Trade openness and working poverty: empirical evidences from developing countries

Hazera-Tun- Nessa (Department of International Business, Faculty of Business Studies, University of Dhaka, Dhaka, Bangladesh)
Katsushi S. Imai (Department of Economics, The University of Manchester, Manchester, UK)

International Trade, Politics and Development

ISSN: 2586-3932

Article publication date: 6 February 2023

Issue publication date: 6 September 2023

2188

Abstract

Purpose

Existence of working poverty reduces the effectiveness of the strategy of “increasing employment to reduce poverty”. Developed countries are already concerned about it but insufficient attention has been made by developing countries. Focusing on developing countries this study identifies (1) the effects of trade openness (TO) on working poverty and (2) whether the working poverty trap exists or not in developing countries. Both objectives are also analyzed for three subsamples of low income, lower-middle income and upper-middle income developing countries.

Design/methodology/approach

Panel data for 98 developing countries over the period of 2000–2016 have been collected for the study. Fixed effect and GMM methods are applied for static and dynamic analysis, respectively.

Findings

The study finds that TO significantly reduces working poverty rate (WPR) (mainly driven up by upper-middle income developing countries). The positive association between WPR with its previous year's rate proves the existence of working poverty trap.

Research limitations/implications

The study's outcome is subject to selected time, countries and methods. Future research should use more improve methods and should identify the channels through which TO could affect working poverty.

Practical implications

Middle income and upper-middle income developing countries should increase TO to reduce the working poverty. Low income developing countries that have the highest working poverty should search the way to derive beneficial effects of trade on working poverty.

Social implications

Working poverty is not only a developed country issue rather it is a global phenomenon. Hence, it is expected that the study will raise the social consciousness about this phenomenon in developing countries too.

Originality/value

The study fulfills the gaps of identifying the effects of TO on working poverty and existence of in-work poverty trap in developing countries.

Keywords

Citation

Nessa, H.-T. and Imai, K.S. (2023), "Trade openness and working poverty: empirical evidences from developing countries", International Trade, Politics and Development, Vol. 7 No. 2, pp. 58-76. https://doi.org/10.1108/ITPD-08-2022-0018

Publisher

:

Emerald Publishing Limited

Copyright © 2023, Hazera-Tun- Nessa and Katsushi S. Imai

License

Published in International Trade, Politics and Development. Published by Emerald Publishing Limited. This article is published under the Creative Commons Attribution (CC BY4.0) license. Anyone may reproduce, distribute, translate and create derivative works of this article (for both commercial and non-commercial purposes), subject to full attribution to the original publication and authors. The full terms of this license may be seen at http://creativecommons.org/licences/by/4.0/legalcode


1. Introduction

With free trade and open markets, globalization was expected to better equalize rich and poor countries and empower consumers with more affordable options. Globalization has, in fact, managed to fail more people than it serves. (Joseph Stiglitz, a Nobel Laureate and economist)

Employment is considered as a fundamental strategy to fight against poverty for long time. But this view is confronted with the prevalence of working poor (Cantillon, 2011; Vandenbroucke and Vleminckx, 2011) which is a major socio-economic challenge (Herman, 2013). Working poverty captures the poverty–employment nexus (Kapsos, 2005) since it is defined as the percentage of employed people living under poverty line. This shows a combination of work and poverty together. To reduce poverty and to achieve equitable, inclusive and sustainable development work is not enough. Rather we need decent work and working poverty rate is one of the monitoring indicators of decent work.

Global working poverty rate is 10% and in least developed countries it is 38% (ILO, 2016). During the Great Depression, the working poverty was first considered in the United States which was reconsidered during 1960s (Harrington, 1962). With the rising poverty in the US and UK, this becomes a major concerning issue since the early 1980s. The European Union (EU) countries are concerned since 1990s (Kalugina, 2012). Working poverty rate (WPR) has also increased in EU (Eurostat Database, 2014).

Recently, working poverty issue has attained much attention in developing countries due to the sustainable development goal (SDG) of eradicating poverty in all aspects. The recent working poverty scenarios are represented in Table 1.

Although a declining trend of working poverty in developing countries has been observed in Table 1, the WPR is still high. Low income countries are suffering from high level of WPR. The decline in aggregate working poverty over the time is mainly driven by the decline in working poverty in middle income countries. Several individual, household and firm characteristics (micro factors) as well as institutional and macroeconomic shocks including globalization, deindustrialization, etc. is influencing the rate of working poverty.

Unlike traditional poverty, working poverty is closely related to globalization where the status of the poor is affected by the uncertainty and instability trends of work (Liu, 2022). With increased globalization, a country's trade openness (TO) could affect its working poverty through various channels. Previous studies overwhelmingly focused on the nexus of TO, poverty and inequality. But studies on TO and working poverty are very few and most studies in this area focused on developed country. The theoretical background analysis of Heckshier–Ohlin (HO) model, North-South Heckshier–Ohlin–Samuelson (NS-HOS) model as well Wood (1997) predicted that the effect of TO depends on trade pattern, effects on skilled and unskilled labor, etc. The effects of TO on working poor in advance countries depends on the trade pattern, North–North trade does not affect working poor in EU but North–South trade increases working poverty in EU (Hellier and Kalugina, 2015). Contrast to developed countries, the studies for developing countries are very few. While trying to find the effects of access to financial services on working poor, Coulibaly and Yogo (2016) used trade share (TS) as one of the regressors and found that increases in trade share increased working poverty in 63 developing countries. However, other developing countries should be also included and measurement of TO should be carefully chosen since the use of TS is often criticized.

Therefore, this study contributes in the existing literature by investigating the effects of TO on working poverty in developing countries with a new measure of TO, namely, composite trade share (CTS) and by identifying whether the developing countries are suffering from the existence of working poverty trap or not. The study also analyzes the effects of trade on working poverty among three country group within developing countries, namely, low income, lower-middle income and upper-middle income developing countries.

The rest of the paper is organized as follows. Related literature is reviewed in section 2. Following this, objectives and hypotheses are represented at the end of section 2. After that, methodology, findings and analysis of findings are represented in section 3 and section 4, respectively. Finally, concluding remarks are provided in section 5.

2. Literature review

If income inequality is positively related with TO and increases the poverty, then TO must influence the working poverty. However, the direction of relationship is not unambiguously positive as (1) trade may affect working poverty through other channels, (2) the effects of trade on inequality and poverty in the previous literature are ambiguous and (3) the relative weight of several determinants of in-work poverty could also influences the TO and working poverty relationship. This study will utilize the mechanism and literature on the effect of trade on poverty and inequality and literature on the determinants of working poverty.

2.1 Conceptualization of working poverty

Working poverty plays the role of intersecting “work” and “poverty” together. In a word “working poor” are those people who work but still fall below a given poverty line. There are wide varieties of definitions, measurements and approaches of working poor (Peña-Casas and Latta, 2004; Crettaz and Bonoli, 2011) across countries which are summarized by Crettaz (2013). The “working poverty rate” has been further conceptualized and estimated by International Labor Organization (ILO) – the people who are working but could not earn sufficient to make a way out of poverty.

A combination of individual, household, institutional and economic factors could explain the prevalence of in-work poverty. The “unified theory” (Blau and Kahn, 2002) of labor economics applied in explaining working poverty stated that the interaction between macroeconomic shocks (such as globalization, technological change and deindustrialization) and institutional contexts plays important role in effecting wage gaps. Similarly, by applying “welfare theory,” it is observed that welfare state could reduce working poverty (Crettaz, 2011).

Also, household contexts can be an important factor for working poverty (Strengmann-Kuhn, 2003). Based on the model developed by Crettaz and Bonoli (2011) the working poverty mechanisms are redefined by Crettaz (2011) as shown in Figure 1. This figure tries to map the different factors that may have an impact on working poverty. The issue is quite complex as many factors interplay, making it difficult to disentangle exogenous from endogenous variables. Both labor market and welfare state institutions comprehensively defined here as covering both cash transfers and the provision of services play crucial roles in shaping working poverty. Low individual earnings at the worker's (individual) level, combination of factors at household level and macroeconomic shocks are shaping the pattern and extents working poverty.

2.2 Concept and measurement of trade openness

Although widely used, there is no unique definition and measurement procedure of TO and various studies have used alternatives measures of it. The most frequently used measurement of TO is export as percentage of GDP or growth of export (Balassa, 1978; Tyler, 1981; Balassa, 1985; and others). But since a country could export more while restricting imports, use of import or import growth is often advocated as higher import could reduce costs of production ( Markusen, 1995). TS, which is defined (total export and import of goods and services) as percentage of GDP is the most popular measures. Criticizing the TS measure as it could mislead the degree of openness of some large trading nations, Squalli and Wilson (2011) have developed world trade share (WTS) and CTS as new measurement of TO. WTS is defined as a country's total TS relative to total world trade. But WTS could not exploit the two-dimensional nature of openness which raises the importance of using CTS by mixing TS and WTS together. The formula for calculating CTS (Squalli and Wilson, 2011) is represented in equation (1).

(1)CTSi=(X+M)i1nj=1n(X+M)j(X+M)iGDPi
Where, j denotes all countries in the sample and i is the country belonging to country group j and n is total number of countries. X stands for export, M stands for Import and GDP stands for Gross Domestic Products. The higher the CTS score of a country, the more its TO is relative to other countries.

2.3 Trade openness and working poverty: theoretical and empirical evidences

As the theoretical and empirical works on effect of TO on working poverty is limited, this study will utilize the mechanisms through which trade affects inequality as the latter directly increases working poverty by reducing the earnings of bottom income group.

2.3.1 Theoretical evidences

Although the classical trade economists, Smith (1776 and 1965) and Ricardo (1817 and 1951) have demonstrated the benefits of free trade and the cost of trade restrictions, the Heckscher–Ohlin (1991) model provides the main theoretical foundation for the analysis of effects of trade on labor market. The H-O theory predicts that free trade raises demand for goods produced by using abundant factors of the country which raises real return to that factor compared to other factors as described by Stolper–Samuelson theorem which is valid under H-O assumption of identical technology across countries. Therefore, the real wages would fall (increase) in developed country (developing country) due to increasing trade between them as well as skilled-unskilled wage gap could also reduce in developing countries (Sen, 2008). According to Deardorff (1986), Falvey et al. (1997) and others, these results could be weaken by several factors such as presence of nontraded goods, mobilization of capital to abroad, using many goods and factors, heterogenous nature of goods, different choices of consumers and specializing goods (Tyers and Yang, 1997). Extending the Heckscher–Ohlin–Samuelson model to incorporate North–South TO, the traditional NS-HOS model implied that North–South TO leads to an increase in the skill premium in North (skill-abundant) and a decrease in the South (unskilled-abundant) that is a rise in inequality in the North and a reduction of inequality in the South (Hellier, 2012). Due to restrictive assumptions of fixed endowments, factor price equalization, perfect competition, identical technologies and inability to account for international outsourcing these models could explain the real scenarios a little.

Alternatively, a model developed by Robinson and Thierfelder (1996) depicts that the pattern and extent to which factor prices are influenced by world price depends on the elasticity of substitution in consumption. The study predicted a fall of wages of unskilled labor when goods which are not traded but labor-intensive could be substituted for traded goods which require skill intensiveness. Also, Wood (1997) argued that availability of higher technology in developing countries through increased openness may increase demand for skilled workers and reduces demand for unskilled people increasing unequal distribution of wage between them.

2.3.2 Empirical evidences

Empirical studies overwhelmingly focused on trade effects on poverty and inequality. In a panel data model framework, Dollar and Kraay (2001) found very little impact of openness in reducing poverty once the growth effect has been kept constant. Later, Dollar and Kraay (2004) found that trade related growth can lead to higher wages and less poverty. Using Ccomputable Ggeneral Eequilibrium (CGE) model for Indonesia, Friedman (2001) found that trade liberalization increases the income of poor, but the findings is are found to be negative for rural poor. Using the generalized methods of moments (GMM) for a sample of 30 African countries over a period of 1981–2010, Le Goff and Singh (2014) have analyzed the impact of TO on poverty and how TO could reduce poverty. These authors used interactive variables of openness with country characteristics and found that when financial sectors are developed, law and governance are strong and education among people is higher, then the TO could reduce the poverty. A complete study dealing the issue of working poverty in the work of Hellier and Kalugina (2015), who analyzed the effect of globalization on working poor in advanced European countries by using TO as an indicator of globalization. Focusing on both macro and micro dimensions, this study identified the distinguishable effects of North–South and North–North trade on working poverty. The study applied fixed effect estimation and multilevel model to incorporate macro and micro dimensions, respectively. The findings of the study are that total TO (without divided into North–South and North–North trade) and North–South TO significantly increases working poverty. These findings imply that competition from emerging/developing countries hurts unskilled workers in EU. The North–North trade is found to be insignificantly affecting working poverty putting emphasize on trading partners and trade with South is large enough making the TO to increase the working poverty in EU by hurting their unskilled labor. So, the concluding remarks of the study that in advance countries globalization increases working poor. For developing countries, the TO and working poverty nexus is still scarce. A little evidence could be found in the study by Coulibaly and Yogo (2016). While examining the effects of access to financial services on working poor in 63 developing countries, this study used TS (total export and import) as one of the control variables and found that TO significantly increases working poverty, confirming that demand for unskilled labor is becoming low compared to skilled labor due to TO.

So, the attempt to study the effect of TO on working poverty in 98 developing countries with logical measurement of openness is surely a contribution to the literature.

2.4 Working poverty trap

Just like the poverty trap, there might be working poverty trap. Snower (1994) analyzed how a country could fall in a low skill, bad job trap. The study argued that bad jobs are mostly associated with low wages and provide little opportunity to acquire skill and create working poor. Also, firms with smaller portion of skilled workers have little incentive to provide good jobs/training which reduces workers' incentive to acquire skill and creates a vicious cycle of working poor. Empirically, Palacios et al. (2009) showed the evidence of persistence increase in working poor in OECD area where working poverty increased more after the 1990s as well as low pay traps also exists there. Also, upward mobility incentive of low paid workers decreases with low wage and this low pay traps are higher among prime age workers than young age workers. What is happening in developing nations is still needed to be explored.

Previous literature reveal mixed results about the impact of TO on working poverty with majority showed that trade boost up inequality and hence working poverty, while the opposite affects could also be observed. The effect of trade depends on the trade pattern and on how its effects the skilled and unskilled workers. If it induces demand for skilled labor, the working poverty could increase and vice versa (Coulibaly and Yogo, 2016). The poverty trap literature overwhelmingly ensures the existence of poverty trap and evidence also shows that bad jobs further create bad-job traps.

Therefore, the first objective is to find out the impact of TO on working poverty in developing countries with a particular focus on measurement issues. The second objective is to identify whether working poverty has dynamic self-reinforcing effect (existence of working poverty trap) on itself or not. Both of these objectives will also be analyzed for three country groups, namely, low income, lower-middle income and upper-middle income developing countries.

3. Methodology of the study

3.1 Sample size and data sources

The study is based on data collected for 98 developing countries from 2000 to 2016. The number of developing countries is chosen based on data availability (see appendix Table A1 for list of sample countries). The data on working poverty are collected from the key indicators of labor market (9th Edition) made available by the ILO and TO is calculated by using the data on exports and imports of goods and services collected from World Development Indicators of World Development Bank. The whole sample has been further divided into four groups according to the classification of World Bank during 2017–2018. Based on Gross National Income per capita (US dollar), the World Bank Classified four income groups, namely, low-income group, lower-middle income, upper-middle income and high-income countries. Table 2 summarizes basic information of country groups based on income.

Since the number of high-income countries are very few to make fixed effect or dynamic regression analysis, this study will only focus on first three groups.

3.2 Variable descriptions

3.2.1 Working poverty rate (WPR)

The dependent variable, WPR is described by ILO (2016) as percentage of employed people (aged 15+) living below of $1.90 per day (the international poverty line). The WPR for countries of all income categories has been calculated by the ILO in equation (2).

(2)WPR=TotalemployedpersonlivinginthehouseholdwithincomelevelbelowpovertylineTotalnumberofemployedpeople×100

3.2.2 Trade openness (TO) measurement

This study will use two measures of TO to compare the constructed country ranking in terms of openness based on these and the better one will be chosen as openness measurement. The TS which is defined as total trade as percentage of GDP, and another one is the CTS as already described in section 2.2. But WTS could not exploit the two-dimensional nature of openness. Since CTS combines the TS and WTS together, the use of CTS is a better measurement of TO.

3.2.3 Other control variables

Based on literature, some variables will be controlled to get the impact of openness on working poverty as well as for identifying the dynamic nature of the analysis. The controlled variables are GDP growth, age dependency ratio, school enrollment, inflation, unemployment and labor productivity (see appendix Table A2 for detail definition of these variables and data sources). The trickle-down effect of growth is expected to reduce the working poor. Age dependency ratio creates pressure on family income hence expected to increase the working poor people. School enrollment is used to capture the effect of human development which is expected to reduce the WPR. Inflation as captured by consumer price index might increase the working poor through consumption effect by reducing real income and hence purchasing power. Even though working poverty falls that does not ensure better situation unless the unemployment rates are controlled since a portion of working poor might entered unemployment which is a reduction of working poor. So, the relationship between unemployment and working poverty is ambiguous.

3.3 Econometric model and methods

3.3.1 Static panel model specification

WPR could be expressed as a function of trade openness (TOit) and a set of controlled variables (Xit) as shown in equation (3).

(3)WPRit=f(TOit,Xit)

This study will follow the methodology of macro estimation part of working poverty–globalization model of Hellier and Kalugina (2015), working poverty-access to financial services by Coulibali and Yogo (2016) and poverty–TO by Le Goff and Singh (2014). Hellier and Kalugina (2015) utilized the literature on the relationship between income inequality and globalization and Le Goff and Sing (2014) followed the basic growth–poverty model suggested by Ravallion and Chen (1997) as well as framework suggested by Dollar and Kraay (2001), Krueger and Berg (2003). The following empirical model shown by equation (4), will be estimated using pooled regression or fixed effect or random effect estimation based on the tested result of LM and Hausman tests.

(4)WPRit=αi+β1TOit+β2Xit+Vt+εit
Where, i is the country index (number of countries), t is the year index (from 2000 to 2016). The dependent variable WRPit is the percentage of working poor and TOit is the TO indicators in country i and in year t. The set of control variables (see section 3.2.3) are represented by Xit. αi and vt capture the country and time fixed effects respectively, and εit is the remainder error term capturing measurement errors and others.

Regression equation (4) will be estimated for four times as follows: first one for whole sample, second, third and fourth one is for subsamples of low income, lower-middle income and upper-middle income developing countries, respectively.

3.3.2 Dynamic panel data (DPD) model specification

Theoretically existence of working poverty trap has been found in the literature as discussed in section 2.6. So, without adding lag value of dependent variable as one additional independent variable, this analysis would suffer from the loss of dynamic information even in a panel data framework. To attain objective 2 as well as for identifying dynamic effects of TO, the study proposes following dynamic regression equation (5). Just like regression equation (5), the following equation will also be estimated four times.

(5)WPRit=αi+θWPRi,t1+β1TOit+β2Xit+Vt+εit

The ordinary least square (OLS) methods are not applicable here, since lagged dependent variable may be correlated with the disturbance process causing the problem of endogeneity. Two approaches, namely, instrumental variable (IV) (Anderson and Hsiao, 1982), as the first step and GMM estimators (Arellano and Bond, 1991), as the second step, are often applied to estimate dynamic panel data (DPD) models. The problem with IV method is that it may not utilize all available sampling information and might fail to ensure the efficiency of estimators (Batlagi, 2005), which could be ensured by GMM methods. The Arellano Bond (AB) approach with GMM method is applicable if N (panel unit) is greater than T (time) and the left-hand variable depends on its own past values which is not strictly exogenous.

Since, the current study has a panel data for N (98 countries) > T (17 years) and lagged value dependent variable appears as one of the regressors which might not be strictly exogenous, applying GMM methods according to AB might be appropriate here. Also, using first step estimator is preferable because of its effectiveness in resulting more efficient estimators and a downward bias could arise in second step GMM estimator (Blundell and Bond, 1998). In DPD analysis having first order autocorrelation is not unusual since variables and errors are taken as first differences but they should not exhibit any second order autocorrelation autocorrelation. Also, ensuring the validity of over-identification restrictions and the exogeneity of instruments by Sargan/Hansen test and Hansen test of excluding group/differences respectively could make correct estimation through first step GMM.

4. Empirical findings and analysis

4.1 Descriptive analysis

Simple descriptive statistics are represented in Table 3. The minimum value of working poverty rate is zero which prevailed in Belarus during 1991, in Iran during 2012 and 2013, in Moldova during 2015 and 2016, in Serbia during 2010 and in Ukraine during 2014. Throughout the sample period, Congo (Dem Rep.) experienced high WPR with the highest rate (96.1%) during 2001. Also, in 2002, Lao had high WPR (92.9%). The openness variables (TS and CTS) also varied.

The country rankings based on these two measurements of openness are shown in appendix-Table A1. Like Squalli and Wilson (2011) some major trading countries are ranked lower than expected ranking in terms of TS. Some of the largest developing countries such as China, Mexico and India ranked 80, 64 and 89 respectively according to TS which becomes 1, 3 and 4 when CTS is adopted. The ranking for Malaysia remains close to 1 using TS and 2 using CTS. Therefore, current study chooses CTS as TO variable.

4.2 Correlation analysis

The simple correlation represented in Table 4, shows that the WPR is negatively related with both measurement of openness, namely, TO (CTS) and TS with greater magnitude of the former than the latter. Similar negative also correlation also found with unemployment, school enrollment and labor productivity. But growth rate, age dependency and inflation are found to be positively associated with WPR.

4.3 Analysis of econometric regression results

4.3.1 Static analysis

As a preliminary analysis, the regression equation (4) has been estimated through pooled OLS, fixed effect and random effect model (see in Table A3 in appendix). And in order to decide about appropriate model, some diagnostic tests have been performed which are also represented in the bottom part of same table. The Breusch and Pagan Lagrangian multiplier test found that the p value is 0.00, which strongly rejects the null hypothesis with no significant difference across countries (no panel effects) that is pooled OLS is not appropriate here. The p value obtained from Hausman test is less than 0.05 (at 5% level of significance) which rejects the null hypothesis of no systematic differences in coefficients. Therefore, the fixed effect model is preferable than random effect analysis. The estimated results through fixed effect model are tested to identify whether they are suffering from heteroskedasticity and autocorrelation problems or not. Since this study is dealing with panel data, the modified Wald Test has been conducted to identify the group-wise heteroskedasticity. The very low p value > χ2 = 0.00 strongly rejects the homoskedasticity assumptions. As well as since it is a long time series panel study, Wooldridge test for autocorrelation is conducted which rules out the null hypothesis of no serial correlation and conclude that the estimated model is suffering from autocorrelation problem. Finally, the test for time fixed effect revealed that there are significant time effects. Hence, the time dummies are also included with the model. Therefore, the estimated fixed effect model is suffering from both heteroskedasticity and autocorrelation problem. To mitigate the both problems, this study estimates the regression equation (4) through fixed effect models by clustering on panel id, i.e. country) and include time dummies since there are significant time fixed effects. The results are shown in the Table 5 in column (2).

The estimated results reveal that controlling for other variables, greater openness to trade significantly reduces the working poverty in developing countries as contrast to the findings of Hellier and Kalugina (2015) who found positive effects in OECD countries and Coulibaly and Yogo (2016) who found TO increases working poverty in 63 developing countries by using TS as a measurement of TO. While using CTS as a measure of TO, this study reveals that TO reduces working poverty in developing countries. These findings are consistent with the theoretical predictions that TO increases skill premium in the North (rises inequality) but decreases skill premium in the South leading a reduction of inequality (Hellier, 2012). Hence, openness to trade is increasing the income of lower/low skilled workers which in turn reduces the working poverty in developing countries. The growth rate is also found to be significantly reducing the WPR. But the effects of some other control variables such as school enrollment, labor productivity, age dependency and unemployment are found to be insignificant. Although inflation is significantly increasing the working poverty, the magnitude of effects is very close to zero.

4.3.2 Comparison among different income group with static analysis

The overall scenario could be different for different country group according to income within the developing nations. Since the number of observations for high income country are very few to estimate panel fixed effect and make comparisons, the comparative analysis will be done only among the first three income group. The estimated fixed effect (clustering across countries) results for each of the three-income group are shown in column (2), (3) and (4) of Table 6 respectively.

The estimated results show interesting findings about the effect of TO on WPR in different income groups. In low-income countries, the effect seems to be insignificant, whereas in lower and upper-middle income countries, TO is found to be significantly reducing the WPR and the magnitude of effect is higher for the former than the later. The unemployment rate is not affecting the WPR in any group of countries. Both results indicate that TO is reducing working poverty without creating more unemployment. Similar results have been found for school enrollment.

In low-income countries, only the increased labor productivity could reduce the WPR as observed in column (2). Although inflation is found to negatively effect the working poverty, the magnitude of effects is very low. Moreover, the effects of inflation are insignificant for other two country groups. Age dependency is increasing the WPR only in lower-middle income country, but this result is significant at 10% level of significance. The growth rate is found to be highly significantly reducing the WPR only in upper-middle income countries.

4.3.3 Dynamic analysis

The estimated results of DPD model (equation 5) obtained by Arellano–Bond (AB) first steps GMM methods are shown in Table 7. The estimated model needs to satisfy the diagnostic test of autocorrelation and over identifying restriction. As shown in Table 7, for AR (1), the p value (prob > Z) = 0.001 which is less than 0.05. So, the null hypothesis of existence of first order autocorrelation could not be rejected. Due to first differences, it is common to have first order autocorrelation but there should not be any second order autocorrelation. For AR (2), the p value (prob > Z) = 0.265 > 0.05, so the null hypothesis of existence of second order autocorrelation could be rejected. Also, it is necessary to identify whether the model is suffering from over-identifying restrictions of instruments which could be done by Sargan or Hansen test. However, when there are many instruments, Sargan are not powerful tests (Roodman, 2009). So, it is better to observe the Hansen test. Roodman (2009) also suggest that number of instruments should be lower than number of groups. The Hansen p value (Prob > χ2) = 0.09 > 0.05 as shown in Table 7, fails to reject the null hypothesis of over identified restrictions are valid. Therefore, future studies in this area should incorporate more samples and take others necessary steps to overcome this over-identification problem. This model satisfies the rules of using lower instruments (90) than the number of groups.

The estimated coefficient of lag working poverty is 0.54, which is significant at 1% level of significance. This result strongly proves that there is a self-reinforcing effect of WPR on itself and working poverty trap is a real phenomenon just like poverty trap. Once a person become working poor, it is difficult to break the trap without exogenous shocks.

The TO is found to be significantly reducing WPR just like static analysis, but the magnitude of effects is lower in dynamic analysis than in static analysis. The growth rate and school enrollment are also found to have expected significant effects. The effects of unemployment, inflation, age dependency and labor productivity are found to be insignificant.

4.3.4 Comparison among income groups with dynamic analysis

Like static analysis, the dynamic regression equation (5) is also estimated for three major income groups of countries. The results are represented in Table 8. Looking at the validity of these models through some diagnostic tests as represented in Table 3, it is observed that there are no second order autocorrelation. But the p value of Hansen test is 1, which weakens the assumptions of validity of over identifying restrictions. As well as number of instruments are higher than number of groups. These last two test results emerged due to smaller sample size which occurred due to dividing the whole sample.

The self-reinforcing effect of WPR on itself significantly prevails in all income groups while the effect is higher among upper-middle income countries than the other two groups. But the effects of TO on WPR are found to be significant only in case of upper-middle income countries; while growth is found to reduce WPR in all groups with greater effects in lower middle-income countries. School enrollment is found to reduce the WPR only in upper-middle income countries at 10% level of significance, but labor productivity is found to be significantly reducing WPR in low and lower-middle income countries. In overall analysis age dependency and unemployment remain insignificant. But the analysis according to country group reveal that TO reduces as age dependency increases and TO decreases as unemployment increases only in upper-middle income countries. And inflation rate does not have any significant effects in any income group.

5. Conclusion

One of the sustainable development goals is to eradicate poverty by 2030 in all forms. A way of doing this is to ensure decent work. The WPR could be influenced by several micro and macro factors including globalization. Previous studies in this area have overwhelmingly focused on advanced countries. Current study assessed the effect of TO on working poverty and existence of working poverty trap in developing countries. This study also divided the analyses for low income, lower-middle income and upper-middle income countries.

The study found that TO significantly reduces the WPR in developing countries in general. The findings remain same both in static analysis and in dynamic analysis. These findings are consistent with H-O theoretical predictions that trade liberalization benefits the unskilled labor in developing nations. Also, the analysis using subsamples of different country groups found that this beneficial impact of TO is mainly driven up by lower- and upper-middle income developing countries. Moreover, as expected, the dynamic analysis identified the existence of self-reinforcing effects of working poverty in developing nations. This highly statistically significant self-reinforcing effect is found in all three sub-sample of low, lower-middle and upper-middle income countries. But the problem is higher among low-income countries.

Therefore, TO is a beneficial factor to reduce the WPR in developing countries, specifically in the lower- and upper-middle income developing countries. But low-income countries which are suffering from working poverty trap most are unable to accrue the beneficial impacts of TO on working poverty. Low-income countries should learn from other developing countries how to reduce the WPR and how to accrue the beneficial effects of TO in reducing working poverty. Hence, besides improving the methodology, further research should focus on identifying the channels through which TO can reduce the WPR in developing countries particularly in low-income countries.

Figures

Working poverty mechanisms

Figure 1

Working poverty mechanisms

Working poverty rates (percentages) in developing and emerging countries

Extreme working poverty (<$1.90PPP)Extreme and moderate working poverty (<$3.10 PPP)
19912005201220151991200520122015
Major Country Grouping
Total emerging and developing country48.622.213.71267.344.731.227.9
Middle-income countries51.120.611.89.971.344.328.825.0
Low-income countries67.255.141.537.583.681.773.269.8
ILO Regions (excluding Developed Countries)
Africa48.840.032.829.869.065.659.857.8
Arab States7.85.04.14.631.122.219.422.0
Asia and the Pacific59.423.212.710.480.148.831.226.4
Europe and Central Asia2.83.61.91.58.89.05.54.7
Latin America and the Caribbean9.16.63.73.520.514.68.68.2

Source(s): World Employment and Social Outlook 2016, ILO. (October 2015 update of the model in Kapsos and Bourmpoula (2013)

Country group based on World Bank’s criteria of gross national income per capita (2017–18)

Income groupThreshold level of GNI/Capita (current US$))Number of countries
Low Income Countries<1,00624
Lower-Middle Income Countries1,006–3,95539
Upper-Middle Income Countries3,956–12,23532
High-Income Countries>12,2353

Descriptive statistics

VariableObservationMeanStd. Dev.MinMax
Working Poverty Rate (WPR)1,66622.8324.63096.1
Trade Openness (CTS)1,66665.83196.700.00011930.39
Trade Share (Trade % of GDP)1,66679.0738.150.17351.11
Growth Rate1,6664.675.22−36.7063.38
Age Dependency Ratio1,66669.7418.1034.52111.78
School Enrollment1,666103.2816.4021.72150.79
Unemployment Rate1,6667.985.750.1629.77
Inflation1,66626.85602.07−35.8424411.03
Labor Productivity1,6669285.869502.1750661016

Note(s): There were some missing values in school enrollment and inflation data which have been filled up by the mean value over the period of 2000–2016 for each nation

Correlation analysis

VariableCorrelation coefficient with WPR
Working Poverty Rate (WPR)1.00
Trade Share (Trade % of GDP)−0.19
Trade Openness (CTS)−0.17
Growth Rate0.05
Age Dependency Ratio0.74
School Enrollment−0.11
Unemployment Rate−0.24
Inflation0.05
Labor Productivity−0.56

Source(s): Author's own calculation from collected data

Results of fixed effect models clustering on country

Dependent variable: Working poverty rate (WPR)
(1) Variable name(2) Fixed effect
Trade Openness (CTS)−0.014 (0.00) ***
Growth Rate−0.116 (0.04) ***
School Enrollment−0.041 (0.43)
Labor Productivity0.0000 (0.95)
Age Dependency0.247 (0.21)
Unemployment Rate−0.21 (0.34)
Inflation0.0001 (0.00) ***
Constant8.127 (0.58)
Number of Observations1,666
Number of Groups98
F-value18.11
Prob > F0.00
Overall R20.41

Note(s): p values are shown in the parenthesis. ***, ** and * indicates significant at 1%, 5% and 10% level of significance respectively. Time dummies are included in regression equation

Results of fixed effect models clustering on country for each income group

(1) Variable name(2) Low income(3) Lower middle income(4) Upper middle income
Trade Openness (CTS)−0.66 (0.10)−0.034 (0.00) ***−0.009 (0.03) **
Growth Rate0.006 (0.92)−0.4 (0.30)−0.08 (0.00) ***
School Enrollment0.04 (0.46)0.06 (0.52)0.02 (0.68)
Labor Productivity−0.02 (0.00) ***−0.01 (0.23)−00009 (0.24)
Age Dependency−0.087 (0.85)0.70 (0.01) **−0.17 (0.22)
Unemployment Rate0.497 (0.54)0.23 (0.64)0.09 (0.39)
Inflation−0.0003 (0.00) ***−0.07 (0.01) **0.004 (0.82)
Constant78.23 (0.002) **−29.97 (0.16)11.55 (0.31)
Number of Observations408663544
Number of Groups243932
F-value6455.4286.155.71
Prob > F0.0000.000.00
Overall R20.320.280.0007

Note(s): p values are shown in the parenthesis. ***, ** and * indicates significant at 1%, 5% and 10% level of significance respectively. Time dummies are included for each of the estimated model

Results of first step GMM model

Variable nameGMM
Lag Working Poverty0.54 (0.00) ***
Trade Openness (CTS)−0.006 (0.00) ***
Growth Rate−0.18 (0.00) ***
School Enrollment−0.33 (0.00) ***
Labor Productivity0.0007 (0.01) *
Age Dependency−0.07 (0.83)
Unemployment Rate−0.39 (0.29)
Inflation0.0002 (0.72)
Number of Observations1,470
Number of Groups98
Number of Instruments90
Diagnostic Test Results
F-value17.16
Prob > F0.000
Arellano–Bond test for AR (1)Z = −2.53 and Prob > Z = 0.011
Arellano–Bond test for AR (2)Z = −1.11 and Prob > Z = 0.265
Hansen test of over identifying restrictionsχ2 (65) = 80.52, Prob > χ2 = 0.09

Note(s): p values are shown in the parenthesis. *** indicates significant at 1% level of significance, ** indicates significant at 5% level of significance and finally * indicates significance at 10% level of significance, time dummies are included in the model

Results of first-step GMM model for each income group

(1)(2)(3)(4)
Variable nameLow incomeLower-middle incomeUpper-middle income
Lag Working Poverty0.69 (0.00) ***0.57 (0.00) ***0.76 (0.00) ***
Trade Openness (CTS)0.04 (0.81)−0.03 (0.147)−0.003 (0.02) ***
Growth Rate−0.27 (0.00) ***−0.21 (0.02) ***−0.12 (0.00) ***
School Enrollment−0.01 (0.63)−0.09 (0.57)−0.06 (0.067) *
Labor Productivity−0.008 (0.02) **−4.17 (0.99)−0.0002 (0.02) **
Age Dependency−0.02 (0.95)1.04 (0.13)−0.38 (0.02) **
Unemployment Rate0.12 (0.84)2.00 (0.196)0.32 (0.02) **
Inflation0.0002 (0.34)0.07 (0.57)−0.005 (0.72)
Number of Observations360585480
Number of Groups243932
Number of instruments909090
Diagnostic Tests Results
F-value534.0613.77101.51
Prob > F0.0000.0000.000
Arellano–Bond test for AR (1), Prob > Z0.0360.110.010
Arellano–Bond test for AR (2), Prob > Z0.9780.610.84
Hansen test of over-identifying restrictions Prob > χ21.001.001.00

Note(s): p values are shown in the parenthesis. *** indicates significant at 1% level of significance, ** indicates significant at 5% level of significance and finally * indicates significance at 10% level of significance. Time dummies are included in all models

List of countries and country ranking in terms of trade openness

CountryTrade share (TS)Country ranking by TSTrade openness (CTS)Country ranking by CTS
Afghanistan75.3314710.6605354
Albania71.79708497.06679768
Algeria65.705065881.4649718
Angola113.3151890.4352916
Argentina33.620119453.1795523
Armenia70.50508514.74554876
Azerbaijan88.247113430.445328
Belarus129.2917895.4777315
Belize121.5898133.02005883
Benin57.64536692.90841884
Bhutan96.31927271.57069590
Bolivia67.843415611.146152
Botswana96.913962615.0253346
Brazil25.6234797128.529812
Burkina Faso45.44628862.22472887
Burundi38.6706910.36230295
Cambodia124.75051221.1610740
Cameroon52.14952758.94359459
Central African Republic38.42088920.35498996
Chad81.02133436.98607569
Chile67.3743257108.240113
China49.68778801517.0291
Colombia36.095379339.5323525
Comoros59.81222660.23088598
Congo, Rep.138.7442621.8515938
Congo, Dem. Rep61.283796310.7087253
Côte d'Ivoir81.232934221.6628439
Dominican Republic64.869096029.2683930
Ecuador55.528497125.1302234
Egypt48.098518256.1130722
El Salvador69.812485315.3502745
Equatorial Guinea170.9864234.8283827
Fiji119.4559157.12144367
Gabon84.770873912.2654949
Gambia69.29574540.58466194
Georgia86.825483810.0448856
Ghana88.464383322.9417236
Guatemala61.307786220.8934641
Guinea-Bissau50.44996780.28118597
Guyana153.282735.96489271
Honduras120.07981428.8840531
India43.1692289323.50854
Indonesia51.7419776193.51558
Iran46.64038599.7313514
Iraq94.5864331323.35775
Jamaica86.976693715.3791144
Kenya54.074777213.2881448
Kyrgyzstan114.3615177.63382465
Lao PDR79.74292445.36080372
Lebanon82.704144030.2811529
Liberia152.078543.58080781
Madagascar69.8348525.29749774
Malawi60.20103652.39871786
Malaysia174.69271944.15612
Mali58.55401684.17842877
Mauritania100.44224.77482175
Mauritius114.45911617.2532143
Mexico60.834864525.27093
Moldova127.3106910.0055957
Mongolia111.7827198.67190462
Morocco73.822894859.7759721
Mozambique87.35563510.4549355
Myanmar14.41973982.73062585
Namibia100.01932312.1342750
Nepal47.55882834.1056978
Nicaragua87.15684368.87506360
Niger53.23429731.92373789
Nigeria52.402877474.9777319
Pakistan31.730469622.6538837
Panama131.0305763.7964220
Paraguay95.134613020.0810142
Peru46.673648435.9085526
Philippines81.4823541169.17189
Rwanda40.20056901.03050892
Senegal70.68229507.73080764
Serbia77.949974628.7501132
Sierra Leone57.14503701.23796391
Solomon Islands95.49316280.8559693
South Africa58.9049967136.524911
Sri Lanka63.476686123.9438735
Sudan32.45673956.84930870
Suriname89.9672323.40174382
Swaziland125.5811118.67951761
Tajikistan97.05035255.29905373
Tanzania45.09752877.23809366
Timor-Leste126.6809102.20022788
Togo97.57484243.84087780
Trinidad and Tobago102.0072128.6354333
Tunisia95.467032950.6381524
Turkey48.1167881197.56167
Uganda44.2885884.0485379
Ukraine103.315820156.588410
Uruguay51.212887711.3551
Venezuela50.269977988.9349217
Viet Nam145.8735293.61416
Yemen65.108225915.0049847
Zambia68.5775559.12915858
Zimbabwe78.9137458.2656563

Variable description and data sources

Variable nameDefinition and measurementSources of data
Working Poverty Rate (WPR)Working poverty rate (percentage of employed living below US$1.90 PPP)International Labour Organization. Web Address: http://www.ilo.org/ilostat
Unemployment RateUnemployment, total (% of total labor force) (modeled ILO estimate)
Labor ProductivityOutput per worker measured in GDP constant 2011 international $ in PPP
Trade Openness (CTS)Composite Trade Share. Calculated by using data on export and import measured in current US dollarWorld Development Indicators. Web Address: https://data.worldbank.org
Trade ShareSum of exports and imports of goods and services measured (% GDP)
Growth RateAnnual percentage growth rate of GDP at market prices
Age DependencyThe ratio of dependents (younger than 15 or older than 6) to the working-age population (those ages 15–64)
InflationInflation as measured by the consumer price index (CPI)
School EnrollmentPrimary enrollment (% gross). Gross enrollment ratio is the ratio of total enrollment, regardless of age

Preliminary estimates through pooled OLS, fixed effect and random effect models

(1)(2)(3)(4)
Variable namePooled OLSFixed effectRandom effect
Trade Openness (CTS)0.005 (0.02) **−0.012 (0.00) ***−0.011 (0.00) ***
Growth Rate0.069 (0.34)−0.087 (0.00) ***−0.089 (0.00) ***
School Enrollment0.092 (0.00) ***−0.107 (0.00) ***−0.100 (0.00) ***
Labor Productivity−0.0006 (0.00) ***−0.0004 (0.00) ***−0.0004 (0.00) ***
Age Dependency0.827 (0.00) ***0.725 (0.00) ***0.736 (0.00) ***
Unemployment Rate−0.398 (0.00) ***0.079 (0.28)0.008 (0.91)
Inflation0.0015 (0.02) **0.0002 (0.49)−0.0002 (0.46)
Constant−35.891 (0.00) ***−12.386 (0.00) ***−12.675 (0.00) ***
Number of Observations1,6661,6661,666
Number of Groups9898
F-value386.99107.41
Prob > F0.0000.000.00
Wald χ2904.32
Prob > χ20.00
Overall R20.620.560.57
Diagnostic Tests
Breusch and Pagan Lagrangian Multiplier Test: prob > chibar2 = 0.000
Hausman Test: prob > χ2 = 0.000
Modified Wald Test for group wise Heteroskedasticity: prob > χ2 = 0.000
Wooldridge Test for autocorrelation in panel data: prob > F = 0.000
Testing for Time Fixed Effect: prob > F= 0.000

Note(s): p values are shown in the parenthesis. ***, ** and * indicates significant at 1%, 5% and 10% level of significance respectively

Appendix

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Corresponding author

Hazera-Tun- Nessa can be contacted at: hazeratunnessa@du.ac.bd

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