Duration of the Membership in the GATT/WTO, Structural Economic Vulnerability and Trade Costs
Abstract
:1. Introduction
2. Theoretical Discussion
2.1. Membership in the GATT/WTO and the Stability and Predictability of Trading Environment
2.2. Effect of Structural Economic Vulnerability on Trade Costs
2.3. How Can the Duration of GATT/WTO Membership and Structural Economic Vulnerability Interact in Affecting Trade Costs?
3. Model Specification
4. Estimation Strategy
5. Empirical Results
6. Conclusions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
Variables | Definition | Source |
---|---|---|
TRCOST | This is the indicator of the average comprehensive (overall) trade costs. The average overall trade costs have been calculated for a given country in a given year, as the average of the bilateral overall trade costs on goods across all trading partners of this country. Data on bilateral overall trade costs has been computed by Arvis et al. (2012, 2016) following the approach proposed by Novy (2013). Arvis et al. (2012, 2016) have built on the definition of trade costs by Anderson and van Wincoop (2004) and considered bilateral comprehensive trade costs as all costs involved in trading goods (agricultural and manufactured goods) internationally with another partner (i.e., bilaterally) relative to those involved in trading goods domestically (i.e., intranationally). Hence, the bilateral comprehensive trade costs indicator captures trade costs in its wider sense, including not only tariffs and international transport costs but also other trade cost components discussed in Anderson and van Wincoop (2004), such as direct and indirect costs associated with differences in languages, currencies, and cumbersome import or export procedures. Higher values of the indicator of average overall trade costs indicate higher overall trade costs. | Author’s computation using the ESCAP-World Bank Trade Cost Database. Accessible online at: https://www.unescap.org/resources/escap-world-bank-trade-cost-database (accessed on 1 January 2021). Detailed information on the methodology used to compute the bilateral comprehensive trade costs can be found in Arvis et al. (2012, 2016), as well as in the short explanatory note accessible online at: https://www.unescap.org/sites/default/d8files/Trade%20Cost%20Database%20-%20User%20note.pdf (accessed on 1 January 2021) |
TARIFF | This is the indicator of the average tariff costs. It is the tariff component of the average overall trade costs. We have computed it, for a given country in a given year, as the average of the bilateral comprehensive tariff costs across all trading partners of this country. Data on the bilateral tariff costs indicator has been computed by Arvis et al. (2012, 2016). As the bilateral tariff costs indicator is (like the comprehensive trade costs) bi-directional in nature (i.e., it includes trade costs to and from a pair of countries), Arvis et al. (2013) have measured it as the geometric average of the tariffs imposed by the two partner countries on each other’s imports (of agricultural and manufactured goods). Higher values of the indicator of the average tariff costs show an increase in the average tariff costs. | Author’s computation using the ESCAP-World Bank Trade Cost Database. Detailed information on the methodology used to compute the bilateral tariff costs can be found in Arvis et al. (2012, 2016), as well as in the short explanatory note accessible online at: https://www.unescap.org/sites/default/d8files/Trade%20Cost%20Database%20-%20User%20note.pdf (accessed on 1 January 2021) |
NTARIFF | This is the indicator of the average nontariff costs. It represents the second component (i.e., nontariff component) of the comprehensive trade costs. This is the indicator of the comprehensive trade costs, excluding the tariff costs. We have computed it, for a given country in a given year, as the average of the bilateral comprehensive nontariff costs (i.e., the comprehensive trade costs, excluding the tariff costs) across all trading partners of this country. Data on the bilateral nontariff costs indicator has been computed by Arvis et al. (2012, 2016), following Anderson and van Wincoop (2004). Comprehensive trade costs excluding tariff encompass all additional costs other than tariff costs involved in trading goods (agricultural and manufactured goods) bilaterally rather than domestically. Higher values of the indicator of average nontariff costs reflect a rise in nontariff costs. Detailed information on the methodology used to compute the bilateral nontariff costs can be found in Arvis et al. (2012, 2016), as well as in the short explanatory note accessible online at: https://www.unescap.org/sites/default/d8files/Trade%20Cost%20Database%20-%20User%20note.pdf (accessed on 1 January 2021) | Author’s computation using the ESCAP-World Bank Trade Cost Database. Detailed information on the methodology used to compute the bilateral nontariff costs can be found in Arvis et al. (2012, 2016), as well as in the short explanatory note accessible online at: https://www.unescap.org/sites/default/d8files/Trade%20Cost%20Database%20-%20User%20note.pdf (accessed on 1 January 2021) |
DUR | This is the indicator of the duration of the GATT/WTO membership. See its description in Section 3. | Author’s computation based on data collected from the website of the WTO. The list of countries (128) that had signed GATT by 1994 is accessible online at: https://www.wto.org/english/thewto_e/gattmem_e.htm (accessed on 1 January 2021) The list of states that were GATT Members, and that joined the WTO, as well as those that joined the WTO under the WTO’s Article XII is accessible online at: (https://www.wto.org/english/thewto_e/whatis_e/tif_e/org6_e.htm (accessed on 1 January 2021)) |
EVI | This is indicator of structural economic vulnerability, also referred to as the Economic Vulnerability Index. It has been set up at the United Nations by the Committee for Development Policy (CDP), and used by the latter as one of the criteria for identifying LDCs. It has been computed on a retrospective basis for 145 developing countries (including 48 LDCs) by the “Fondation pour les Etudes et Recherches sur le Developpement International (FERDI)”. The EVI has been computed as the simple arithmetic average of two sub-indexes, namely the intensity of exposure to shocks (exposure sub-index) (denoted “EXPOSURE”) and the intensity of exogenous shocks (shocks sub-index) (denoted “SHOCK”). These two sub-indexes have been calculated using a weighted average of different component indexes, with the sum of components’ weights equaling 1 so that the values of EVI range between 0 and 100. For further details on the computation of the EVI, see, for example, Feindouno and Goujon (2016). The components of the exposure sub-index are the population size; the remoteness from world markets index; the export product concentration; the share of agriculture, forestry, and fisheries in GDP; and the index of the share of the population living in low-elevated coastal zones. The components of the shocks sub-index are the agricultural production instability; the export instability; and the index of the victims of natural disasters. | Data on EVI is extracted from the database of the Fondation pour les Etudes et Recherches sur le Developpement International (FERDI)–see online at: https://ferdi.fr/donnees/un-indicateur-de-vulnerabilite-economique-evi-retrospectif (accessed on 1 January 2021) |
GDPC | Real per capita Gross Domestic Product (constant 2010 USD). | World Development Indicators (WDI) |
ODA | This is the real gross disbursements of total Official Development Assistance (ODA) expressed in constant prices 2019, US Dollar. | OECD (Organization for Economic Cooperation and Development) database on development indicators. |
AfT | This is the indicator of the real gross disbursements of total Aid for Trade. It is the sum of the real gross disbursements of Aid for Trade allocated to the buildup of economic infrastructure, the real gross disbursements of Aid for Trade for building productive capacities, and the real gross disbursements of Aid allocated for trade policy and regulation. All components of total AfT variables are expressed in constant prices 2019, US Dollar. | Author’s calculation based on data extracted from the OECD statistical database on development, in particular the OECD/DAC-CRS (Organization for Economic Cooperation and Development/Donor Assistance Committee)-Credit Reporting System (CRS). |
NonAfT | This is the measure of the development aid allocated to other sectors in the economy than the trade sector. It has been computed as the difference between the gross disbursements of total ODA and the gross disbursements of total Aid for Trade (both being expressed in constant prices 2019, US Dollar). | Author’s calculation based on data extracted from the OECD/DAC-CRS database. |
TERMS | This is the indicator of terms of trade, measured by the net barter terms of the trade index (2000 = 100). This indicator has been re-scaled (i.e., divided by 100) so that its values range between 0 and 1. | Author’s calculation based on terms of trade data extracted from the WDI. |
FINDEV | This is the proxy for financial development. It is measured by the share of domestic credit to private sector by banks in GDP (not expressed in percentage). | WDI |
INST | This is the variable capturing the institutional and governance quality. It has been computed by extracting the first principal component (based on factor analysis) of the following six indicators of governance. These indicators are respectively: political stability and absence of violence/terrorism; regulatory quality; rule of law; government effectiveness; voice and accountability, and corruption. Higher values of the index “INST” are associated with better governance and institutional quality, while lower values reflect worse governance and institutional quality. | Data on the components of “INST” variables has been extracted from World Bank Governance Indicators developed by Kaufmann et al. (2010) and updated recently. See online at: https://info.worldbank.org/governance/wgi/ (accessed on 1 January 2021) |
Appendix B
Country | Duration of Membership in 2018 | Country | Duration of Membership in 2018 | Country | Duration of Membership in 2018 | Country | Duration of Membership in 2018 |
---|---|---|---|---|---|---|---|
Afghanistan ** | 2.5 | Cote d’Ivoire | 55.0833 | Lesotho ** | 31 | Senegal | 55.3333 |
Algeria | 0 | Cyprus | 55.5 | Liberia | 2.5 | Seychelles | 3.75 |
Angola | 24.75 | Dominica | 25.75 | Madagascar | 55.6667 | Sierra Leone | 57.6667 |
Antigua and Barbuda | 31.8333 | Dominican Republic | 68.6667 | Malawi ** | 54.4167 | Singapore | 45.4167 |
Argentina | 51.25 | Ecuador | 23 | Malaysia | 61.25 | South Africa | 70.5833 |
Armenia ** | 15.9167 | Egypt, Arab Rep. | 48.6667 | Maldives | 35.75 | Sri Lanka | 70.5 |
Azerbaijan ** | 0 | El Salvador | 27.6667 | Mali ** | 26 | St. Kitts and Nevis | 24.8333 |
Bahamas, The | 0 | Equatorial Guinea | 0 | Mauritania | 55.3333 | St. Lucia | 25.75 |
Bangladesh | 46.0833 | Eswatini ** | 25.8333 | Mauritius | 48.3333 | St. Vincent and the Grenadines | 25.6667 |
Barbados | 51.9167 | Fiji | 25.1667 | Mexico | 32.4167 | Sudan | 0 |
Belize | 35.25 | Gabon | 55.6667 | Micronesia, Fed. Sts. | 0 | Suriname | 40.8333 |
Benin | 55.3333 | Gambia, The | 53.9167 | Mongolia ** | 22 | Tajikistan ** | 5.83333 |
Bhutan ** | 0 | Georgia | 18.5833 | Morocco | 31.5833 | Tanzania | 57.0833 |
Bolivia ** | 28.3333 | Ghana | 61.25 | Mozambique | 26.5 | Thailand | 36.1667 |
Botswana ** | 31.4167 | Grenada | 24.9167 | Myanmar | 70.5 | Togo | 54.8333 |
Brazil | 70.5 | Guatemala | 27.25 | Namibia | 26.3333 | Tonga | 11.5 |
Brunei Darussalam | 25.0833 | Guinea | 24.0833 | Nepal ** | 14.75 | Trinidad and Tobago | 56.25 |
Burkina Faso ** | 55.6667 | Guyana | 52.5 | Nicaragua | 68.6667 | Tunisia | 28.4167 |
Burundi ** | 53.8333 | Honduras | 24.75 | Niger ** | 55.0833 | Turkey | 67.25 |
Cabo Verde | 10.5 | India | 70.5 | Nigeria | 58.1667 | Uganda ** | 56.25 |
Cambodia | 14.25 | Indonesia | 68.9167 | Oman | 18.1667 | Uruguay | 65.0833 |
Cameroon | 55.6667 | Iran, Islamic Rep. | 0 | Pakistan | 70.5 | Uzbekistan ** | 0 |
Central African Republic ** | 55.6667 | Iraq | 0 | Panama | 21.6667 | Vanuatu | 6.41667 |
Chad ** | 55.5 | Israel | 56.5 | Papua New Guinea | 24.0833 | Venezuela, RB | 28.4167 |
Chile | 69.8333 | Jamaica | 55.0833 | Paraguay ** | 25 | Vietnam | 12 |
China | 17.0833 | Jordan | 18.75 | Peru | 67.25 | Yemen, Rep. | 4.58333 |
Colombia | 37.25 | Kazakhstan ** | 3.16667 | Philippines | 39.0833 | Zambia ** | 36.9167 |
Comoros | 0 | Kenya | 54.9167 | Rwanda ** | 53 | Zimbabwe ** | 70.5 |
Congo, Dem. Rep. | 47.3333 | Kyrgyz Republic ** | 20.0833 | Samoa | 6.66667 | ||
Congo, Rep. | 55.6667 | Lao PDR ** | 5.91667 | Sao Tome and Principe | 0 | ||
Costa Rica | 28.1667 | Lebanon | 0 | Saudi Arabia | 13.0833 |
Appendix C
Variable | Observations | Mean | Standard Deviation | Minimum | Maximum |
---|---|---|---|---|---|
TRCOSTS | 582 | 330.691 | 56.527 | 150.240 | 500.805 |
TARIFF | 557 | 1.100 | 0.024 | 1.047 | 1.208 |
NONTARIFF | 557 | 287.006 | 52.638 | 128.532 | 433.378 |
DUR1 | 582 | 30.285 | 21.146 | 0 | 70.083 |
EVI | 582 | 34.002 | 11.528 | 9.224 | 70.045 |
EXPOSURE | 582 | 35.262 | 13.551 | 3.352 | 79.036 |
SHOCK | 582 | 32.745 | 15.217 | 4.378 | 87.964 |
ODA | 582 | 661 | 1010 | 0.16 | 15,300 |
AfT | 576 | 206 | 378 | 0.05333433 | 3640 |
NonAfT | 576 | 637 | 901 | 2.419856 | 12,400 |
FINDEV | 582 | 0.346 | 0.275 | 0.008 | 1.518 |
TERMS | 582 | 1.221 | 0.419 | 0.281 | 4.537 |
INST | 582 | −0.945 | 1.533 | −4.264 | 3.666 |
GDPC | 582 | 4464.304 | 4858.752 | 212.472 | 36,938.410 |
1 | The WTO Technical Barriers to Trade Agreement (see WTO 2012) is available online at: https://www.wto.org/english/tratop_e/tbt_e/tbt_e.htm (accessed on 1 January 2021). |
2 | The WTO Agreement on the Application of Sanitary and Phytosanitary Measures is available online at: https://www.wto.org/english/tratop_e/sps_e/spsagr_e.htm (accessed on 1 January 2021). |
3 | Nontariff border measures are increasingly used to regulate trade at a time when the ghost of protectionism looms large across the world economy (e.g., Cha and Koo 2021), notably in high-income countries (e.g., Cha and Koo 2021; Hoekman and Nicita 2011). |
4 | These include, for example, tariffs and other explicit and implicit border taxes, such as those associated with stringent and costly customs procedures. |
5 | See, for example, Ali and Milner (2016); Gaurav and Mathur (2016); Hummels (2007); Jacks et al. (2008, 2011); Milner and McGowan (2013); Novy (2013); Papalia and Bertarelli (2015); and Shepherd (2022). |
6 | Further details on the fulfilment of the transparency objective by WTO Councils and Committees are available online at: https://www.wto.org/english/tratop_e/monitor_e/monitor_e.htm (accessed on 1 January 2021). |
7 | Further information on the WTO’s role of overseeing national trade policies is available online at: https://www.wto.org/english/tratop_e/tpr_e/tp_int_e.htm (accessed on 1 January 2021). |
8 | These shocks include, for example, commodity prices shocks, shocks to international export demand; capital flow reversals; natural disasters (droughts, earthquakes, pandemics, extreme temperatures, storms, hurricanes, volcanoes); and potentially domestic political shocks. |
9 | Knight (1921) has defined uncertainty as the inability of people to forecast the likelihood of the occurrence of events. This, therefore, refers to a situation where economic agents are not capable of predicting the likely state of the economy in the future. For example, the COVID-19 pandemic has generated high uncertainty in economies severely affected by this crisis in the world. According to Abel (1983), economic uncertainty can refer to unexpected changes that affect the economic ecosystem, and how changes in fiscal or monetary policies or any other government policies affect corporations. |
10 | See, for example, Azomahou et al. (2021), Barrot et al. (2018), Dabla-Norris and Gündüz (2014), Kim et al. (2020), and Raddatz (2007). |
11 | The category of LDCs was first established (by the United Nations General Assembly) in 1971. Information on this group of countries is accessible online at: https://www.un.org/ohrlls/content/ldc-category (accessed on 1 January 2021). |
12 | See, for example, Chowdhury et al. (2021); Koopman et al. (2020), and Mansfield and Reinhardt (2008). |
13 | The transparency provisions embedded in WTO agreements require that member states disclose their trade regulations and notify changes to these regulations (e.g., Chowdhury et al. 2021). Basic information on the role of the Trade Policy Review Mechanism concerning “transparency” can be found online at: https://www.wto.org/english/thewto_e/whatis_e/tif_e/agrm11_e.htm (accessed on 1 January 2021). |
14 | See further information online at: https://www.wto.org/english/docs_e/legal_e/29-tprm.pdf (accessed on 1 January 2021). |
15 | “DSU” refers to the Dispute Settlement Understanding of the WTO. The legal text of the DSU is accessible online at: https://www.wto.org/english/tratop_e/dispu_e/dsu_e.htm (accessed on 1 January 2021) |
16 | Detailed information on the TFA is available online at: https://www.wto.org/english/tratop_e/tradfa_e/tradfa_e.htm (accessed on 1 January 2021). |
17 | Beverelli et al. (2015) and Hoekman and Shepherd (2015) have provided a literature review on the trade costs effect of soft trade facilitation, including the WTO trade facilitation. |
18 | This could include the liberalization of their trade policies, i.e., both tariff and nontariff border barriers, as well as the improvement of beyond-the-border trade facilitation policies. |
19 | See, for example, Aguiar and Gopinath (2007); Cariolle et al. (2016); Essers (2013); Guillaumont (2009, 2010); and Koren and Tenreyro (2007). |
20 | Uncertainty is significantly higher in developing countries than in advanced economies (e.g., Ahir et al. 2019). |
21 | Policy uncertainty refers to the economic risk associated with undefined future government policies and regulatory frameworks (e.g., Al-Thaqeb and Algharabali 2019). |
22 | See, for example, Colon et al. (2019); Doll et al. (2014); Friedt (2021); Gassebner et al. (2010); Oh (2017); Osberghaus (2019); UNECE (2020); and Martincus and Blyde (2013). |
23 | An increase in the value of “DURWTO1” by one year represents a rise in the value of this indicator by 100%. |
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POLS | FE | Two-Step System GMM | |||
---|---|---|---|---|---|
Variables | Log(TRCOST) | Log(TRCOST) | Log(TRCOST) | Log(TRCOST) | Log(TRCOST) |
(1) | (2) | (3) | (4) | (5) | |
Log(TRCOST)t−1 | 1.196 *** | 0.637 *** | 1.071 *** | 1.049 *** | 1.092 *** |
(0.0242) | (0.0486) | (0.0321) | (0.0288) | (0.0299) | |
Log(TRCOST)t−2 | −0.290 *** | −0.0749 *** | −0.233 *** | −0.199 *** | −0.214 *** |
(0.00964) | (0.0186) | (0.0324) | (0.0263) | (0.0267) | |
DUR | 0.000347 ** | −0.00333 *** | −0.00265 *** | −0.00161 ** | −0.00231 ** |
(0.000172) | (0.000552) | (0.000951) | (0.000652) | (0.00101) | |
Log(EVI) | 0.0160 * | 0.0644 * | 0.0583 *** | ||
(0.00874) | (0.0353) | (0.0131) | |||
Log(EXPOSURE) | 0.0314 *** | ||||
(0.0108) | |||||
Log(SHOCK) | 0.0267 *** | ||||
(0.00850) | |||||
Log(GDPC) | −0.00609 | −0.102 *** | 0.0162 * | −0.00272 | 0.0168 * |
(0.00411) | (0.0289) | (0.00937) | (0.00629) | (0.00957) | |
Log(ODA) | −0.00770 *** | 0.00782 *** | 0.00530 | 0.000786 | −0.000482 |
(0.00144) | (0.00174) | (0.00333) | (0.00326) | (0.00358) | |
FINDEV | −0.0247 *** | −0.0116 | −0.0474 *** | −0.0599 *** | −0.0541 *** |
(0.00695) | (0.0146) | (0.0172) | (0.0145) | (0.0158) | |
INST | 0.000688 | 0.00538 | 0.00126 | 0.00708 ** | 0.00181 |
(0.00243) | (0.00518) | (0.00388) | (0.00299) | (0.00380) | |
Log(TERMS) | −0.0160 *** | −0.0195 *** | −0.0447 *** | −0.0246 ** | −0.0396 *** |
(0.00477) | (0.00608) | (0.0108) | (0.00967) | (0.0104) | |
Constant | 0.689 *** | 2.975 *** | |||
(0.159) | (0.216) | ||||
Observations—Countries | 582–121 | 582–121 | 582–121 | 602–121 | 583–121 |
R-squared/Within R-squared | 0.878 | 0.417 | |||
AR1 (p-Value) | 0.0000 | 0.0000 | 0.0000 | ||
AR2 (p-Value) | 0.6661 | 0.9019 | 0.7641 | ||
OID (p-Value) | 0.2675 | 0.3311 | 0.4418 |
Log(TARIFF) | Log(NTARIFF) | |
---|---|---|
Variables | (1) | (2) |
One-period lag of the dependent variable | 0.643 *** | 0.997 *** |
(0.0307) | (0.0189) | |
Two-period lag of the dependent variable | −0.0641 *** | −0.132 *** |
(0.0134) | (0.0146) | |
Three-period lag of the dependent variable | 0.0808 *** | |
(0.0122) | ||
DUR | −0.000436 *** | −0.00202 ** |
(0.000131) | (0.000829) | |
Log(EVI) | 0.00423 ** | 0.0780 *** |
(0.00195) | (0.00937) | |
Log(NONTARIFF) | 0.00949 *** | |
(0.00289) | ||
Log(TARIFF) | 0.339 *** | |
(0.0850) | ||
Log(GDPC) | 3.05 × 10−05 | 0.00780 |
(0.00114) | (0.00618) | |
Log(ODA) | −0.000408 | 5.38 × 10−05 |
(0.000417) | (0.00261) | |
FINDEV | 0.00434 ** | −0.0636 *** |
(0.00200) | (0.0124) | |
INST | −0.00101 * | −0.00199 |
(0.000603) | (0.00255) | |
Log(TERMS) | −0.000650 | −0.0266 *** |
(0.00171) | (0.00842) | |
Observations—Countries | 404–107 | 503–115 |
AR1 (p-Value) | 0.0255 | 0.0000 |
AR2 (p-Value) | 0.8789 | 0.7797 |
OID (p-Value) | 0.3547 | 0.5091 |
Variables | Log(TRCOST) | Log(TRCOST) | Log(TRCOST) |
---|---|---|---|
(1) | (2) | (3) | |
Log(TRCOST)t−1 | 1.083 *** | 1.062 *** | 1.097 *** |
(0.0249) | (0.0229) | (0.0234) | |
Log(TRCOST)t−2 | −0.242 *** | −0.191 *** | −0.221 *** |
(0.0248) | (0.0196) | (0.0230) | |
Log(EVI) | 0.0539 *** | ||
(0.0104) | |||
DUR | −0.00324 | 0.0139 *** | 0.00344 |
(0.00494) | (0.00310) | (0.00403) | |
DUR *Log(EVI) | 0.000147 | ||
(0.00137) | |||
DUR *Log(EXPOSURE) | −0.00427 *** | ||
(0.000911) | |||
Log(EXPOSURE) | 0.0256 *** | ||
(0.00884) | |||
DUR *Log(SHOCK) | −0.00176 | ||
(0.00111) | |||
Log(SHOCK) | 0.0316 *** | ||
(0.00651) | |||
Log(GDPC) | 0.0139 * | 0.00147 | 0.0110 |
(0.00756) | (0.00452) | (0.00764) | |
Log(ODA) | 0.00619 ** | −0.00212 | 0.000885 |
(0.00258) | (0.00239) | (0.00281) | |
FINDEV | −0.0418 *** | −0.0592 *** | −0.0303 ** |
(0.0132) | (0.0114) | (0.0135) | |
INST | 0.00351 | 0.00497 * | 0.00189 |
(0.00315) | (0.00279) | (0.00328) | |
Log(TERMS) | −0.0439 *** | −0.0238 *** | −0.0457 *** |
(0.00984) | (0.00787) | (0.0100) | |
Observations—Countries | 582–121 | 602–121 | 583–121 |
AR1 (p-Value) | 0.0000 | 0.0000 | 0.0000 |
AR2 (p-Value) | 0.6307 | 0.9263 | 0.7111 |
OID (p-Value) | 0.3120 | 0.4697 | 0.2713 |
Variables | Log(TRCOST) | Log(TRCOST) | Log(TRCOST) |
---|---|---|---|
(1) | (2) | (3) | |
One-period lag of the dependent variable | 1.049 *** | 1.091 *** | 1.076 *** |
(0.0232) | (0.0239) | (0.0267) | |
Two-period lag of the dependent variable | −0.215 *** | −0.248 *** | −0.212 *** |
(0.0244) | (0.0267) | (0.0315) | |
DUR | 0.0191 *** | 0.00909 ** | 0.0406 *** |
(0.00617) | (0.00371) | (0.00773) | |
DUR *Log(ODA) | −0.00108 *** | ||
(0.000309) | |||
Log(ODA) | −0.00103 | ||
(0.00245) | |||
DUR *Log(AfT) | −0.000701 *** | ||
(0.000211) | |||
Log(AfT) | 0.00395 | ||
(0.00260) | |||
DUR *Log(NonAfT) | −0.00230 *** | ||
(0.000397) | |||
Log(NonAfT) | 0.00676 ** | ||
(0.00274) | |||
Log(EVI) | 0.0326 *** | 0.0593 *** | 0.0462 *** |
(0.0107) | (0.0124) | (0.0124) | |
Log(GDPC) | 0.00238 | 0.0145 ** | 0.00598 |
(0.00542) | (0.00629) | (0.00761) | |
FINDEV | −0.0574 *** | −0.0503 *** | −0.0534 *** |
(0.0151) | (0.0134) | (0.0144) | |
INST | 0.00679 *** | −0.000464 | 0.00500 * |
(0.00235) | (0.00293) | (0.00289) | |
Log(TERMS) | −0.0407 *** | −0.0334 *** | −0.0379 *** |
(0.00993) | (0.00969) | (0.0107) | |
Observations–Countries | 582–121 | 592–116 | 592–116 |
AR1 (p-Value) | 0.0000 | 0.0000 | 0.0000 |
AR2 (p-Value) | 0.7845 | 0.6873 | 0.8952 |
OID (p-Value) | 0.3012 | 0.2404 | 0.2446 |
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Gnangnon, S.K. Duration of the Membership in the GATT/WTO, Structural Economic Vulnerability and Trade Costs. J. Risk Financial Manag. 2023, 16, 282. https://doi.org/10.3390/jrfm16060282
Gnangnon SK. Duration of the Membership in the GATT/WTO, Structural Economic Vulnerability and Trade Costs. Journal of Risk and Financial Management. 2023; 16(6):282. https://doi.org/10.3390/jrfm16060282
Chicago/Turabian StyleGnangnon, Sena Kimm. 2023. "Duration of the Membership in the GATT/WTO, Structural Economic Vulnerability and Trade Costs" Journal of Risk and Financial Management 16, no. 6: 282. https://doi.org/10.3390/jrfm16060282
APA StyleGnangnon, S. K. (2023). Duration of the Membership in the GATT/WTO, Structural Economic Vulnerability and Trade Costs. Journal of Risk and Financial Management, 16(6), 282. https://doi.org/10.3390/jrfm16060282