Disentangling aporophobia from xenophobia in the EU-15

IF 4.4 1区 经济学 Q1 ECONOMICS
Octasiano M. Valerio Mendoza, Flavio Comim, Mihály T. Borsi
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The findings in this paper bring light to the discussion of a powerful concept which underpins the need for a more just society.KEYWORDS: aporophobiaxenophobiahuman capitalimmigrationEuropean regionsJEL: I3J15R1 ACKNOWLEDGEMENTSThis article is based on an earlier conference paper entitled ‘Disentangling aporophobia from xenophobia in Europe’, presented at the 36th International Association for Research in Income and Wealth (IARIW) Virtual General Conference, 2022. We extend our gratitude to the conference participants for their valuable feedback and insights. We also express our sincere appreciation to the editor and anonymous referees for their constructive comments and suggestions, which greatly contributed to the refinement and expansion of this work. This paper is based on data from Eurostat, European Labour Force Surveys, 1998-2018, Released November 2019, version 2 and DOI 0.2907/LFS1983-2018V.2. The responsibility for all conclusions drawn from the data lies entirely with the authors. Laura Stilwell and Jan Zilinsky provided excellent research assistance. We thank Abhijit Banerjee for comments. We are particularly grateful to Betsy Levy Paluck, our discussant, for her detailed and thoughtful review of an earlier draft.DISCLOSURE STATEMENTNo potential conflict of interest was reported by the authors.Notes1. We are very grateful to one of the anonymous referees for raising the distinction between the rational and the irrational fear of low-skilled migrants, in particular during economic recessions. In this situation, natives’ rejection of the poor might be rational and therefore unveil not pure prejudice, but personal fears related to labour market conditions. On the other hand, when this rejection of immigrants comes, for instance, with an association with racialised and ethnic beliefs, we might be facing a situation of discrimination. The literature is rich in examples when the growing criminalisation of unauthorised migrants and racialised beliefs and stereotypes about poor migrants cannot be justified by locals’ rational beliefs (e.g., Lim, Citation2021; Nuti, Citation2019).2. We express our gratitude to one of the anonymous referees who suggested this literature which explores the impact of immigration on the dynamics of labour markets.3. Aporophobia is a general phenomenon that might be as directed at the migrant poor as it is aimed at the native poor. Here we only tackle the kind of aporophobia directed at the migrant poor. We adopted a multidimensional view of poverty based on a vector of attributes, namely, low educational status, low skilled in occupational terms and unemployment status.4. We adopted a multidimensional view of poverty based on a vector of attributes, namely, low educational status, low skilled in occupational terms and unemployment status identification of poor and non-poor migrants using occupational skills and education may also introduce endogeneity issues if the mismatch between qualifications and skills is influenced by xenophobia and discrimination.5. The baseline estimates without NUTS-2 fixed effects are presented in Table B4 in Appendix B in the supplemental data online.6. Since the origin of the migrants in the EULFS is broadly defined as coming from within the EU-15 and from outside the EU-15, conceptually it is more appropriate to estimate the rejection of these migrant categories using only the EU-15 sample since it would consider EU-15 migrants as intra-regional migrants and non-EU-15 migrants as immigrants. Furthermore, as shown in Table B1 in Appendix B in the supplemental data online, the sampling of skilled migrants in non-EU-15 regions is not representative of the shares reported by Eurostat (see Poland and Slovakia), whereas the sampling of EU-15 countries is very similar to official statistics. Similarly, some non-EU countries have very low numbers of low-skilled migrants working in low-skilled occupations, such as Poland, Romania and Slovakia (see Table B3 online). Nevertheless, results for the full EULFS sample of 29 European countries (209 NUTS-2 regions) are reported in Tables B20–B22 online. The results indicate that xenophobia is lower in areas that have larger shares of migrants, especially high-skilled or college-educated migrants. Although these results partially support contact theory, they are unreliable due to the migrant categories and sampling bias discussed above.7. The nine ESS waves use new randomised samples, therefore a limitation of analysing at the individual level is that the longitudinal component is lost, and the results presented are pooled estimates.8. Additionally, since the main independent variable varies at the regional level, the individual data are further estimated using standard errors clustered at the regional level, and are presented in Tables B17–B19 in Appendix B in the supplemental data online. The results from Table B17 online indicate that 40 of the 72 estimates have lost their statistical significance and a further seven estimates have decreased from a 1% to a 5% significance level compared with Table B11 online. Nevertheless, the rejection of low-educated non-EU-15 migrants holds for four of the xenophobia indicators. Furthermore, the estimates for the interaction terms in Table B18 online all remain statistically significant at a 1% level.9. 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引用次数: 0

Abstract

ABSTRACTThis paper analyses whether the human capital levels embodied in immigrants can explain xenophobic trends for 126 regions in 14 EU-15 countries from 1998 to 2018. It tests if xenophobic regions may be rejecting immigrants because they are poor, a phenomenon recently defined as ‘aporophobia’. The results indicate that larger inflows of low-educated immigrants working in low-skilled occupations are significantly correlated with a higher rejection of migrants, thus confirming the aporophobia hypothesis. The findings in this paper bring light to the discussion of a powerful concept which underpins the need for a more just society.KEYWORDS: aporophobiaxenophobiahuman capitalimmigrationEuropean regionsJEL: I3J15R1 ACKNOWLEDGEMENTSThis article is based on an earlier conference paper entitled ‘Disentangling aporophobia from xenophobia in Europe’, presented at the 36th International Association for Research in Income and Wealth (IARIW) Virtual General Conference, 2022. We extend our gratitude to the conference participants for their valuable feedback and insights. We also express our sincere appreciation to the editor and anonymous referees for their constructive comments and suggestions, which greatly contributed to the refinement and expansion of this work. This paper is based on data from Eurostat, European Labour Force Surveys, 1998-2018, Released November 2019, version 2 and DOI 0.2907/LFS1983-2018V.2. The responsibility for all conclusions drawn from the data lies entirely with the authors. Laura Stilwell and Jan Zilinsky provided excellent research assistance. We thank Abhijit Banerjee for comments. We are particularly grateful to Betsy Levy Paluck, our discussant, for her detailed and thoughtful review of an earlier draft.DISCLOSURE STATEMENTNo potential conflict of interest was reported by the authors.Notes1. We are very grateful to one of the anonymous referees for raising the distinction between the rational and the irrational fear of low-skilled migrants, in particular during economic recessions. In this situation, natives’ rejection of the poor might be rational and therefore unveil not pure prejudice, but personal fears related to labour market conditions. On the other hand, when this rejection of immigrants comes, for instance, with an association with racialised and ethnic beliefs, we might be facing a situation of discrimination. The literature is rich in examples when the growing criminalisation of unauthorised migrants and racialised beliefs and stereotypes about poor migrants cannot be justified by locals’ rational beliefs (e.g., Lim, Citation2021; Nuti, Citation2019).2. We express our gratitude to one of the anonymous referees who suggested this literature which explores the impact of immigration on the dynamics of labour markets.3. Aporophobia is a general phenomenon that might be as directed at the migrant poor as it is aimed at the native poor. Here we only tackle the kind of aporophobia directed at the migrant poor. We adopted a multidimensional view of poverty based on a vector of attributes, namely, low educational status, low skilled in occupational terms and unemployment status.4. We adopted a multidimensional view of poverty based on a vector of attributes, namely, low educational status, low skilled in occupational terms and unemployment status identification of poor and non-poor migrants using occupational skills and education may also introduce endogeneity issues if the mismatch between qualifications and skills is influenced by xenophobia and discrimination.5. The baseline estimates without NUTS-2 fixed effects are presented in Table B4 in Appendix B in the supplemental data online.6. Since the origin of the migrants in the EULFS is broadly defined as coming from within the EU-15 and from outside the EU-15, conceptually it is more appropriate to estimate the rejection of these migrant categories using only the EU-15 sample since it would consider EU-15 migrants as intra-regional migrants and non-EU-15 migrants as immigrants. Furthermore, as shown in Table B1 in Appendix B in the supplemental data online, the sampling of skilled migrants in non-EU-15 regions is not representative of the shares reported by Eurostat (see Poland and Slovakia), whereas the sampling of EU-15 countries is very similar to official statistics. Similarly, some non-EU countries have very low numbers of low-skilled migrants working in low-skilled occupations, such as Poland, Romania and Slovakia (see Table B3 online). Nevertheless, results for the full EULFS sample of 29 European countries (209 NUTS-2 regions) are reported in Tables B20–B22 online. The results indicate that xenophobia is lower in areas that have larger shares of migrants, especially high-skilled or college-educated migrants. Although these results partially support contact theory, they are unreliable due to the migrant categories and sampling bias discussed above.7. The nine ESS waves use new randomised samples, therefore a limitation of analysing at the individual level is that the longitudinal component is lost, and the results presented are pooled estimates.8. Additionally, since the main independent variable varies at the regional level, the individual data are further estimated using standard errors clustered at the regional level, and are presented in Tables B17–B19 in Appendix B in the supplemental data online. The results from Table B17 online indicate that 40 of the 72 estimates have lost their statistical significance and a further seven estimates have decreased from a 1% to a 5% significance level compared with Table B11 online. Nevertheless, the rejection of low-educated non-EU-15 migrants holds for four of the xenophobia indicators. Furthermore, the estimates for the interaction terms in Table B18 online all remain statistically significant at a 1% level.9. All GMM estimates have supporting C-tests, Hansen’s J-statistic and robust F-tests to support the specification and strength of instruments.
将欧盟15国的恐贫症与仇外症区分开来
摘要本文分析了移民人力资本水平能否解释1998 - 2018年欧盟14个国家126个地区的仇外倾向。它测试了排外地区是否因为移民贫穷而拒绝移民,这种现象最近被定义为“恐外症”。结果表明,在低技能职业中工作的低学历移民的大量流入与更高的移民拒绝率显著相关,从而证实了恐空假说。本文的发现为讨论一个强有力的概念带来了光明,这个概念支撑着对更公正社会的需求。本文基于较早的一篇题为“解开欧洲仇外心理与仇外心理的关系”的会议论文,该论文于2022年第36届国际收入与财富研究协会(IARIW)虚拟大会上发表。我们对与会者提出的宝贵意见和见解表示感谢。我们也对编者和匿名审稿人提出的建设性意见和建议表示衷心的感谢,他们对本文的完善和扩充做出了很大的贡献。本文基于欧盟统计局1998-2018年欧洲劳动力调查的数据,发布于2019年11月,版本2和DOI 0.2907/LFS1983-2018V.2。从数据中得出的所有结论的责任完全在于作者。Laura Stilwell和Jan Zilinsky提供了出色的研究协助。我们感谢Abhijit Banerjee的评论。我们特别感谢我们的讨论者Betsy Levy Paluck,她对早期的草案进行了详细而周到的审查。披露声明作者未报告潜在的利益冲突。我们非常感谢其中一位匿名推荐人,他提出了对低技能移民的理性和非理性恐惧之间的区别,特别是在经济衰退期间。在这种情况下,当地人对穷人的排斥可能是理性的,因此揭示的不是纯粹的偏见,而是与劳动力市场状况有关的个人恐惧。另一方面,当这种对移民的拒绝,例如,与种族化和民族信仰有关时,我们可能面临歧视的情况。文献中有大量的例子表明,越来越多的非法移民被定为犯罪,对贫穷移民的种族化信仰和刻板印象不能被当地人的理性信仰所证明(例如,Lim, Citation2021;Nuti Citation2019)。2。我们对其中一位匿名推荐人表示感谢,他提出了这篇探讨移民对劳动力市场动态影响的文献。恐空症是一种普遍现象,既可能针对本国穷人,也可能针对移民穷人。在这里,我们只处理针对贫穷移民的那种恐空症。我们采用了一种基于属性向量的多维贫困观,即低教育水平、低职业技能和失业状况。5.我们采用了基于属性向量的多维贫困观,即利用职业技能和教育的贫穷和非贫穷移徙者的低教育地位、低职业技能和失业状况识别,如果资格和技能之间的不匹配受到仇外心理和歧视的影响,也可能带来内质性问题。没有NUTS-2固定效应的基线估计见在线补充数据附录B中的表B4。由于eufs中移民的来源被广泛定义为来自欧盟15国内部和欧盟15国以外,从概念上讲,仅使用欧盟15国样本来估计对这些移民类别的拒绝更为合适,因为它将欧盟15国移民视为区域内移民,而非欧盟15国移民视为移民。此外,如在线补充数据附录B中的表B1所示,非欧盟15国地区技术移民的抽样并不代表欧盟统计局报告的份额(见波兰和斯洛伐克),而欧盟15国的抽样与官方统计数据非常相似。同样,一些非欧盟国家在低技能职业中工作的低技能移民数量非常少,如波兰、罗马尼亚和斯洛伐克(见在线表B3)。然而,29个欧洲国家(209个NUTS-2区域)的完整EULFS样本结果报告在在线表B20-B22中。结果表明,在移民比例较大的地区,仇外情绪较低,尤其是高技能或受过大学教育的移民。虽然这些结果部分支持接触理论,但由于上文讨论的移民类别和抽样偏差,它们是不可靠的。
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来源期刊
Regional Studies
Regional Studies Multiple-
CiteScore
9.30
自引率
13.00%
发文量
0
期刊介绍: Regional Studies is a leading international journal covering the development of theories and concepts, empirical analysis and policy debate in the field of regional studies. The journal publishes original research spanning the economic, social, political and environmental dimensions of urban and regional (subnational) change. The distinctive purpose of Regional Studies is to connect insights across intellectual disciplines in a systematic and grounded way to understand how and why regions and cities evolve. It publishes research that distils how economic and political processes and outcomes are contingent upon regional and local circumstances. The journal is a pluralist forum, which showcases diverse perspectives and analytical techniques. Essential criteria for papers to be accepted for Regional Studies are that they make a substantive contribution to scholarly debates, are sub-national in focus, conceptually well-informed, empirically grounded and methodologically sound. Submissions are also expected to engage with wider debates that advance the field of regional studies and are of interest to readers of the journal.
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