Michael Lokshin, Martin Ravallion, Vladimir Kolchin
{"title":"第二次世界大战的死亡有助于预防COVID-19的死亡吗?","authors":"Michael Lokshin, Martin Ravallion, Vladimir Kolchin","doi":"10.1080/00128775.2023.2278806","DOIUrl":null,"url":null,"abstract":"ABSTRACTThe paper documents and tries to explain a striking negative correlation between COVID-19 mortality across countries and deaths during World War II. The correlation persists with various controls for observables and allowing for latent omitted variables, using the pre-war distribution of the Jewish population for identification. The correlation also survives influence and falsification tests, measurement-error adjustments, and tests for spatial autocorrelation, which can generate spurious historical dependence. We suggest a theoretical explanation whereby large shocks promote institutions and cooperative behavioral norms – interpretable as civic capital – that initially help attenuate losses from future large shocks, though with fading impact over time.KEYWORDS: COVID-19Europerare eventsshocksWorld War IIJEL CLASSIFICATION: D74I12N10 Disclosure StatementNo potential conflict of interest was reported by the author(s).FindingThis paper’s findings, interpretations, and conclusions are entirely those of the authors and do not necessarily represent the views of their employers including the World Bank, its Executive Directors, or the countries they represent. The authors thank Branko Milanovic for discussions, Toan Do, Ivan Torre and Dominique van de Walle for their comments, and two anonymous referees for their constructive comments and suggestions.Notes1. For a recent survey see Cioni et al. (Citation2021) and Dupraz and Ferrara (Citation2023).2. All but the last is reasonably well known; on the last see Kelly (Citation2020). The historical literature on the development of social policies points to a degree of spatial correlation (Ferrera Citation2005).3. See, for example, the discussion in Arthi and Parman (Citation2021), with reference to the 2020/21 pandemic and its potential future impacts.4. The literature on social capital and health has pointed to such a distinction between “cognitive” and “structural” social capital (Murayama, Yoshinori, and Kawachi Citation2012).5. The index appears to rank countries differently from rankings based on similar perception-based measures (i.e., WGI). For example, El Salvador has Civil Capital index of 0.08 while that index for France is −0.59 and 0.00 for Finland. Such differences might arise from differences in country/culture-specific subjective scales respondent use when answering these questions (Ravallion and Lokshin Citation2001)6. Also see Egorov (Citation2020) on Russia’s success in rapidly containing a smallpox outbreak around 1960. The success would not have been possible without widespread public acceptance.7. Surveys data for the U.S. indicate a strong association between the acceptance of social norms for cooperative health behaviors and actual personal preventative actions during the pandemic (Goldberg et al. Citation2020). Also, for the U.S., Barrios et al. (Citation2021) find greater use of face masks in counties with higher measures of civic capital.8. WWII is often mentioned as a turning point in social policy making in Europe; see, for example, the discussion in Ferrera (Citation2005).9. Wu (Citation2020) provides a more complete review of the sociological literature on the role of social capital in success in dealing with the COVID-19 pandemic.10. When we add to our empirical specification the government effectiveness indicator (Kaufmann, Kraay, and Mastruzzi Citation2006) used in two studies, its coefficient is not statistically significant, while the sign and significance of the coefficient on WWII total losses do not change. Likewise, we find no significant results regressing government effectiveness indicator on WWII total losses. We re-estimate our model with an alternative definition of state capacity from the International Country Risk Guide’s (ICRG) Bureaucratic Quality rating (Howell Citation2011) and obtain similar results. Therefore, we find no evidence of state capacity affecting the relationship between the WWII losses and COVID mortality.11. Educationalists have often emphasized the importance of direct experience to knowledge, separately to formal education; see, for example, the discussions in Boud et al. (Citation1993).12. The latter assumptions can be rationalized by imagining the special case in which u(τ,0) = u ̃(0)-c(τ) where c(τ) is an increasing convex cost function, although we do not need this separable structure.13. The second-order conditions are satisfied given that expected welfare across shock prospects is concave in τ.14. Our other assumptions so far cannot rule out a non-stationary process, implying that successive big shocks have larger and larger welfare effects, alternating positively and negatively. That can be considered an empirical question.15. We are not aware of a unified data source on the country-level losses during WW2. For example, one of the most reputable sources, the Human Mortality Database (Citation2021), produced by Max Plank Institute for Demographic Research, University of California Berkley, or Uppsala Conflict Data Program (UCDP Citation2021) lack mortality data for the WW2 period. We address the issue of precision of the WW2 loss estimates in Section 3.16. For example, losses for Balkan countries are imputed based on the losses of Yugoslavia.17. For post-Soviet countries, we used 1939 and 1937 USSR population census, respectively.18. While the human losses from WWII were huge, the GDP losses appear to have been modest for victors and are thought to have dissipated over 15–20 years for losers (Organski and Kugler Citation1977).19. There are other measures available in this source, though they tend to be highly correlated.20. The “Axis powers” formally took the name after the Tripartite Pact was signed by Germany, Italy, and Japan on 27 September 1940, in Berlin. The pact was subsequently joined by Hungary, Romania, and Bulgaria (Hill Citation2003).21. The Council for Mutual Economic Assistance (COMECON) was an economic organization from 1949 to 1991 under the leadership of the Soviet Union that comprised, among other countries, Albania, Bulgaria, Czechoslovakia, Hungary, Poland, Romania, and the Soviet Union (Kaser Citation1967).22. The moral distance between country c and country j is the mean over all dimensions d of the squared difference between the countries’ moral difference value I for dimension i weighted by the variance V of that dimension i as in MDcj≡∑i=1dIij−Iic2/(Vid).23. While a nonlinear relationship is suggested by Figure 1, we chose a more parsimonious linear regression. We did two tests on functional form. First, we included the squared value of WW2 mortality, but its coefficient was not significantly different from zero. Second, we tested a specification with the inverse hyperbolic sine transformation of deaths per million as a dependent variable, with the same transformation applied to WW2 deaths. This gave qualitatively similar results.24. Estimations of the cumulative COVID-19 infection rates on the same set of covariates produce no significant results. We also estimated specifications with other governance indicators from WGI dataset: Political Stability and Absence of Violence, Government Effectiveness, Regulatory Quality, Rule of Law, and Control of Corruption. None of these variables show significant coefficients in estimations. These results are available from the authors.25. Two countries have missing data, namely Greenland and Montenegro.26. Two countries have missing data, Greenland, and Tajikistan.27. The 1939 population shares gave similar results but were slightly less significant in the first-stage regressions.28. For example, with the set of controls in row (3) of Table 2 the Jewish population share had a coefficient of 1.17 with a robust standard error of 0.27; the overall F statistic was 11.56 (prob. <0.0000). The instrument on its own had a coefficient of 1.54 with s.e. = 0.34 and F = 26.32.29. Here we are invoking well-known results in econometrics; see, for example, Wooldridge (Citation2002, Section 6.2.1).30. Using OLS without controls the regression coefficients are −12.37 (S.E. = 4.47) and −12.80 (9.62) for civilian and military deaths respectively. The (robust) standard error for the difference is 10.03.31. An emerging literature that studies heroic actions and altruism during the war finds that the majority of heroic acts happened when the combatants defended their land (vs. being on the attack), e.g., Franco et al. (Citation2011). A possible explanation of this phenomenon could be that it is based on the evolutionary mechanism of protecting of close kin (Rusch and Stormer Citation2015).32. The added countries are Australia, Burundi, Brazil, Canada, China, Egypt, Ethiopia, Indonesia, India, Iran, Japan, Cambodia South Korea, Laos, Mexico, Myanmar, Mongolia, Malaysia, Nepal, New Zealand, Philippines, Papua New Guinea, Rwanda, Singapore, Thailand, United States of America, Vietnam, South Africa.33. For example, during WW2, Royal Nepalese Army fought on the Burmese front, and, at the same time, Nepalese soldiers fought as a part of British army (Cross and Gurung Citation2002).34. We define wave 1 of the pandemic as a period between February 1, 2020 until August 1, 2020. Wave 2 is a period between August 1, 2020 and December 1, 2020.35. There could be other confounding factors that affect the relationship we see in Figure 1. Drozdzewski et al. (Citation2019) suggest that wars might lead to a more collectivist culture, and Gorodnichenko and Roland (Citation2011) show that individualism led to better economic outcomes and innovations. There is also literature on the relationship between economic freedoms, liberal institutions and pandemics (e.g., Geloso, Hyde, and Murtazashvili Citation2022; Troesken Citation2015). These studies provide important directions for future research.36. This test identifies the sensitivity of our results to outliers but does not test the causality of the relation between the WWII and COVID total deaths.37. Our criterion for selecting observations is that: DFBETAi>2/√N, where N is the sample size.38. We did not include the health system efficiency control or the moral distance control since three countries were lost.39. The regressions based on error-prone regressors will yield inconsistent estimators not only for the variable measured with error but also for all model parameters (see, for example, Buonaccorsi Citation2010).40. The errors-in-variables regression is implemented in Stata eivreg routine (Lockwood and McCaffrey Citation2020).Additional informationNotes on contributorsMichael LokshinMichael Lokshin is a Lead Economist in the Office of Chief Economist, Europe and Central Asia Region of the World Bank. His research focuses on the areas of poverty and inequality measurement, labor economics, and applied econometrics. Michael holds a Masters in Physics from Moscow Institute of Physics and Technology and a Ph.D. in Economics from the University of North Carolina at Chapel Hill.Martin RavallionMartin Ravallion holds the inaugural Edmond D. Villani Chair of Economics at Georgetown University, prior to which he was the Director of the World Bank's research department. He has advised numerous governments and international agencies on poverty and policies for fighting it, and he has written extensively on this and other subjects in economics, including four books and 200 papers in scholarly journals and edited volumes. He is a past President of the Society for the Study of Economic Inequality, a Senior Fellow of the Bureau for Research in Economic Analysis of Development, a Research Associate of the National Bureau of Economic Research, USA, and a non-resident Fellow of the Center for Global Development.Vladimir KolchinVladimir Kolchin is an economist with the Poverty and Equity Practice, Europe and Central Asia Region of the World Bank. His research focuses on the areas of labor economics and applied econometrics. Vladimir holds a Ph.D. in Economics from Rutgers University, New Brunswick.","PeriodicalId":45883,"journal":{"name":"Eastern European Economics","volume":"43 39","pages":"0"},"PeriodicalIF":1.3000,"publicationDate":"2023-11-14","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Did World War II Deaths Help Prevent Deaths from COVID-19?\",\"authors\":\"Michael Lokshin, Martin Ravallion, Vladimir Kolchin\",\"doi\":\"10.1080/00128775.2023.2278806\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"ABSTRACTThe paper documents and tries to explain a striking negative correlation between COVID-19 mortality across countries and deaths during World War II. The correlation persists with various controls for observables and allowing for latent omitted variables, using the pre-war distribution of the Jewish population for identification. The correlation also survives influence and falsification tests, measurement-error adjustments, and tests for spatial autocorrelation, which can generate spurious historical dependence. We suggest a theoretical explanation whereby large shocks promote institutions and cooperative behavioral norms – interpretable as civic capital – that initially help attenuate losses from future large shocks, though with fading impact over time.KEYWORDS: COVID-19Europerare eventsshocksWorld War IIJEL CLASSIFICATION: D74I12N10 Disclosure StatementNo potential conflict of interest was reported by the author(s).FindingThis paper’s findings, interpretations, and conclusions are entirely those of the authors and do not necessarily represent the views of their employers including the World Bank, its Executive Directors, or the countries they represent. The authors thank Branko Milanovic for discussions, Toan Do, Ivan Torre and Dominique van de Walle for their comments, and two anonymous referees for their constructive comments and suggestions.Notes1. For a recent survey see Cioni et al. (Citation2021) and Dupraz and Ferrara (Citation2023).2. All but the last is reasonably well known; on the last see Kelly (Citation2020). The historical literature on the development of social policies points to a degree of spatial correlation (Ferrera Citation2005).3. See, for example, the discussion in Arthi and Parman (Citation2021), with reference to the 2020/21 pandemic and its potential future impacts.4. The literature on social capital and health has pointed to such a distinction between “cognitive” and “structural” social capital (Murayama, Yoshinori, and Kawachi Citation2012).5. The index appears to rank countries differently from rankings based on similar perception-based measures (i.e., WGI). For example, El Salvador has Civil Capital index of 0.08 while that index for France is −0.59 and 0.00 for Finland. Such differences might arise from differences in country/culture-specific subjective scales respondent use when answering these questions (Ravallion and Lokshin Citation2001)6. Also see Egorov (Citation2020) on Russia’s success in rapidly containing a smallpox outbreak around 1960. The success would not have been possible without widespread public acceptance.7. Surveys data for the U.S. indicate a strong association between the acceptance of social norms for cooperative health behaviors and actual personal preventative actions during the pandemic (Goldberg et al. Citation2020). Also, for the U.S., Barrios et al. (Citation2021) find greater use of face masks in counties with higher measures of civic capital.8. WWII is often mentioned as a turning point in social policy making in Europe; see, for example, the discussion in Ferrera (Citation2005).9. Wu (Citation2020) provides a more complete review of the sociological literature on the role of social capital in success in dealing with the COVID-19 pandemic.10. When we add to our empirical specification the government effectiveness indicator (Kaufmann, Kraay, and Mastruzzi Citation2006) used in two studies, its coefficient is not statistically significant, while the sign and significance of the coefficient on WWII total losses do not change. Likewise, we find no significant results regressing government effectiveness indicator on WWII total losses. We re-estimate our model with an alternative definition of state capacity from the International Country Risk Guide’s (ICRG) Bureaucratic Quality rating (Howell Citation2011) and obtain similar results. Therefore, we find no evidence of state capacity affecting the relationship between the WWII losses and COVID mortality.11. Educationalists have often emphasized the importance of direct experience to knowledge, separately to formal education; see, for example, the discussions in Boud et al. (Citation1993).12. The latter assumptions can be rationalized by imagining the special case in which u(τ,0) = u ̃(0)-c(τ) where c(τ) is an increasing convex cost function, although we do not need this separable structure.13. The second-order conditions are satisfied given that expected welfare across shock prospects is concave in τ.14. Our other assumptions so far cannot rule out a non-stationary process, implying that successive big shocks have larger and larger welfare effects, alternating positively and negatively. That can be considered an empirical question.15. We are not aware of a unified data source on the country-level losses during WW2. For example, one of the most reputable sources, the Human Mortality Database (Citation2021), produced by Max Plank Institute for Demographic Research, University of California Berkley, or Uppsala Conflict Data Program (UCDP Citation2021) lack mortality data for the WW2 period. We address the issue of precision of the WW2 loss estimates in Section 3.16. For example, losses for Balkan countries are imputed based on the losses of Yugoslavia.17. For post-Soviet countries, we used 1939 and 1937 USSR population census, respectively.18. While the human losses from WWII were huge, the GDP losses appear to have been modest for victors and are thought to have dissipated over 15–20 years for losers (Organski and Kugler Citation1977).19. There are other measures available in this source, though they tend to be highly correlated.20. The “Axis powers” formally took the name after the Tripartite Pact was signed by Germany, Italy, and Japan on 27 September 1940, in Berlin. The pact was subsequently joined by Hungary, Romania, and Bulgaria (Hill Citation2003).21. The Council for Mutual Economic Assistance (COMECON) was an economic organization from 1949 to 1991 under the leadership of the Soviet Union that comprised, among other countries, Albania, Bulgaria, Czechoslovakia, Hungary, Poland, Romania, and the Soviet Union (Kaser Citation1967).22. The moral distance between country c and country j is the mean over all dimensions d of the squared difference between the countries’ moral difference value I for dimension i weighted by the variance V of that dimension i as in MDcj≡∑i=1dIij−Iic2/(Vid).23. While a nonlinear relationship is suggested by Figure 1, we chose a more parsimonious linear regression. We did two tests on functional form. First, we included the squared value of WW2 mortality, but its coefficient was not significantly different from zero. Second, we tested a specification with the inverse hyperbolic sine transformation of deaths per million as a dependent variable, with the same transformation applied to WW2 deaths. This gave qualitatively similar results.24. Estimations of the cumulative COVID-19 infection rates on the same set of covariates produce no significant results. We also estimated specifications with other governance indicators from WGI dataset: Political Stability and Absence of Violence, Government Effectiveness, Regulatory Quality, Rule of Law, and Control of Corruption. None of these variables show significant coefficients in estimations. These results are available from the authors.25. Two countries have missing data, namely Greenland and Montenegro.26. Two countries have missing data, Greenland, and Tajikistan.27. The 1939 population shares gave similar results but were slightly less significant in the first-stage regressions.28. For example, with the set of controls in row (3) of Table 2 the Jewish population share had a coefficient of 1.17 with a robust standard error of 0.27; the overall F statistic was 11.56 (prob. <0.0000). The instrument on its own had a coefficient of 1.54 with s.e. = 0.34 and F = 26.32.29. Here we are invoking well-known results in econometrics; see, for example, Wooldridge (Citation2002, Section 6.2.1).30. Using OLS without controls the regression coefficients are −12.37 (S.E. = 4.47) and −12.80 (9.62) for civilian and military deaths respectively. The (robust) standard error for the difference is 10.03.31. An emerging literature that studies heroic actions and altruism during the war finds that the majority of heroic acts happened when the combatants defended their land (vs. being on the attack), e.g., Franco et al. (Citation2011). A possible explanation of this phenomenon could be that it is based on the evolutionary mechanism of protecting of close kin (Rusch and Stormer Citation2015).32. The added countries are Australia, Burundi, Brazil, Canada, China, Egypt, Ethiopia, Indonesia, India, Iran, Japan, Cambodia South Korea, Laos, Mexico, Myanmar, Mongolia, Malaysia, Nepal, New Zealand, Philippines, Papua New Guinea, Rwanda, Singapore, Thailand, United States of America, Vietnam, South Africa.33. For example, during WW2, Royal Nepalese Army fought on the Burmese front, and, at the same time, Nepalese soldiers fought as a part of British army (Cross and Gurung Citation2002).34. We define wave 1 of the pandemic as a period between February 1, 2020 until August 1, 2020. Wave 2 is a period between August 1, 2020 and December 1, 2020.35. There could be other confounding factors that affect the relationship we see in Figure 1. Drozdzewski et al. (Citation2019) suggest that wars might lead to a more collectivist culture, and Gorodnichenko and Roland (Citation2011) show that individualism led to better economic outcomes and innovations. There is also literature on the relationship between economic freedoms, liberal institutions and pandemics (e.g., Geloso, Hyde, and Murtazashvili Citation2022; Troesken Citation2015). These studies provide important directions for future research.36. This test identifies the sensitivity of our results to outliers but does not test the causality of the relation between the WWII and COVID total deaths.37. Our criterion for selecting observations is that: DFBETAi>2/√N, where N is the sample size.38. We did not include the health system efficiency control or the moral distance control since three countries were lost.39. The regressions based on error-prone regressors will yield inconsistent estimators not only for the variable measured with error but also for all model parameters (see, for example, Buonaccorsi Citation2010).40. The errors-in-variables regression is implemented in Stata eivreg routine (Lockwood and McCaffrey Citation2020).Additional informationNotes on contributorsMichael LokshinMichael Lokshin is a Lead Economist in the Office of Chief Economist, Europe and Central Asia Region of the World Bank. His research focuses on the areas of poverty and inequality measurement, labor economics, and applied econometrics. Michael holds a Masters in Physics from Moscow Institute of Physics and Technology and a Ph.D. in Economics from the University of North Carolina at Chapel Hill.Martin RavallionMartin Ravallion holds the inaugural Edmond D. Villani Chair of Economics at Georgetown University, prior to which he was the Director of the World Bank's research department. He has advised numerous governments and international agencies on poverty and policies for fighting it, and he has written extensively on this and other subjects in economics, including four books and 200 papers in scholarly journals and edited volumes. He is a past President of the Society for the Study of Economic Inequality, a Senior Fellow of the Bureau for Research in Economic Analysis of Development, a Research Associate of the National Bureau of Economic Research, USA, and a non-resident Fellow of the Center for Global Development.Vladimir KolchinVladimir Kolchin is an economist with the Poverty and Equity Practice, Europe and Central Asia Region of the World Bank. His research focuses on the areas of labor economics and applied econometrics. Vladimir holds a Ph.D. in Economics from Rutgers University, New Brunswick.\",\"PeriodicalId\":45883,\"journal\":{\"name\":\"Eastern European Economics\",\"volume\":\"43 39\",\"pages\":\"0\"},\"PeriodicalIF\":1.3000,\"publicationDate\":\"2023-11-14\",\"publicationTypes\":\"Journal Article\",\"fieldsOfStudy\":null,\"isOpenAccess\":false,\"openAccessPdf\":\"\",\"citationCount\":\"0\",\"resultStr\":null,\"platform\":\"Semanticscholar\",\"paperid\":null,\"PeriodicalName\":\"Eastern European Economics\",\"FirstCategoryId\":\"1085\",\"ListUrlMain\":\"https://doi.org/10.1080/00128775.2023.2278806\",\"RegionNum\":4,\"RegionCategory\":\"经济学\",\"ArticlePicture\":[],\"TitleCN\":null,\"AbstractTextCN\":null,\"PMCID\":null,\"EPubDate\":\"\",\"PubModel\":\"\",\"JCR\":\"Q3\",\"JCRName\":\"ECONOMICS\",\"Score\":null,\"Total\":0}","platform":"Semanticscholar","paperid":null,"PeriodicalName":"Eastern European Economics","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1080/00128775.2023.2278806","RegionNum":4,"RegionCategory":"经济学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q3","JCRName":"ECONOMICS","Score":null,"Total":0}
引用次数: 0
摘要
摘要本文记录并试图解释各国COVID-19死亡率与第二次世界大战期间死亡人数之间惊人的负相关性。使用战前犹太人口的分布进行识别,这种相关性通过各种可观察的控制和允许潜在的遗漏变量而持续存在。相关性也经受住了影响和证伪检验、测量误差调整和空间自相关检验,这可能产生虚假的历史依赖。我们提出了一种理论解释,即大冲击促进制度和合作行为规范——可解释为公民资本——最初有助于减轻未来大冲击的损失,尽管随着时间的推移影响会逐渐减弱。关键词:covid -19欧洲事件冲击第二次世界大战分类:D74I12N10披露声明作者未报告潜在利益冲突。本文的发现、解释和结论完全是作者的观点,并不一定代表其雇主(包括世界银行、世行执行董事或其所代表的国家)的观点。作者感谢Branko Milanovic的讨论,Toan Do, Ivan Torre和Dominique van de Walle的评论,以及两位匿名裁判的建设性意见和建议。关于最近的一项调查,请参阅Cioni等人(Citation2021)和Dupraz和Ferrara (Citation2023)。除了最后一种,其他的都相当为人所知;最后一次见Kelly (Citation2020)。关于社会政策发展的历史文献指出了一定程度的空间相关性(Ferrera Citation2005)。例如,参见Arthi和Parman关于2020/21年大流行及其未来潜在影响的讨论(Citation2021)。关于社会资本和健康的文献已经指出了“认知”和“结构性”社会资本之间的区别(Murayama, Yoshinori, and Kawachi Citation2012)。该指数对国家的排名似乎不同于基于类似的基于感知的衡量标准(即WGI)的排名。例如,萨尔瓦多的公民资本指数为0.08,而法国的指数为- 0.59,芬兰为0.00。这种差异可能源于受访者在回答这些问题时使用的国家/文化特定主观量表的差异(Ravallion和Lokshin Citation2001)。另见Egorov (Citation2020)关于1960年前后俄罗斯成功迅速遏制天花爆发的文章。如果没有公众的广泛接受,这次成功是不可能的。美国的调查数据表明,在大流行期间,接受合作健康行为的社会规范与实际的个人预防行动之间存在很强的关联(Goldberg et al.)。Citation2020)。此外,对于美国,Barrios等人(Citation2021)发现,在公民资本水平较高的县,口罩的使用率更高。二战经常被认为是欧洲社会政策制定的转折点;例如,参见费雷拉(Citation2005)的讨论。Wu (Citation2020)对社会资本在成功应对COVID-19大流行中的作用的社会学文献进行了更全面的回顾。当我们在实证规范中加入两项研究中使用的政府有效性指标(Kaufmann, Kraay, and Mastruzzi Citation2006)时,其系数不具有统计学显著性,而二战总损失系数的符号和显著性没有变化。同样,我们发现政府有效性指标在二战总损失上没有显著的回归结果。我们用国际国家风险指南(ICRG)官僚质量评级(Howell Citation2011)中国家能力的另一种定义重新估计了我们的模型,并获得了类似的结果。因此,我们没有发现国家能力影响二战损失与COVID死亡率之间关系的证据。教育家经常强调直接经验对知识的重要性,而不是对正规教育的重要性;例如,参见Boud等人的讨论(Citation1993)。后一种假设可以通过想象特殊情况来合理化,其中u(τ,0) = u μ (0)-c(τ),其中c(τ)是一个递增的凸代价函数,尽管我们不需要这种可分离的结构。假设冲击前景的期望福利在τ.14内是凹的,则二阶条件得到满足。到目前为止,我们的其他假设不能排除一个非平稳过程,这意味着连续的大冲击具有越来越大的福利效应,积极和消极交替。那可以被认为是一个实证问题。我们不知道关于二战期间国家层面损失的统一数据来源。 例如,最著名的来源之一,人类死亡率数据库(Citation2021),由加州大学伯克利分校马克斯普朗克人口研究所制作,或乌普萨拉冲突数据计划(UCDP Citation2021)缺乏二战期间的死亡率数据。我们在第3.16节中讨论了二战损失估计的准确性问题。例如,巴尔干国家的损失是根据南斯拉夫的损失计算的。对于后苏联国家,我们分别使用了1939年和1937年的苏联人口普查。虽然第二次世界大战的人员损失是巨大的,但对于胜利者来说,GDP损失似乎是适度的,并且对于失败者来说,被认为在15-20年内已经消散(Organski和Kugler引文,1977)。在这一来源中还有其他可用的措施,尽管它们往往是高度相关的。随后,匈牙利、罗马尼亚和保加利亚也加入了该协定。经济互助委员会(COMECON)是1949年至1991年在苏联领导下的一个经济组织,除其他国家外,包括阿尔巴尼亚、保加利亚、捷克斯洛伐克、匈牙利、波兰、罗马尼亚和苏联(Kaser引文1967)。国家c和国家j之间的道德距离是国家之间的道德差异值I对维度I的方差V加权的所有维度d的平方的平均值,如MDcj≡∑I =1dIij−Iic2/(Vid).23。虽然图1显示了非线性关系,但我们选择了更简洁的线性回归。我们对功能形式做了两次测试。首先,我们纳入了二战死亡率的平方值,但其系数与零没有显著差异。其次,我们用每百万死亡人数的反双曲正弦变换作为因变量测试了一个规范,并将相同的变换应用于二战死亡人数。这给出了质量上相似的结果。对同一组协变量的累积COVID-19感染率的估计没有显著结果。我们还使用全球治理指数数据集中的其他治理指标来估计规范:政治稳定和无暴力、政府效率、监管质量、法治和腐败控制。这些变量都没有在估计中显示出显著的系数。这些结果可以从作者那里得到。有两个国家缺少数据,即格陵兰和黑山。有两个国家的数据缺失,格陵兰和塔吉克斯坦。1939年的人口份额给出了类似的结果,但在第一阶段回归中稍微不那么显著。例如,对于表2第(3)行中的一组对照,犹太人口份额的系数为1.17,稳健标准误差为0.27;总F统计量为11.56 (probb)。2/√N, N是样本量,38。由于失去了三个国家,我们没有包括卫生系统效率控制或道德距离控制。基于易出错回归量的回归将产生不一致的估计量,不仅对于有错误测量的变量,而且对于所有模型参数(例如,参见bonaccorsi Citation2010)。变量中的误差回归在Stata eivreg例程中实现(Lockwood和McCaffrey Citation2020)。作者简介michael Lokshin是世界银行欧洲和中亚地区首席经济学家办公室的首席经济学家。他的研究主要集中在贫困和不平等测量、劳动经济学和应用计量经济学领域。他拥有莫斯科物理与技术学院的物理学硕士学位和北卡罗来纳大学教堂山分校的经济学博士学位。Martin Ravallion是乔治城大学首任Edmond D. Villani经济学主席,此前他曾担任世界银行研究部主任。他曾为许多政府和国际机构提供有关贫困和消除贫困政策的建议,并就这一问题和其他经济学主题撰写了大量文章,包括四本书和200篇学术期刊论文和编辑卷。他是经济不平等研究学会的前任主席,发展经济分析研究局的高级研究员,美国国家经济研究局的副研究员,以及全球发展中心的非常驻研究员。弗拉基米尔·科尔钦(Vladimir Kolchin)是世界银行欧洲和中亚地区贫困与公平实践局的经济学家。主要研究领域为劳动经济学和应用计量经济学。Vladimir拥有新不伦瑞克罗格斯大学经济学博士学位。
Did World War II Deaths Help Prevent Deaths from COVID-19?
ABSTRACTThe paper documents and tries to explain a striking negative correlation between COVID-19 mortality across countries and deaths during World War II. The correlation persists with various controls for observables and allowing for latent omitted variables, using the pre-war distribution of the Jewish population for identification. The correlation also survives influence and falsification tests, measurement-error adjustments, and tests for spatial autocorrelation, which can generate spurious historical dependence. We suggest a theoretical explanation whereby large shocks promote institutions and cooperative behavioral norms – interpretable as civic capital – that initially help attenuate losses from future large shocks, though with fading impact over time.KEYWORDS: COVID-19Europerare eventsshocksWorld War IIJEL CLASSIFICATION: D74I12N10 Disclosure StatementNo potential conflict of interest was reported by the author(s).FindingThis paper’s findings, interpretations, and conclusions are entirely those of the authors and do not necessarily represent the views of their employers including the World Bank, its Executive Directors, or the countries they represent. The authors thank Branko Milanovic for discussions, Toan Do, Ivan Torre and Dominique van de Walle for their comments, and two anonymous referees for their constructive comments and suggestions.Notes1. For a recent survey see Cioni et al. (Citation2021) and Dupraz and Ferrara (Citation2023).2. All but the last is reasonably well known; on the last see Kelly (Citation2020). The historical literature on the development of social policies points to a degree of spatial correlation (Ferrera Citation2005).3. See, for example, the discussion in Arthi and Parman (Citation2021), with reference to the 2020/21 pandemic and its potential future impacts.4. The literature on social capital and health has pointed to such a distinction between “cognitive” and “structural” social capital (Murayama, Yoshinori, and Kawachi Citation2012).5. The index appears to rank countries differently from rankings based on similar perception-based measures (i.e., WGI). For example, El Salvador has Civil Capital index of 0.08 while that index for France is −0.59 and 0.00 for Finland. Such differences might arise from differences in country/culture-specific subjective scales respondent use when answering these questions (Ravallion and Lokshin Citation2001)6. Also see Egorov (Citation2020) on Russia’s success in rapidly containing a smallpox outbreak around 1960. The success would not have been possible without widespread public acceptance.7. Surveys data for the U.S. indicate a strong association between the acceptance of social norms for cooperative health behaviors and actual personal preventative actions during the pandemic (Goldberg et al. Citation2020). Also, for the U.S., Barrios et al. (Citation2021) find greater use of face masks in counties with higher measures of civic capital.8. WWII is often mentioned as a turning point in social policy making in Europe; see, for example, the discussion in Ferrera (Citation2005).9. Wu (Citation2020) provides a more complete review of the sociological literature on the role of social capital in success in dealing with the COVID-19 pandemic.10. When we add to our empirical specification the government effectiveness indicator (Kaufmann, Kraay, and Mastruzzi Citation2006) used in two studies, its coefficient is not statistically significant, while the sign and significance of the coefficient on WWII total losses do not change. Likewise, we find no significant results regressing government effectiveness indicator on WWII total losses. We re-estimate our model with an alternative definition of state capacity from the International Country Risk Guide’s (ICRG) Bureaucratic Quality rating (Howell Citation2011) and obtain similar results. Therefore, we find no evidence of state capacity affecting the relationship between the WWII losses and COVID mortality.11. Educationalists have often emphasized the importance of direct experience to knowledge, separately to formal education; see, for example, the discussions in Boud et al. (Citation1993).12. The latter assumptions can be rationalized by imagining the special case in which u(τ,0) = u ̃(0)-c(τ) where c(τ) is an increasing convex cost function, although we do not need this separable structure.13. The second-order conditions are satisfied given that expected welfare across shock prospects is concave in τ.14. Our other assumptions so far cannot rule out a non-stationary process, implying that successive big shocks have larger and larger welfare effects, alternating positively and negatively. That can be considered an empirical question.15. We are not aware of a unified data source on the country-level losses during WW2. For example, one of the most reputable sources, the Human Mortality Database (Citation2021), produced by Max Plank Institute for Demographic Research, University of California Berkley, or Uppsala Conflict Data Program (UCDP Citation2021) lack mortality data for the WW2 period. We address the issue of precision of the WW2 loss estimates in Section 3.16. For example, losses for Balkan countries are imputed based on the losses of Yugoslavia.17. For post-Soviet countries, we used 1939 and 1937 USSR population census, respectively.18. While the human losses from WWII were huge, the GDP losses appear to have been modest for victors and are thought to have dissipated over 15–20 years for losers (Organski and Kugler Citation1977).19. There are other measures available in this source, though they tend to be highly correlated.20. The “Axis powers” formally took the name after the Tripartite Pact was signed by Germany, Italy, and Japan on 27 September 1940, in Berlin. The pact was subsequently joined by Hungary, Romania, and Bulgaria (Hill Citation2003).21. The Council for Mutual Economic Assistance (COMECON) was an economic organization from 1949 to 1991 under the leadership of the Soviet Union that comprised, among other countries, Albania, Bulgaria, Czechoslovakia, Hungary, Poland, Romania, and the Soviet Union (Kaser Citation1967).22. The moral distance between country c and country j is the mean over all dimensions d of the squared difference between the countries’ moral difference value I for dimension i weighted by the variance V of that dimension i as in MDcj≡∑i=1dIij−Iic2/(Vid).23. While a nonlinear relationship is suggested by Figure 1, we chose a more parsimonious linear regression. We did two tests on functional form. First, we included the squared value of WW2 mortality, but its coefficient was not significantly different from zero. Second, we tested a specification with the inverse hyperbolic sine transformation of deaths per million as a dependent variable, with the same transformation applied to WW2 deaths. This gave qualitatively similar results.24. Estimations of the cumulative COVID-19 infection rates on the same set of covariates produce no significant results. We also estimated specifications with other governance indicators from WGI dataset: Political Stability and Absence of Violence, Government Effectiveness, Regulatory Quality, Rule of Law, and Control of Corruption. None of these variables show significant coefficients in estimations. These results are available from the authors.25. Two countries have missing data, namely Greenland and Montenegro.26. Two countries have missing data, Greenland, and Tajikistan.27. The 1939 population shares gave similar results but were slightly less significant in the first-stage regressions.28. For example, with the set of controls in row (3) of Table 2 the Jewish population share had a coefficient of 1.17 with a robust standard error of 0.27; the overall F statistic was 11.56 (prob. <0.0000). The instrument on its own had a coefficient of 1.54 with s.e. = 0.34 and F = 26.32.29. Here we are invoking well-known results in econometrics; see, for example, Wooldridge (Citation2002, Section 6.2.1).30. Using OLS without controls the regression coefficients are −12.37 (S.E. = 4.47) and −12.80 (9.62) for civilian and military deaths respectively. The (robust) standard error for the difference is 10.03.31. An emerging literature that studies heroic actions and altruism during the war finds that the majority of heroic acts happened when the combatants defended their land (vs. being on the attack), e.g., Franco et al. (Citation2011). A possible explanation of this phenomenon could be that it is based on the evolutionary mechanism of protecting of close kin (Rusch and Stormer Citation2015).32. The added countries are Australia, Burundi, Brazil, Canada, China, Egypt, Ethiopia, Indonesia, India, Iran, Japan, Cambodia South Korea, Laos, Mexico, Myanmar, Mongolia, Malaysia, Nepal, New Zealand, Philippines, Papua New Guinea, Rwanda, Singapore, Thailand, United States of America, Vietnam, South Africa.33. For example, during WW2, Royal Nepalese Army fought on the Burmese front, and, at the same time, Nepalese soldiers fought as a part of British army (Cross and Gurung Citation2002).34. We define wave 1 of the pandemic as a period between February 1, 2020 until August 1, 2020. Wave 2 is a period between August 1, 2020 and December 1, 2020.35. There could be other confounding factors that affect the relationship we see in Figure 1. Drozdzewski et al. (Citation2019) suggest that wars might lead to a more collectivist culture, and Gorodnichenko and Roland (Citation2011) show that individualism led to better economic outcomes and innovations. There is also literature on the relationship between economic freedoms, liberal institutions and pandemics (e.g., Geloso, Hyde, and Murtazashvili Citation2022; Troesken Citation2015). These studies provide important directions for future research.36. This test identifies the sensitivity of our results to outliers but does not test the causality of the relation between the WWII and COVID total deaths.37. Our criterion for selecting observations is that: DFBETAi>2/√N, where N is the sample size.38. We did not include the health system efficiency control or the moral distance control since three countries were lost.39. The regressions based on error-prone regressors will yield inconsistent estimators not only for the variable measured with error but also for all model parameters (see, for example, Buonaccorsi Citation2010).40. The errors-in-variables regression is implemented in Stata eivreg routine (Lockwood and McCaffrey Citation2020).Additional informationNotes on contributorsMichael LokshinMichael Lokshin is a Lead Economist in the Office of Chief Economist, Europe and Central Asia Region of the World Bank. His research focuses on the areas of poverty and inequality measurement, labor economics, and applied econometrics. Michael holds a Masters in Physics from Moscow Institute of Physics and Technology and a Ph.D. in Economics from the University of North Carolina at Chapel Hill.Martin RavallionMartin Ravallion holds the inaugural Edmond D. Villani Chair of Economics at Georgetown University, prior to which he was the Director of the World Bank's research department. He has advised numerous governments and international agencies on poverty and policies for fighting it, and he has written extensively on this and other subjects in economics, including four books and 200 papers in scholarly journals and edited volumes. He is a past President of the Society for the Study of Economic Inequality, a Senior Fellow of the Bureau for Research in Economic Analysis of Development, a Research Associate of the National Bureau of Economic Research, USA, and a non-resident Fellow of the Center for Global Development.Vladimir KolchinVladimir Kolchin is an economist with the Poverty and Equity Practice, Europe and Central Asia Region of the World Bank. His research focuses on the areas of labor economics and applied econometrics. Vladimir holds a Ph.D. in Economics from Rutgers University, New Brunswick.
期刊介绍:
Eastern European Economics publishes original research on the newly emerging economies of Central and Eastern Europe, with coverage of the ongoing processes of transition to market economics in different countries, their integration into the broader European and global economies, and the ramifications of the 2008-9 financial crisis. An introduction by the journal"s editor adds context and expert insights on the articles presented in each issue.