REMITTANCE INFLOW AND GDP GROWTH: EVIDENCE FROM BANGLADESH, INDIA AND PAKISTAN

Sonia Afrin Ale1 --- Rasheda Akter2 --- MD. Shafiqul Islam3+

1,3Assistant Professor, Department of Economics, Noakhali Science and Technology University, Noakhali-3814, Bangladesh

2MSS Student, Department of Economics, Noakhali Science and Technology University, Noakhali-3814, Bangladesh

ABSTRACT

This paper examines the impact of remittance on economic growth. In this study, we utilize the secondary time series data for the span of 1981-2015 in case of Bangladesh, India, and Pakistan. The study uses Augmented Dickey-fuller (ADF) test to check whether a series suffers from a unit root problem and Granger causality Test under the Vector Autoregressive Regression (VAR) framework to check the causal link. The Johansen Cointegration test is employed to check whether the long-run relationship or equilibrium exists between the time series variable. By using ADF test we find that the series is stationary in the first difference of the original series. The Granger causality establishes that remittances lead to economic growth while economic growth does not lead to remittances flow in Bangladesh that means there is a one-way causal relationship between the two variables running from remittances to economic growth. The study finds a bi-directional significant link between remittances and economic growth in India which means a two-way directional causality, indicating that remittances flow leads to economic growth and the economic growth also facilitates flow in remittances. However, there is only a one-way causal relationship in Pakistan where economic growth leads to remittance growth. The result of Johansen co-integration shows that there is a long run relationship among the variables.

Keywords:Remittance Economic growth Augmented dickey-fuller test Granger causality Johansen cointegration test. Bangladesh India Pakistan.

ARTICLE HISTORY: Received:20 July 2018. Revised:23 August 2018. Accepted:4 October 2018. Published:2 November 2018.

Contribution/ Originality: This study is one of few studies which have examined the impact of remittance and economic growth in case of Bangladesh, India and Pakistan.

1. INTRODUCTION

This paper examines the impact of remittance on economic growth. In this study, we utilize the secondary time series data for the span of 1981-2015 in case of Bangladesh, India, and Pakistan. The study uses Augmented Dickey-fuller (ADF) test to check whether a series suffers from a unit root problem and Granger causality Test under the Vector Autoregressive Regression (VAR) framework to check the causal link. The Johansen Cointegration test is employed to check whether the long-run relationship or equilibrium exists between the time series variable. By using ADF test we find that the series is stationary in the first difference of the original series. The Granger causality establishes that remittances lead to economic growth while economic growth does not lead to remittances flow in Bangladesh that means there is a one-way causal relationship between the two variables running from remittances to economic growth. The study finds a bi-directional significant link between remittances and economic growth in India which means a two-way directional causality, indicating that remittances flow leads to economic growth and the economic growth also facilitates flow in remittances. However, there is only a one-way causal relationship in Pakistan where economic growth leads to remittance growth. The result of Johansen co-integration shows that there is a long run relationship among the variables.

This study is one of few studies which have examined the impact of remittance and economic growth in case of Bangladesh, India and Pakistan.

The importance of remittances is increasing gradually. In developing countries, they are becoming one of the main significant sources of foreign financial flows both in size and growth rate. The original size of remittances, as well as unrecorded flows through formal and informal channels, is significantly large. The remittances that are recorded more than twice as large as official aid and about two-thirds of foreign direct investment (FDI) flow to developing countries. The vast upward movement in remittances payments may be attributed hugely to two factors, namely; immigration between developing and developed countries has grown in a dramatic manner in the past 20 years and reduce the transaction costs as technological advantages among the individuals. Remittance is distinct from the several external capital inflows like foreign direct investment, foreign loans and aids due to its static nature. In developing countries, the impact of remittance on the economic system is more profound because they receive $307.1 billion of the total remittances, which is about 74 percent and in these countries 27 percent of the GDP is coming from GDP. According to World Bank, the flows of remittances to the developing world have reached $414 billion in 2013 (up 6.3 percent over 2012), and at present, it becomes the second largest source of external financial flows to developing countries. Given the 232 million global migrants and the almost 70 million internal migrants, migrants generate and transfer earnings and it is expected to reach $540 billion by 2016.

According to the World Bank (2006 ) among the other types of private capital inflows like as official development aids (ODA) and foreign direct investment (FDI) remittances are more stable and are counter-cyclical. Remittance act as a significant macroeconomic stabilizer in the developing countries. The countries of  South Asia has been a momentous source of migrant workers while the countries are suffering from labor shortages and migrant workers’ remittances have become an increasingly important source of export income for this region. Like other South-Asian countries Bangladesh, India, Pakistan etc. are also in a position of surplus manpower with a combination of the professional, skilled, semi-skilled and less-skilled labor force. The huge low skilled and less educated workforce cannot be absorbed by the local wage employment.  It is necessary to engage this large volume of the workforce in employment to ensure their participation in the economic development of the countries as well to improve their living standard. 

Foreign exchange reserve is essential to pay the import bills but there is a problem of shortage of foreign exchange in developing countries. Like other developing countries Bangladesh, India and Pakistan are not exceptional countries but these countries depend more on remittances to meet the problem of payment of the import bills. Chimhowu et al. (2005 ) show that if remittances are spent on consumption or real estate, there will be a positive multiplier effect on GDP.

In figure 1, 2 and 3, the GDP appears somewhat insulated from the short-term fluctuations in remittances. India requires some further explanation as its remittances do not trend as smoothly as Bangladesh and Pakistan. Apart from some violation, there is a clear positive trend relationship between Remittances and GDP with the final exception to this being a spike in remittances per capita in 2003. An interpretation for this positive spike in 2003 is Resurgent India Bonds, which were put on in 1998 and matured in 2003. A large share of these bonds was acquitted and retained in India, instead of being repatriated abroad in foreign currency. That amount retained was thus acknowledged as remittances, resulting in the 2003 spike. Having access to credit can help raise investment convenience in areas of developing countries that previously produced little, leading to growth and a positive trend relationship between GDP and remittances. 

Figure-1. Personal received of remittance and GDP growth rate: Bangladesh; 1981-2015

Data Source: World Development Indicator, World Bank.

Figure-2. Personal received of remittance and GDP growth rate: India; 1981-2015

Data Source: World Development Indicator, World Bank.

Figure-2. Personal received of remittance and GDP growth rate: India; 1981-2015

Data Source: World Development Indicator, World Bank.

Figure-3. Personal received of remittance and GDP growth rate: Pakistan; 1981-2015.

Data Source: World Development Indicator, World Bank.

Here we describe the importance of remittances in the three economies which is under our investigation. In Bangladesh, the highest GDP was recorded in 1981 and the lowest was 1997, in India the highest GDP was recorded in 2005 and lowest was 1991, in case of Pakistan the highest was 1981 and lowest was 2008. It can be seen that over this period GDP growth rate fluctuate in these three identical countries. Growth in remittances across these countries appears to have stabilized somewhat over the last two decades with the variance of fluctuations reducing dramatically relative to the period 1993– 2003. This retrenchment in the variance of remittance growth could be connected to the stabilization of government policy and currencies over time. An example of such instability affecting remittance flows in the countries are national election system, exchange rate system, currency devaluation are a cause of led to a change in migration policy, causing a surge in labor exports and thus remittances. According to WB (2004 ) an economic boom in the labor-scarce oil producing economies of the middle east, and the push factors of prolonged ethnic conflict and slow growth in the rural economy, expound the spoiling nature of remittances in the late 1970’s and growth thereafter. Stagnation in remittance growth between 1980 and 1991 is explained by the transfer of formal and informal remittance channels. Money paddled from place to place by individuals or couriers, or, hawala service network are informal remittance channels and cash payouts across the borders are formal methods.

Sander and Mainbo (2005 ) find formal networks channels which consist of banks and foreign exchange bureaus are more popular in strong and liberalized economies with rigid financial sectors. Jha et al. (2009 ) show until the 1990’s as India was not financially liberalized when multiple exchange rate controls were elate, there would have been an incentive to use informal means of remittance transfer up to this point. Because of using informal the transfer methods in India would cause an under-reporting of remittances in India up to the 1990’s. Siddiqui (2004 ) identifies with nearly one half of Bangladesh’s offshore labor employed in Saudi Arabia, Bangladesh too experienced the advantage from growth in West Asia during the 1970’s. This illustrates their massive growth in remittances during the late 1970’s in line with the rising oil prices of the time. During the period of Gulf war from 1988-1991 remittance growth was a significant balk. This was redressed however with Bangladesh workers involvement in post-war reformation which is reflexed by unwavering remittance growth from 1992-94.

GDP does not influence the remittance because GDP includes all the final goods and services produced in the countries broader, but remittance influence the GDP growth because remittance increases our export earnings which include our national GDP. Remittances help to promote growth in less financially developed countries by providing a substitute for inefficient or nonexistent credit markets. It allows consumers to reduce credit constraints and find an alternative way to finance investment. However, If the remittances are used for financing children’s education and welfare expenses such as health care, it will encourage economic growth. Investing in child education and welfare will raise labor productivity in the long term which in turn impacts positively on growth. Even if the remittances are exhausted on consumption or real estate, there are still multiplier effects. It rises in demand for goods and shows the positive link between remittances and GDP.

2. LITERATURE REVIEW

Many researchers have investigated the effect of remittances inflow on economic growth. There are controversial opinions on the impact of remittances on economic growth.

Meyer and Shera (2017 ) observe the impacts of remittances on economic growth. They use panel data set of six high remittances receiving countries, Albania, Bulgaria, Macedonia, Moldova, Romania and Bosnia Herzegovina over the period 1999–2013. The results recommend that remittances have a positive impact on growth. The positive impact surges at higher levels of remittances relative to GDP. Jouini (2015 ) conducts a study on the causal relationship between economic growth and remittances for Tunisia over the period 1970-2010. The results support the evidence of unidirectional causal nexus running from remittances, GDP, financial development and investment and bidirectional causal links among the variables, in particular between remittances and economic growth in short-run. Lim and Simmons (2015 ) study on the economic importance of remittance flows to the Caribbean Community and Common Market (CARICOM). He employs panel cointegration tests. The findings show that there is no long-run relationship between remittances and real GDP per capita or investment. They also find that there is a long-run relationship between remittances and consumption. Siddique et al. (2012 ) investigate the causal relationship between remittances and economic growth in Bangladesh, India and Sri Lanka. The Granger causality test under a VAR framework over 25 years is employed and finds that remittances lead to economic growth in Bangladesh. In India, there is no causal relationship between growth in remittances and economic growth and there is a two-way directional causality in Sri Lanka. Pontarollo and Mendieta Muñoz (2018 ) study on the effects of remittance on substantial economic growth temporarily and permanently in Ecuador. The results conclude that both effects are statistically significant. Cooray (2012 ) investigates the impact of migrant remittances on economic growth in South Asia. He employs panel data over the 1970–2008 periods. The results show that migrant remittances have a significant positive effect on economic growth. Nyamongo et al. (2012 ) examine the role of remittances and financial development on economic growth for 36 African countries over the period 1980–2009 using a panel econometrics framework. The findings show that remittances are an important source of growth for these countries in Africa and there is a negative relationship between the volatility of remittances and the growth of countries in Africa. They also find that the importance of financial development in enhancing economic growth is weak. Kumar (2013 ) explore the short- and long-run effects of remittances, aid and financial deepening on growth in Guyana using annual data for the period 1982–2010. He uses an augmented Solow framework and an ARDL bounds test for cointegration, and Granger-causality. The results show that remittances have a positive and significant effect both in the short and the long run on growth. They also reveal that capital stock, aid and financial deepening cause remittances inflow in Guyana.

Ratha (2003 ) shows that remittances increase the consumption level of rural households. It has a multiplier effect because they spend more on domestically produced goods. Giuliano and Ruiz-Arranz (2009 ) identify that remittances enhance economic growth in less developed countries and provide an alternative way to finance investment and help overcome liquidity constraints. Gapen et al. (2009 ) identify that remittances expand the number of funds through the banking system and this enhance financial development and economic growth through increased economies of scale in financial intermediation and a political economy effect. Most lately, Fayissa and Nsiah (2011 ) show a positive relationship between remittances and economic growth through panel data of 64 different countries of African, Asian, and Latin American-Caribbean from 1987–2007 using panel unit root and panel cointegration tests. Pradhan et al. (2008 ) show that remittances have a small, positive impact on growth using a linear regression model for 36 countries. Aggarwal et al. (2006 ) reveal that remittances have a positive effect on bank deposits and credit to GDP. Ahmed et al. (2011 ) present evidence using bounds testing approach for Pakistan to suggest that remittances have a positive impact on economic growth in both the long run and short run. Das and Chowdhury (2011) find that there is a positive long-run relationship between remittances and GDP found in 11 developing countries by using panel co-integration and pooled mean group (PMG) approach. Dilshad (2013 ) finds the positive and significant relationship between remittances and economic growth both in the long-run and short-run in case of Pakistan. Taylor (1992 ) and Faini (2001) also shows a positive association between remittances and economic growth. Taylor (1999 ) investigate that every dollar Mexican migrants send back home or bring back home with them increases Mexico’s GNP from anywhere between US$2.69 and US$3.17. Adams and Page (2003 ) studying 71 developing countries finds that the level, depth, and severity of poverty in the developing world are significantly reduced by remittances. Al Khathlan (2012 ) and Dilshad (2013 ) find a positive and significant relationship between worker remittances and economic growth in the long-run and short-run in Pakistan is found during the period 1976-2010. Conversely, Amuedo-Dorantes and Pozo (2004 ) find that remittances can appreciate the real exchange rate in recipient economies. It generates a resource allocation from the tradable to the non-tradable sector. Rodrik (2008 ) finds that real exchange rate overvaluation destabilizes long-term economic growth for developing countries because of weak institutions and market failures. Lipton (1980 ), Ahlburg (1991 ) prove that remittances diminish productivity and growth in low-income countries because of more spending on foreign goods consumption than on productive investments. Das (2012 ) examine a study on Bangladesh, Egypt, Pakistan, and Syria over the period 1975-2006. They conclude that remittances have a positive impact on economic growth in Pakistan and Syria but a negative impact in Bangladesh and Egypt. This negative relationship between remittance and growth coefficients in those two countries suggests a counter-cyclical relationship. In contrast, Spatafora (2005 ) shows that there is no direct link between per capita output growth and remittances. Nevertheless, Gapen et al. (2009 ) exhibit that the more profoundly coordinates an economy is with world budgetary markets, and the more exceedingly created the household money related framework, the less likely it is that settlement receipts will fortify speculation by unwinding credit limitations. Glytsos (2005 ) investigates the impact of remittances on consumption, investment, imports and output for eight countries including Algeria, Egypt, Greece, Jordan, Morocco, Portugal, Syria and Tunisia for the period of 1969–1993 using estimated dynamic simultaneous Keynesian type model. He extends it for the period of 1969–1998. The findings from both studies point out those remittances affect growth negatively. Chami et al. (2005 ) show that migrant’s remittances have a negative impact on growth in per capita incomes. They also show that remittances may indirectly affect the real exchange rate where remittances inflow causes a real appreciation or postpones depreciation of the exchange rate by leading to the “Dutch Disease” phenomenon and appreciating exchange rates in countries with large remittances will hurt the economic growth. Rao and Hassan (2011 ) estimate Total Factor Productivity (TFP) for Bangladesh and analyze its key determinants using the Solow growth model. The results show that trade openness, foreign direct investment, and development of financial sector increase total factor productivity.

There are a lot of macros and micro levels of studies have been published which are related to this study. Stahl and Habib (1989 ) provide the multiplier effect of remittances in economics. They prove that remittances increase savings which increase the growth through the multiplier. They calculate the multiplier for Bangladesh over the period of 1976-1988. The capita output growth studying in 101 developing countries. Hasan (2006 ) finds remittance has a significant macroeconomic impact at the household level and the poorer the household, the more impact or benefits remittance income can have to alleviate poverty. Jongwanich (2007 ) proves that remittances have a positive but marginal impact on economic growth in Asia and Pacific countries. As opposed to Pradhan et al. (2008 ) find a positive impact on growth in their work with 39 developing countries over the 1980-2004 periods. Fayissa and Nsiah (2011 ) find that remittances boost growth in countries where the financial systems are less developed. He uses an unbalanced panel data from 1980 to 2004 for 37 African countries. Vargas-Silva et al. (2009 ) find that a 10 percent increase in remittances as a share of GDP leads to a 0.9-1.2 percent increase in GDP growth using, data for more than 20 Asian countries for the1988-2007samples.On the other side, Gapen et al. (2009 ) show that remittances have no impact on economic growth. Catrinescu et al. (2009 ) conclude that although remittances have risen, so many times research has not come to a conclusion whether remittances have a positive or negative impact on long-run growth. Raihan et al. (2009 ) find that remittances affect the economy positively and reduce poverty. On the contrary, Rahman (2009 ) explains that remittance seems to have insignificant and ambiguous effects on Bangladesh’s GDP. Chami et al. (2005 ) accomplish that remittances have a negative effect on economic growth of 113 nations. Adams and Page (2005 ) and various other published studies in relation to remittances have focused specifically on the alleviation of poverty rather than the overall economic growth of the country.

3. data source and Econometric Methods

3.1. Data Sources

In this paper, the personal remittance of the share of GDP and GDP growth rates of the three countries against the percentage is obtained from the over the sample period from 1981 to 2015. In some cases, the aggregate amount of remittance is used in US million dollars which is also obtained from the World Development Indicators (WDI).

3.2. Methodology

3.2.1. Unit Root Test

We apply Augmented Dickey-Fuller (ADF) unit-root test to the per capita remittances and economic growth series separately to check stationary.

Therefore, the null and alternative hypotheses are:

H0: δ = 0; the residual series has a unit root

HA: δ < 0; the residual series has no unit root

Rejection of the null hypothesis means that per capita remittances and economic growth series, are co-integrated.

3.2.2. Granger Causality Test

For determining the relationship between remittance and GDP growth rate we use the Granger Causality test. The interactions in the short-run fluctuations may, therefore, be described by a VAR system in first differences. We determine the optimal lag length for the VAR system by using the Final Prediction Error FPF) and the Akaike Information Criterion (AIC) and Hannan-Quinn Information Criterion (HQIC). We used a VAR system of k lags and estimate it for various lag lengths and found that the optimal lag lengths for both series such as remittance and GDP growth rate.

We estimate the following form with all variables in the first-difference form and test various hypotheses. 

We test whether Growtht-1, Growtht-2, Growtht-3 and Growtht-4 do not appear in the Remittancest equation to test Growth does not cause Remittances, and Remittancest-1, Remittancest-2, Remittancest-3 and Remittancest-4 do not appear in the Growtht equation to test Remittances does not cause Growth.

So the null hypothesis to test ‘non-causality’ that ‘Growth does not cause Remittances’ is that 

Thus, a rejection of the null hypothesis indicates that Growth causes Remittances.

3.2.3. Johansen Cointegration Test

Johansen proposes two different likelihood ratio tests of the significance of these canonical correlations and thereby the reduced rank of the Π matrix: the trace test and maximum eigenvalue test, shown in equations (5) and (6) respectively.

Table -1. ADF test results for a unit root on the original series

Model Null Critical      Bangladesh      India Pakistan  
(Remittance) Hypothesis Value Data based  test statistic value Result           Data based  test statistic value Result Data based  test statistic value Result  
Constant and without trend H0=0 -1.95 -0.91 Do not reject H0 0.675 Do not reject H0 -0.896 Do not reject H0  
Constant and with trend H0=0 -3.58 -2.223 Do not reject H0 -2.546 Do not reject H0 -1.111 Do not reject H0  
Conclusion Has a unit root and the series is non- stationary Has a unit root and the series is non- stationary Has a unit root and the series is non- stationary
Model  Null Critical      Bangladesh      India Pakistan  
(GDP) Hypothesis `value Data based  test statistic value Result           Data based  test statistic value Result Data based  test statistic value Result  
Constant and without trend H0=0 -1.95 0.48 Do not reject H0 -1.119 Do not reject H0 -1.129 Do not reject H0  
Constant and with trend H0=0 -3.58 -4.409 Reject H0 -5.686 Reject H0 -3.035 Do not reject H0  
Conclusion  Has a unit root and the series is non- stationary Has a unit root and the series is non- stationary Has a unit root and the series is non- stationary

 Source: STATA software generated results

According to Table 1, the results of the Augmented Dickey-Fuller (ADF) test for the stationery of the two original series are non-stationary in case of Bangladesh, India, and Pakistan.

Table-2. ADF test results for a unit root on the first difference of the original series

Model  Null Critical      Bangladesh      India Pakistan
(Remittance) Hypothesis Value Data based  test statistic value Result           Data based  test statistic value Result Data based  test statistic value Result
Constant and without trend H0=0 -1.95 -4.421 Reject H0 -6.504 Reject H0 -5.302 Reject H0
Constant and with trend H0=0 -3.58 -4.408 Reject H0 -6.516 Reject H0 -5.781 Reject H0
Conclusion  Does not have a unit root and the series is stationary Does not have a unit root and the series is stationary Does not have a unit root and the series is  stationary
Model  Null Critical      Bangladesh      India Pakistan
(GDP) Hypothesis Value Data based  test statistic value Result           Data based  test statistic value Result Data based  test statistic value Result
Constant and without trend H0=0 -1.95 -3.817 Reject H0 -4.53 Reject H0 -5.302 Reject H0
Constant and with trend H0=0 -3.58 -3.794 Reject H0 -4.392 Reject H0 -5.202 Reject H0
Conclusion Does not have a unit root and the series is stationary Does not have  a unit root and the series is stationary Does not have a  unit root and the series is stationary

Source: STATA software generated results

 Notes: Based on the lower value of FPE, AIC, and HQIC, lags is chosen for Bangladesh, India, and Pakistan and we take the decision of null hypothesis at 5% critical value.

Here, T is the sample size and i yˆ is the ith largest canonical correlation. The trace test statistics tests the null hypothesis of r cointegrating vectors against the alternative hypothesis of n cointegrating vectors. On the other hand, the maximum eigen value test statistics tests the null hypothesis of r co-integrating vectors against the alternative hypothesis of r+1 co-integrating vectors. The critical values used for the maximum eigen value and trace test statistics are based on a pure unit-root assumption. So they will no longer be correct when the variables in the system are near-unit-root processes. For our study we use

H0: r=0; There is no co-integration among the variables.

Ha: r≤1; There is one co-integration among the variables.

4. EMPIRICAL RESULT

4.1. Results of Unit Root Test:

We now test the stationary of the first difference of both series by applying the ADF test on the first difference series. The results are represented in Table 2. As can be seen, the results show that both series are stationary in their first difference form.

4.2. Results of Granger Causality Test

Table-3. Results of Granger causality test between Remittances and Economic Growth

Null hypothesis p-value of the F-test Conclusion at the 5% level
Bangladesh    
(1) H0: Growth ≠ > Remittance             (β11=β21=β31=β41=0) 0.117 Do not reject H0
    That is, economic growth does not cause remittance.
     
(2) H0:Remittance ≠ > Growth      (α12=α22=α32=α42=0)   Reject H0
  0.016 That is, remittance causes economic growth.
India    
(1) H0: Growth ≠ > Remittance             (β11=β21=β31=β41=0) 0.017 Reject H0
    That is, economic growth causes remittance.
     
(2) H0:Remittance ≠ > Growth      (α12=α22=α32=α42=0)   Reject H0
  0.089 That is, remittance causes economic growth
Pakistan    
(1) H0: Growth ≠ > Remittance             (β11=β21=β31=β41=0) 0.0462 Reject H0
    That is, economic growth causes remittance.
     
(2) H0:Remittance ≠ > Growth      (α12=α22=α32=α42=0)   Do not reject H0
  0.359 That is, remittance does not cause economic growth.

Source: STATA software generated results

  Notes: Based on the lower value of FPE, AIC, and HQIC, lag 7 is chosen for Bangladesh, lag 1 is chosen for both India and Pakistan.

The result of Granger causality is represented in table 3 which can be found by using STATA. It can be seen from row 1 of Table 3, (for testing the null hypothesis, H0: Growth ≠>Remittances), the p-values are 0.117 for Bangladesh which is greater than the level of significance, 0.05 and the p-value for India is 0.017 and Pakistan is 0.0462 which is less than 0.05. Hence we are unable to reject the null hypothesis that ‘Growth does not cause Remittances’ at the 5% level of significance for Bangladesh, but reject for India and Pakistan means ‘Growth causes Remittance’.  Now looking at row 2 of Table 3(for the testing of H0: Remittances≠> Growth), the p-value for this test is 0.016 for Bangladesh, 0.089 for India and 0.359 for Pakistan. Therefore, we reject the null hypothesis H0: ‘Remittances does not cause Growth’ in favor of the alternative that Remittances cause Growth, in the Granger sense at the 5% level of significance for Bangladesh and India, but are unable to reject it for Pakistan.

4.3. Results of Johansen Co-Integration Test:

Table-4. The results of Johansen Co-integration Test

Null Hypothesis Trace Statistic 5%critical value Max Statistic 5%critical value Results
(H0)
Bangladesh 26.921 15.41 24.72 14.07 Reject H0
r=0         The personal received remittance and GDP growth are cointegrated.
          Do not reject H0
          The personal received remittance and GDP growth are cointegrated.
  2.2005 3.76 2.005 3.76  
r≤1          
India         Reject H0
r=0 25.36 15.41 24.717 14.07 The personal received remittance and GDP growth are cointegrated.
          Do not reject H0
          The personal received remittance and GDP growth are not cointegrated.
r≤1 0.6433 3.76 0.6433 3.76  
Pakistan         Reject H0
r=0 19.059 15.41 17.2665 14.07 The personal received remittance and GDP growth are cointegrated.
          Do not reject H0
          The personal received remittance and GDP growth are cointegrated.
r≤1 1.7924 3.76 1.7924 3.76  
           

Source: STATA software generated results

The results of Johansen co-integration techniques are presented in table 4, which involves the use of max statistics values and the trace statistics. From the results, it can be understood that the max statistics value and the trace statistics value of  Bangladesh are 26.92 and 24.72 respectively which are greater than the 5% critical values of 15.41 and 14.07 means reject the null hypothesis(r=0) and there is long run co-integration relationship between the variables. When the null hypothesis(r≤1)there is long run co-integration relationship exist between the variables because the max statistics value and the trace statistics value both are 2.2005 which is less than the 5% critical values of 3.76 that means do not reject the null hypothesis and existence of the long-run relationship in the situation of Bangladesh.  In the case of India, the max statistics value and the trace statistics value are 25.36 and 24.717 respectively which are greater than the 5% critical values of 15.41 and 14.07 means reject the null hypothesis(r=0) and there is long run co-integration relationship between the variables. When the null hypothesis(r≤1)there is long run co-integration relationship exist between the variables because the max statistics value and the trace statistics value both are 0.6433 which is less than the 5% critical values of 3.76 that means do not reject the null hypothesis and existence of the long-run relationship in the situation of India. In case of Pakistan, there is a long run co-integration relationship exist between the variables because the max statistics value and the trace statistics value are 19.059 and 17.2665 respectively which are greater than the 5% critical values of 15.41 and 14.07 that means reject the null hypothesis(r=0). When the null hypothesis(r≤1)there is long run co-integration relationship exist between the variables because the max statistics value and the trace statistics value both are 1.792 which is less than the 5% critical values of 3.76 that means do not reject the null hypothesis and existence of the long-run relationship in the situation of Pakistan. It can be said that in the case of the identical three countries we get a long run co-integration relationship.

5. CONCLUSION

In this paper, we have observed the causal relationship between remittances and economic growth in Bangladesh, India, and Pakistan using data for the period 1981 to 2015. For this observation, we utilize several time series econometric techniques such as unit root test, co-integration, and causality. The analysis of ADF test discloses that the two-time series variables, such as remittances and economic growth both are unit root and non-stationary and both series are stationary in the first difference in case of three countries. The result of the Johansen co-integration test shows that there is a long run co-integration relationship among the variables in case Bangladesh, India, and Pakistan.

As we mention out that, there is much controversy over the role that remittances play in the economic development of less developed countries. Some argue in opposition that it’s impact due to conspicuous consumption. The majority of remittance payments are in fact used for consumption purposes as opposed to investment and savings in the case of Bangladesh. There is a close and statistically significant correlation between remittances and consumption, the correlation coefficient between remittances and investment is conversely not significant which is found by IMF (2005 ). Besides, Demary, cited in Siddique et al. (2012 ) show that Bangladesh’s current consumption in 2003 is estimated to comprise a large 50-60 percent of remittance spending while investment spending comprised a mere 10%. However, despite these facts, the result of Granger causality illustrate that remittances are a fact to contribute to economic growth in Bangladesh. There is a causal relationship between remittance and economic growth in Bangladesh because of the multiplier effect, whereby injected capital through consumption indirectly contributes to economic development and growth. Our empirical results elicit therefore that appropriate policy to explore more foreign employment and more efficient use of remittances would help the economic development of Bangladesh. Our results find that remittances play a significant role in the promotion of economic growth in Bangladesh. The results regarding the link between remittance and economic growth in the case of India are very convincing. There is a two-way directional causality indicating that remittances promote economic growth and vice versa. However, the result of Pakistan is inconclusive. It can be found that remittances are not important to the economy of Pakistan. Unfortunately, this important source of income and the expatriates who earn this income did not receive due attention from the policymakers in most of developing countries including Pakistan. Although in overall, it can be said that the countries benefit from remittances is closely related to the strength of domestic institutions and macroeconomic environment.

Funding: This study received no specific financial support. 
Competing Interests: The authors declare that they have no competing interests.
Contributors/Acknowledgement: All authors contributed equally to the conception and design of the study.

REFERENCES

Adams, J.R.H. and J. Page, 2005. Do international migration and remittances reduce poverty in developing countries? World Development, 33(10): 1645-1669. Available at: https://doi.org/10.1016/j.worlddev.2005.05.004.

Adams, R. and J. Page, 2003. The impact of international migration and remittances on poverty Policy Research Working Paper 2761. Washington D.C.: World Bank.

Aggarwal, R., A. Demirguc-Kunt and M. Peria, 2006. Do remittances promote financial development? World Bank Policy Research Working Paper No. 3957, Washington: World Bank.

Ahlburg, D.A., 1991. Remittances and their impact: A study of Tonga and Western Samoa Pacific Pol. Paper No. 7, The Australian National University, Canberra. Available from http://www.worldcat.org/isbn/0731509595.

Ahmed, J., K. Zaman and I.A. Shah, 2011. An empirical analysis of remittances-growth nexus in Pakistan using bounds testing approach. Journal of Economics and International Finance, 3(3): 176-186.

Al Khathlan, K., 2012. The link between remittances and economic growth in Pakistan: A boon to economic stability. British Journal of Economics, Management & Trade, 2(3): 167-185. Available at: https://doi.org/10.9734/bjemt/2012/1426.

Amuedo-Dorantes, C. and S. Pozo, 2004. Workers' remittances and the real exchange rate: A paradox of gifts. World Development, 32(8): 1407-1417. Available at: https://doi.org/10.1016/j.worlddev.2004.02.004.

Catrinescu, N., M. Leon-Ledesma, M. Piracha and B. Quillin, 2009. Remittances, institutions, and economic growth. World Development, 37(1): 81-92. Available at: https://doi.org/10.1016/j.worlddev.2008.02.004

Chami, R., C. Fullenkamp and S. Jahjah, 2005. Are immigrant remittance flows a source of capital for development. IMF Staff Papers, 52(1): 55-81.

Chimhowu, A., J. Piesse and C. Pinder, 2005. The socioeconomic impact of remittances on poverty Reduction in Maimbo, S.M., and Ratha, D. (eds). Remittances Development Impact and Future Prospects. Washington: The World Bank. pp: 83-103.

Cooray, A., 2012. The impact of migrant remittances on economic growth: Evidence from South Asia. Review of International Economics, 20(5): 985-998. Available at: https://doi.org/10.1111/roie.12008.

Das, A., 2012. Remittance behavior of migrants and its macroeconomic effects in four developing countries. International Journal of Applied Behavioral Economics, 1(1): 41-59. Available at: https://doi.org/10.4018/ijabe.2012010104.

Das, A. and M. Chowdhury, 2011. Remittances and GDP dynamics in 11 developing countries: Evidence from panel cointegration and PMG techniques. Romanian Economic Journal, 14(42): 3-23.

Dilshad, W.B., 2013. Impact of workers' remittances on economic growth: An empirical study of Pakistan’s economy. International Journal of Business and Management, 8(24): 126-131. Available at: https://doi.org/10.5539/ijbm.v8n24p126.

Faini, R., 2001. Development, trade, and migration. Washington D.C.: IMF.

Fayissa, B. and C. Nsiah, 2011. Remittances and Economic Growth in Africa, Asia, and Latin American-Caribbean Countries: A Panel Unit Root and Panel Cointegration Analysis (No. 201103).

Gapen, M.T., M.R. Chami, M.P. Montiel, M.A. Barajas and C. Fullenkamp, 2009. Do workers' remittances promote economic growth? (No. 9-153). International Monetary Fund.

Giuliano, P. and M. Ruiz-Arranz, 2009. Remittances, financial development, and growth. Journal of Development Economics, 90(1): 144-152. Available at: https://doi.org/10.1016/j.jdeveco.2008.10.005.

Glytsos, N.P., 2005. The contribution of remittances to growth: A dynamic approach and empirical analysis. Journal of Economic Studies, 32(6): 468-496. Available at: https://doi.org/10.1108/01443580510631379.

Hasan, R.A., 2006. Harnessing remittances for economic development of Bangladesh. INAFI Asia International Conference on Migration and Development, Date. pp: 23-27.

IMF, 2005. World economic outlook. Washington DC: International Monetary Fund.

Jha, S., G. Sugiyarto and C. Vargas-Silva, 2009. The global crisis and the impact on remittances to developing Asia. Asian Development Bank, Economics Working Paper Series No.185.

Jongwanich, J., 2007. Workers' remittances, economic growth and poverty in developing Asia and the Pacific countries. United Nations Publications.

Jouini, J., 2015. Economic growth and remittances in Tunisia: Bi-directional causal links. Journal of Policy Modeling, 37(2): 355-373. Available at: https://doi.org/10.1016/j.jpolmod.2015.01.015.

Kumar, R.R., 2013. Remittances and economic growth: A study of Guyana. Economic Systems, 37(3): 462-472. Available at: https://doi.org/10.1016/j.ecosys.2013.01.001.

Lim, S. and W.O. Simmons, 2015. Do remittances promote economic growth in the Caribbean community and common market? Journal of Economics and Business, 77: 42-59. Available at: https://doi.org/10.1016/j.jeconbus.2014.09.001.

Lipton, M., 1980. Migration from rural areas of poor countries: The impact on rural productivity and income distribution. World Development, 8(1): 1-24. Available at: https://doi.org/10.1016/0305-750x(80)90047-9.

Meyer, D. and A. Shera, 2017. The impact of remittances on economic growth: An econometric model. EconomiA, 18(2): 147-155. Available at: https://doi.org/10.1016/j.econ.2016.06.001.

Nyamongo, E.M., R.N. Misati, L. Kipyegon and L. Ndirangu, 2012. Remittances, financial development and economic growth in Africa. Journal of Economics and Business, 64(3): 240-260.

Pontarollo, N. and R. Mendieta Muñoz, 2018. Temporary and permanent effects of remittances on economic growth in ecuador. Journal of International Development, 30(3): 533-536. Available at: https://doi.org/10.1002/jid.3358.

Pradhan, G., M. Upadhyay and K. Upadhyaya, 2008. Remittances and economic growth in developing countries. The European Journal of Development Research, 20(3): 497-506.

Rahman, M., 2009. Contributions of exports, FDI, and expatriates’ remittances to real GDP of Bangladesh, India, Pakistan, and Sri Lanka. Southwestern Economic Review, 36(1): 141-154.

Raihan, S., G. Sugiyarto, H.K. Bazlul and S. Jha, 2009. Remittances and household welfare: A case study of Bangladesh (No. 189). Asian Development Bank.

Rao, B.B. and G. Hassan, 2011. Determinants of the long-run growth rate of Bangladesh. Applied Economics Letters, 18(7): 655-658. Available at: https://doi.org/10.1080/13504851003800760.

Ratha, D., 2003. Workers’ remittances: An important and stable source of external development finance. In Global Development Finance 2003, Striving for Development Finance The World Bank, Washington, DC, 2003: 157-175.

Rodrik, D., 2008. The real exchange rate and economic growth. Brookings Papers on Economic Activity, 2008(2): 365-412. Available at: https://doi.org/10.1353/eca.0.0020.

Sander, C. and S.M. Mainbo, 2005. Migrant labor remittances in Africa: Reducing obstacles to developmental contributions (No. 9672). The World Bank.

Siddique, A., E.A. Selvanathan and S. Selvanathan, 2012. Remittances and economic growth: Empirical evidence from Bangladesh, India and Sri Lanka. Journal of Development Studies, 48(8): 1045-1062. Available at: https://doi.org/10.1080/00220388.2012.663904.

Siddiqui, T., 2004. Efficiency of migrant workers’ remittance: The Bangladesh case. Manila: Asian Development Bank.

Spatafora, N., 2005. Two current issues facing developing countries. Washington, DC: World Economic Outlook, International Monetary Fund.

Stahl, C.W. and A. Habib, 1989. The impact of overseas workers’ remittances on indigenous industries: Evidence from Bangladesh. The Developing Economies, 27(3): 269-285. Available at: https://doi.org/10.1111/j.1746-1049.1989.tb00160.x.

Taylor, E.J., 1999. The new economics of labour migration and the role of remittances in the migration process. International Migration, 37(1): 63-88. Available at: https://doi.org/10.1111/1468-2435.00066.

Taylor, J.E., 1992. Remittances and inequality reconsidered: Direct, indirect, and intertemporal effects. Journal of Policy Modeling, 14(2): 187-208. Available at: https://doi.org/10.1016/0161-8938(92)90008-z.

Vargas-Silva, C., S. Jha and G. Sugiyarto, 2009. Remittances in Asia: Implications for the fight against poverty and the pursuit of economic growth (No. 182). ADB Economics Working Paper Series.

WB, 2004. Sri Lanka – Development policy review. Development Policy Review Report No. 29396.

World Bank, 2006. Global economic prospects: Economic implications and migration. Washington, DC: World Bank.