 ** [0.0275475] | 0.544394 ** [0.22183] |
Asian | 0.012905 [0.012303] | 0.0217008 [0.0267455] | 0.178721 [0.176497] |
Multiracial | 0.011604 [0.010733] | 0.0137372 [0.0189764] | 0.168973 [0.15657] |
Marital status | |||
Married | 0 [.] | 0 [.] | 0 [.] |
Separated | 0.041234 *** [0.010306] | 0.0679596 *** [0.0203215] | 0.640012 *** [0.150061] |
Divorced | 0.018071 *** [0.006643] | 0.0311156 * [0.016222] | 0.282264 *** [0.094675] |
Widowed | 0.018153 ** [0.007417] | 0.0249584 [0.0192458] | 0.281175 *** [0.106095] |
Never married/single | 0.01593 *** [0.006104] | 0.0290203 * [0.0149742] | 0.25472 *** [0.086846] |
Citizenship | |||
Born in the U.S. | 0 [.] | 0 [.] | 0 [.] |
Born abroad to American parents | −0.00598 [0.01606] | −0.0383404 [0.030225] | −0.07999 [0.227661] |
Naturalized citizen | 0.020107 ** [0.008118] | 0.0255147 [0.0179038] | 0.268313 ** [0.116514] |
Not a citizen | 0.053406 *** [0.009109] | 0.0866233 *** [0.0196663] | 0.774836 *** [0.131741] |
Veteran status | |||
No | 0 [.] | 0 [.] | 0 [.] |
Yes | −0.03456 *** [0.007199] | −0.0598934 *** [0.0180326] | −0.50792 *** [0.10224] |
Employment status | |||
Employed | 0 [.] | 0 [.] | 0 [.] |
Armed forces | −0.02125 [0.014859] | −0.0238634 [0.0359497] | −0.36952 ** [0.207821] |
Unemployed | 0.051455 *** [0.008691] | 0.0872279 *** [0.0196423] | 0.742665 *** [0.124913] |
Not in the labor force | 0.068133 *** [0.004675] | 0.1010882 *** [0.0115641] | 1.001666 *** [0.066547] |
Education | |||
None or blank | 0 [.] | 0 [.] | 0 [.] |
None or preschool | −0.08899 *** [0.019131] | −0.1503111 *** [0.0351639] | −1.2253 *** [0.285205] |
Primary | −0.03461 [0.013693] | −0.0579251 ** [0.0278469] | −0.47562 ** [0.199911] |
Secondary | −0.09514 *** [0.008995] | −0.138117 *** [0.022511] | −1.44216 *** [0.12833] |
Higher | −0.11596 *** [0.009481] | −0.1838974 *** [0.0234096] | −1.71117 *** [0.135292] |
Any physical or cognitive difficulty | |||
No difficulty | 0 [.] | 0 [.] | 0 [.] |
Has difficulty | 0.024694 *** [0.00478] | 0.0366356 *** [0.0112673] | 0.378729 *** [0.068881] |
Covered by health insurance | |||
Covered | 0 [.] | 0 [.] | 0 [.] |
Not covered | 0.048943 *** [0.006076] | 0.0904221 *** [0.0138452] | 0.658334 *** [0.088358] |
Region | |||
New England division | 0 [.] | 0 [.] | 0 [.] |
Middle Atlantic division | −0.01365 [0.013354] | −0.0316571 [0.0336348] | −0.18185 [0.18993] |
East North Central division | −0.00742 [0.013289] | 0.0010195 [0.0345961] | −0.12026 [0.188713] |
West North Central division | −0.00652 [0.016109] | 0.0103461 [0.0495176] | −0.10035 [0.227392] |
South Atlantic division | −0.00482 [0.012468] | −0.0035884 [0.0322178] | −0.076 [0.177182] |
East South Central division | 0.006529 [0.013121] | 0.0133189 [0.0329608] | 0.067251 [0.18725] |
West South Central division | 0.003286 [0.013386] | 0.0144821 [0.0342171] | 0.053746 [0.190389] |
Mountain division | −0.02071 [0.01321] | −0.0417687 [0.0330394] | −0.29021 [0.187907] |
Pacific division | −0.00717 [0.013] | −0.019587 [0.0327385] | −0.11132 [0.18498] |
COVID-19 VARIABLES | |||
Worked remotely | |||
No | 0 [.] | 0 [.] | 0 [.] |
Yes | 0.066422 *** [0.009759] | 0.0816084 *** [0.0288994] | 0.969071 *** [0.137752] |
Unable to work | |||
No | 0 [.] | 0 [.] | 0 [.] |
Yes | −0.00484 [0.008533] | −0.019589 [0.0177861] | −0.07369 [0.122773] |
Received pay for hours not worked | |||
No | 0 [.] | 0 [.] | 0 [.] |
Yes | −0.03991 * [0.020726] | −0.0794891 ** [0.032875] | −0.55877 ** [0.298328] |
Prevented from looking for work | |||
No | 0 [.] | 0 [.] | 0 [.] |
Yes | 0.027493 ** [0.010943] | 0.0443766 ** [0.0191796] | 0.421258 *** [0.161135] |
CONSTANT | 0.483039 *** [0.017177] | 0.4139996 *** [0.0444194] | 2.923833 *** [0.244291] |
Number of observations | 106,228 | 106,228 | 106,228 |
Prob > F | 0.0000 | 0.0000 | 0.0000 |
R-squared | 0.0230 | 0.0099 | 0.0254 |
July | August | September | October | November | |
---|---|---|---|---|---|
Positive for COVID-19 | 0.0358 *** [0.0133] | 0.0370 ** [0.0173] | 0.0515 *** [0.0156] | 0.0439 *** [0.0138] | 0.0412 *** [0.00942] |
HH size | −0.00617 *** [0.000912] | −0.00618 *** [0.000957] | −0.00682 *** [0.000758] | −0.00402 *** [0.000759] | −0.00234 *** [0.000750] |
Worked in the last week | −0.0293 *** [0.00260] | −0.0419 *** [0.00259] | −0.0468 *** [0.00249] | −0.0799 *** [0.00240] | −0.0999 *** [0.00241] |
Race (reference category “White”) | |||||
Black | −0.0800 *** [0.00376] | −0.0835 *** [0.00386] | −0.0855 *** [0.00362] | −0.0737 *** [0.00360] | −0.0664 *** [0.00365] |
Asian | 0.0397 [0.0280] | 0.0515 * [0.0305] | 0.00359 [0.0174] | 0.0376 [0.0282] | 0.0313 [0.0281] |
White–Black | −0.0680 *** [0.00273] | −0.0704 *** [0.00282] | −0.0682 *** [0.00268] | −0.0540 *** [0.00263] | −0.0515 *** [0.00252] |
Indigenous | −0.0683 *** [0.00915] | −0.0781 *** [0.00904] | −0.0785 *** [0.00846] | −0.0591 *** [0.00911] | −0.0510 *** [0.00888] |
Area (reference category “Capital”) | |||||
Metropolitan region, excluding the capital | −0.113 *** [0.00532] | −0.112 *** [0.00542] | −0.110 *** [0.00519] | −0.102 *** [0.00508] | −0.100 *** [0.00484] |
Integrated economic development region, excluding the capital | −0.124 *** [0.00626] | −0.122 *** [0.00614] | −0.116 *** [0.00589] | −0.105 *** [0.00583] | −0.0910 *** [0.00585] |
Federation unit | −0.132 *** [0.00427] | −0.129 *** [0.00432] | −0.127 *** [0.00403] | −0.114 *** [0.00385] | −0.113 *** [0.00378] |
Urban area | 0 [.] | 0 [.] | 0 [.] | 0 [.] | 0 [.] |
Rural area | −0.00441 ** [0.00194] | −0.00420 ** [0.00183] | −0.00300 [0.00193] | 0.0187 *** [0.00191] | 0.0182 *** [0.00189] |
Relationship with HH head (reference category “HH head”) | |||||
Spouse | −0.00123 [0.00389] | −0.00187 [0.00390] | −0.00138 [0.00371] | −0.00556 [0.00361] | −0.000167 [0.00355] |
Child of the parent and spouse | −0.0140 *** [0.00484] | −0.0167 *** [0.00510] | −0.0172 *** [0.00479] | −0.0418 *** [0.00479] | −0.0441 *** [0.00477] |
Child only of the responsible person | −0.0588 *** [0.00383] | −0.0589 *** [0.00405] | −0.0592 *** [0.00388] | −0.0737 *** [0.00413] | −0.0794 *** [0.00414] |
Spouse’s child only | −0.000617 [0.00757] | 0.00909 [0.0128] | 0.00327 [0.0106] | −0.0219 ** [0.0106] | −0.0204 * [0.0109] |
Son-in-law or daughter-in-law | −0.0535 *** [0.0108] | −0.0646 *** [0.0104] | −0.0675 *** [0.0100] | −0.0836 *** [0.0101] | −0.0922 *** [0.00902] |
Father, mother, stepfather, or stepmother | −0.0498 *** [0.00770] | −0.0466 *** [0.00791] | −0.0490 *** [0.00733] | −0.0424 *** [0.00820] | −0.0358 *** [0.00840] |
Father/mother-in-law | −0.00986 [0.0171] | −0.00112 [0.0189] | −0.00674 [0.0180] | −0.00637 [0.0174] | −0.00312 [0.0180] |
Grandchild | −0.108 *** [0.00511] | −0.107 *** [0.00733] | −0.113 *** [0.00521] | −0.168 *** [0.00534] | −0.179 *** [0.00583] |
Great-grandchild | −0.152 *** [0.0126] | −0.142 *** [0.0171] | −0.153 *** [0.0170] | −0.208 *** [0.0173] | −0.228 *** [0.0165] |
Brother or sister | −0.0578 *** [0.00792] | −0.0532 *** [0.00849] | −0.0554 *** [0.00759] | −0.0745 *** [0.00798] | −0.0694 *** [0.00798] |
Grandfather or grandmother | −0.121 *** [0.0127] | −0.113 *** [0.0138] | −0.105 *** [0.0140] | −0.0988 *** [0.0137] | −0.0905 *** [0.0156] |
Other relative | −0.0540 *** [0.00812] | −0.0639 *** [0.00851] | −0.0520 *** [0.00879] | −0.0830 *** [0.00668] | −0.0880 *** [0.00669] |
Age | −0.00154 *** [0.000339] | −0.00127 *** [0.000350] | −0.00122 *** [0.000326] | −0.00233 *** [0.000326] | −0.00270 *** [0.000343] |
Age squared | 0.0000153 *** [0.00000364] | 0.0000111 *** [0.00000369] | 0.00000934 *** [0.00000345] | 0.00000763 ** [0.00000342] | 0.00000743 ** [0.00000364] |
Sex (reference category “Male”) | |||||
Female | −0.0185 *** [0.00279] | −0.0198 *** [0.00285] | −0.0178 *** [0.00267] | −0.0134 *** [0.00266] | −0.0131 *** [0.00262] |
Education (reference category “Lower middle-level”) | |||||
Higher middle level of education | 0.0919 *** [0.00228] | 0.0920 *** [0.00229] | 0.0890 *** [0.00221] | 0.0753 *** [0.00220] | 0.0732 *** [0.00222] |
Housing condition (reference category “Own—already paid”) | |||||
Own—still paying | 0.0211 *** [0.00816] | 0.0121 * [0.00735] | 0.0111 [0.00681] | 0.00872 [0.00755] | 0.00864 [0.00737] |
Rented | −0.00531 [0.00416] | −0.00600 [0.00425] | −0.00659 * [0.00378] | −0.0125 *** [0.00383] | −0.0137 *** [0.00373] |
Provided by employer | 0.00528 [0.00450] | 0.00640 [0.00478] | 0.0137 [0.0119] | −0.00411 [0.00467] | 0.00107 [0.00447] |
Granted by family member | −0.0423 *** [0.00270] | −0.0424 *** [0.00311] | −0.0472 *** [0.00284] | −0.0358 *** [0.00335] | −0.0299 *** [0.00335] |
Otherwise given | 0.00679 [0.00692] | 0.00803 [0.00686] | 0.00828 [0.00787] | 0.0152 ** [0.00704] | 0.00949 [0.00707] |
Other condition | −0.0677 *** [0.0101] | −0.0579 *** [0.0126] | −0.0724 *** [0.0102] | −0.0487 *** [0.0135] | −0.0510 *** [0.0122] |
Constant | 0.603 *** [0.00959] | 0.610 *** [0.00994] | 0.617 *** [0.00918] | 0.694 *** [0.00938] | 0.726 *** [0.00989] |
Number of observations | 297,349 | 299,668 | 300,448 | 294,930 | 295,179 |
Prob > F | 0.0000 | 0.0000 | 0.0000 | 0.0000 | 0.0000 |
R-squared | 0.0354 | 0.0352 | 0.0364 | 0.0308 | 0.0325 |
July | August | September | October | November | |
---|---|---|---|---|---|
Positive for COVID-19 | 0.0700 ** [0.0346] | 0.104 [0.0793] | 0.114 *** [0.0415] | 0.0961 ** [0.0375] | 0.0791 *** [0.0230] |
HH size | −0.00738 ** [0.00330] | −0.00779 ** [0.00343] | −0.0110 *** [0.00173] | −0.00661 *** [0.00182] | −0.00350 * [0.00181] |
Worked in the last week | −0.0386 *** [0.00630] | −0.0646 *** [0.00614] | −0.0706 *** [0.00584] | −0.123 *** [0.00573] | −0.160 *** [0.00584] |
Race (reference category “White”) | |||||
Black | −0.129 *** [0.0105] | −0.136 *** [0.0106] | −0.134 *** [0.00900] | −0.120 *** [0.00934] | −0.107 *** [0.00951] |
Asian | 0.0879 [0.0818] | 0.122 [0.0912] | −0.0392 [0.0337] | 0.0638 [0.0863] | 0.0551 [0.0891] |
White–Black | −0.113 *** [0.00740] | −0.117 *** [0.00783] | −0.110 *** [0.00638] | −0.0909 *** [0.00641] | −0.0853 *** [0.00624] |
Indigenous | −0.123 *** [0.0147] | −0.136 *** [0.0162] | −0.133 *** [0.0133] | −0.114 *** [0.0148] | −0.0971 *** [0.0149] |
Area (reference category “Capital”) | |||||
Metropolitan region, excluding the capital | −0.203 *** [0.0140] | −0.200 *** [0.0141] | −0.195 *** [0.0126] | −0.185 *** [0.0128] | −0.183 *** [0.0122] |
Integrated economic development region, excluding the capital | −0.210 *** [0.0135] | −0.205 *** [0.0140] | −0.193 *** [0.0125] | −0.182 *** [0.0121] | −0.160 *** [0.0123] |
Federation unit | −0.235 *** [0.0119] | −0.230 *** [0.0119] | −0.222 *** [0.00996] | −0.206 *** [0.00982] | −0.208 *** [0.00984] |
Urban area | 0 [.] | 0 [.] | 0 [.] | 0 [.] | 0 [.] |
Rural area | 0.0132 ** [0.00539] | 0.0125 ** [0.00493] | 0.0124 ** [0.00505] | 0.0460 *** [0.00498] | 0.0462 *** [0.00501] |
Relationship with HH head (reference category “HH head”) | |||||
Spouse | −0.00198 [0.0105] | −0.00299 [0.0105] | −0.00112 [0.00916] | −0.0107 [0.00930] | −0.000417 [0.00926] |
Child of the parent and spouse | −0.0648 *** [0.0118] | −0.0712 *** [0.0123] | −0.0659 *** [0.0104] | −0.111 *** [0.0110] | −0.119 *** [0.0113] |
Child only of the responsible person | −0.124 *** [0.00908] | −0.128 *** [0.00924] | −0.121 *** [0.00806] | −0.151 *** [0.00897] | −0.165 *** [0.00935] |
Spouse’s child only | −0.0345 ** [0.0144] | −0.0153 [0.0257] | −0.0165 [0.0211] | −0.0611 *** [0.0218] | −0.0641 *** [0.0231] |
Son-in-law or daughter-in-law | −0.114 *** [0.0283] | −0.140 *** [0.0271] | −0.142 *** [0.0251] | −0.170 *** [0.0246] | −0.190 *** [0.0215] |
Father, mother, stepfather, or stepmother | −0.108 *** [0.0165] | −0.107 *** [0.0171] | −0.107 *** [0.0148] | −0.0972 *** [0.0183] | −0.0854 *** [0.0193] |
Father/mother-in-law | −0.0372 [0.0373] | −0.0229 [0.0397] | −0.0199 [0.0390] | −0.0252 [0.0408] | −0.0216 [0.0433] |
Grandchild | −0.223 *** [0.0106] | −0.220 *** [0.0156] | −0.224 *** [0.00999] | −0.317 *** [0.0109] | −0.345 *** [0.0121] |
Great-grandchild | −0.269 *** [0.0223] | −0.265 *** [0.0271] | −0.268 *** [0.0271] | −0.370 *** [0.0289] | −0.420 *** [0.0301] |
Brother or sister | −0.118 *** [0.0191] | −0.108 *** [0.0197] | −0.109 *** [0.0171] | −0.144 *** [0.0191] | −0.139 *** [0.0194] |
Grandfather or grandmother | −0.222 *** [0.0234] | −0.212 *** [0.0247] | −0.192 *** [0.0229] | −0.183 *** [0.0245] | −0.175 *** [0.0293] |
Other relative | −0.120 *** [0.0250] | −0.135 *** [0.0264] | −0.107 *** [0.0261] | −0.177 *** [0.0122] | −0.191 *** [0.0125] |
Age | −0.00506 *** [0.000801] | −0.00480 *** [0.000804] | −0.00444 *** [0.000721] | −0.00651 *** [0.000744] | −0.00777 *** [0.000840] |
Age squared | 0.0000489 *** [0.00000877] | 0.0000435 *** [0.00000861] | 0.0000386 *** [0.00000786] | 0.0000385 *** [0.00000805] | 0.0000446 *** [0.00000925] |
Sex (reference category “Male”) | |||||
Female | −0.0416 *** [0.00724] | −0.0440 *** [0.00749] | −0.0390 *** [0.00638] | −0.0322 *** [0.00661] | −0.0351 *** [0.00663] |
Education (reference category “Lower middle-level”) | |||||
Higher middle level of education | 0.128 *** [0.00575] | 0.129 *** [0.00549] | 0.124 *** [0.00521] | 0.107 *** [0.00531] | 0.107 *** [0.00555] |
Housing condition (reference category “Own—already paid”) | |||||
Own—still paying | 0.0330 [0.0209] | 0.0169 [0.0189] | 0.00782 [0.0158] | 0.0205 [0.0204] | 0.0172 [0.0201] |
Rented | −0.00334 [0.0135] | −0.00743 [0.0139] | −0.0140 [0.00888] | −0.0189 ** [0.00937] | −0.0213 ** [0.00932] |
Provided by employer | −0.00530 [0.00746] | −0.00122 [0.00784] | 0.0298 [0.0361] | −0.0138 * [0.00813] | −0.00650 [0.00809] |
Granted by family member | −0.0688 *** [0.00535] | −0.0675 *** [0.00661] | −0.0743 *** [0.00576] | −0.0555 *** [0.00809] | −0.0463 *** [0.00820] |
Otherwise given | 0.0203 * [0.0116] | 0.0205 * [0.0115] | 0.0261 * [0.0159] | 0.0272 ** [0.0124] | 0.0231 * [0.0129] |
Other condition | −0.115 *** [0.0152] | −0.0958 *** [0.0184] | −0.116 *** [0.0156] | −0.0845 *** [0.0204] | −0.0837 *** [0.0188] |
Constant | 0.734 *** [0.0222] | 0.753 *** [0.0229] | 0.753 *** [0.0199] | 0.883 *** [0.0216] | 0.954 *** [0.0245] |
Number of observations | 297,349 | 299,668 | 300,448 | 294,930 | 295,179 |
Prob > F | 0.0000 | 0.0000 | 0.0000 | 0.0000 | 0.0000 |
R-squared | 0.0136 | 0.0134 | 0.0155 | 0.0141 | 0.0138 |
July | August | September | October | November | |
---|---|---|---|---|---|
Positive for COVID-19 | 0.400 *** [0.148] | 0.404 ** [0.191] | 0.579 *** [0.176] | 0.548 *** [0.183] | 0.572 *** [0.137] |
HH size | −0.0607 *** [0.0100] | −0.0623 *** [0.0107] | −0.0667 *** [0.00862] | −0.0601 *** [0.0102] | −0.0304 *** [0.0109] |
Worked in the last week | −0.290 *** [0.0290] | −0.435 *** [0.0293] | −0.491 *** [0.0283] | −1.277 *** [0.0324] | −1.662 *** [0.0353] |
Race (reference category “White”) | |||||
Black | −0.895 *** [0.0417] | −0.951 *** [0.0434] | −0.983 *** [0.0410] | −0.949 *** [0.0485] | −0.959 *** [0.0532] |
Asian | 0.426 [0.311] | 0.594 * [0.341] | 0.0419 [0.202] | 0.514 [0.372] | 0.450 [0.402] |
White–Black | −0.758 *** [0.0303] | −0.801 *** [0.0318] | −0.784 *** [0.0305] | −0.674 *** [0.0353] | −0.730 *** [0.0366] |
Indigenous | −0.791 *** [0.0998] | −0.913 *** [0.0998] | −0.907 *** [0.0923] | −0.738 *** [0.126] | −0.724 *** [0.134] |
Area (reference category “Capital”) | |||||
Metropolitan region, excluding the capital | −1.257 *** [0.0594] | −1.271 *** [0.0613] | −1.255 *** [0.0591] | −1.338 *** [0.0679] | −1.454 *** [0.0703] |
Integrated economic development region, excluding the capital | −1.378 *** [0.0687] | −1.378 *** [0.0682] | −1.325 *** [0.0661] | −1.355 *** [0.0803] | −1.310 *** [0.0870] |
Federation unit | −1.452 *** [0.0476] | −1.458 *** [0.0487] | −1.436 *** [0.0459] | −1.494 *** [0.0514] | −1.623 *** [0.0548] |
Urban area | 0 [.] | 0 [.] | 0 [.] | 0 [.] | 0 [.] |
Rural area | −0.0472 ** [0.0213] | −0.0466 ** [0.0203] | −0.0342 [0.0217] | 0.313 *** [0.0261] | 0.332 *** [0.0279] |
Relationship with HH head (reference category “HH head”) | |||||
Spouse | −0.00114 [0.0432] | −0.0116 [0.0440] | −0.00572 [0.0422] | −0.0591 [0.0481] | 0.0350 [0.0514] |
Child of the parent and spouse | 0.302 [0.526] | 0.465 [0.690] | 0.790 [0.699] | 1.600 * [0.926] | 1.335 [1.056] |
Child only of the responsible person | −0.113 ** [0.0540] | −0.138 ** [0.0576] | −0.145 *** [0.0547] | −0.596 *** [0.0646] | −0.600 *** [0.0695] |
Spouse’s child only | −0.613 *** [0.0426] | −0.619 *** [0.0458] | −0.623 *** [0.0442] | −1.035 *** [0.0560] | −1.133 *** [0.0606] |
Son-in-law or daughter-in-law | 0.0256 [0.0837] | 0.136 [0.146] | 0.0664 [0.121] | −0.344 ** [0.145] | −0.297 * [0.162] |
Father, mother, stepfather, or stepmother | −0.541 *** [0.119] | −0.657 *** [0.116] | −0.699 *** [0.112] | −1.186 *** [0.134] | −1.330 *** [0.131] |
Father/mother-in-law | −0.579 *** [0.0859] | −0.558 *** [0.0896] | −0.590 *** [0.0835] | −0.582 *** [0.110] | −0.570 *** [0.122] |
Grandchild | −0.164 [0.193] | −0.0609 [0.215] | −0.135 [0.207] | −0.159 [0.235] | −0.162 [0.261] |
Great-grandchild | −1.093 *** [0.0559] | −1.085 *** [0.0825] | −1.152 *** [0.0586] | −2.410 *** [0.0720] | −2.622 *** [0.0850] |
Brother or sister | −1.470 *** [0.126] | −1.411 *** [0.181] | −1.573 *** [0.182] | −3.050 *** [0.231] | −3.471 *** [0.234] |
Grandfather or grandmother | −0.634 *** [0.0879] | −0.579 *** [0.0957] | −0.603 *** [0.0859] | −1.039 *** [0.107] | −1.022 *** [0.116] |
Other relative | −1.434 *** [0.135] | −1.312 *** [0.148] | −1.239 *** [0.150] | −1.388 *** [0.186] | −1.405 *** [0.221] |
Age | −0.0165 *** [0.00377] | −0.0128 *** [0.00396] | −0.0127 *** [0.00371] | −0.0383 *** [0.00440] | −0.0415 *** [0.00499] |
Age squared | 0.000189 *** [0.0000406] | 0.000138 *** [0.0000417] | 0.000124 *** [0.0000393] | 0.000131 *** [0.0000461] | 0.000114 ** [0.0000529] |
Sex (reference category “Male”) | |||||
Female | −0.227 *** [0.0311] | −0.246 *** [0.0322] | −0.225 *** [0.0304] | −0.146 *** [0.0357] | −0.189 *** [0.0381] |
Education (reference category “Lower middle-level”) | |||||
Higher middle level of education | 1.009 *** [0.0252] | 1.028 *** [0.0258] | 1.004 *** [0.0251] | 0.923 *** [0.0297] | 1.009 *** [0.0324] |
Housing condition (reference category “Own—already paid”) | |||||
Own—still paying | 0.235 *** [0.0910] | 0.142 * [0.0829] | 0.135 * [0.0778] | 0.103 [0.100] | 0.134 [0.106] |
Rented | −0.0562 [0.0460] | −0.0716 [0.0478] | −0.0719 * [0.0431] | −0.172 *** [0.0513] | −0.211 *** [0.0543] |
Provided by employer | 0.0352 [0.0496] | 0.0507 [0.0541] | 0.135 [0.133] | −0.0730 [0.0652] | −0.0264 [0.0685] |
Granted by family member | −0.478 *** [0.0299] | −0.485 *** [0.0348] | −0.537 *** [0.0321] | −0.443 *** [0.0453] | −0.414 *** [0.0490] |
Otherwise given | 0.0716 [0.0769] | 0.0763 [0.0778] | 0.0883 [0.0895] | 0.241 ** [0.0986] | 0.150 [0.107] |
Other condition | −0.702 *** [0.110] | −0.579 *** [0.143] | −0.765 *** [0.115] | −0.629 *** [0.188] | −0.770 *** [0.183] |
Constant | 4.019 *** [0.107] | 4.112 *** [0.112] | 4.182 *** [0.105] | 6.068 *** [0.127] | 6.628 *** [0.144] |
Number of observations | 297,349 | 299,668 | 300,448 | 294,930 | 295,179 |
Prob > F | 0.0000 | 0.0000 | 0.0000 | 0.0000 | 0.0000 |
R-squared | 0.0349 | 0.0352 | 0.0362 | 0.0309 | 0.0338 |
September 2020 | March 2021 | March 2022 | |
---|---|---|---|
HH size | 0.005594 *** [0.001267] | 0.002949 *** [0.001264] | 0.001796 [0.00135] |
Age | 0.001749 *** [0.000323] | 0.002271 *** [0.000323] | 0.001659 *** [0.000325] |
Age squared | −0.0000173 *** [0.00000327] | −0.000025 *** [0.00000323] | −0.0000178 *** [0.00000323] |
Sex (reference category “Male”) | |||
Female | −0.00109 [0.001687] | −0.00248 [0.001684] | −0.00138 [0.00162] |
Race (reference category “White”) | |||
Black | 0.041355 *** [0.004446] | 0.031062 *** [0.004414] | 0.035547 *** [0.004514] |
American Indian | 0.043588 *** [0.015333] | 0.020953 * [0.012154] | 0.050187 *** [0.010954] |
Asian | −0.01117 * [0.006518] | −0.00018 [0.00677] | −0.007 [0.006655] |
Multiracial | 0.02483 *** [0.008789] | 0.01673 ** [0.008475] | 0.00362 [0.007317] |
Marital status (reference category “Married”) | |||
Separated | 0.058732 *** [0.008949] | 0.061155 *** [0.008963] | 0.061924 *** [0.008609] |
Divorced | 0.025282 *** [0.004406] | 0.023086 *** [0.0043] | 0.034609 *** [0.00448] |
Widowed | 0.006089 [0.005124] | 0.006217 [0.005113] | 0.015129 *** [0.004972] |
Never married/single | 0.038972 *** [0.004085] | 0.036583 *** [0.004083] | 0.035091 *** [0.003865] |
Citizenship (reference category “Born in U.S.”) | |||
Born abroad to American parents | 0.000503 [0.013886] | 0.031243 ** [0.012919] | 0.014425 ** [0.0142] |
Naturalized citizen | 0.022197 *** [0.004851] | 0.023166 *** [0.004801] | 0.021186 *** [0.004684] |
Not a citizen | 0.074587 *** [0.005783] | 0.071512 *** [0.005411] | 0.070237 *** [0.005327] |
Veteran status (reference category “No”) | |||
Yes | −0.02115 *** [0.004329] | −0.01861 *** [0.004134] | −0.02175 *** [0.004094] |
Employment status (reference category “Employed”) | |||
Armed forces | 0.009455 [0.015358] | −0.00334 [0.012687] | 0.00379 [0.01225] |
Unemployed | 0.051503 *** [0.005182] | 0.062713 *** [0.005803] | 0.072168 *** [0.007138] |
Not in the labor force | 0.043628 *** [0.002715] | 0.05092 *** [0.002658] | 0.046276 *** [0.002546] |
Education(reference category “Not in universe or blank”) | |||
None or preschool | −0.03944 [0.02152] | −0.03108 [0.019646] | −0.02812 [0.018511] |
Primary | −0.0278 *** [0.010196] | −0.03238 *** [0.010219] | −0.013 [0.011341] |
Secondary | −0.08023 *** [0.006725] | −0.08425 *** [0.006613] | −0.07325 *** [0.006401] |
Higher | −0.10318 *** [0.006864] | −0.11117 *** [0.006746] | −0.10293 *** [0.006538] |
Any physical or cognitive difficulty (reference category “No difficulty”) | |||
Has difficulty | 0.027938 *** [0.003364] | 0.031923 *** [0.003344] | 0.033688 *** [0.003115] |
Region (reference category “New England division”) | |||
Middle Atlantic division | 0.005484 [0.007421] | −0.00363 [0.007472] | −0.00882 [0.00727] |
East North Central division | −0.01313 * [0.006878] | −0.00829 [0.006987] | −0.01348 * [0.006947] |
West North Central division | −0.0063 [0.007753] | −0.01326 * [0.007461] | −0.0132 * [0.007593] |
South Atlantic division | −0.00457 [0.006717] | 0.005978 [0.006666] | 0.002563 [0.006695] |
East South Central division | 0.021226 *** [0.007516] | 0.006027 [0.007262] | 0.007306 [0.007399] |
West South Central division | 0.016122 ** [0.007125] | 0.013386 * [0.007027] | 0.014785 ** [0.007092] |
Mountain division | −0.01144 [0.007268] | −0.00889 [0.007291] | −0.00849 [0.007395] |
Pacific division | 0.013864 * [0.007209] | 0.008813 [0.007018] | −0.00152 [0.00699] |
COVID-19 | |||
Worked remotely (reference category “No”) | |||
Yes | 0.050598 *** [0.005055] | 0.049904 *** [0.0051] | 0.047001 *** [0.007299] |
Unable to work (reference category “No”) | |||
Yes | 0.007915 [0.004872] | 0.016675 *** [0.005995] | 0.029035 ** [0.012276] |
Received pay for hours not worked (reference category “No”) | |||
Yes | −0.01263 [0.014048] | −0.03318 * [0.018676] | −0.04893 [0.037663] |
Prevented from looking for work (reference category “No”) | |||
Yes | 0.022179 *** [0.007898] | 0.034795 *** [0.008919] | 0.04842 *** [0.017167] |
Did not get medical care for a non-COVID-19 condition (reference category “No”) | |||
Yes | 0.017468 * [0.008631] | — — | — — |
Constant | 0.485149 *** [0.008457] | 0.521287 *** [0.008416] | 0.546077 *** [0.009054] |
Number of observations | 111,132 | 107,334 | 100,535 |
Prob > F | 0.0000 | 0.0000 | 0.0000 |
R-squared | 0.0299 | 0.0317 | 0.0371 |
September 2020 | March 2021 | March 2022 | |
---|---|---|---|
HH size | 0.0057292 ** [0.0025454] | −0.000658 [0.0027235] | −0.0039014 [0.0031083] |
Age | 0.003203 *** [0.0006231] | 0.0041546 *** [0.0006695] | 0.0028179 *** [0.0007182] |
Age squared | −0.0000299 *** [0.00000627] | −0.0000441 *** [0.00000667] | −0.0000295 *** [0.000000707] |
Sex (reference category “Male”) | |||
Female | −0.0003142 [0.0034476] | −0.0014374 [0.0036687] | 0.0005713 [0.0036431] |
Race (reference category “White”) | |||
Black | 0.0897122 *** [0.0083788] | 0.0746557 *** [0.0090729] | 0.0888121 *** [0.0097532] |
American Indian | 0.0999627 *** [0.0290721] | 0.0566097 ** [0.025095] | 0.1203011 *** [0.0234133] |
Asian | −0.0456558 *** [0.0125741] | −0.0276881 * [0.0144521] | −0.0314893 ** [0.0150763] |
Multiracial | 0.0518196 *** [0.0169881] | 0.0421298 ** [0.0177839] | 0.0139563 [0.0162528] |
Marital status (reference category “Married”) | |||
Separated | 0.1270413 *** [0.0176974] | 0.1531806 *** [0.0188136] | 0.1526043 *** [0.0187629] |
Divorced | 0.0703839 *** [0.0086103] | 0.0738638 *** [0.0089438] | 0.1013374 *** [0.0096758] |
Widowed | 0.0278146 *** [0.0100408] | 0.0275235 ** [0.0107545] | 0.0491712 *** [0.0107121] |
Never married/single | 0.0889268 *** [0.0079467] | 0.0934215 *** [0.0084747] | 0.0905557 *** [0.0083131] |
Citizenship (reference category “Born in U.S.”) | |||
Born abroad to American parents | 0.0109246 [0.028158] | 0.0602785 ** [0.0276892] | 0.0311001 [0.031401] |
Naturalized citizen | 0.0540756 *** [0.0092886] | 0.0554648 *** [0.0098935] | 0.0563475 *** [0.0101893] |
Not a citizen | 0.1599625 *** [0.0112638] | 0.1692001 *** [0.0110646] | 0.1717154 *** [0.011786] |
Veteran status (reference category “No”) | |||
Yes | −0.0349153 *** [0.008273] | −0.0278908 *** [0.0083259] | −0.0355936 *** [0.0086096] |
Employment status (reference category “Employed”) | |||
Armed forces | 0.045763 [0.0304945] | 0.0321725 [0.0262847] | 0.0374763 [0.0258739] |
Unemployed | 0.1008877 *** [0.0098125] | 0.1347499 *** [0.0120487] | 0.1625785 *** [0.0154066] |
Not in the labor force | 0.083628 *** [0.0051652] | 0.1053439 *** [0.0054429] | 0.1037226 *** [0.0054433] |
Education (reference category “Not in universe or blank”) | |||
None or preschool | −0.0849582 ** [0.0416539] | −0.0794584 * [0.0410254] | −0.0777796 * [0.0399449] |
Primary | −0.0588486 *** [0.0193408] | −0.060232 *** [0.0207574] | −0.0173844 [0.0244108] |
Secondary | −0.1515939 *** [0.0131787] | −0.1630433 *** [0.013842] | −0.1445294 *** [0.01405] |
Higher | −0.2157216 *** [0.0133734] | −0.2467094 *** [0.0140552] | −0.2383545 *** [0.014319] |
Any physical or cognitive difficulty (reference category “No difficulty”) | |||
Has difficulty | 0.0588142 *** [0.006408] | 0.0721858 *** [0.0068193] | 0.0788129 *** [0.0065235] |
Region (reference category “New England division”) | |||
Middle Atlantic division | 0.0238743 * [0.0142492] | 0.0057715 [0.0156282] | −0.0148614 [0.0161583] |
East North Central division | 0.0016503 [0.0131006] | 0.0213831 [0.0146066] | −0.0015605 [0.0153301] |
West North Central division | 0.0163755 [0.0149213] | 0.0087046 [0.0155836] | 0.0010452 [0.0167348] |
South Atlantic division | 0.014350 [0.0129103] | 0.039533 *** [0.0139199] | 0.0280241 * [0.0148373] |
East South Central division | 0.0739536 *** [0.0141957] | 0.0575792 *** [0.0149897] | 0.0549912 *** [0.0160406] |
West South Central division | 0.0524142 *** [0.0136056] | 0.0571499 *** [0.0145497] | 0.0542295 *** [0.0156499] |
Mountain division | 0.0058426 [0.0139343] | 0.0128473 [0.0151728] | 0.0103712 [0.0163628] |
Pacific division | 0.0438654 *** [0.0139329] | 0.0379049 *** [0.0146912] | 0.0093812 [0.0155393] |
COVID-19 | |||
Worked remotely (reference category “No”) | |||
Yes | 0.0566538 *** [0.0100657] | 0.0517689 *** [0.0108137] | 0.0458256 *** [0.0160876] |
Unable to work (reference category “No”) | |||
Yes | 0.0281759 *** [0.009364] | 0.0451736 *** [0.0122318] | 0.0720705 *** [0.0254885] |
Received pay for hours not worked (reference category “No”) | |||
Yes | −0.0214357 [0.0261926] | −0.0524728 [0.0390665] | −0.0832072 [0.0814507] |
Prevented from looking for work (reference category “No”) | |||
Yes | 0.0392926 *** [0.014734] | 0.0770644 *** [0.0179403] | 0.1078523 *** [0.0353981] |
Did not get medical care for a non-COVID-19 condition (reference category “No”) | |||
Yes | 0.0396184 ** [0.0164962] | — — | — — |
Constant | 0.3960299 *** [0.0166899] | 0.46841 *** [0.0178375] | 0.5275952 *** [0.0206941] |
Number of observations | 111,132 | 107,334 | 100,535 |
Prob > F | 0.0000 | 0.0000 | 0.0000 |
R-squared | 0.0349 | 0.0317 | 0.0371 |
September 2020 | March 2021 | March 2022 | |
---|---|---|---|
HH size | 0.070701 ** [0.029923] | 0.000567 [0.034758] | 0.022246 [0.040353] |
Age | 0.044886 *** [0.007064] | 0.070347 *** [0.008578] | 0.064267 *** [0.009429] |
Age squared | −0.00043 *** [7.14 × 10−5] | −0.00075 *** [0.000086] | −0.00067 *** [9.37 × 10−5] |
Sex (reference category “Male”) | |||
Female | −0.00146 [0.036292] | −0.04641 [0.043583] | −0.03851 [0.045999] |
Race (reference category “White”) | |||
Black | 1.08496 *** [0.103797] | 0.903123 *** [0.125941] | 1.194694 *** [0.142851] |
American Indian | 1.181797 *** [0.366029] | 0.694208 * [0.354386] | 1.646031 *** [0.353119] |
Asian | −0.3957 *** [0.142073] | −0.24318 [0.182945] | −0.24395 [0.190358] |
Multiracial | 0.606859 *** [0.201898] | 0.508989 ** [0.240623] | 0.113777 [0.226973] |
Marital status (reference category “Married”) | |||
Separated | 1.458869 *** [0.195814] | 1.75382 *** [0.235862] | 1.940761 *** [0.249148] |
Divorced | 0.628153 *** [0.09252] | 0.697782 *** [0.109197] | 1.054921 *** [0.124258] |
Widowed | 0.072223 [0.109564] | 0.136733 [0.130971] | 0.415067 *** [0.139347] |
Never married/single | 0.921743 *** [0.086679] | 1.08198 *** [0.104958] | 1.161567 *** [0.10926] |
Citizenship(reference category “Born in U.S.”) | |||
Born abroad to American parents | 0.029079 [0.282452] | 0.843015 ** [0.335166] | 0.386177 [0.391865] |
Naturalized citizen | 0.48881 *** [0.104924] | 0.656912 *** [0.127776] | 0.554208 *** [0.135683] |
Not a citizen | 1.778457 *** [0.130952] | 2.069272 *** [0.152345] | 2.110115 *** [0.161101] |
Veteran status (reference category “No”) | |||
Yes | −0.43178 *** [0.08935] | −0.48213 *** [0.104461] | −0.64981 *** [0.112666] |
Employment status (reference category “Employed”) | |||
Armed forces | 0.300938 [0.328714] | −0.26294 [0.333393] | −0.0824 [0.360597] |
Unemployed | 1.207317 *** [0.11639] | 1.747777 *** [0.159246] | 2.249202 *** [0.212809] |
Not in the labor force | 1.006354 *** [0.059036] | 1.413616 *** [0.070629] | 1.423349 *** [0.073934] |
Education(reference category “Not in universe or blank”) | |||
None or preschool | −0.8894 * [0.502435] | −0.63496 [0.546911] | −0.68736 [0.592171] |
Primary | −0.54158 ** [0.23699] | −0.86547 *** [0.286404] | −0.35842 [0.343658] |
Secondary | −1.89354 *** [0.146344] | −2.46683 *** [0.175483] | −2.34791 *** [0.187245] |
Higher | −2.48087 *** [0.14929] | −3.20195 *** [0.178885] | −3.1122 *** [0.190837] |
Any physical or cognitive difficulty (reference category “No difficulty”) | |||
Has difficulty | 0.673333 *** [0.074086] | 0.908202 *** [0.089156] | 0.958205 *** [0.091863] |
REGION (reference category “New England division”) | |||
Middle Atlantic division | 0.121185 [0.160824] | −0.14261 [0.198053] | −0.1712 [0.209382] |
East North Central division | −0.1665 [0.149734] | −0.16448 [0.185387] | −0.30902 [0.20032] |
West North Central division | 0.038675 [0.168057] | −0.27396 [0.197443] | −0.24366 [0.220626] |
South Atlantic division | −0.05338 [0.145404] | 0.195963 [0.176447] | 0.10114 [0.191971] |
East South Central division | 0.618495 *** [0.166927] | 0.229453 [0.196532] | 0.2552 [0.216664] |
West South Central division | 0.4743 *** [0.155608] | 0.467274 ** [0.188947] | 0.512081 ** [0.205491] |
Mountain division | −0.10946 [0.157644] | −0.14108 [0.194458] | −0.15717 [0.211799] |
Pacific division | 0.3296 ** [0.155463] | 0.237254 [0.185428] | 0.030212 [0.198737] |
COVID-19 | |||
Worked remotely (reference category “No”) | |||
Yes | 0.937473 *** [0.102109] | 1.231106 *** [0.124753] | 1.358905 *** [0.192518] |
Unable to work (reference category “No”) | |||
Yes | 0.197439 * [0.105765] | 0.50502 *** [0.161227] | 0.945094 *** [0.356748] |
Received pay for hours not worked (reference category “No”) | |||
Yes | −0.14399 [0.297303] | −0.85445 ** [0.482331] | −1.34437 [1.043381] |
Prevented from looking for work (reference category “No”) | |||
Yes | 0.515367 *** [0.18574] | 1.090695 *** [0.252249] | 1.542518 *** [0.547422] |
Did not get medical care for a non-COVID-19 condition (reference category “No”) | |||
Yes | 0.3766479 ** [0.1862112] | — — | — — |
Constant | 2.868523 *** [0.186197] | 3.647679 *** [0.223084] | 3.895004 *** [0.258757] |
Number of observations | 111,132 | 107,334 | 100,535 |
Prob > F | 0.0000 | 0.0000 | 0.0000 |
R-squared | 0.0350 | 0.0317 | 0.0371 |
1 | https://covid19.who.int/data, (accessed on 17 January 2023). |
2 | A comprehensive literature review conducted by Alfani et al. (2023) offers valuable insight. These authors provide a thorough examination of the current body of literature on COVID-19 and inequalities, delving into various dimensions of inequality. They explore the interplay between the pandemic crisis and not only income and consumption expenditures but also health, education, and well-being disparities, sex and ethnic/racial disparities, and “functional” disparities. |
References
- Adams-Prassl, Abi, Teodora Boneva, Marta Golin, and Christopher Rauh. 2020. Inequality in the impact of the coronavirus shock: Evidence from Real Time Surveys. Journal of Public Economics 189: 104245. [Google Scholar] [CrossRef]
- Alfani, F., D. Dhrif, V. Molini, D. Pavelesku, and M. Ranzani. 2021. Living Standards of Tunisian Households in the Midst of the COVID-19 Pandemic. World Bank Policy Research WP No. 9581. Washington, DC: World Bank Group. [Google Scholar]
- Alfani, F., F. Clementi, M. Fabiani, V. Molini, and F. Schettino. 2023. COVID-19 and Inequalities. In Handbook of Labor, Human Resources and Population Economics. Edited by K. F. Zimmermann. Cham: Springer. [Google Scholar] [CrossRef]
- Almeida, M., A. D. Shrestha, D. Stojanac, and L. J. Miller. 2020. The impact of the COVID-19 pandemic on women’s mental health. Arch Womens Ment Health 23: 741–48. [Google Scholar] [CrossRef]
- Alon, T., M. Doepke, J. Olmstead-Rumsey, and M. Tertilt. 2020. The Impact of COVID 19 on Gender Equality. NBER WP No. 26947. Cambridge: NBER. [Google Scholar]
- Barro, R. J., J. F. Ursua, and J. Weng. 2020. The Coronavirus and the Great Influenza Epidemic: Lessons from the “Spanish Flu” for the Coronavirus’ Potential Effects on Mortality and Economic Activity. Washington, DC: American Enterprise Institute. Available online: http://www.jstor.org/stable/resrep24600 (accessed on 2 September 2024).
- Bartik, A. W., M. Bertrand, M. Lin, J. Rothstein, and M. Unrath. 2020. Measuring the Labor Market at the Onset of the COVID-19 Crisis. NBER WP No. 27613. Cambridge: NBER. [Google Scholar]
- Berkhout, Esmé, Nick Galasso, Max Lawson, Pablo Andrés Rivero Morales, Anjela Taneja, and Diego Alejo Vázquez Pimentel. 2021. The Inequality Virus: Bringing Together a World Torn Apart by Coronavirus through a Fair, just and Sustainable Economy. Available online: https://policy-practice.oxfam.org/resources/the-inequality-virus-bringing-together-a-world-torn-apart-by-coronavirus-throug-621149/ (accessed on 20 July 2024).
- Blundell, J., S. Machin, and M. Ventura. 2020. COVID-19 and the Self-Employed: Six Months into the Crisis. Washington, DC: Center of Economic. [Google Scholar]
- Bonacini, L., G. Gallo, and S. Scicchitano. 2021. Working from home and income inequality: Risks of a ‘new normal’ with COVID-19. Journal of Population Economics 34: 303–60. [Google Scholar] [CrossRef] [PubMed]
- Boniol, M., M. McIsaac, L. Xu, T. Wuliji, K. Diallo, and J. Campbell. 2019. Gender Equity in the Health Workforce: Analysis of 104 Countries. Working Paper 1. (WHO/HIS/HWF/Gender/WP1/2019.1). Geneva: World Health Organization. [Google Scholar]
- Brewer, M., and I. Tasseva. 2020. Did the UK Policy Response to COVID-19 Protect Household Incomes? SSRN. Available online: https://ssrn.com/abstract=3628464 (accessed on 20 July 2024).
- Bruckmeier, S. D., G. Philipp, H. Katrin, and Torsten Lietzmann. 2020. New administrative data on welfare dynamics in Germany: The Sample of Integrated Welfare Beneft Biographies (SIG). Journal of Labour Market Research 54: 14. [Google Scholar] [CrossRef]
- Brunori, P., M. L. Maitino, L. Ravagli, and N. Sciclone. 2020. Distant and Unequal. Lockdown and Inequalities in Italy. Economics, Universita’ degli Studi di Firenze, Dipartimento di Scienze per l’Economia e l’Impresa WP 13/20. Singapore: DISEI. [Google Scholar]
- Bundervoet, T., M. E. Davalos, and N. Garcia. 2021. The Short-Term Impacts of COVID-19 on Households in Developing Countries: An Overview Based on a Harmonized Data Set of High-Frequency Surveys. World Bank Policy Research WP No. 9582. Washington, DC: World Bank Group. [Google Scholar]
- Burkhauser, R. V., K. A. Couch, A. J. Houtenville, and L. Rovba. 2003. Income inequality in the 1990s: Re-forging a lost relationship? Journal of Income Distribution 12: 8–35. [Google Scholar] [CrossRef]
- Burkhauser, R. V., S. Feng, and S. P. Jenkins. 2009. Using the P90/P10 ratio to measure US inequality trends with Current Population Survey data: A view from inside the Census Bureau vaults. Review of Income and Wealth 55: 166–85. [Google Scholar] [CrossRef]
- Burkhauser, R. V., S. Feng, S. P. Jenkins, and J. Larrimore. 2011. Estimating trends in US income inequality using the Current Population Survey: The importance of controlling for censoring. Journal of Economic Inequality 9: 393–415. [Google Scholar] [CrossRef]
- Burkhauser, R. V., S. Feng, S. P. Jenkins, and J. Larrimore. 2012. Recent trends in top income shares in the United States: Reconciling estimates from march CPS and IRS tax return data. The Review of Economics and Statistics 94: 371–88. [Google Scholar] [CrossRef]
- Cajner, T., L. D. Crane, R. A. Decker, J. Grigsby, A. Hamins-Puertolas, C. E. Hurst, and A. Yildirmaz Kurz. 2020. The US Labor Market during the Beginning of the Pandemic Recession (No. w27159). Cambridge: National Bureau of Economic Research. [Google Scholar]
- Clark, A., C. d’Ambrosio, and A. Lepinteur. 2021. The Fall in Income Inequality during COVID-19 in Five European Countries. The Journal of Economic Inequality 19: 489–507. [Google Scholar] [CrossRef]
- Clementi, Fabio, and Francesco Schettino. 2015. Declining inequality in brazil in the 2000s: What is hidden behind? Journal of International Development 27: 929–52. [Google Scholar] [CrossRef]
- Cobham, A., and A. Sumner. 2013. Is It All about the Tails? The Palma Measure of Income Inequality. CGD.Center for Global Development, WP No. 343. Available online: https://www.cgdev.org/sites/default/files/it-all-about-tails-palma-measure-income-inequality.pdf (accessed on 20 July 2024).
- Cowell, F. A., and E. Flachaire. 2007. Income distribution and inequality measurement: The problem of extreme values. Journal of Econometrics 141: 1044–72. [Google Scholar] [CrossRef]
- Cowell, F. A., and M.-P. Victoria-Feser. 1996. Robustness properties of inequality measures. Econometrica 64: 77–101. [Google Scholar] [CrossRef]
- Current Population Survey. 2020. COVID-19 Items Extract Files. Technical Documentation. Available online: https://www2.census.gov/programs-surveys/cps/techdocs/Covid19_TechDoc.pdf (accessed on 20 July 2024).
- Dang, H., and C. Viet Nguyen. 2021. Gender inequality during the COVID-19 pandemic: Income, expenditure, savings, and job loss. World Development 140: 105296. [Google Scholar] [CrossRef] [PubMed]
- de Haan, J., and Jan-Egbert Sturm. 2017. Finance and income inequality: A review and new evidence. European Journal of Political Economy 50: 171–95. [Google Scholar] [CrossRef]
- Deaton, Angus. 2020. Economics with a Moral Compass? Welfare Economics: Past, Present, and Future. Annual Review of Economics 12: 1–21. [Google Scholar] [CrossRef]
- Dingel, J., and B. Neiman. 2020. How Many Jobs Can Be Done at Home? NBER. WP 26948. Cambridge: NBER. [Google Scholar]
- Dushkova, Diana, Maria Ignatieva, Anastasia Konstantinova, Charles Nilon, and Norbert Müller. 2024. Urban biodiversity and design in time of (post)pandemics: Research perspectives from URBIO international network. Urban Ecosystems, 1–13. [Google Scholar] [CrossRef]
- Egger, D., E. Miguel, S. S. Warren, A. Shenoy, E. Collins, D. Karlan, and C. Vernot. 2021. Falling living standards durin the COVID-19 crisis: Quantitaive evidence from nine developing countries. Science Advances 7: eabe0997. [Google Scholar] [CrossRef]
- Essama-Nssah, B., and P. J. Lambert. 2012. Influence functions for policy impact analysis. In Inequality, Mobility and Segregation: Essays in Honor of Jacques Silber. Research on Economic Inequality. Edited by J. A. Bishop and R. Salas. Bingley: Emerald Group Publishing Limited, vol. 20. [Google Scholar]
- European Centre for Disease Prevention and Control. 2022. COVID-19 Contact Tracing: Country Experiences and Way Forward. Copenhagen: WHO Regional Office for Europe and Stockholm: European Centre for Disease Prevention and Control. [Google Scholar]
- Figari, F., and V. Fiorio. 2020. Welfare resilience in the immediate aftermath of the COVID-19 outbreak in Italy. Covid Economics 2020: 106–33. [Google Scholar]
- Firpo, S. P., N. M. Fortin, and T. Lemieux. 2009. Unconditional quantile regressions. Econometrica 77: 953–73. [Google Scholar]
- Firpo, S. P., N. M. Fortin, and T. Lemieux. 2018. Decomposing wage distributions using recentered influence function regressions. Econometrics 6: 28. [Google Scholar] [CrossRef]
- Flood, S., M. King, R. Rodgers, S. Ruggles, J. R. Warren, and M. Westberry. 2021. Integrated Public Use Microdata Series, Current Population Survey: Version 9.0 [Dataset]. Minneapolis: IPUMS. [Google Scholar] [CrossRef]
- Furceri, D., P. Loungani, J. D. Ostry, and P. Pizzuto. 2020. Will Covid-19 affect inequality? Evidence from past pandemics. Covid Economics 12: 138–57. [Google Scholar]
- Gini, C. 1914. Sulla misura della concentrazione e della variabilità dei caratteri. Atti del Reale Istituto Veneto di Scienze, Lettere ed Arti 73: 1201–48. [Google Scholar]
- Gottschalk, P., and S. Danziger. 2005. Inequality of wage rates, earnings and family income in the United States, 1975–2002. Review of Income and Wealth 51: 231–54. [Google Scholar] [CrossRef]
- Grewenig, E., P. Lergetporer, K. Werner, L. Woessmann, and L. Zierow. 2021. COVID-19 and educational inequality: How school closures affect low- and high-achieving students. European Economic Review 140: 103920. [Google Scholar] [CrossRef]
- Hagenaars, A. J. M., K. de Vos, and M. A. Zaidi. 1994. Poverty Statistics in the Late 1980s: Research Based on Microdata. Luxembourg: Office for Official Publications of the European Communities. [Google Scholar]
- Headey, D., R. Heidkamp, S. Osendarp, M. Ruel, N. Scott, R. Black, M. Shekar, H. Bouis, A. Flory, L. Haddad, and et al. 2020. Impacts of COVID-19 on childhood malnutrition and nutrition-related mortality. Lancet 396: 519–21. [Google Scholar] [CrossRef]
- Heitjan, D. F. 1989. [Inference from grouped continuous data: A review]: Rejoinder. Statistical Science 4: 182–83. [Google Scholar] [CrossRef]
- Henson, M. F. 1967. Trends in the Income of Families and Persons in the United States, 1947–1964; Washington, DC: U.S. Department of Commerce, Bureau of the Census.
- Hill, R., and A. Narayan. 2020. COVID-19 and Inequality: A Review of the Evidence on Likely IMPACT and Policy Options. Working Paper. London: Centre for Disaster Protection. [Google Scholar]
- Hill, Ruth, Christoph Lakner, Daniel Mahler, Ambar Narayan, and Nishat Yonzan. 2021. Poverty, Median Incomes, and Inequality in 2021: A Diverging Recovery (English). Washington, DC: World Bank Group. Available online: http://documents.worldbank.org/curated/en/936001635880885713/Poverty-Median-Incomes-and-Inequality-in-2021-A-Diverging-Recovery (accessed on 20 July 2024).
- ILO. 2020. COVID-19 and the World of Work: Impact and Policy Responses. In ILO Monitor, 1st ed. Geneva: ILO. [Google Scholar]
- Jenkins, S. P., R. V. Burkhauser, S. Feng, and J. Larrimore. 2011. Measuring inequality using censored data: A multiple-imputation approach to estimation and inference. Journal of the Royal Statistical Society Series A (Statistics in Society) 174: 63–81. [Google Scholar] [CrossRef]
- Jordà, Ò., S. R. Singh, and A. M. Taylor. 2020. Longer-Run Economic Consequences of Pandemics. Cambridge: National Bureau of Economic Research. [Google Scholar]
- Josephson, Anna, Talip Kilic, and Jeffrey D. Michler. 2020. Socioeconomic Impacts of COVID-19 in Four African Countries. World Bank Policy Research WP No. 9466. Available online: https://openknowledge.worldbank.org/handle/10986/34733 (accessed on 20 July 2024).
- Lawler, Odette K., Hannah L. Allan, Peter W. J. Baxter, Romi Castagnino, Marina Corella Tor, Leah E. Dann, Joshua Hungerford, Dibesh Karmacharya, Thomas Lloyd, María López-Jara, and et al. 2021. The COVID-19 pandemic is intricately linked to biodiversity loss and ecosystem health. The Lancet Planetary Health 5: e840–e850. [Google Scholar] [CrossRef]
- Levy, F., and R. J. Murnane. 1992. U.S. earnings levels and earnings inequality: A review of recent trends and proposed explanations. Journal of Economic Literature 30: 1333–81. [Google Scholar]
- Li, J., H. Y. Vidyattama, R. Miranti La Anh, and D. M. Sologon. 2020. The Impact of COVID-19 and Policy Responses on Australian Income Distribution and Poverty. Ideas RePEc WP No. 2009.04037. Canberra: University of Canberra Research Portal. [Google Scholar]
- Liao, T. F., and F. De Maio. 2021. Association of social and economic inequality with coronavirus disease 2019 incidence and mortality across US counties. JAMA Network Open 4: e2034578. [Google Scholar] [CrossRef]
- Ma, C., J. Rogers, and S. Zhou. 2021. Modern pandemics: Recession and Recovery. BOFIT Discussion Papers 16. Washington, DC: Board of Governors of the Federal Reserve System. [Google Scholar]
- Madgavkar, A., O. White, M. Krishnan, D. Mahajan, and X. Azcue. 2020. COVID-19 and Gender Equality: Countering the Regressive Effects. Mumbai: McKinsey Global Institute. [Google Scholar]
- Marchal, S., B. Cantillon J. Vanderkelen, A. Decoster K. Decancq, I. Marx S. Kuypers, W. Van Lancker J. Spinnewijn, L. Van Meensel, and G. Verbist. 2021. The Distributional Impact of the COVID-19 Shock on Household Incomes in Belgium. COVIVAT WP 2. Zwolle: COVIVAT. [Google Scholar]
- Milanovic, B. 2010. The Haves and the Have-Nots: A Brief and Idiosyncratic History of Global Inequality. New York: Basic Books. [Google Scholar]
- Mongey, S., L. Pilossoph, and A. Weinberg. 2021. Which Workers Bear the Burden of Social Distancing? NBER WP 27085. Cambridge: NBER. [Google Scholar]
- Montenovo, L., X. Jiang, F. L. Rojas, I. M. Schmutte, I. K. Simon, B. A. Weinberg, and C. Wing. 2020. Determinants of Disparities in COVID-19 Job Losses. NBER. WP 27132. Cambridge: NBER. [Google Scholar]
- Monti, A. C. 1991. The study of the Gini concentration ratio by means of the influence function. Statistica 51: 561–77. [Google Scholar]
- Narayan, A., A. Cojocaru, S. Agrawal, T. Bundervoet, M. Davalos, N. Garcia, C. Lakner, D. G. Mahler, V. A. Montalva Talledo, and N. Yonzan Ten. 2022. COVID-19 and economic inequality. In Policy Research Working Paper, 9902. Washington, DC: World Bank Group. [Google Scholar]
- O’Donoghue, C., D. M. Sologon, I. Kyzyma, and J. McHale. 2020. Modelling the Distributional Impact of the COVID-19 Crisis. Fiscal Studies 41: 321–36. [Google Scholar] [CrossRef] [PubMed]
- Palma, J. G. 2011. Homogeneous middles vs. heterogeneous tails, and the end of the ‘inverted-U’: It’s all about the share of the rich. Development and Change 42: 87–153. [Google Scholar] [CrossRef]
- Palomino, J. C., J. G. Rodríguez, and R. Sebastian. 2020. Inequality and Poverty Effects of the Lockdown in Europe. Available online: https://voxeu.org/article/inequality-and-poverty-effects-lockdown-europe (accessed on 20 July 2024).
- Penna, G. O., J. A. A. Silva, J. C. Neto, J. G. Temporão, and L. F. Pinto. 2020. PNAD COVID-19: A powerful new tool for Public Health Surveillance in Brazil. Ciência & Saúde Coletiva 25: 3567–71. [Google Scholar]
- Piketty, T. 2014. Capital in the Twenty-first Century. Cambridge, MA: Belknap Press of Harvard University Press. [Google Scholar]
- Piketty, T. 2020. Capital and Ideology. Cambridge, MA: Harvard University Press. [Google Scholar]
- Piketty, T., and E. Saez. 2006. Response by Thomas Piketty and Emmanuel Saez to: The Top 1% … of What? by Alan Reynolds. Available online: http://www.econ.berkeley.edu/~saez/answer-WSJreynolds.pdf (accessed on 20 July 2024).
- Quandt, R. E. 1966. Old and new methods of estimation and the Pareto distribution. Metrika 10: 55–82. [Google Scholar] [CrossRef]
- Rios-Avila, F. 2020. Recentered influence functions (RIFs) in Stata: RIF regression and RIF decomposition. The Stata Journal 20: 51–94. [Google Scholar] [CrossRef]
- Rodrik, D. 1999. Where Did All the Growth Go? External Shocks, Social Conflict, and Growth Collapses. Journal of Economic Growth 4: 385–412. [Google Scholar] [CrossRef]
- Saadi-Sedik, T., and R. Xu. 2020. A Vicious Cycle: How Pandemics Lead to Economic Despair and Social Unrest. Washington, DC: International Monetary Fund. [Google Scholar]
- Sánchez-páramo, C., and N. Narayan. 2020. Impact of COVID-19 on Households: What Do Phone Surveys Tell Us? World Bank. Available online: https://blogs.worldbank.org/voices/impact-covid-19-households-what-do-phone-surveys-tell-us (accessed on 20 July 2024).
- Schettino, Francesco, and Haider A. Khan. 2020. Income polarization in the USA: What happened to the middle class in the last few decades? Structural Change and Economic Dynamics 53: 149–61. [Google Scholar] [CrossRef]
- Skrip, L. A., P. Selvaraj, B. Hagedorn, A. L. Ouédraogo, N. Noori, A. Orcutt, D. Mistry, J. Bedson, L. Hébert-Dufresne, S. V. Scarpino, and et al. 2021. Seeding COVID-19 across Sub-Saharan Africa: An Analysis of Reported Importation Events across 49 Countries. The American Journal of Tropical Medicine and Hygiene 104: 1694. [Google Scholar] [CrossRef]
- Slemrod, J. 1996. ‘High-income families and the tax changes of the 1980s: The anatomy of behavioral response. In Empirical Foundations of Household Taxation. Edited by M. Feldstein and J. M. Poterba. Chicago: University of Chicago Press. [Google Scholar]
- Strain, M. 2022. Reducing the US Deficit will Mean Pain for the Middle Classes. Financial Times, May 29. [Google Scholar]
- Tan, A. X., J. A. Hinman, H. S. A. Magid, L. M. Nelson, and M. C. Odden. 2021. Association between income inequality and county-level COVID-19 cases and deaths in the US. JAMA Network Open 4: e218799. [Google Scholar] [CrossRef]
- Theil, H. 1967. Economics and Information Theory. Amsterdam: North-Holland. [Google Scholar]
- UN Women. 2020. From Insights to Action: Gender Equality in the Wake of COVID-19. New York: UN Women. [Google Scholar]
- UNESCO. 2020. Global Education Meeting, Extraordinary Session on Education Post-COVID-19, 20–22 October 2020: Final Report. London: UNESCO. [Google Scholar]
- Von Hippel, P. T., D. J. Hunter, and M. Drown. 2017. Better estimates from binned income data: Interpolated CDFs and mean matching. Sociological Science 4: 641–55. [Google Scholar] [CrossRef] [PubMed]
- Von Hippel, P. T., S. V. Scarpino, and I. Holas. 2016. Robust estimation of inequality from binned incomes. Sociological Methodology 46: 212–51. [Google Scholar] [CrossRef]
- Winskill, Peter, Charles Whittaker, Patrick G. T. Walker, Oliver Watson, and Daniel Laydon. 2020. Report 22: Equity in Response to the COVID-19 Pandemic: An Assessment of the Direct and Indirect Impacts on Disadvantaged and Vulnerable Populations in Low- and Lower Middle-Income Countries. London: Imperial College London. [Google Scholar]
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Alfani, F.; Clementi, F.; Fabiani, M.; Molini, V.; Schettino, F. Underestimating the Pandemic: The Impact of COVID-19 on Income Distribution in the U.S. and Brazil. Economies 2024, 12, 235. https://doi.org/10.3390/economies12090235
Alfani F, Clementi F, Fabiani M, Molini V, Schettino F. Underestimating the Pandemic: The Impact of COVID-19 on Income Distribution in the U.S. and Brazil. Economies. 2024; 12(9):235. https://doi.org/10.3390/economies12090235
Chicago/Turabian StyleAlfani, Federica, Fabio Clementi, Michele Fabiani, Vasco Molini, and Francesco Schettino. 2024. "Underestimating the Pandemic: The Impact of COVID-19 on Income Distribution in the U.S. and Brazil" Economies 12, no. 9: 235. https://doi.org/10.3390/economies12090235
APA StyleAlfani, F., Clementi, F., Fabiani, M., Molini, V., & Schettino, F. (2024). Underestimating the Pandemic: The Impact of COVID-19 on Income Distribution in the U.S. and Brazil. Economies, 12(9), 235. https://doi.org/10.3390/economies12090235