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Article

Measuring the Effect of the Misery Index on International Tourist Departures: Empirical Evidence from Mexico

by
Fernando Sánchez López
Instituto de Investigaciones Económicas, Universidad Nacional Autónoma de México, Ciudad de México 04510, Mexico
Economies 2022, 10(4), 81; https://doi.org/10.3390/economies10040081
Submission received: 16 February 2022 / Revised: 12 March 2022 / Accepted: 17 March 2022 / Published: 1 April 2022
(This article belongs to the Section Economic Development)

Abstract

:
Tourism’s capacity to alleviate poverty is one of the most important subjects in tourism studies, as tourism is capable of boosting economic growth and generating employment. On the other hand, it is known that lack of income and unemployment have negative effects on outbound tourism; however, the relationship between outbound tourism and poverty has been understudied. In this paper, we compute a vector autoregressive (VAR) model to analyze the relationship between tourist departures from Mexico and a modified misery index to measure the effect of the loss of well-being, measured in terms of this index, on the number of outbound tourists. The results indicate that increases in the misery index have negative effects on the number of outbound tourists. Conversely, there is no statistically significant effect of tourist departures on the misery index. The results also suggest that the depreciation of the national currency exerts a positive effect on the misery index. Finally, based on the historical decomposition analysis, it was verified that the misery index was not closely related to outbound tourism during the first COVID-19 wave.

1. Introduction

Inbound tourism is considered a main driver of economic growth. The tourism-led growth hypothesis, according to Rasool et al. (2021), is directly founded on the export-led growth hypothesis, which claims that economic growth can be boosted not only by way of increasing labor and capital but also by means of furthering exports. According to Hipsher (2017), tourism is a labor-intensive sector that benefits those with low levels of skill and education.
According to Sharma and Thapar (2016), tourism is among the most lucrative non-technology-based economic sectors, particularly in developing nations, as these types of countries frequently confront problems such as lack of capital, lack of employment opportunities, and poverty. Since tourism is considered to make an important contribution to economic growth, besides being recognized as an employment-generating sector, Weinz and Servoz (2013) consider it to have important potential for poverty reduction.
Conversely, outbound tourism spending is cataloged as an import for the country of origin, so its value is compared with the country’s export value (Mehran and Olya 2019). In this sense, outbound tourism, following Seetaram (2010), is considered to largely affect the economy in the opposite direction of inbound tourism in terms of economic growth and employment creation.
This study aims to investigate the relationship between the misery index and tourist departures in Mexico. To achieve this goal, we computed an unrestricted vector autoregressive (VAR) model, which considers the compensated misery index (CMI), the multilateral real exchange rate, and the number of outbound tourists as endogenous variables. The main results of this model suggest, on the one hand, that the number of outbound tourists is diminished by increases in the CMI but, on the other hand, that tourist departures do not have a statistically significant effect on the CMI. In addition, the results show that, during the first wave of the COVID-19 pandemic, the CMI and tourist departures were not closely related.
We believe that this article contributes to the existing literature in the following ways. First, to the best of our knowledge, this is the first study documenting the relationship between poverty, in terms of the CMI, and tourist departures, as this subject has been traditionally studied from the perspective of inbound or domestic tourism. Second, this document contributes to closing the gap between studies on outbound and inbound tourism. In the same vein, we consider that it will be of interest to policymakers and tourism managers, as it provides statistical evidence that the misery index helps explain decreases in outbound tourism demand, and also that tourist departures have not had a statistically significant impact on the loss of well-being measured in terms of this index during the study period.
The remainder of this paper is organized as follows. In Section 2, we present the literature review, which is divided into two subsections: we first present a detailed literature review on the discomfort economic index and then review the links between outbound tourism and the misery index. Section 3 is also divided into two subsections, as we present the data and their sources and the VAR empirical design. In Section 4, we present the econometric results. Finally, in Section 5, the discussion and conclusions are presented.

2. Literature Review

2.1. Discomfort Economic Index

In its original form, according to Lechman (2009), Okun’s misery index ( M I ) is calculated by simply adding the unemployment rate ( U ) to the inflation rate ( π ) :
M I = U + π
The expression in Equation (1) was initially named the “discomfort economic index” (Lechman 2009). In 1980, U.S. President Ronald Reagan renamed it “the economic misery index” in “deriding” the previous U.S. president, Jimmy Carter (Lovell and Tien 2000).
Okun’s misery index probably constituted the first attempt to measure a population’s economic malaise in a single number (Cohen et al. 2014). It was conceived to measure the loss in general welfare and as an objective method to quantify economic malaise (Lechman 2009). In fact, this index endeavors to summarize the most evident costs for society, as unemployment prevents people from earning an income, whereas high inflation rates increase the cost of living by reducing purchasing power (Riascos 2009).
Most of the criticisms of the discomfort economic index are due to its simplicity, as it embodies an oversimplification of the socioeconomic problems affecting society (Lovell and Tien 2000; Riascos 2009). In fact, it is considered a simplified version of the social preference function over inflation and unemployment (loss function), as the loss function differs from the misery index in both its functional form and weights (Welsch 2007).
Given that Okun’s misery index considers only two macroeconomic indicators, according to Lovell and Tien (2000), it can be regarded as a “crude (dis)utility function”. Lovell and Tien argue that Okun implicitly supposed that the indifference curves describing people’s preferences for unemployment and inflation are straight lines with a slope equal to −1, implying that citizens’ aversion to such economic indicators is identical.
However, Winkelmann and Winkelmann (1998) found that unemployment has a strong negative impact on life satisfaction, claiming that non-pecuniary costs of unemployment are higher than pecuniary costs. Di Tella et al. (2001) demonstrated that unemployment has more negative effects on reported well-being than inflation, indicating that Okun’s misery index underweights the discontent generated by joblessness. Additionally, Asher et al. (1993) consider that variations in MI are policy-related, but it is not easy to attribute them to specific policy actions.
Despite the criticisms of its simplicity, Okun’s misery index is frequently used to examine social welfare (Riascos 2009). In fact, Grabia (2011) considers that such an index establishes a kind of poverty index due to the effects of unemployment and inflation on average citizens’ standards of living. Moreover, according to Riascos (2009), Okun’s misery index, as a poverty measure, should be considered an objective indicator, as it does not take into account the socioeconomic perception that persons or households have of themselves. Additionally, Riascos proposed including the MI among the monetary approaches to measure poverty, as monetary indicators of poverty are based on income’s capacity to guarantee the satisfaction of basic life conditions. Nonetheless, it is very important to mention that, according to Lechman (2009), MI is not a perfect measure of poverty, but its fluctuations reflect “changes in society’s economic performance”.
Additionally, this index has been applied in a vast number of ways; for example, Yang and Lester (1999) found that, in the case of the United States, Okun’s misery index is related to the number of suicides. In the case of Iran, Piraee and Barzegar (2011) found a long-term relationship between the misery index and economic crimes such as embezzlement, bribery, forgery, and drawing counterfeit checks. Özcan and Açıkalın (2015) found that in the case of Turkey, there is a relationship between lottery gambling and the misery index, arguing that people are more prompted to bet in lottery games during economic crises. Similarly, in the case of Turkey, Akçay (2017) found that the MI has a positive impact on remittance flows in both the short and long term. Wang et al. (2019) provided empirical evidence on the negative effects of the MI on economic growth in Pakistan.
There have also been numerous modifications to Okun’s misery index; for example, MacRae (1977) proposed that the loss of votes for the incumbent political party is a quadratic function of unemployment and inflation. Barro (1999) developed the so-called Barro misery index (BMI), which incorporates the interest rate and GDP; Barro argues that increases in the long-term interest rate and economic growth below the average also contribute to misery. Lovell and Tien (2000) suggest using the absolute value of the inflation rate; they consider that the effects of deflation are as “painful” as those of inflation. Ramoni-Perazzi and Orlandoni-Merli (2013) recommended adding employment in the informal sector to the measure, since joining this sector is frequently an immediate response by workers to subsistence problems, making informality a form of hidden unemployment to some extent. Cohen et al. (2014) developed a dynamic misery index using the expectation-augmented Phillips curve and Okun’s law. Murphy (2016) elaborated on a state misery index for the United States using data on regional pricing parities.
Based on the BMI, Hortalà and Rey (2011) calculated a “compensated misery index” by subtracting the economic growth rate ( y ˙ ) from Okun’s original misery index, as shown in Equation (2):
C M I = M I y ˙
It is important to mention that Gaddo (2011) uses a similar specification of the misery index, simply calling it “modified Okun”. In this document, we use the abbreviation CMI to denote the expression in Equation (2) in reference to the name utilized by Hortalà and Rey (2011).
In this document, based on the idea that the MI represents a type of poverty index, we study the impact of CMI on Mexico’s international outbound tourism to approximate the effect of poverty on the decision to travel abroad. The CMI was selected among the different specifications of the misery index because the empirical findings suggest that all three CMI components are tourism-related, as will be discussed in the following subsection.

2.2. Outbound Tourism and Compensated Misery Index

According to the World Bank (2021),
“International outbound tourists are the number of departures that people make from their country of usual residence to any other country for any purpose other than a remunerated activity in the country visited”.
From an accounting perspective, international outbound tourists’ spending is classified as an import (Boullón 2009; Seetaram 2010), and income is among the main determinants of the import level (Sosa 2001). Moreover, tourism behaves as a luxury good (Álvarez 1996; Smeral 2003), which implies, by definition, that its income elasticity of demand will be greater than unity when income rises by 1% (Varian 1999).
Economic crises have a profound effect on the tourism sector since, as mentioned by Ramírez (1994), tourism is sustained by three basic factors: available time, desire to travel, and economic resources. According to Álvarez (1996), during phases of economic decline, tourism demand, measured as tourist spending, decreases more than proportionally with respect to the fall in the income level.
In general, countries with important proportions of outbound tourists have a high income level, as well as an adequate income distribution (Ascanio 2012). Effectively, the income level is likely to determine a strict upper limit for tourism demand, whereas the lack of a certain level of wealth prevents individuals or households from acquiring superior goods (Kim et al. 2012). Moreover, traveling abroad for tourism purposes usually takes place once basic needs have been met (Ascanio 2012; Panosso and Lohmann 2012).
Concerning unemployment, Sánchez (2019) provided empirical evidence of a bidirectional relationship between tourism GDP growth and the unemployment rate; on the one hand, tourism GDP growth helps reduce the unemployment rate, but on the other, increases in the unemployment rate diminish the growth of tourism GDP. Alegre et al. (2019) found that high levels of unemployment increase the probability of not going on vacations, as unemployment represents an indicator of the current economic situation, in addition to influencing future expectations of income and employment.
Inflation deteriorates the purchasing power of a currency; such deterioration can incline consumers toward basic goods and services, thus postponing the decision to travel for tourism purposes, as well as the acquisition of other non-essential goods and services (Dominé 2014). However, tourism purchases are usually made in advance of their actual consumption; therefore, past values of prices and exchange rates are better at explaining tourism demand than current values (Stabler et al. 2009).
On the other hand, since outbound tourism is regarded as a form of import, its effects on the economy are considered to be the opposite of those generated by inbound tourism in terms of economic growth, the reduction of unemployment, and the generation of foreign currencies (Seetaram 2010). However, outbound tourists also contribute to the economy as they spend money in their residence country when preparing to travel; this often includes spending on airlines, passports, and travel agencies (Dahdá 2003).
In Figure 1, we summarize the main effects of each CMI component on the consumption of luxury goods and, by extension, on outbound tourism.
It is important to mention that in this literature review we did not find any research on the effect of poverty on international tourist departures. Conversely, there are various studies on the effect of tourism on poverty alleviation in different countries, such as Kenya (Njoya and Seetaram 2018), Mexico (Garza-Rodriguez 2019), and South Africa (Saayman et al. 2012).

3. Materials and Methods

3.1. Data and Sources

To conduct this study, we used time-series data from the second quarter of 2000 to the second quarter of 2020 and retrieved the CMI calculated by Sánchez (2021). We also obtained the real exchange rate (RER) index with respect to 111 countries (year base 1990) (Banco de México 2020b) and Mexico’s international outbound tourists (T) in thousands of people (Banco de México 2020a).
Since Sánchez (2021) reports the CMI as quarterly frequency data, we averaged the real exchange rate index into quarterly data. For its part, the number of outbound tourists was aggregated into quarterly data. We seasonally adjusted both of these series by applying the Census X12 filter, a technique that permits easier identification of trends and atypical data in the series (Pindyck and Rubinfeld 2001) in addition to removing calendar effects (Chatfield 2003).
To avoid finding spurious results when computing the VAR model, we applied the breakpoint unit root test to the series (Table 1), since traditional unit root tests could fail in the presence of structural changes (Glynn et al. 2007).
The results of such tests indicate that the CMI is an I ( 0 ) series, whereas the multilateral real exchange rate is an I ( 1 ) series, and the number of outbound tourists mostly behaves as an I ( 1 ) series (Table 1). To avoid obtaining spurious results through the VAR model, in addition to the CMI we used the stationary series t ˙ and r e r ˙ , which represent the first difference of ln T and ln R E R , respectively. Since all three variables in the model are stationary (Table 1), following Enders (2015), there is no need to test for cointegration.
Since the CMI, by definition, is the difference between the MI and the GDP growth rate, as shown in Equation (2), this variable is not properly a series in levels; therefore, it was considered adequate to conduct this study by using differentiated series, and computing a VAR model in differences.

3.2. Empirical Design

A VAR ( p ) model including three endogenous variables, two exogenous variables, and a constant, can be written as a system of equations, as shown in Equation (3):
r e r ˙ =   1 + i = 1 p β 1 i r e r ˙ t i + i = 1 p θ 1 i C M I t i + i = 1 p γ 1 i t ˙ t i + ϑ 1 δ A t + μ 1 δ B t + e 1 t C M I =   2 + i = 1 p β 2 i r e r ˙ t i + i = 1 p θ 2 i C M I t i + i = 1 p γ 2 i t ˙ t i + ϑ 2 δ A t + μ 2 δ B t + e 2 t t ˙ =   3 + i = 1 p β 3 i r e r ˙ t i + i = 1 p θ 3 i C M I t i + i = 1 p γ 3 i t ˙ t i + ϑ 3 δ A t + μ 3 δ B t + e 3 t
where δ A is a dummy variable defined to capture the effect of the first COVID-19 wave. COVID-19 was declared a pandemic on 11 March 2020 by the World Health Organization (2020). Following Sáenz (2021), Mexico began to apply sanitary and social distancing measures on 23 March 2020. During the second quarter of 2020, according to Cota (2020), Mexico experienced the greatest registered fall in its GDP as a result of the COVID-19 lockdowns. Meanwhile, δ B helps the model to adequately simulate the main breaks in the series; that is, the particular periods where the model overestimated or underestimated the series.
δ A t = { 1 t = 2020 Q 2 0 O t h e r w i s e
δ B t = { 1 i f   t = 2001 Q 3 ; 2007 Q 2 ; 2009 Q 3 ; 2013 Q 3 ; 2014 Q 1 1 i f   t = 2001 Q 4 ; 2002 Q 3 ; 2003 Q 1 ; 2007 Q 1 ; 2010 Q 3 ; 2017 Q 1 ; 2018 Q 3 ;   2020 Q 1 0 O t h e r w i s e
According to Catalán (n.d.), VAR models permit a better understanding of the relations among a set of variables, and, as they are specified without imposing restrictions on the parameters, its specification is more flexible in comparison to other models. Nonetheless, according to Jaramillo (2009), there are several criticisms of VAR models, which are non-parsimonious representations of a time-series vector, leading to problems with degrees of freedom, overfitting, and multicollinearity.
To tackle these eventualities, we first estimated the optimal value for p by using the traditional information criteria: sequential modified LR test statistic (LR), final prediction error (FPE), Akaike (AIC), Schwarz (SIC), and Hannan–Quinn (HQ). As we used quarterly data, we allowed a maximum of six lags when performing this test (Table 2).
According to the FPE and AIC, the optimal number of lags in this model was p = 2 , whereas the rest of the criteria differed in their number of lags (Table 2). Accordingly, the VAR ( 2 ) was computed.
Concerning multicollinearity, since each equation in a VAR can be individually computed as an ordinary least squares regression (Gujarati and Porter 2009), we computed the variance inflation factors (VIF) to test for multicollinearity.
Finally, the econometric analysis in this study was conducted by means of an unrestricted VAR model, as we have not found empirical or theoretical evidence concerning the relationship between the CMI and the real exchange rate and, as mentioned by Gottschalk (2001), restrictions in a model should not be imposed in the absence of an adequate theoretical framework.

4. Econometric Results

To test the impact of the CMI on Mexican outbound tourism, we performed a VAR ( 2 ) , the results of which are summarized in Table 3.
After computing the VAR, we verified that it satisfied the correct specification tests at the 5% significance level (Table 4). The full serial correlation tests are presented in Table A1 in Appendix A.
To complement the tests in Table 4, we verified that the model fulfills the stability condition (Figure A1), and, by means of the VIF, we verified that the variables in the model were moderately correlated (Table A2).
Because the model was computed using the differentiated series t ˙ and r e r ˙ , as a final test for the unrestricted VAR, we tested the model’s capacity to recover the information of these two series in levels, besides correctly simulating the CMI. The results are shown in Figure 2.
As shown in Figure 2, the model satisfactorily simulates the outbound tourism series and identifies the impact of the international financial crisis on the CMI. Additionally, Figure 2 shows that in all three cases the model adequately simulates the second quarter of 2020, which corresponds to the first wave of the COVID-19 pandemic, consistent with the fact that δ A t presents the highest t-statistic in all three VAR equations (Table 3). These two facts highlight the importance of introducing dummy variables into the model.
To analyze the model results, we first present a generalized impulse response analysis (Figure 3). The results show that there is no statistically significant response of the multilateral real exchange rate to a shock in the misery index (Figure 3a). Equally, this analysis shows that the multilateral real exchange rate is not significantly affected by shocks in Mexican outbound tourism (Figure 3b).
Concerning the misery index, the impulse response analysis illustrates that it is positively affected by the depreciation of the Mexican peso; this effect is statistically significant during the second period and becomes statistically insignificant during the subsequent periods (Figure 3c). Conversely, an increase in the number of outbound tourists did not significantly affect the CMI (Figure 3d).
In the case of outbound tourists, a depreciation of the Mexican peso reduces the number of tourist departures; such an effect is statistically significant during the third period (Figure 3e). Equally, increases in the CMI diminish the number of outbound tourists; this negative effect is statistically significant only during the second period (Figure 3f).
To gain more statistical evidence supporting the impulse response analysis, we performed the Granger causality test (Table 5).
According to the results in Table 5, outbound tourists and CMI do not Granger-cause the multilateral real exchange rate. However, this test, congruent with the impulse response analysis, shows a barely significant relationship at the 5% significance level from the real exchange rate to the CMI. In contrast, the results in Table 5 show that outbound tourism does not Granger-cause CMI, whereas the multilateral real exchange rate and CMI have statistically significant effects on outbound tourism at the 5% and 1% significance levels, respectively.
As a second method to analyze the model’s results, we performed a variance decomposition analysis (Table 6). Concordant with the previous analyses, variance decomposition shows that CMI and outbound tourism do not make a meaningful contribution to explaining variations in the real exchange rate. More precisely, the CMI explains only 0.23% of the real exchange rate variations, whereas outbound tourism contributes 1.06% to explaining the compensated real exchange rate.
On the other hand, the real exchange rate explains 7.02% of the variations in the CMI during the last period studied. Meanwhile, outbound tourism barely explains 0.87% of the variations in the CMI. Conversely, the real exchange rate contributes 18.56% to an explanation of the changes in outbound tourism once the model is stabilized, whereas CMI explains 0.74% of the changes in Mexican outbound tourism flows during the first period and 9.06% during the last period (Table 6).
As the last method to analyze the VAR results, we performed a historical decomposition analysis (Figure 4). In agreement with the previous analyses, the historical decomposition shows that the real exchange rate is not associated with changes in the CMI (Figure 4a). Equally, the historical decomposition confirms that outbound tourism is not related to the multilateral real exchange rate variations (Figure 4b).
Historical decomposition also reveals that the real exchange rate moderately explains changes in the CMI during three periods: the first and longest was 2004–2006, then during 2009, when the Mexican economy was suffering the adverse effects of the international financial crisis, and finally during 2017–2018. However, this relationship became even weaker or disappeared during the rest of the study period (Figure 4c). Figure 4d shows that outbound tourism does not explain the changes in the compensated misery index.
For its part, the real exchange rate explained the changes in Mexican outbound tourism flows during most of the period studied; the historical decomposition reveals that the real exchange rate was particularly important to explain changes in outbound tourism during 2009 and 2012. Additionally, this analysis shows that the real exchange rate weakly explained outbound tourism during the first COVID-19 wave (Figure 4e).
Finally, Figure 4f shows that CMI was a particularly important variable for understanding the evolution of Mexican outbound tourism flows during the international financial crisis; however, the effect of CMI on outbound tourism became weaker during the subsequent periods, including the first wave of the COVID-19 pandemic.

5. Discussion and Conclusions

In this study, we analyzed the effect of the CMI on the number of international tourist departures from Mexico using a VAR ( 2 ) model, which comprises the period 2000Q2–2020Q2. The CMI was used to approximate the effect of poverty on the number of tourists traveling abroad.
The VAR model results indicate that the multilateral real exchange rate exerted a positive effect on the CMI (Figure 3c) and a negative effect on tourist departures (Figure 3e). In both cases, the effect of multilateral real exchange was stronger during the international financial crisis (Figure 4c,e). Since outbound tourism is considered a type of import, the result in Figure 3e is consistent with economic theory, given that the depreciation of the national currency diminishes the demand for imports (Dornbusch et al. 2002). However, tourist departures had no effect on the CMI (Figure 3d).
On the other hand, the results also indicate that increases in the CMI negatively impact the number of tourist departures (Figure 3f). Figure 4f reveals that CMI was particularly important in explaining the number of outbound tourists during the years of the international financial crisis. Additionally, the CMI explained 9.06% of the variations in the number of tourist departures once the model was stabilized (Table 6).
During 2009, there were substantial increases in the Mexican unemployment rate due to the economic slowdowns over the entire North American region, which considerably diminished the production level of goods and services (Díaz-Bautista 2009). Both of these factors are mirrored in the CMI (Figure 2), leading to a reduction in the demand for outbound tourism.
On the other hand, Figure 4f illustrates that CMI was not closely related to the number of tourist departures during the second quarter of 2020. According to Sigala (2020), the COVID-19 pandemic has had profound negative consequences for tourism, travel, and leisure, as nations implemented strategies such as community lockdowns, stay-at-home campaigns, and self- or mandatory quarantine to prevent new contagions. Additionally, according to the World Bank (2020), the pandemic irrupted mobility, as private or public means of transport were reduced drastically.
In addition to the above-mentioned travel restrictions, two types of fears affecting tourism have been identified as results of the COVID-19 pandemic, namely: fear of lack of enough money for living, and fear of traveling due to the possibility of contagion (Gajić et al. 2021). Both of these fears are strongly related to tourism, since tourism demand is directly related to increases in disposable income, particularly when basic needs have been satisfied (Panosso and Lohmann 2012), and the fear of traveling directly impacts the desire to travel, which is among the main factors that sustain tourism (Ramírez 1994). However, fear of traveling can result from two main circumstances: direct experience or indirect affectation by events abroad due to the information received from a reference group; therefore, tourist behavior during crises can be considered heterogeneous rather than homogeneous (Çakar 2021).
According to Cerón (2020), the COVID-19 pandemic has caused numerous potential outbound tourists to change their travel plans for domestic travels, which has also been a response to labor instability. In this sense, according to the same author, it is important that tourist destinations that have traditionally focused on receiving international tourists redirect their strategies to attract a higher number of domestic tourists.
In Mexico, the internal control of the pandemic allowed the country to reach an unusually high position in the ranking of the most visited countries. Effectively, Weiss (2021) reports that Mexico was the third most visited country during 2020, since the country never closed its frontiers, and is among the few nations that do not require a negative COVID-19 test to enter. Moreover, Paredes (2022) reports that Mexico could become the second most visited nation due to the 31.9 million international tourists who visited the country during 2021. However, Paredes mentions that once travel conditions are normalized, Mexico will probably occupy the same position it did prior to the pandemic.
Although the negative effects of the COVID-19 pandemic on tourism seem to be deeper than those occasioned by previous pandemics (Škare et al. 2021), the pandemic has brought a new form of tourism, the so-called “vaccine tourism”, which, according to Şengel (2021), consists of travel by people who cannot get vaccinated in their own country or who do not want to wait for their turn to be vaccinated. However, Şengel points out that this new type of tourism commoditizes vaccination as another tourist attraction. In the case of Mexico, outbound tourism has been revitalized by this new form of tourism, since Guillén (2021) reports that between March and May 2021, trips made by Mexicans to the United States grew substantially because of the COVID-19 vaccine, reaching 905,487, whereas in the previous three months only 380,000 trips to the U.S. were registered.
However, there was a negative relationship between the CMI and tourist departures during the study period (Figure 3f). In light of the model’s results, and given that all three CMI components are related to tourist departures, observing the evolution of the CMI of the main countries of origin of travelers could help to predict decreases in the arrival of international tourists, allowing the implementation of adequate policies to address the decrease in tourism demand.
Different measures to tackle the decline in the tourism sector have been suggested: the main strategies, following the OECD (2020), are restoring traveler confidence, promoting domestic tourism, supporting the safe return of international tourism, and strengthening cooperation within and between countries. The correct implementation of these policies is essential in a context where tourism has undergone one of its deepest crises. Considering that many people have experienced economic difficulties during the pandemic, such policies could be strengthened by tourism service providers by offering attractive all-inclusive packages, limited-time discounts, and, more importantly, offering safe tourist spaces.
Finally, according to Blišt’anová et al. (2021), there have also been numerous precautionary measures undertaken by airports to prevent the virus from spreading, for example: negative COVID-19 tests, the use of face masks, temperature checks, and health declarations. Consequently, according to the International Civil Aviation Organization (2021), there was a sharp reduction in both domestic and international air traffic. The ICAO recommends focusing on providing safety, security, and efficiency. It is very important to mention that the ICAO recommends that all future restrictions implementation to prevent new contagions need to be supported by medical evidence.

Funding

This research received no external funding.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

The data that support the findings of this study are openly available at Mendeley Data at https://doi.org/10.17632/njz7cffzw2.1 (accessed on 15 February 2022).

Acknowledgments

Fernando Sánchez López is a doctoral student from Programa de Posgrado en Economía, Universidad Nacional Autónoma de México (UNAM) and has received a fellowship from CONACYT.

Conflicts of Interest

The author declares no conflict of interest.

Appendix A

Table A1. VAR serial correlation LM test.
Table A1. VAR serial correlation LM test.
No Serial Correlation at Lag h No Serial Correlation at Lags 1 to h
LagLRE StatisticProbabilityRao F-StatisticProbabilityLRE StatisticProbabilityRao F-StatisticProbability
19.0605410.43171.0131430.43199.0605410.43171.0131430.4319
27.5990820.57500.8458040.575217.195780.50970.9578770.5106
38.5675660.47810.9565250.478319.518660.85030.7107300.8515
46.8534860.65240.7610210.652527.888770.83110.7588120.8340
514.218050.11481.6160970.114939.669320.69660.8680850.7045
65.2750740.80970.5828410.809849.082100.66410.8929980.6780
711.770620.22661.3275410.226769.435960.26971.1170550.2933
84.6232730.86580.5097750.865981.642600.20461.1558660.2360
95.7783440.76190.6394610.762085.539620.34371.0514830.3974
1013.434300.14391.5232090.1441102.31290.17671.1532460.2362
117.4117380.59430.8244630.5945109.55610.22001.1036150.3103
1214.982390.09141.7071270.0915122.82870.15601.1366410.2630
Note: Indicates the null hypothesis.
Table A2. Variance Inflation Factors (VIF).
Table A2. Variance Inflation Factors (VIF).
VariableVIF
t ˙ t 1 1.224780
t ˙ t 2 1.139199
r e r ˙ t 1 1.013117
r e r ˙ t 2 1.101008
C M I t 1 1.469277
C M I t 2 1.291614
δ A t 1.175898
δ B t 1.097881
Note: 1 < V I F < 5 indicates moderate correlation. The test does not apply to constants.
Figure A1. Inverse roots of AR characteristic polynomial.
Figure A1. Inverse roots of AR characteristic polynomial.
Economies 10 00081 g0a1

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Figure 1. CMI and tourism.
Figure 1. CMI and tourism.
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Figure 2. Unrestricted VAR simulation (Broyden’s algorithm).
Figure 2. Unrestricted VAR simulation (Broyden’s algorithm).
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Figure 3. Response to generalized one S.D. innovations ± 2 S.E.
Figure 3. Response to generalized one S.D. innovations ± 2 S.E.
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Figure 4. Historical decomposition using generalized weights.
Figure 4. Historical decomposition using generalized weights.
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Table 1. Breakpoint unit root tests, 2000Q2–2020Q2.
Table 1. Breakpoint unit root tests, 2000Q2–2020Q2.
SeriesInnovation OutlierAdditive Outlier
ABCDABCD
ln T −1.499−3.823−3.877−3.195−1.812−3.296−4.282−6.443 ***
ln R E R −2.594−3.676−3.562−3.460−2.646−3.733−3.664−3.376
C M I −5.476 ***−5.520 ***−5.425 **−5.576 ***−5.586 ***−5.520 ***−5.795 ***−6.986 ***
t ˙ −10.94 ***−10.87 ***−10.96 ***−10.06 ***−14.24 ***−11.75 ***−11.08 ***−13.25 ***
r e r ˙ −8.396 ***−8.335 ***−8.270 ***−8.465 ***−8.837 ***−8.835 ***−8.659 ***−8.634 ***
Note: A: intercept only; B: trend and intercept (intercept); C: trend and intercept (trend and intercept); D: trend and intercept (trend); lag length: Schwarz criterion; max. lags = 8; breakpoint selection: Dickey-Fuller min-t; ** and *** denote rejection of the unit root hypothesis at the 5% and 1% significance levels, respectively; symbolization: t ˙ = Δ ln T , r e r ˙ = Δ ln R E R .
Table 2. VAR lag order selection criteria.
Table 2. VAR lag order selection criteria.
LagLRFPEAICSICHQ
0NA5.26 × 10−6−3.641207−3.360982 *−3.529422
134.133634.07 × 10−6−3.899929−3.339480−3.676359 *
217.301313.99 × 10−6 *−3.922859 *−3.082187−3.587505
310.656444.30 × 10−6−3.851494−2.730598−3.404355
44.8655005.09 × 10−6−3.690717−2.289596−3.131793
519.23276 *4.67 × 10−6−3.790916−2.109571−3.120207
68.5977165.16 × 10−6−3.709894−1.748325−2.927400
Note: * indicates lag order selected by the criterion.
Table 3. VAR model.
Table 3. VAR model.
Variable r e r ˙ C M I t ˙
r e r ˙ t 1 0.0172327.7815350.178309
[0.14549][2.45109][1.71666]
r e r ˙ t 2 0.010501−0.287187−0.274804
[0.08629][−0.08804][−2.57475]
C M I t 1 7.37×10−50.439408−0.012036
[0.01658][3.68698][−3.08665]
C M I t 2 −0.0021460.1655400.002851
[−0.51739][1.48898][0.78369]
t ˙ t 1 −0.021513−2.248327−0.220603
[−0.24778][−0.96606][−2.89716]
t ˙ t 2 −0.1164593.366115−0.203880
[−1.32859][1.43263][−2.65214]
I n t e r c e p t 0.0140921.7591710.054928
[0.63756][2.96921][2.83364]
δ A t 0.14412218.23392−1.777181
[3.22700][15.2312][−45.3734]
δ B t −0.005807−0.5180490.115389
[−0.48615][−1.61796][11.0148]
R 2 0.1905720.8203480.971770
Adjusted   R 2 0.0967250.7995180.968497
F-statistic2.03066939.38440296.8990
Note: [ ] t-statistic.
Table 4. VAR joint correct specification tests.
Table 4. VAR joint correct specification tests.
TestStatisticProbability
Doornik–Hansen Normality Test:
Skewness6.99770.0720
Kurtosis3.55160.3141
Jarque–Bera10.5490.1033
Serial Correlation LM test (Rao F-statistic):
No serial correlation at lag h (12)1.70710.0915
No serial correlation at lags 1 to h (12)1.13660.2630
White heteroskedasticity test (no cross terms)102.890.1665
White heteroskedasticity test (cross terms)226.550.2975
Note: Tests at the 5% significance level.
Table 5. VAR Granger causality test.
Table 5. VAR Granger causality test.
Dependent Variable:  r e r ˙
Excludedχ2dfProbability
C M I 0.31707420.8534
t ˙ 1.77643320.4114
All1.99401340.7369
Dependent Variable:  C M I
Excludedχ2dfProbability
r e r ˙ 6.01210920.0495 **
t ˙ 3.99283520.1358
All9.99339640.0405 **
Dependent Variable:  t ˙
Excludedχ2dfProbability
r e r ˙ 9.05943520.0108 **
C M I 9.85296320.0073 ***
All24.7108440.0001 ***
Note: ** and *** denote rejection of the null hypothesis at the 5% and 1% significance levels, respectively; df—degrees of freedom.
Table 6. Variance decomposition (Cholesky).
Table 6. Variance decomposition (Cholesky).
Period Decomposition   of   r e r ˙ Decomposition   of   C M I Decomposition   of   t ˙
r e r ˙ C M I t ˙ r e r ˙ C M I t ˙ r e r ˙ C M I t ˙
1100.000.0000.0000.14299.8570.0000.4520.74698.800
598.7150.2281.0566.89992.2200.88018.5038.99472.501
1098.7000.2371.0617.02592.0990.87518.5669.06372.370
1598.7000.2371.0627.02692.0980.87518.5679.06372.369
2098.7000.2371.0627.02692.0980.87518.5679.06372.369
Note: Cholesky ordering: r e r ˙ , C M I , t ˙ . Only the first three decimal positions are considered in the data.
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