Beyond Borders: The Effects of Immigrants on Value-Added Trade
Abstract
:1. Introduction
2. Literature Review
3. Empirical Model, Data, and Variables
3.1. The Empirical Model
3.2. The Variables, Data Sources, and Expected Signs
3.2.1. Dependent Variables
3.2.2. Explanatory Variables
3.3. Descriptive Statistics
4. Empirical Results
4.1. Immigrants and TiVA
4.2. The Control Factors
4.3. Heterogeneity in the Effects of Immigrants
4.4. Robustness Checks
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
Trade in Value Added (TiVA) | Gross Imports and Exports | |||||
---|---|---|---|---|---|---|
(a) | (b) | (c) | (d) | (e) | (f) | |
Variables | ltiva_tot | ltiva_agr | ltiva_mnf | ltiva_ser | log(gimp) | log(gexp) |
Ln (Immig) | −0.965 *** | −0.953 *** | −0.649 *** | −1.372 *** | −0.0209 *** | −0.135 *** |
(0.0864) | (0.100) | (0.0903) | (0.0870) | (0.0081) | (0.018) | |
Ln (PCI1) | 3.412 *** | 4.203 *** | 3.244 *** | 3.471 *** | 3.599 *** | 0.339 |
(0.102) | (0.118) | (0.107) | (0.103) | (0.115) | (0.288) | |
Ln (Immig)#ln (PCI1) | 0.0348 *** | 0.0445 *** | 0.0477 *** | 0.0581 *** | −0.0357 ** | 0.359 *** |
(0.0132) | (0.0153) | (0.0138) | (0.0133) | (0.0150) | (0.0373) | |
Ln (PCI2) | 4.358 *** | 4.991 *** | 4.831 *** | 3.186 *** | 5.378 *** | 2.061 *** |
(0.155) | (0.180) | (0.162) | (0.157) | (0.177) | (0.479) | |
Ln (Immig)#ln (PCI2) | 0.273 *** | 0.272 *** | 0.198 *** | 0.346 *** | 0.0954 *** | −0.217 *** |
(0.0242) | (0.0279) | (0.0253) | (0.0243) | (0.0275) | (0.0693) | |
Ln (TRcost) | −0.399 *** | −0.453 *** | −0.455 *** | −0.305 *** | −0.450 *** | −1.219 *** |
(0.0114) | (0.0133) | (0.0120) | (0.0115) | (0.0131) | (0.0465) | |
Constant | −26.18 *** | −36.21 *** | −27.41 *** | −24.02 *** | −29.97 *** | −2.196 |
(0.628) | (0.700) | (0.652) | (0.632) | (0.692) | (2.091) | |
Random-effects components: | ||||||
St. Dev. (Region) | −0.0500 | −0.146 | −0.0412 | −0.0504 | −0.121 | −0.696 *** |
(0.220) | (0.224) | (0.223) | (0.218) | (0.228) | (0.223) | |
St. Dev. (Immig) | −0.668 *** | −0.444 *** | −0.651 *** | −0.555 *** | −0.687 *** | −2.086 *** |
(0.0250) | (0.0243) | (0.0254) | (0.0232) | (0.0253) | (0.145) | |
St. Dev. (Panel) | 1.379 *** | 1.585 *** | 1.414 *** | 1.428 *** | 1.373 *** | 0.143 * |
(0.0250) | (0.0245) | (0.0252) | (0.0241) | (0.0246) | (0.0762) | |
St. Dev. (Residual) | −1.156 *** | −1.008 *** | −1.112 *** | −1.155 *** | −1.011 *** | 0.717 *** |
(0.00433) | (0.00437) | (0.00432) | (0.00433) | (0.00430) | (0.00407) | |
Log-likelihood | −17,650 | −22,517 | −19,183 | −17,708 | −22,143 | −71,547 |
Chi-square (overall) | 36,049 | 36,436 | 31,839 | 33,841 | 27,956 | 5851 |
AIC | 35,324.93 | 45,057.18 | 38,389.87 | 35,439.78 | 44,310.15 | 143,118.8 |
BIC | 35,426.05 | 45,158.3 | 38491.0 | 35,540.9 | 44,411.27 | 143,219.6 |
ICC (region- home) | 0.994 *** | 0.9946 *** | 0.9937 *** | 0.9945 *** | 0.9919 *** | 0.8733 *** |
(0.003) | (0.0010) | (0.0010) | (0.0011) | (0.0013) | (0.0013) | |
Observations | 33,754 | 33,754 | 33,754 | 33,754 | 33,754 | 33,754 |
Panel A: Multilevel Linear Model Estimation Results | ||||||
Dep Variable: Value Added Gtrade (Logs) | Gross Exports and Imports | |||||
(a) | (b) | (c) | (d) | (e) | (f) | |
VARIABLES | Tiva_Total | Tiva_Agri | Tiva_Mnf | Tiva_Serv | Gr_Imp | Gr_Exp |
Ln (Immig) | 0.103 *** | 0.122 *** | 0.0954 *** | 0.117 *** | 0.155 *** | 0.141 *** |
(0.0024) | (0.0025) | (0.0024) | (0.0024) | (0.0029) | (0.0093) | |
Ln (PCI1) | 1.784 *** | 1.859 *** | 1.759 *** | 1.890 *** | 2.065 *** | 0.959 *** |
(0.0737) | (0.0782) | (0.0740) | (0.0751) | (0.0881) | (0.291) | |
Ln (PCI2) | 1.470 *** | 1.565 *** | 1.601 *** | 0.559 *** | 2.787 *** | 1.084 * |
(0.145) | (0.154) | (0.146) | (0.148) | (0.168) | (0.564) | |
Ln (TRcost) | −1.529 *** | −1.521 *** | −1.579 *** | −1.424 *** | −1.801 *** | −1.850 *** |
(0.0106) | (0.0112) | (0.0106) | (0.0108) | (0.0128) | (0.0405) | |
Constant | −1.727 ** | −6.944 *** | −2.332 *** | −0.465 | −6.037 *** | 4.143 |
(0.671) | (0.713) | (0.674) | (0.684) | (0.783) | (2.611) | |
Observations | 31,769 | 31,769 | 31,769 | 31,769 | 31,769 | 31,769 |
R−Squared (Within) | 0.566 | 0.551 | 0.571 | 0.540 | 0.564 | 0.122 |
Log Likelihood | −26,718 | −28,623 | −26,865 | −27,331 | −35,856 | −66,807 |
F−Statistic | 10,334 | 9701 | 10,549 | 9288 | 10,870 | 1063 |
RMSE | 0.562 | 0.597 | 0.565 | 0.573 | 0.702 | 2.119 |
Panel B: Multilevel PPML Estimation Results | ||||||
Dep Variable: Value Added Trade (Levels) | Gross Exports and Imports | |||||
VARIABLES | TOT | AGR | MNF | SER | IMP | EXP |
Ln (Immig) | 0.203 *** | 0.299 *** | 0.193 *** | 0.222 *** | 0.257 *** | 0.292 *** |
(0.0127) | (0.0153) | (0.0132) | (0.0118) | (0.0128) | (0.0162) | |
Ln (PCI1) | 2.651 *** | 1.898 *** | 3.054 *** | 1.856 *** | 2.677 *** | 3.716 *** |
(0.245) | (0.272) | (0.269) | (0.231) | (0.227) | (0.575) | |
Ln (PCI2) | 2.802 *** | 2.041 *** | 3.032 *** | 2.606 *** | 3.597 *** | 2.009 * |
(0.513) | (0.435) | (0.551) | (0.552) | (0.428) | (1.161) | |
Ln (TRcost) | −0.750 *** | −0.719 *** | −0.797 *** | −0.603 *** | −0.864 *** | −0.821 *** |
(0.0640) | (0.0768) | (0.0632) | (0.0671) | (0.0658) | (0.0688) | |
Constant | −13.13 *** | −12.49 *** | −15.61 *** | −11.34 *** | −15.06 *** | −14.12 *** |
(2.639) | (2.563) | (2.877) | (2.584) | (2.234) | (5.377) | |
Observations | 31,769 | 31,769 | 31,769 | 31,769 | 31,769 | 31,769 |
Psuedo R−Square | 0.918 | 0.861 | 0.921 | 0.913 | 0.940 | 0.783 |
Log Likelihood | −3.719 × 106 | −85,740 | −2.813 × 106 | −898,260 | −1.440 × 107 | −2.770 × 107 |
Chi−Square | 3075 | 7068 | 2678 | 3361 | 7055 | 1845 |
RMSE | 0.566 | 0.561 | 0.567 | 0.561 | 0.505 | 0.976 |
OECD Member Host Countries | |||
---|---|---|---|
Australia | Finland | Korea | Slovakia |
Austria | France | Latvia | Slovenia |
Belgium | Germany | Lithuania | Spain |
Canada | Greece | Luxembourg | Sweden |
Chile | Hungary | Mexico | Switzerland |
Colombia | Iceland | Netherlands | Türkiye |
Costa Rica | Ireland | New Zealand | United Kingdom |
Czech Republic | Israel | Norway | United States |
Denmark | Italy | Poland | |
Estonia | Japan | Portugal |
1 | |
2 | A separate survey by Hatzigeorgiou and Lodefalk (2021) also reports a consistent positive influence of immigrants on home–host country trade. |
3 | In ancillary estimations, the results of which can be obtained from the authors, we replace the trade cost measure with standard gravity model variables, including geodesic distance (a common proxy for transportation costs), economic remoteness (to represent multilateral resistance to trade), and dummy variables that identify whether countries are landlocked, have a prior colonial relationship, share a common border or language, or are parties to one or more trade agreement(s). The alternative specification is as follows:
|
4 | One of the key benefits of multilevel models over the linear high-dimensional fixed-effects (HDFE) approach is their ability to incorporate both fixed and random effects. This flexibility allows for modeling random variations across different levels of the hierarchy, improving the ability to generalize findings beyond the sampled data (Bell and Jones 2015). By incorporating random effects, multilevel models also offer better estimates of group-level effects, such as country-specific effects, while accounting for unobserved heterogeneity within groups (e.g., home countries in the same region). This can yield more reliable and comprehensive results (Browne et al. 2018). Multilevel models also provide enhanced interpretability, particularly in hierarchical settings. They allow for the separate estimation of within-group and between-group effects, offering clearer insights into relationships at different levels of analysis. This can be especially valuable for understanding the dynamics within and between different groups in a dataset, such as regions or institutions (Raudenbush and Bryk 2002). |
5 | For example, a tech manufacturer in the host (home) country might rely on specific semiconductor components from the immigrant’s home (host) country, enabling the efficient sourcing of components, integration into the manufacturing process, and the global export of the final product. |
6 | The World Bank (2019) posits that natural capital, and the availability of a skilled workforce are pivotal to a nation’s competitive edge. Limão and Venables (2001) highlight the importance of efficient transport networks and the transformative nature of ICT integration and accessibility in modern economies. McMillan et al. (2017) underscore the importance of structural economic shifts, while Robinson and Acemoglu (2012) stress the significance of institutional frameworks in shaping economic interaction and the central role of the private sector in growth dynamics, respectively. Thus, a country with a robust productive capacity can specialize in producing specific components or stages of production more efficiently and economically rather than manufacturing the entire product. |
7 | It is important to note that the ad valorem tariff-equivalent trade cost estimates include the trade costs of all goods (some of which are not traded internationally); the estimates also vary greatly depending on underlying assumptions used for the elasticity of substitution; hence, such estimates should preferably be used for comparative exercise, to analyze changes in trade costs over time, or for technical analysis, such as in an econometric model of trade (UNESCAP 2021). |
8 | For example, a country pair that is one standard deviation above the mean might have more favorable initial conditions or inherent characteristics that increase their value-added trade. |
9 | For brevity, estimation results with the interaction terms from which the marginal effects presented in Table 3 are derived are presented in Appendix A Table A1. |
10 | One example is skilled Italian artisans migrating to the U.S. and contributing to the luxury goods sector, increasing the value added in American exports of designer products back to Italy or to other markets. |
11 | French immigrants in Japan, for example, may influence the Japanese demand for French luxury goods while also helping French winemakers tailor their products to the Japanese palate, thereby enhancing TiVA between the countries. |
12 | For instance, the tech industry in Silicon Valley has significantly benefited from immigrants’ contributions to software development and IT that have bolstered the value added to U.S. exports in these sectors (Saxenian 2006). |
13 | An example would be Vietnamese immigrants in Australia who increase TiVA by starting a seafood processing firm that exports high-quality seafood products to Vietnam. |
14 | Mexican U.S. immigrants may use their networks to help U.S. firms navigate the Mexican market for refined petroleum products, adding value to U.S. exports. |
15 | To address the concerns about potential reverse causality, we also estimate our models using a one-period lag of the immigrant stock variable. The results, presented in Appendix A Table A2, remain consistent and statistically significant, with minimal coefficient changes compared to our original estimations. |
16 | Appendix A Table A3 provides the list of OECD member host countries included in the present study. |
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Mean | Std. Dev. | |
---|---|---|
Trade flow measures: | ||
Gross exports of host country i to home country j (millions, USD) | 69.60398 | 334.5786 |
Gross imports of host country i from home country j (millions, USD) | 1874.258 | 8706.77 |
Value-added trade (TiVA): value added from home country i that is included in the exports of host country j | ||
Total (millions, USD) | 876.5885 | 2789.897 |
Manufactures (millions, USD) | 649.3937 | 2248.778 |
Agriculture (millions, USD) | 10.5588 | 42.60521 |
Service (millions, USD) | 200.3528 | 655.2618 |
Immigrant population: number of individuals from home country i that reside in host country j | ||
Immigrant stock | 36,085.39 | 288,064.1 |
Productive capacity measures: | ||
Overall productive capacity index, home country | 54.11173 | 9.552657 |
Overall productive capacity index, host country | 60.01368 | 6.338487 |
Bilateral trade costs: | ||
Ad valorem tariff-equivalent bilateral trade costs (%), all goods | 150.8702 | 87.5284 |
N = 33,754. |
Trade in Value Added (TiVA) | Gross Imports and Exports | |||||
---|---|---|---|---|---|---|
(a) | (b) | (c) | (d) | (e) | (f) | |
Variables | ltiva_tot | ltiva_agr | ltiva_mnf | ltiva_ser | log(gimp) | log(gexp) |
Ln (Immig) | 0.220 *** | 0.267 *** | 0.187 *** | 0.286 *** | 0.230 *** | 0.397 *** |
(0.0132) | (0.0161) | (0.0136) | (0.0144) | (0.0135) | (0.0107) | |
Ln (PCI1) | 3.571 *** | 4.431 *** | 3.316 *** | 3.957 *** | 3.362 *** | 2.725 *** |
(0.0428) | (0.0494) | (0.0447) | (0.0430) | (0.0483) | (0.146) | |
Ln (PCI2) | 5.831 *** | 6.455 *** | 5.902 *** | 5.032 *** | 5.931 *** | 0.682 *** |
(0.0689) | (0.0795) | (0.0719) | (0.0692) | (0.0783) | (0.208) | |
Ln (TRcost) | −0.403 *** | −0.456 *** | −0.458 *** | −0.309 *** | −0.450 *** | −1.246 *** |
(0.0115) | (0.0133) | (0.0120) | (0.0115) | (0.0131) | (0.0466) | |
Constant | −32.95 *** | −43.23 *** | −32.16 *** | −33.68 *** | −31.30 *** | −5.854 *** |
(0.390) | (0.408) | (0.401) | (0.391) | (0.406) | (1.013) | |
Random-effects components: | ||||||
St. Dev. (region) | 0.942 *** | 0.8556 *** | 0.9528 *** | 0.9374 *** | 0.8869 *** | 0.4724 ** |
(0.203) | (0.159) | (0.201) | (0.204) | (0.228) | (0.222) | |
St. Dev. (Immig) | 0.5127 *** | 0.6466 *** | 0.5189 *** | 0.5804 *** | 0.5031 *** | 0.1351 *** |
(0.0249) | (0.0242) | (0.0254) | (0.0232) | (0.0252) | (0.0130) | |
St. Dev. (panel) | 3.9354 *** | 4.9037 *** | 4.0592 *** | 4.1828 *** | 3.9393 *** | 1.1984 *** |
(0.0250) | (0.0244) | (0.0252) | (0.0241) | (0.0245) | (0.0733) | |
St. Dev. (residual) | 0.3160 *** | 0.3660 *** | 0.3298 *** | 0.3169 *** | 0.3642 *** | 2.0481 *** |
(0.00433) | (0.00436) | (0.00432) | (0.00434) | (0.00429) | (0.00408) | |
Log-likelihood | −17,746 | −22,593 | −19,226 | −17,901 | −22,149 | −71,594 |
Chi-square (overall) | 35,635 | 36,070 | 31,680 | 33,035 | 27,930 | 5548 |
AIC | 35,511.4 | 38,472.1 | 38,472.3 | 35,821 | 44,318.55 | 143,207.4 |
BIC | 35,595.7 | 38,556.3 | 38,556.4 | 35,905.3 | 444,02.8 | 143,291.3 |
ICC (region-home) | 0.9939 *** | 0.9946 *** | 0.9937 *** | 0.9945 *** | 0.9919 *** | 0.8232 *** |
(0.0010) | (0.0010) | (0.0010) | (0.0011) | (0.0013) | (0.0013) | |
Observations | 33,754 | 33,754 | 33,754 | 33,754 | 33,754 | 33,754 |
Trade in Value Added (TiVA) by Sector | Gross Exports and Imports | |||||
---|---|---|---|---|---|---|
(a) | (b) | (c) | (d) | (e) | (f) | |
Variables | ltiva_tot | ltiva_agr | ltiva_mnf | ltiva_ser | log(gimp) | log(gexp) |
Ln (Immig) | 0.208 *** | 0.255 *** | 0.178 *** | 0.271 *** | 0.227 *** | 0.407 *** |
(0.0133) | (0.0161) | (0.0137) | (0.0143) | (0.0135) | (0.0106) | |
Ln (PCI1) | 3.520 *** | 4.381 *** | 3.278 *** | 3.892 *** | 3.341 *** | 2.982 *** |
(0.0431) | (0.0496) | (0.0451) | (0.0431) | (0.0487) | (0.147) | |
Ln (PCI2) | 6.334 *** | 6.960 *** | 6.263 *** | 5.691 *** | 6.069 *** | 0.463 ** |
(0.0783) | (0.0904) | (0.0820) | (0.0783) | (0.0892) | (0.220) | |
Ln (TRcost) | −0.399 *** | −0.453 *** | −0.455 *** | −0.305 *** | −0.450 *** | −1.219 *** |
(0.0114) | (0.0133) | (0.0120) | (0.0115) | (0.0131) | (0.0465) | |
Observations | 33,754 | 33,754 | 33,754 | 33,754 | 33,754 | 33,754 |
Panel A: HDFE Multilevel linear model estimation results | ||||||
Dependent Variable: Value-Added Trade (Log) | Gross Exports and Imports | |||||
(a) | (b) | (c) | (d) | (e) | (f) | |
Variables | ltiva_tot | ltiva_agr | ltiva_mnf | ltiva_ser | log(gimp) | log(gexp) |
Ln (Immig) | 0.104 *** | 0.121 *** | 0.0967 *** | 0.119 *** | 0.155 *** | 0.143 *** |
(0.00237) | (0.00253) | (0.00238) | (0.00242) | (0.00296) | (0.00904) | |
Ln (PCI1) | 1.848 *** | 1.902 *** | 1.851 *** | 1.907 *** | 2.065 *** | 1.092 *** |
(0.0706) | (0.0755) | (0.0710) | (0.0722) | (0.0881) | (0.277) | |
Ln (PCI2) | 1.616 *** | 1.864 *** | 1.927 *** | 0.386 *** | 2.787 *** | 1.250 ** |
(0.135) | (0.144) | (0.135) | (0.138) | (0.168) | (0.518) | |
Ln (TRcost) | −1.533 *** | −1.528 *** | −1.587 *** | −1.422 *** | −1.801 *** | −1.831 *** |
(0.0103) | (0.0110) | (0.0103) | (0.0105) | (0.0128) | (0.0390) | |
Constant | −2.597 *** | −8.332 *** | −4.032 *** | 0.111 | −6.037 *** | 2.818 |
(0.628) | (0.670) | (0.630) | (0.641) | (0.783) | (2.422) | |
Observations | 33,754 | 33,754 | 33,754 | 33,754 | 33,734 | 32,716 |
R-squared (within) | 0.570 | 0.551 | 0.576 | 0.541 | 0.564 | 0.122 |
Log-likelihood | −28,444 | −30,674 | −28,600 | −29,168 | −35,856 | −70,718 |
F-statistic | 11,170 | 10,314 | 11,445 | 9928 | 10,870 | 1138 |
RMSE | 0.563 | 0.601 | 0.566 | 0.575 | 0.702 | 2.105 |
Panel B: Multilevel PPML estimation results | ||||||
Dependent Variable: Value-Added Trade (Levels) | Gross Exports and Imports | |||||
Variables | TOT | AGR | MNF | SER | IMP | EXP |
Ln (Immig) | 0.206 *** | 0.298 *** | 0.196 *** | 0.223 *** | 0.260 *** | 0.289 *** |
(0.0125) | (0.0152) | (0.0130) | (0.0117) | (0.0128) | (0.0162) | |
Ln (PCI1) | 2.688 *** | 1.902 *** | 3.081 *** | 1.883 *** | 2.704 *** | 4.060 *** |
(0.238) | (0.273) | (0.261) | (0.227) | (0.217) | (0.555) | |
Ln (PCI2) | 2.958 *** | 2.137 *** | 3.173 *** | 2.910 *** | 3.474 *** | 1.678 |
(0.494) | (0.410) | (0.528) | (0.509) | (0.410) | (1.160) | |
Ln (TRcost) | −0.752 *** | −0.729 *** | −0.800 *** | −0.601 *** | −0.864 *** | −0.832 *** |
(0.0639) | (0.0759) | (0.0632) | (0.0665) | (0.0659) | (0.0690) | |
Constant | −13.96 *** | −12.86 *** | −16.32 *** | −12.74 *** | −14.70 *** | −14.07 *** |
(2.549) | (2.524) | (2.771) | (2.430) | (2.152) | (5.324) | |
Observations | 33,754 | 33,754 | 33,754 | 33,754 | 33,754 | 33,754 |
Pseudo R-square | 0.918 | 0.861 | 0.922 | 0.913 | 0.9409 | 0.7853 |
Log-likelihood | −3.84 × 106 | −90,016 | −2.90 × 106 | −941,141 | −1.48 × 107 | −2.90 × 107 |
Chi-square | 3315 | 7326 | 2879 | 3549 | 7480 | 1892 |
RMSE | 0.566 | 0.565 | 0.566 | 0.564 | 0.503 | 0.974 |
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Tadesse, B.; White, R. Beyond Borders: The Effects of Immigrants on Value-Added Trade. Economies 2024, 12, 222. https://doi.org/10.3390/economies12090222
Tadesse B, White R. Beyond Borders: The Effects of Immigrants on Value-Added Trade. Economies. 2024; 12(9):222. https://doi.org/10.3390/economies12090222
Chicago/Turabian StyleTadesse, Bedassa, and Roger White. 2024. "Beyond Borders: The Effects of Immigrants on Value-Added Trade" Economies 12, no. 9: 222. https://doi.org/10.3390/economies12090222
APA StyleTadesse, B., & White, R. (2024). Beyond Borders: The Effects of Immigrants on Value-Added Trade. Economies, 12(9), 222. https://doi.org/10.3390/economies12090222