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A literature review on the tourism-led-growth hypothesis

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Peer-reviewed

Research Article

Publication bias and the tourism-led growth hypothesis

Contributed equally to this work with: Nikeel Nishkar Kumar, Arvind Patel

Roles Conceptualization, Data curation, Formal analysis, Investigation, Methodology, Project administration, Software, Validation, Writing – original draft, Writing – review & editing

* E-mail: [email protected] , [email protected] , [email protected] , [email protected]

Affiliations School of Accounting, Finance, and Economics, The University of the South Pacific, Suva, Fiji Islands, School of Economics, Faculty of Business, Economics and Law, Auckland University of Technology, Auckland, New Zealand

ORCID logo

Roles Conceptualization, Investigation, Methodology, Project administration, Resources, Supervision, Validation, Writing – review & editing

Affiliation School of Accounting, Finance, and Economics, The University of the South Pacific, Suva, Fiji Islands

Roles Data curation, Project administration, Resources, Writing – original draft, Writing – review & editing

¶ ‡ These authors also contributed equally to this work.

Affiliation Department of Management, School of Business and Economics, The University of Fiji, Lautoka, Fiji

Roles Data curation, Resources, Software, Writing – original draft, Writing – review & editing

Affiliation School of Business and Management, The University of the South Pacific, Suva, Fiji Islands

  • Nikeel Nishkar Kumar, 
  • Arvind Patel, 
  • Ravinay Amit Chandra, 
  • Navneet Nimesh Kumar

PLOS

  • Published: October 14, 2021
  • https://doi.org/10.1371/journal.pone.0258730
  • Peer Review
  • Reader Comments

Fig 1

This study attempts to solve the publication bias suggested by recent review articles in the tourism-growth literature. Publication bias is the tendency to report favourable and significant results. Method and data triangulation, and the Solow-Swan model are applied. A sample from 1995 to 2018 is considered with Tonga as a case study. The approach consists of multiple methods, data frequencies, exchange rates, structural breaks, and an overall tourism index developed using principal component analysis (PCA). Consistent results across these dimensions are obtained with the PCA models. Tourism has small, positive, and statistically significant economic growth effects. Theoretically consistent values of the capital share and exchange rates are obtained. The results indicate the importance of multiple methods and the overall tourism index in assessing the tourism-growth relationship and minimising publication biases. The practical implication is the provision of robust elasticity estimates and better economic policies.

Citation: Kumar NN, Patel A, Chandra RA, Kumar NN (2021) Publication bias and the tourism-led growth hypothesis. PLoS ONE 16(10): e0258730. https://doi.org/10.1371/journal.pone.0258730

Editor: Hiranya K. Nath, Sam Houston State University, UNITED STATES

Received: February 18, 2021; Accepted: October 5, 2021; Published: October 14, 2021

Copyright: © 2021 Kumar et al. This is an open access article distributed under the terms of the Creative Commons Attribution License , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.

Data Availability: All relevant data are within the paper and its Supporting Information files.

Funding: The authors received no specific funding for this work.

Competing interests: The authors have declared that no competing interests exist.

Introduction

International tourism is generally considered a key sector for growth and development in developing countries. It attracts foreign exchange and allows developing countries to import new capital goods [ 1 ]. Imported capital goods are infused with new technology which raises the technology level in the country. It supports human capital accumulation as workers acquire new skills and knowledge by using the new capital goods [ 1 ]. Apart from productivity gains, there are spill-over benefits because the new skills and knowledge circulates freely between industries. In contrast, tourism is associated with negative externalities such as environmental degradation and the overutilization of natural resources [ 2 ]. On balance however, research suggests that developing the tourism industry is supportive of economic growth [ 3 ].

Yet, recent meta-analyses by Nunkoo et al. [ 3 ] and Fonseca and Sánchez-Rivero [ 4 , 5 ] raise concerns over the issue of publication bias in empirical research on tourism and economic growth. Publication biases occur due to the preferential reporting of positive and statistically significant results [ 6 ]. Two types of publication bias are reported, types I and II [ 3 ]. Under type I bias, researchers tend to report strongly positive/negative estimates [ 7 , 8 ]. Under type II bias, researchers tend to report significant, yet economically meaningless results [ 3 ]. The non-reporting of inconclusive results, coupled with the publication of statistically significant but economically meaningless results leads to biased estimates, distorted inference, and skewed knowledge, which undermine the free exchange of information [ 3 ]. Publication biases result in overoptimistic inferences about an economic phenomenon such as the contribution of tourism to growth [ 3 – 5 ]. As a result, the belief in the efficacy of tourism policies may be unfounded or that policies may have a smaller than expected effect on economic growth [ 3 ].

The usual method to detect publication bias begins with a funnel asymmetry plot where the empirical effects are plotted against the inverse of the standard error of the estimates [ 4 ]. Without publication bias, the funnel graph tends to be symmetric and resemble an inverted funnel. Asymmetry in the funnel graph provides preliminary evidence on publication biases which is formally tested through meta-regression analysis (MRA) [ 9 ]. Type I bias is tested for by regressing the t -statistic against the inverse of the standard error of the empirical effect under analysis [ 4 , 5 ]. Type II bias is similarly tested except the absolute value of the t -statistics, instead of the t -statistic, is considered [ 4 , 5 ]. Types I and II publication biases are confirmed if the MRA intercept term is significantly greater than zero. Tourism genuinely affects growth if the slope of the standard error term in the MRA is significantly different from zero. These are termed the funnel asymmetry and precision effects tests, respectively [ 4 , 5 ].

By surveying 545 estimates across 113 studies published from 1994 to 2017, Nunkoo et al. [ 3 ] conclude that positive and significant effects are preferentially reported in the tourism-growth literature. Fonseca and Sánchez-Rivero [ 4 ] also confirm that the results reported in the tourism-growth association are non-genuine, but the variability of the empirical effects depends on the degree of tourism specialization, level of economic development, and size of the countries analysed. Fonseca and Sánchez-Rivero [ 5 ] further note that statistical significance may occur in small samples if econometric specifications are manipulated to find larger effects. This indicates type II bias because small samples are associated with larger standard errors and smaller effect estimates [ 5 ]. Overall, the effects are sensitive to specification and estimation characteristics, data frequency, and period considered [ 3 – 5 ].

To solve these problems, Nunkoo et al. [ 3 ] recommends re-visiting the tourism-growth association across various methodological characteristics, specifications, and estimation choices. Song and Wu [ 10 ] emphasize that research designs that ignore theoretical foundations that underpin the tourism-growth nexus lead to unreliable and misleading conclusions [ 10 ]. Song and Wu [ 10 ] underscore the Solow-Swan growth model and accentuate how tourism improves technological progress and productivity of capital and labor. To measure tourism, Shahzad et al. [ 11 ] suggest that combining multiple indicators such as arrivals and receipts into a composite index captures information on the traditional variables and is less affected by multicollinearity [ 11 ]. Solarin [ 12 ] notes that ignoring exchange rates in the specification may bias the growth effect of tourism. Controlling for structural breaks is also important because tourism is impacted by exogenous events [ 3 ]. On estimation, dynamic methods such as ARDL derive more accurate conclusions on the validity of the tourism-growth association [ 3 ].

Consequently, the objective of this study is to remedy publication biases in the tourism-growth literature. Method and data triangulation are adopted, and various methodological characteristics, specifications, and estimation choices are considered [ 13 ]. The earliest application of triangulation in the social sciences was by Eugene et al. [ 14 ] and its primary rationale is the recognition of data-set or methodological biases with a single method or dataset [ 15 ]. Triangulation is the use of multiple approaches to a research question enabling the researcher to “zero in” on the answers sought [ 13 ]. Method triangulation is the use of more than one research method in measuring the object of interest with a data set [ 13 ]. Data triangulation refers to using the same approach/method with different sets of data to verify/falsify the generalizable trends observed in one dataset [ 13 ].

For method triangulation, the autoregressive distributed lag (ARDL) [ 16 ], dynamic least squares (DOLS) [ 17 ], fully modified least squares (FMOLS) [ 18 ], and canonical cointegrating regression (CCR) [ 19 , 20 ] are used. These methods are consistent with cointegration theory, and provide robust estimates in the presence of endogeneity and small samples. Endogeneity and small samples can bias the effect estimates. Small samples can also inflate standard errors which may lead to type II publication bias [ 5 ]. However, using multiple methods with a single dataset makes the results more reliable by lowering the likelihood that econometric techniques are manipulated. The primary long-run results are supported with the ridge regression technique which controls for multicollinearity [ 21 – 23 ].

For data triangulation, three measures of tourism are considered. These are tourist arrivals, tourism receipts, and an overall tourism index which is developed using the Principal Component Analysis (PCA) technique. Because the results are affected by the frequency of the data, annual and quarterly data series are also considered. Shahzad et al. [ 11 ] and Shahbaz et al. [ 24 ] demonstrate the usefulness of frequency transformation techniques from low to high-frequency data in addressing the small sample bias. Shahzad et al. [ 11 ] and Shahbaz et al. [ 24 ] recommend the quadratic match-sum approach for frequency conversion. This approach is ideal in minimizing the seasonality problem by reducing point-to-point data variations and has previously been successfully applied in the tourism-growth literature [ 11 , 24 ].

Tonga is chosen as a case study with an annual sample from 1995 to 2018 which amounts to 24 years of data. Like other Pacific Island Countries (PICs), international tourism is for Tonga, a key driver of growth. In Tonga, tourism contributed 12.1 percent of Gross Domestic Product (USD 52.6 million) and supported 12 percent of total employment or about 5100 jobs in 2019 [ 25 ]. International arrivals and receipts to Tonga have been consistently rising ( Fig 1 ). There is also conflicting evidence, and dearth of country-specific studies in Tonga [ 26 – 28 ]. Current research shows a positive impact but differs in terms of elasticity estimates, explanatory variables, and specification. To reconcile the conflicting evidence, an overall assessment using theoretically founded models and triangulation is required.

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Data obtained from World Bank.

https://doi.org/10.1371/journal.pone.0258730.g001

The key methodological contribution of this paper is the development of a cohesive framework based on triangulation to remedy publication biases in the tourism-growth literature. The methodology developed draws from the recommendation of Nunkoo et al. [ 3 ], theoretical foundations from Song and Wu [ 10 ], measurement of tourism from Shahzad et al. [ 11 ], and inclusion of moderator variables from Solarin [ 12 ]. With this framework, the study provides new evidence on how tourism interacts with growth in small PICs, namely Tonga. Notably, the size and sign of the growth effect of tourism depends on the research method and the measure of tourism. Consistent results across methods and data frequencies are obtained using the overall PCA index models. The findings indicate that tourism has small but positive effects on growth, whilst structural breaks and exchange rates have negative effects on growth. Theoretically consistent values of the capital share are found. The practical implication is on better policies to promote economic growth by developing Tonga’s tourism industry.

The remainder of the study is set as follows. Section 2 discusses the methodology, Section 3 presents the results, and Section 4 concludes with policy implications.

Materials and methods

Theoretical model.

tourism led growth theory

A total of 24 years of annual data over the periods from 1995 to 2018 is used for analysis. The data for real GDP in constant 2010 US dollars was available from 1981 to 2018, gross capital formation to proxy for investment was available from 1975 to 2018, tourist arrivals and tourism receipts in constant 2010 US dollars was available from 1995 to 2018, population data was available from 1960 to 2018, and the labor force participation rate was available from 1990 to 2019. The nominal exchange rate, Tongan Pa’anga against the US dollar was available from 1961 to 2020. GDP deflator for the USA and Tonga was available from 1960 to 2019, and 1981 to 2019, respectively. The average labor force participation rate was multiplied by the population to compute the labor series. The capital stock series was computed using the perpetual inventory method. The initial capital stock was set as 1.5 times the 1981 real GDP, and the depreciation rate is set at 5 percent. The real exchange rate is derived by multiplying the nominal exchange rate with the ratio of GDP deflator in the USA against Tonga. The data are sourced from the World Development Indicators and Global Development Finance database [ 30 ]. Data for gross capital formation from 2013 to 2018 is handpicked from the Asian Development Bank’s Key Indicators for Asia and the Pacific Series database [ 31 ]. Data for the official exchange rate is sourced from the IMF’s International Financial Statistics database [ 32 ]. Exchange rate data over the period 2014 to 2019 is sourced from the exchange rates UK website [ 33 ].

PCA and frequency conversion.

Principal component analysis is used to construct the overall tourism activity indicator. A key benefit of the PCA is that the resulting indicator is not subject to multicollinearity and is less sensitive to missing data in the underlying components [ 11 ]. The relevance of the underlying components is determined by the estimated eigenvalues. Following the Kaiser criterion, components with eigenvalues greater than 1 are important in the index.

Frequency conversion techniques are used to mitigate problems associated with small samples and improve degrees of freedoms [ 11 , 24 ]. The quadratic match sum technique is used to convert from low to high frequencies [ 11 , 24 ]. The approach fits a quadratic polynomial for each observation of the low-frequency series. The polynomial is formed via three adjacent points from the lower frequency series, and is then used to fill in observations of the higher frequency series for that period. The fitted quadratic is either the average or sum of the higher frequency points that match the lower frequency data. Points earlier and after the current period are used in the interpolation process. For endpoints, two periods earlier/after the endpoint are considered [ 11 , 24 ]. This approach avoids issues related to seasonality, and the converted data are comparable to seasonally adjusted series [ 11 , 24 ].

Unit root and structural breaks.

tourism led growth theory

The null hypothesis is that the underlying series has a unit root, H 0 : β 1 = β 2 = 0. Rejection of the null hypothesis employing an F-test implies stationarity [ 36 ]. The critical values of this test are obtained from Becker, Enders, and Lee [ 38 ]. Lags of the differenced dependent variable in Eq (6) are included up to where autocorrelation is corrected [ 36 , 37 ].

Testing for structural breaks is important because tourism development is affected by exogenous events [ 3 ]. To examine the presence of structural breaks, the Bai and Perron sequential break test is used [ 39 , 40 ]. The procedure is useful in that one can examine the presence of multiple structural breaks. The method produces a consistent estimation of the location and number of breaks and corrects for serial correlation across the break segments by robust standard errors.

Cointegration, endogeneity, and small sample consistent estimates.

tourism led growth theory

where y and x are time series variables, μ 1 is the deterministic component which includes intercept, trend, and structural breaks, and -1 < θ 1 < 0 is the adjustment coefficient. The bounds test of cointegration tests whether the lagged level variables in Eq (7) estimated by OLS is significantly different from zero. Cointegration exists if the resulting F-statistic exceeds the upper critical bound, does not exist if the F-statistic is below the lower critical bound, and is inconclusive if the F-statistic falls within the upper and lower bounds [ 16 ].

Long-run estimates are also provided by the dynamic least squares (DOLS) [ 17 ], fully modified least squares (FMOLS) [ 18 ], and the canonical cointegration regression (CCR) [ 19 , 20 ]. FMOLS is an optimal single-equation method-based least squares estimator with semi-parametric corrections for serial correlation and endogeneity of the explanatory variables [ 41 ]. DOLS is useful in small samples, can be applied with mixed and higher orders of integration, and can accommodate for possible simultaneity between regressors [ 42 ]. CCR approach has similar benefits as FMOLS which is achieved by incorporating stationary components in the cointegrating models [ 19 , 20 ]. The resulting CCR estimates are asymptotically efficient [ 19 , 20 ].

tourism led growth theory

Multicollinearity consistent estimates.

Multicollinearity is a phenomenon in which two or more predictors in multiple regression are highly correlated [ 23 ]. Strong multicollinearity creates difficulties in testing individual least squares regression coefficients due to inflated standard errors [ 23 ]. The Farrar-Glauber (FG) test is used to detect the presence of severe multicollinearity. The FG test defines multicollinearity in terms of departures from orthogonality and helps detect the presence and pattern of multicollinearity. The null hypothesis of no multicollinearity is rejected if the p-value from the test statistic is less than 5 percent.

tourism led growth theory

The ridge penalty factor is set to ensure that the coefficients of the estimated ridge regression stabilize to avoid overfitting. The closer lambda is to zero, the smaller the biasing constant, and the closer the ridge estimates will be to OLS. Standard errors are generally not available with penalized estimation methods because it is difficult to obtain a precise estimate of the bias which forms a major component of the mean square error. Reliable estimates of the bias are only available if unbiased estimates are available. Bootstrapped standard errors are however available in standard software packages such as Stata.

Causality test.

tourism led growth theory

Results and discussion

Basic statistics and index development.

As noted from Tables 1 and 2 , there is a strong positive and significant correlation between tourist arrivals, tourism receipts, official exchange rates, and real GDP per worker. Although correlation does not imply cointegration, the strength of the correlation and level of significance can influence the statistical significance of the long-run association.

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https://doi.org/10.1371/journal.pone.0258730.t001

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https://doi.org/10.1371/journal.pone.0258730.t002

Table 3 below summarizes the PCA results. Noting the vast differences in the mean value of arrivals and receipts, the PCA is run on the log of both indicators. The eigenvalue for arrivals exceeds 1 which indicates its relevance in the index [ 11 ]. The factor loading of the first component reveals that arrivals and receipts enter the first component with a similar weight [ 11 ]. Around 88 percent of the variation in the tourism index is explained by tourist arrivals.

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https://doi.org/10.1371/journal.pone.0258730.t003

Unit root, structural breaks, and cointegration

Table 4 presents the results of the unit root tests. The results indicate that the variables are stationary in their first differences and suitable for the subsequent estimations. The optimal value of k* is determined by minimizing the sum of squared residuals obtained from Eq (5) .

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https://doi.org/10.1371/journal.pone.0258730.t004

Table 5 presents the results of the multiple break test. Both the identified breaks were negative and significant in the subsequent estimations. The year 2007 could reflect the Nuku’alofa riots and the subsequent declaration of a state of emergency. The second break, 2010, could reflect the lagged effect of the Tonga Tsunami and earthquake in late 2009 [ 44 ].

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https://doi.org/10.1371/journal.pone.0258730.t005

Table 6 presents the results of the Bounds test for cointegration. Cointegration is strongly suggested at the 1 percent level in the estimated models.

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https://doi.org/10.1371/journal.pone.0258730.t006

Long-run results

Tables 7 – 9 present the results of the growth model discussed earlier. A total of 6 models are considered. The lag length for each variable in the ARDL model is determined by the Schwarz information criteria. The arrivals models ( Table 7 ) generally indicate that tourism promotes growth. The exchange rates, both real and nominal, are appropriately signed which suggests that an increase of the Tongan Pa’anga against the USD reduces growth. Structural breaks have negative effects on growth, although only the break for 2007 is significant across the estimates irrespective of the tourism or exchange rate assumption.

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https://doi.org/10.1371/journal.pone.0258730.t007

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https://doi.org/10.1371/journal.pone.0258730.t008

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https://doi.org/10.1371/journal.pone.0258730.t009

The receipts model returns mixed effects on tourism and growth. Considering the real exchange rate, tourism receipts promote growth when estimated using the ARDL or DOLS methods ( Table 8 ). Considering the nominal exchange rate, the FMOLS estimates also suggest this outcome. However, the effect is negative according to the CCR estimator irrespective of whether the model is estimated using annual or quarterly data ( Table 8 ).

The most consistent results are obtained with the PCA tourism development index models ( Table 9 ). The growth effect of tourism is between 0.02 to 0.04, respectively. The results with the tourism indicator ( Table 9 ) are qualitatively similar to those with tourism arrivals ( Table 7 ). The predominance of tourism arrivals in the index which explains 88 percent of the variations in the index could explain this similarity. Unlike earlier results (Tables 7 and 8 ), the effects are consistent across methods, data frequencies, and exchange rate assumptions. Therefore, developing an overall tourism index is better suited to assess the tourism-growth association. The capital share is between 0.27 to 0.37 which is smaller than those from the earlier estimates (Tables 7 and 8 ). Consistency is also evident in the exchange rates despite the unit of measurement and is in between 0.08 to 0.12. Overall, the growth effect of tourism is small, positive, and statistically significant in Tonga.

The results indicate that tourism is an important driver of long-run growth in Tonga like other Pacific islands [ 45 , 46 ]. However, the effect of tourism is noticeably smaller than in earlier studies. This suggests that although the tourism sector does affect growth, it requires further development. For this reason, factors promoting tourism demand are necessary, and building resilience is critical. Policymakers in Tonga could capitalize on factors such as a favorable word of mouth by establishing good reviews on sites such as TripAdvisor and distinguishing the Tongan tourism experience from the other PICs. Promoting a safe and secure environment for tourists by strengthening law enforcement, and knowledge of overall tourism demand elasticities may prove beneficial.

The estimated models (Tables 7 – 9 ) are free from auto-correlated residuals and heteroscedasticity, and the residuals are normally distributed. The estimates do not exhibit the endogeneity bias, have correct functional forms, and are stable. These results are not presented to conserve space but are available upon request.

Multicollinearity test and ridge estimates

Noting the consistency of the results from the PCA models ( Table 9 ), the PCA model is re-visited using the ridge regression technique. Strong multicollinearity between the explanatory variables is found evidenced by the strong correlation between the variables ( Table 2 ) and according to the Farrar-Glauber test ( Table 10 ). Minor differences are found between the ridge and cointegrating models (Tables 7 – 10 ). The ridge coefficient evolution plot indicates that the estimated coefficients stabilize at the chosen ridge lambda penalty factor ( Fig 2 ).

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Estimated in EViews 10.

https://doi.org/10.1371/journal.pone.0258730.g002

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https://doi.org/10.1371/journal.pone.0258730.t010

Causality test

To undertake causality analysis, we rely on the PCA tourism index-real exchange rate model. We set a lag of 1 in the test VAR model which is within the sum of the order of integration and maximum lag of the ARDL model, both which are 1, respectively [43; 45]. The significant causal relations are reported in Table 11 below. Notably, the causality results in Table 11 indicate that tourism, real exchange rates, and capital granger cause growth. Table 11 further indicates that the real exchange rate granger causes tourism and that capital investments granger cause the real exchange rate and tourism, respectively which reaffirms the findings in Table 9 . In this regard, predicting Tonga’s economic growth requires a careful analysis of the effect of tourism, real exchange rate, and capital noting the potential inter-relationships. Fig 3 suggests that the test VAR model is stable and hence causality outcomes are reliable.

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Estimated in EViews 10. Inverse roots within the unit circle indicate stable estimates.

https://doi.org/10.1371/journal.pone.0258730.g003

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https://doi.org/10.1371/journal.pone.0258730.t011

Further tests

Two further tests are conducted with the PCA models. First, nonlinear effects of tourism are considered. On nonlinearity, we draw insights from Balsalobre-Lorente et al. [ 47 ] and invoke the partial sum decomposition technique to decompose positive and negative changes in tourism. Then, the threshold effects of tourism on growth is considered through threshold regressions [ 48 ], and by including the square of tourism in the specification [ 49 ]. Nonlinear effects are rejected in all specifications. Second, the model is re-estimated using Bayesian techniques [ 50 ]. The posterior mean of the Bayesian estimator resembles the estimates in Tables 7 – 10 . These results are not presented to conserve space but are available upon request.

Conclusions

In this study, data and method triangulation are proposed as potential solutions to the publication bias problem [ 3 – 5 ]. The specification incorporates the effects of exchange rates, capital-labor ratio, and structural breaks. On method triangulation, the autoregressive distributed lag, fully modified least squares, dynamic least squares, canonical cointegrating regression, and ridge regression are considered. On data triangulation, tourism is measured by arrivals, receipts, and an index of tourism performance developed using principal component analysis. A data frequency conversion method is used to derive the quarterly data series. Tonga is used as a case study over the sample period 1995 to 2018. Tonga is chosen given the importance of tourism and the dearth of country-specific research for this country.

The findings indicate that the size of the effect of tourism in growth regressions depends on the measure of tourism. Consistent results across all three dimensions are obtained using the PCA index models. Tourism has small, positive, and significant growth effects. A 1 percent increase in tourism would increase growth by about 0.02 to 0.04 percent, ceteris paribus. A 1 percent decline of the Tongan Pa’anga against the USD would increase growth by about 0.10 to 0.12 percent, ceteris paribus. The capital elasticity has an average value of about 0.32. The structural break which represents the 2006/07 Nuku’alofa riots has significant negative effects. Unidirectional causality from tourism to growth is found with the causality test.

Nonetheless, the study could have benefitted from a larger sample size but was restricted to a sample of 1995 to 2018 due to a lack of earlier tourism data. Yet, the key scientific implication/contribution is the development of a cohesive framework that attempts to solve publication biases in the tourism-growth literature. Synthesizing the literature, the framework developed draws from the Solow-Swan growth model, controls for exchange rates and structural breaks, and utilizes an overall indicator of tourism performance. Multiple methods which correct for small sample and endogeneity biases, and multicollinearity are used. Nonlinearity is also considered but found statistically insignificant. Future research can apply the framework advanced in this study to potentially circumvent the publication bias critique.

Based purely on the results, any policy promoting tourism in Tonga would contribute to economic growth of the country. The practical policy implications need to consider the positive and significant growth effect of tourism, and negative effects arising from political issues and other exogenous shocks. Based on the authors knowledge of Tonga and its tourism industry, policymakers need to make careful decisions in how capital projects are implemented, and how budget shares are allocated to an industry like tourism. This is because resources are limited and there are many other equally urgent competing social projects. To develop the tourism sector, enabling investments in basic infrastructures such as roads, airports and international and domestic air transportation, information and communication technology, public amenities, and easing of restrictions to access financial services is needed. Demand-side factors such as the sensitivity of tourism demand to price and income shocks, and a favourable word of mouth is also important. Tailor-made tourist packages catered for Australian and New Zealand tourists, and the establishment of direct travel routes may also prove beneficial.

However, policy decisions to invest in the tourism industry and related areas need to be cautioned based on the noticeably small growth effects found in this study. This implies that although the tourism sector influences growth, its magnitude is small relative to competing destinations, and requires further development. Additionally, the effect of COVID 19 on the tourism industry is unprecedented and requires a radical shift in the way countries depend on tourism [ 51 ]. Given the small positive impact of tourism on growth in Tonga, alternative growth strategies such as agriculture, back-office data processing, and call centers that work in tandem with tourism are needed. Further, Tonga needs to pay attention to political stability to avoid the negative effects of tourism on growth. Further research is thus needed to address how much tourism contributes multiplicatively to other industries, like agriculture, and the level of direct and induced employment generated through tourism activities.

Supporting information

https://doi.org/10.1371/journal.pone.0258730.s001

Acknowledgments

The authors thank the academic editor and anonymous reviewers for their useful comments which have considerably improved this paper. The authors also thank Associate Professor Saten Kumar, Dr Antony Andrews, and Mr. Sean Kimpton of AUT for insights on Ridge and Bayesian analysis, and for proof-reading the revised text. Nikeel would also like to thank Nandani for her constant encouragement and for proofreading the revised text.

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A literature review on the tourism-led-growth hypothesis

Profile image of Manuela Pulina

The aim of this paper is to provide a comprehensive literature review on the temporal relationship between tourism and economic growth. Specifically, the role of a such economic activity, as a promoter of short and long run economic growth, is investigated by assessing the so-called Tourism Led Growth Hypothesis (TLGH). To this aim, various methodological approaches have been used, such

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Int.J.Tour.Hosp. 3(1) (2023) 1-7

naftaly mose

The empirical debate on the role of international tourism on local economic growth is inconclusive and is characterized by two main opposing views: the Tourism-led economic growth hypothesis and the Economy-driven tourism growth hypothesis. The objective of the study was to establish the role of tourism development on economic growth using time series secondary data from Zimbabwe. Empirically, the study develops a tourism-growth model that is an extension of Solow (1956) neoclassical growth function and attempts to determine whether there is the long-run and short-run relationship via Autoregressive Distributed Lag (ARDL) model and Granger technique. The main finding of this study is the Tourism-led economic growth hypothesis can be accepted in Zimbabwe both in shortrun and long-run periods. The study findings have empirically verified the presence of the Tourism-led economic growth hypothesis in Zimbabwe. Tourism could be an effective substance for the sustainable growth of the country's economy and a strategy to help Zimbabwe recover from Covid-19 economic effect. They showed that tourism is in part an endogenous growth process, requiring a systematic allocation of resources by government to sustain its effect on local economies. Further, the country can ease visa and border crossing processes as well as eradicate insecurity for sustainable tourism and economic development.

Whether tourism can lead to economic growth is an important question. In general, previous studies find evidence in support of the notion that tourism promotes growth. However, previous studies typically do not control for standard growth determinants, such as technology, human capital, and institutions. Therefore, the estimations may be biased due to the omitted variable problem. Motivated by this observation, we revisit the tourism-led growth hypothesis. We first develop a tourism-growth model that is well motivated by the literature. Then, based on our theoretical model, we use a newly-available international database to test the tourism-led growth hypothesis. We find that if we do not control for standard growth factors, tourism appears to lead to growth; however, as soon as we take into account these standard growth determinants, tourism does not have marginal explanatory power anymore even within the tourism economies.

Cornell Hospitality Quarterly

Chor Foon Tang

The primary aim of this study is to determine whether the tourism-led growth hypothesis is globally valid by accounting for countries’ income levels and their institutional qualities, against a panel dataset of 167 countries. The institutional qualities referred to are political stability and corruption control. We employ the dynamic panel generalized method of moments (GMM) approach to examine the relationship. It can be inferred from the exercise that tourism positively contributes to economic growth but the effect varies across countries at different levels of income and institutional qualities. Therefore, the effect of tourism on economic growth is contingent on levels of income and institutional qualities of the host tourism countries. Policy initiatives that aim to promote and strengthen institutional qualities should be undertaken for a country to enjoy the beneficial impact of tourism on economic growth and development.

Khatai Aliyev

This paper empirically investigates a causal relationship between tourism and economic growth in Georgia for 1997-2018 period by employing ARDLBT approach to cointegration. Results reject economic-driven tourism growth hypothesis for Georgia and reveal that impact of tourism development over economic growth is negative in the long-run, in contrary positive in the short-run. Obtained results suggest that there is a possibility to have a tourism resource curse in the long-term in Georgia. Georgian government should build a tourism strategy to avoid crowding out of human capital from industrial production and decrease the share of imports for the needs of tourism sector

Sisira Kumara Naradda Gamage

The study aims to review tourism and economic growth in developing countries. The paper systematically reviews the literature on tourism and economic growth from 2004 to 2019. The Scopus database has been selected for the literature search to make the process transparent. The literature search was based on the keywords of tourism and economic growth, and the PRISMA 2009 helped the selection and exclusion process. The final 40 articles in the excel sheet with at least one citation for the review have been used in the literature classification to find the gap and directions of tourism and economic growth. The results revealed that literature on multiple country studies face difficulties in finding a specific relationship than single-country studies, and most studies have only focused on the relationships but missed the growth strategies. The present systematic review recommends the future research should focus on multiple country studies and growth strategies.

Journal of Travel Research

Mina Dragouni

This article revisits the ambiguous relationship between tourism and economic growth, providing a comprehensive study of destinations across the globe which takes into account the key dynamics that influence tourism and economic performance. We focus on 113 countries over the period 1995 to 2014, clustered, for the first time, around six criteria that reflect their economic, political, and tourism dimensions. A panel vector autoregressive model is employed, which, in contrast to previous studies, allows the data to reveal any tourism-economy interdependencies across these clusters, without imposing a priori the direction of causality. Overall, the economic-driven tourism growth hypothesis seems to prevail in countries which are developing, nondemocratic, highly bureaucratic and have low tourism specialization. Conversely, bidirectional relationships are established for economies that are stronger, democratic and with higher levels of government effectiveness. Thus, depending on the ...

China’s Economic Miracle

Alan A. Lew

murat ertugrul

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IMAGES

  1. 18: Conceptual framework: LED and community-based tourism development

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  2. The flowchart of results (TLGH, EDTGH and BCH) Source: Author's own

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  3. Factors Influencing Growth of Tourism Stock Image

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  4. (PDF) Tourism Led Growth Hypothesis: Has the Tourism industry an impact

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  5. Figure 1 from Where Can Tourism-Led Growth and Economy-Driven Tourism

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  6. Revisiting the Tourism Led Growth Hypothesis in a Dual Model Using

    tourism led growth theory

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  4. Revisiting the Tourism Led Growth Hypothesis in a Dual Model Using Mwald Granger Causality Analysis

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COMMENTS

  1. A literature review on the tourism-led-growth hypothesis

    Nowak et al., 2007; Brida et al., 2008; Katircioglu, 2009 a; Kadir and Jusoff, 2010 ). The a im o f this paper is to provide evidence of the so-called tourism- led -. growth hypothesis (TLGH) for ...

  2. A Critique of Tourism-Led Economic Growth Studies

    Abstract. During recent decades numerous academics have examined the tourism-led economic growth (TLEG) hypothesis, and a large number of related empirical studies have been published in the tourism literature. However, the research designs for many of these studies have not satisfactorily addressed the theoretical foundation that underpins the ...

  3. Tourism-Led Growth Hypothesis: A New Global Evidence

    Abstract. The primary aim of this study is to determine whether the tourism-led growth hypothesis is globally valid by accounting for countries' income levels and their institutional qualities, against a panel dataset of 167 countries. The institutional qualities referred to are political stability and corruption control.

  4. Tourism-led economic growth across the business cycle: Evidence from

    It is an export-led growth theory: tourism causes growth by increasing efficiency (through competition à la Krueger, 1980 and economies of scale à la Helpman and Krugman, 1985) and foreign trade earnings (e.g. Narayan et al., 2021), which allows financing a faster rate of capital accumulation (Hazari and Sgro, 1995, Nowak et al., 2007).

  5. Tourism-led growth hypothesis in the top ten tourist destinations: New

    This paper examines the empirical validity of the tourism-led growth hypothesis in the top ten tourist destinations in the world (China, France, Germany, Italy, Mexico, Russia, Spain, Turkey, the United Kingdom, and the United States) using the quantile-on-quantile (QQ) approach and a new index of tourism activity that combines the most commonly used tourism indicators.

  6. Has the tourism-led growth hypothesis been confirmed? Evidence from an

    Although it has been more than two decades since the completion of the first study establishing the tourism-led growth hypothesis (TLGH), this area of research still appears within the scientific literature in its analysis of tourism from an economic standpoint. In this regard, numerous studies have analysed the relationship between tourism and ...

  7. Has the tourism-led growth hypothesis been validated? A literature

    Over 10 years have passed since the first paper on the tourism-led growth hypothesis (TLGH) was published in 2002. Since then, a wave of studies has appeared trying to understand the temporal relationship between tourism and economic growth. Hence, it is possible to provide an assessment in terms of econometric methods used and main empirical ...

  8. Modelling structural breaks in the tourism-led growth hypothesis

    The tourism-led growth hypothesis (TLGH) is a key area of research within the tourism economics literature (Song & Wu, 2022 ). Tourism supports income by providing employment and generating exports for the destination economy (Song & Wu, 2022 ). However, Nunkoo et al. ( 2020) and Fonseca and Sánchez-Rivero ( 2020) argue that TLGH research is ...

  9. Tourism‐led growth hypothesis: International tourism versus domestic

    Tourism-led growth hypothesis is widely studied from the international tourism perspective, but the number of studies related to domestic tourism is limited. This study provides an empirical investigation on the impacts of both international and domestic tourism on the economic growth of China, with human capital as a control variable. ...

  10. A literature review on the tourism-led-growth hypothesis

    Downloadable! The aim of this paper is to provide a comprehensive literature review on the temporal relationship between tourism and economic growth. Specifically, the role of a such economic activity, as a promoter of short and long run economic growth, is investigated by assessing the so-called Tourism Led Growth Hypothesis (TLGH). To this aim, various methodological approaches have been ...

  11. Revisiting the Tourism-Led Economic Growth Hypothesis: The Case of

    "Revisiting the Tourism-Led-Growth Hypothesis for Turkey Using the Bounds Test and Johansen Approach for Cointegration." Tourism Management 30 (1): 17-20 ... "Evolutionary Agglomeration Theory: Increasing Returns, Diminishing Returns, and the Industry Life Cycle." Journal of Economic Geography 11 (3): 417-55. Crossref. ISI. Google ...

  12. A literature review on the tourism-led-growth hypothesis

    The aim of this paper is to provide a comprehensive literature review on the temporal relationship between tourism and economic growth. Specifically, the role of a such economic activity, as a promoter of short and long run economic growth, is investigated by assessing the so-called Tourism Led Growth Hypothesis (TLGH). To this aim, various methodological approaches have been used, such as VAR ...

  13. Re-examining the tourism-led growth nexus and the role of information

    That is, subjecting the tourism-led growth hypothesis to various empirical techniques (PSCC, MMQR, and GMM) provides some compelling evidence that ICT is a critical determinant of growth [[103], [104], [105]] and a new incursion to the ICT-tourism-growth literature.

  14. (PDF) Examining tourism- led growth hypothesis

    The main finding of this study is the Tourism-led economic growth hypothesis can be accepted in Zimbabwe both in short-run and long-run periods. The study findings have empirically verified the ...

  15. Publication bias and the tourism-led growth hypothesis

    This study attempts to solve the publication bias suggested by recent review articles in the tourism-growth literature. Publication bias is the tendency to report favourable and significant results. Method and data triangulation, and the Solow-Swan model are applied. A sample from 1995 to 2018 is considered with Tonga as a case study. The approach consists of multiple methods, data frequencies ...

  16. A literature review on the tourism-led-growth hypothesis

    The "new growth theory", developed by Balassa (1978), suggests that exports have a relevant contribution to economic growth through two main channels: by improving efficiency in the allocation of the factors of production and by expanding their volume. ... Can tourism-led growth always be thought as sustainable? Recently, a new strand of ...

  17. Has the tourism-led growth hypothesis been validated? A literature

    Over 10 years have passed since the first paper on the tourism-led growth hypothesis (TLGH) was published in 2002. Since then, a wave of studies has appeared trying to understand the temporal relationship between tourism and economic growth. Hence, it is possible to provide an assessment in terms of econometric methods used and main empirical findings achieved so far. This paper presents an ...

  18. Where Can Tourism-Led Growth and Economy-Driven Tourism Growth Occur

    The empirical results reveal that 10 of 29 regions experienced tourism-led growth (TLG) during 1978 to 2013, whereas nine regions experienced economy-driven tourism growth (EDTG). ... "Can Comparative Advantage Theory Explain Tourism Growth Models of Chinese Provinces? An Inter-Provincial Study on the Contribution of Production Factors to ...

  19. PDF The tourism-led growth hypothesis: empirical evidence from Turkey

    run growth through varied channels is known in the literature as the tourism-led growth hypothesis (TLGH) (Shan & Wilson, 2001). Accordingly, tourism provides foreign exchange, which can be used

  20. Is the tourism-led growth hypothesis valid after the global economic

    1. Introduction. Theoretically, the tourism-led growth hypothesis (TLGH) was directly derived from the export-led growth hypothesis that postulates that economic growth can be generated not only by increasing the amount of labour and capital within an economy, but also by expanding exports (Brida, Cortés-Jiménez, & Pulina, 2016).Since the publication of the first paper on the subject in 2002 ...

  21. Modelling structural breaks in the tourism-led growth hypothesis

    The tourism-led growth hypothesis (TLGH) is a key area of research within the tourism economics literature (Song & Wu, 2022). Tourism supports income by providing employment and generating ... theory. They argue that the Solow growth model can include the growth effects of tourism. Yet, there are two overarching issues with this approach ...

  22. Coupling and Coordination between Tourism, the Environment and Carbon

    Studying the relationships among tourism, the environment and carbon emissions is key to understanding how tourism activity affects the sustainable development of tourism in the Tibetan Plateau. Using Lhasa, Tibet, as a case study, the coupling and coordination relationships among the three systems were analysed to explore the impact of tourism behaviour on sustainable tourism development ...

  23. Tourism and economic growth: Multi-country evidence from mixed

    Theoretically speaking, the tourism-growth relationship is rooted in international trade theories (Balassa, 1978; Krueger, 1980).The neoclassical trade theory emphasises the importance of international tourism to EG along the line of the law of comparative advantage such as the relative productive efficiency (the Ricardian model) and the relative abundance in factor endowments (the Heckscher ...

  24. Full article: Tourism and Development Theory: Which Way Now?

    ABSTRACT. Tourism has long been explored through the lens of development theory. David Harrison was one of the earlier academics to do so, subsequently turning his attention to critiquing the relevance of such theory to tourism, concluding that although much tourism research has been framed within it, development theory has contributed little if anything to knowledge and understanding of the ...