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Rule of law as a determinant of the export performance of Italian provinces

Published online by Cambridge University Press:  06 January 2023

Dario D'Ingiullo*
Affiliation:
Department of Philosophical, Pedagogical and Economic-Quantitative Sciences, University “G. d'Annunzio” of Chieti-Pescara, Viale Pindaro, 42, 65127 Pescara, PE, Italy
Claudio Di Berardino
Affiliation:
Department of Neuroscience & Imaging, University”G. d'Annunzio” of Chieti-Pescara, Via dei Vestini, 33, 66100 Chieti CH, Italy
Iacopo Odoardi
Affiliation:
Department of Philosophical, Pedagogical and Economic-Quantitative Sciences, University “G. d'Annunzio” of Chieti-Pescara, Viale Pindaro, 42, 65127 Pescara, PE, Italy
Davide Quaglione
Affiliation:
Department of Philosophical, Pedagogical and Economic-Quantitative Sciences, University “G. d'Annunzio” of Chieti-Pescara, Viale Pindaro, 42, 65127 Pescara, PE, Italy
*
*Corresponding author. Email: [email protected]
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Abstract

Our article presents an empirical investigation of the relationship between the export performance of Italian provinces and the quality of their local institutions, specifically the rule of law, over the period 2004–2016. According to the results obtained by different econometric approaches (OLS, FE, SYS-GMM), in general a secure and well-defined legal framework – by reducing transaction costs and uncertainty, facilitating capital accumulation and an increase in the firms' scale of production – is associated with better export performance. Interestingly, when the analysis is replicated at the level of the Italian macro-areas (North, Centre and South), the results indicate that the rule of law has a statistically significant and positive association with export performance only in northern provinces, thus suggesting that the effectiveness of this institutional dimension might depend on the level of development of the socioeconomic and institutional features at the local level, i.e. only when a set of suitable economic incentive mechanisms are already in place.

Type
Research Article
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.
Copyright
Copyright © The Author(s), 2023. Published by Cambridge University Press on behalf of Millennium Economics Ltd.

1. Introduction

Regional export is acknowledged as an important engine of regional economic development. Such a foreign component of the regional aggregate demand, in fact, is typically related to the production of goods and services in which the region is specialized, implying output levels higher than the local demand (Aydalot, Reference Aydalot1985; Stabler, Reference Stabler, McKee, Dean and Leahy1970). Acquiring more refined evidence on the determinants of regional export is essential for identifying the factors that affect the competitiveness of local economies and hence their possibilities of growth, considering that the export channel could nowadays be even more strategic for recovering from the negative economic impact of the coronavirus disease 2019 pandemic.

Among the elements that contribute to reinforce regional competitiveness and on which economists tend to agree is the ‘primary’ role of institutionsFootnote 1. The theoretical and empirical literature known as new institutional economics includes interdisciplinary contributions that investigate the channels through which the institutional setting affects economic performance. Institutions, by their functioning, regulate numerous aspects, ranging from the political system to the protection of rights. Their capacity to favour, among other things, regional economic development (Rodríguez-Pose, Reference Rodríguez-Pose2013), innovation (Rodríguez-Pose and Di Cataldo, Reference Rodríguez-Pose and Di Cataldo2015), and entrepreneurship (Agostino et al., Reference Agostino, Nifo, Trivieri and Vecchione2020) is largely recognized. Attention is being paid also to the relationship between institutional quality and export performance (Álvarez et al., Reference Álvarez, Barbero, Rodríguez-Pose and Zofío2018; Méon and Sekkat, Reference Méon and Sekkat2008): better institutions increase trade flows, particularly those related to specialized production, which in turn fosters economic growth (Dollar and Kraay, Reference Dollar and Kraay2003). This is even more important in the increasingly challenging globalized economy characterized by specific comparative advantages, production specialization and the need for continuous innovation (Grossman and Helpman, Reference Grossman and Helpman1990), where the protection of investment outputs (e.g. knowledge and new technologies) and the need for safeguards of trade in rapid exchanges, are crucial factors.

Levchenko (Reference Levchenko2007) and Nunn (Reference Nunn2007) have contributed to the understanding of the mechanisms through which institutions affect trade: better formal and informal institutions are a source of ‘institutional comparative advantage’ that fosters international exchange. A well-developed institutional framework contributes to trade and must be considered an important source of economic growth, development, and welfare (Barbero et al., Reference Barbero, Mandras, Rodríguez-Crespo and Rodríguez-Pose2021). Furthermore, among the institutional dimensions, Nunn (Reference Nunn2007) finds that the rule of law ‘explains more of the global pattern of trade than countries’ endowments of capital and skilled labor combined’ (p. 570). This has supported the development of a theoretical and empirical literature on contracting institutions and trade which demonstrates how the integrity of contracts and their enforcement are crucial drivers of export, as they underpin international trade which, in turn, favours economic growth and development (Haggard et al., Reference Haggard, MacIntyre and Tiede2008).

Anderson and Young (Reference Anderson and Young2006) provide one of the first overview of the consequences of imperfect contract enforcement by showing that enforcement imperfections reduce international trade as much as a tariff on risk-neutral traders. The connection between the ‘capacity to contract’ and trade has been emphasized also in Haggard et al. (Reference Haggard, MacIntyre and Tiede2008 p. 207): ‘some trade can take place in the form of barter or exchanges in which transactions clear immediately, but more complex transactions require the ability to make and receive promises about future actions. This is particularly true of financial transactions, which, from a legal point of view, are primarily contracts.’ Therefore, ‘secure property rights and the capacity to contract over time and space also permit trade and a corresponding increase in the efficiency of resource allocation, including through the development of the financial system.’ Furthermore, incompleteness of contracts creates an incentive for a trader to carry out opportunistic behaviour aimed at appropriating the rights of another trader. This pushes traders (especially exporters who run the risk of non-payment) to carry out expensive ‘monitoring and contract enforcement activities’ that discourage them from international participation because of the high costs associated with these operations (Yu et al., Reference Yu, Beugelsdijk and de Haan2015). In sum, the rule of law, ‘capturing perceptions of the extent to which agents have confidence in and abide by the rules of society, and in particular the quality of contract enforcement, property rights, the police, and the courts, as well as the likelihood of crime and violence’ (Kaufmann et al., Reference Kaufmann, Kraay and Mastruzzi2011: 223), is the most appropriate institutional dimension to focus on to assess whether and to what extent a secure and well-defined legal framework, reducing uncertainty and transactions costs, can be associated with export performance.

This relationship is built on strong theoretical connections between the rule of law, the competitiveness of production, and growth of exports. Theory predicts that regions with better contracting institutions establish sounder economic incentives that virtuously shape economic agents' choices and strategies (Agostino et al., Reference Agostino, Nifo, Trivieri and Vecchione2020; North, Reference North1991): transaction costs and uncertainty are reduced, which favours entrepreneurship, production and exchange; an institutional comparative advantage is gained which yields better export capabilities of some industries –such regions tend to specialize in contract-intensive industries and to export more of those goods the costs of which are sensitive to the quality of institutions (Nunn, Reference Nunn2007); and the accumulation of physical and human capital is favoured (Rodrik et al., Reference Rodrik, Subramanian and Trebbi2004) – which implies greater capabilities of exploiting economies of scale (Aron, Reference Aron2000) as well as technological and knowledge spillovers.

The existing empirical evidence is almost exclusively country-centric (Álvarez et al., Reference Álvarez, Barbero, Rodríguez-Pose and Zofío2018; Méon and Sekkat, Reference Méon and Sekkat2008; Nunn, Reference Nunn2007). However, it is widely shared that important and pronounced institutional differences exists also between the regions within a country (Charron et al., Reference Charron, Dijkstra and Lapuente2014; Nifo and Vecchione, Reference Nifo and Vecchione2014; Rodríguez-Pose and Zhang, Reference Rodríguez-Pose and Zhang2019), and that the role of institutions in affecting regional export performance is still an important and understudied black box (Barbero et al., Reference Barbero, Mandras, Rodríguez-Crespo and Rodríguez-Pose2021). From an intra-national perspective, there are, as far as we know, only two empirical studies that focus on the effect of institutions on regional exports. Márquez-Ramos (Reference Márquez-Ramos2016) assesses the impact of the institutional dimension of trade agreements on exports for Spanish regions over the period 2000–2008. Barbero et al. (Reference Barbero, Mandras, Rodríguez-Crespo and Rodríguez-Pose2021) shows that the quality of government (measured through the European Quality of Government Index) is a fundamental determinant of trade between European regions.

Our paper contributes to filling this gap, being the first attempt to analyse the economic effects of institutions on export performance at a more refined spatial resolution. We empirically investigate whether, during the period 2004–2016, the heterogeneity of the institutional quality (in particular, the rule of law dimension) among the 103 Italian provinces can be related to their markedly different export performance (Beretta et al., Reference Beretta, Del Prete, Federico and Signorini2005).

To this aim, this article makes use of a unique database obtained by matching the regional (NUTS-3) export dataset elaborated by the Italian National Institute of Statistics (ISTAT's ‘Coeweb’ dataset) and the rule of law indicator provided by Nifo and Vecchione (Reference Nifo and Vecchione2014, updated in 2021), built by considering the number of property crimes, the number of crimes reported, trial times, magistrates' productivity, level of tax evasion and irregular employment.

The econometric analysis adopts the System Generalized Method of Moments (SYS-GMM) of Blundell and Bond (Reference Blundell and Bond1998) to determine the effect of the rule of law on Italian provinces' exports during the period 2004–2016 while controlling for a set of determinants of consolidated exports. The choice of this estimator is based on its capacity to take into account identification issues due to reverse causality and potential omitted variables.

In addition, the high territorial heterogeneity within the country of Italy (e.g. Cavalieri et al., Reference Cavalieri, Guccio, Lisi and Rizzo2020) has prompted us to investigate the effects of the rule of law on exports by grouping the provinces into three geographical macro-areas: North, Centre, and South. They are historically characterized, even before the unification of the country in 1861, by different territorial, social and economic characteristics that have prompted differing paths of development (Felice, 2013). Furthermore, the existing literature demonstrates how the effects of institutions on several economic outcomes, among which economic specialization and (therefore) export competitiveness, could vary between geographical areas having substantial socioeconomic and institutional differences (see Agostino et al., Reference Agostino, Nifo, Trivieri and Vecchione2020; Álvarez et al., Reference Álvarez, Barbero, Rodríguez-Pose and Zofío2018). The northern provinces are those favoured by a higher level of technological development, which provides better perspectives for exports (Ciriaci and Palma, Reference Ciriaci and Palma2008). The southern provinces are instead disadvantaged in both export dynamics (Ciriaci and Palma, Reference Ciriaci and Palma2008) and the quality of local institutions (e.g. Daniele and Marani, Reference Daniele and Marani2011), which, for example, can hinder the birth of new businesses, as can happen in this less dynamic market (Rungi and Biancalani, Reference Rungi and Biancalani2019). The latter group of provinces is also the only one that benefits from aid from the national government (with measures drawing from the European Regional Development Fund), such as the Italian Export South Plan 2 (Piano Export Sud 2)Footnote 2, whose aims are the expansion of the export share from southern regions and the adaptation of businesses in numerous sectors to be permanently present in international markets. The export performance of central provinces is in an intermediate position (Sterlacchini, Reference Sterlacchini2001).

This paper is structured as follow. In Section 2 we present the empirical strategy by presenting the data and the econometric model. Section 3 is devoted to the discussion of the results for Italy and the three macro-areas. Section 4 provides the main conclusions.

2. Econometric analysis

2.1. Data and descriptive analysis

As already highlighted, the Italian provinces (NUTS-3) are the economic unit of investigation in our analysis. Before presenting in detail the data used, one preliminary remark is needed about our choice to focus on the provincial level. We are aware that the definition of NUTS is based on the existing administrative units in the European Union (EU) Member States, and that they do not necessarily adequately capture or reflect the geographic reality of economic activity; in fact, complementary statistically defined geographic units, such as Local Labour Markets (LLMs, or Local Market Areas), have been designed in order to rewire territorial systems according to more specific economically functional criteria, and have been used in research related to export performance (see for instance Cainelli et al., Reference Cainelli, Di Maria and Ganau2017; but see also the same authors, 2014, for a contrary argumentation). However, we do believe that, for the aim of this paper, the NUTS-3 level is a more suitable geographical level than that of the LLMsFootnote 3. LLMs are based on the functional criterion of commuting patterns, so they reflect the behaviour of persons employed with respect to their places of residence and the location of their employment. Therefore, LLMs are particularly suitable for the study of phenomena the spatial extent of which is well represented by Travel-To-Work-Areas and commuting flows (Eurostat, 2020; Lasagni, Reference Lasagni2011), which is not the case of the present paper. Rather, some knowledge and technological spillover effects are better captured at the NUTS-3 scale, since LLMs in several cases are too small to take them all into accountFootnote 4 (Cainelli et al., Reference Cainelli, Di Maria and Ganau2014; Brunello and De Paola, Reference Brunello and De Paola2008; see also Bannò et al., Reference Bannò, Giuliani and Zaninotto2015, in which empirical evidence is provided of the existence of several and important knowledge spillovers at the NUTS-3 level affecting export capabilities). The fact remains that if a rule of law indicator could be built for LLMs, an analysis at this territorial level would provide interesting, complementary insights.

2.1.1. Dependent variable

The dependent variable in our analysis is the export propensity (or export performance, equivalently), calculated as the ratio between exports and Gross Domestic Product (GDP) (Méon and Sekkat, Reference Méon and Sekkat2008). Total exports are collected by ISTAT in the ‘Coeweb’ dataset, while the GDP is provided by EUROSTAT. Italian provinces show significant disparities in terms of export propensity (see Figure A1 in the Appendix provided as supplementary materialFootnote 5).

2.1.2. Contracting institutions

The rule of law represents our key regressor and is obtained from the dataset elaborated by Nifo and Vecchione (Reference Nifo and Vecchione2014). Figure A2 in the supplementary materialFootnote 6 shows the spatial distribution of this variable, highlighting significant differences between the North, Centre and South.

2.1.3. Control variables

The often large socioeconomic, industrial and demographic differences at the provincial level lead us to consider a set of structural characteristics of the exporting areas. In fact, a marked socioeconomic heterogeneity within the Italian territorial context has led to the development of areas with different advantages and strengths/weaknesses in terms of provincial export performance (Shin et al., Reference Shin, Agnew, Breau and Richardson2006).

A 1-year lag of the dependent variable (export i,t−1) is included in the analysis, thus accounting for the fact that export propensity can be characterized by some idiosyncratic factors such as for instance: trade relationships, export base, increasing returns in the acquisition of information and knowledge on external markets (Casillas, Moreno and Acedo, Reference Casillas, Moreno and Acedo2012; Van Beveren and Vandenbussche, Reference Van Beveren and Vandenbussche2010), as well as sunk costs incurred to enter new markets (Ayllón and Radicic, Reference Ayllón and Radicic2019).

According to Barbero et al. (Reference Barbero, Mandras, Rodríguez-Crespo and Rodríguez-Pose2021) the relationship between institutions and trade may be affected by the productive structure of a particular place. To take this into account in the analysis, we include two variables that capture the sectoral structure of the exporting province. We consider the degree of specialization, since export performance is strictly related to the competitiveness of the regional production destined to the external markets, which in turn requires the region to reach, in export sectors, production scales which are typically bigger than those needed to meet the local demand. Furthermore, easier intra-industry knowledge spillovers due to the specialization in these few sectors increases the participation of firms in international exchange also due to the lower costs of acquiring information about ‘foreign countries, markets, clients, and competitors’ (Cainelli et al., Reference Cainelli, Di Maria and Ganau2014: 946). Secondly, we include in the model the percentage of total employment in the manufacturing sector (manufacturing employment) because, though a trend to deindustrialization is a concern in almost all the advanced countries (Sarra et al., Reference Sarra, Di Berardino and Quaglione2019), tradeable commodities are predominantly manufactured goods and differences in the level and the trend of the share might still be significant (also depending on the initial conditions) at the local level, with provinces more specialized in manufacturing activities experiencing higher benefits in terms of productivity, export and growth (Dauth and Suedekum, Reference Dauth and Suedekum2016).

We also include a control variable related to the province's level of development of banking (banking), proxied by the provincial share of large bank branches in the total. In fact, the development of the banking and financial systems not only affects the ability to contract over time and space and thus the rule of law (Haggard et al., Reference Haggard, MacIntyre and Tiede2008), but is also a significant boosting factor on the export propensity of Italian provinces (Bartoli et al., Reference Bartoli, Ferri, Murro and Rotondi2014; Beretta et al., Reference Beretta, Del Prete, Federico and Signorini2005, find that this nexus is particularly important for foreign banks and for Italian banks with foreign affiliates, which is a reason for using the provincial share of large bank branches as the control variable) as well as on the first-time export entry of small enterprises (as highlighted by Lo Turco and Maggioni (Reference Lo Turco and Maggioni2017) with regard to the Turkish manufacturing sector).

According to the literature, further elements influence export performance. Human capital, by complementing R&D activities and positively affecting local productivity, has been recognized as an additional determinant of export intensity (Bournakis and Tsoukis, Reference Bournakis and Tsoukis2016). The positive relationship between human capitalFootnote 7 and export intensity is found, mainly at the firm level, for both the manufacturing (Roper et al., Reference Roper, Love and Higon2006) and the service sectors (Conti et al., Reference Conti, Lo Turco and Maggioni2010). However, some papers find that the relationship between export performance and human capital is not statistically significant. This is one of the findings in Eickelpasch and Vogel (Reference Eickelpasch and Vogel2011), once the authors control for unobserved heterogeneity, and also in Brodzicki et al. (Reference Brodzicki, Márquez-Ramos and Umiński2018). Other studies focus on the role of human capital in export by differentiating between intensive (average export value per product) and extensive (number of export products) margins: for instance, Andersson and Johansson (Reference Andersson and Johansson2010) show that cross-regional variations in endowments of human capital influence the latter rather than the former.

Moreover, a greater thickness of foreign networks (for instance through personal linkages) and better information about foreign markets that stem from imports tend to increase the propensity to export (Sjöholm, Reference Sjöholm2003). As a consequence, in our model we control for the share of tertiary educated individuals (graduates) in the resident population and for level of imports divided by GDP (import).

Finally, since being in the inland or on the coast, as well as the transport related infrastructures, are features that may influence export performance at the local level (Bensassi et al., Reference Bensassi, Márquez-Ramos, Martínez-Zarzoso and Suárez-Burguet2015), we include in the model two dichotomous variables which take value one when the province is coastal (coast) and when the province hosts an airport.

In the supplementary material we present the definitions and the detailed sources of our variables (Table A1), the summary statistics, followed by the three macro-areas North, Centre and South (Table A2), and the correlation matrix of the variables included in the econometric model (Table A3). The latter shows that no multicollinearity issues, which could bias the estimation results, are present among the explanatory variables.

2.2. The econometric approach

Based on the background provided in Section 2.1, we assume that the provincial export performance can be modelled as follows:

(1)$$export_{i, t} = \alpha + \beta _1export_{i, t-1} + \beta _2ruleoflaw_{i, t} + \mathop \sum \limits_{\,j = 1}^J \gamma _jX_{\,ji, t} + \mu _i + \tau _t + \varepsilon _{i, t}$$

where the period covered by our dataset is 2004–2016 (T = 13), while the number of Italian provinces (N) is equal to 103. In Equation (1), the share of exports in the provincial GDP represents our proxy of the propensity to export (export), while rule of law is our proxy of the quality of this specific dimension of the local institutions. In order to take into account the persistence of the export phenomenon, a 1-year lag of the dependent variable (export i,t−1) is included among the regressors. The set of control variables, previously described in Section 2.1, is denoted by X ji,t.

We estimate Equation (1) using ordinary least squares (OLS) (model 1) and, as suggested by the Hausman test, a fixed-effects estimator (FE) (model 2).

Yet, the choice of including, among the covariates, the lagged dependent variable forces us to discard a priori static panel approaches such as fixed- or random-effects models. In a dynamic panel data framework characterized, as in our case, by a ‘small T, large N’ structure, these approaches lead to a biased estimate of the coefficient associated with the lagged dependent variable (Nickell's bias, Reference Nickell1981).

Furthermore, the possible existence of reverse causality between export and the rule of law, as well as the high path-dependence of some variables (such as the rule of law indicator at the provincial level) prompted us to adopt the SYS-GMM estimator developed by Arellano and Bover (Reference Arellano and Bover1995) and Blundell and Bond (Reference Blundell and Bond1998). This approach is an extension of the difference-GMM estimator elaborated by Arellano and Bond (Reference Arellano and Bond1991) in which an equation in levels is considered in addition to the equation in first differences, and the various endogeneity issues (related to the presence of a lagged dependent variable, time-invariant individual effects, and reverse causality) can be properly addressed.

The adoption of internal instruments to address the endogeneity issue due to the reverse causality between exports and the rule of law could raise some concerns about the adequacy of the SYS-GMM estimator. However, we verified the validity of all moment conditions (by implementing Hansen's (Reference Hansen1982) J test of over-identifying restrictions, which resulted in being not statistically significant), and the absence of second-order autocorrelation is confirmed (by adopting the Arellano and Bond test, which resulted in being not statistically significant as well), the SYS-GMM proves to be a suitable method for a dynamic panel model (Granato et al., Reference Granato, Haas, Hamann and Niebuhr2015).

Furthermore, to preserve the power of the test of over-identifying restrictions, the number of instruments should be kept lower than a maximum threshold given by the number of units under observation: in our case the 103 Italian provinces (Roodman, Reference Roodman2009). In order to maintain the same lag structure for each specification while complying with this rule of thumb, the lagged dependent variable and the rule of law variables are treated as endogenous and instrumented with their second and third available lags for the differences equation, with the most recent lags of the first differences for the levels equation, and with all the control variablesFootnote 8.

Finally, in the literature just referred to, spatial dependence has taken on a growing role (Rey and Montouri, Reference Rey and Montouri1999) which has more recently led to empirical applications that embed spatial interactions and individual fixed effects (Elhorst et al., Reference Elhorst, Piras and Arbia2010). For these reasons, we control anyway for spatial dependence by estimating, through a Maximum Likelihood estimator (Yu et al., Reference Yu, De Jong and Lee2008), a dynamic spatial autoregressive panel (dySAR) and a dynamic spatial Durbin model (dySDM) including time-invariant individual characteristics and time-period fixed effects. These models can detect if and to what extent spatial spillover effects between neighbouring provinces do exist by including among the set of covariates the spatial lag of the dependent variable at t and t – 1, and only in the dySDM model, the spatial lag of all the other independent variables.

The estimates are obtained by adopting a k-nearest neighbours connectivity matrix (W) that takes into account the 8 nearest provinces for each of the 103 Italian provinces. The choice of k = 8 is suitable for considering the influence of the neighbouring provinces while avoiding unconnected regions (Panzera and Postiglione, Reference Panzera and Postiglione2022). Yet, as a robustness check, Table B1 (supplementary material) shows that the estimates based on different connectivity matrices (values of k equal to 2, 4, and 6) do not show any differences worthy of note.

3. Empirical results

3.1. Italy

In the first step of the analysis, we consider the 103 provinces altogether. We present the results of 5 different models approaches: OLS and FE estimates (model 1 and 2, respectively), SYS-GMM (3), dySAR (4) and dySDM (5).

The results in columns 1–3 of Table 1 show a positive and statistically significant beta parameter of the lagged level of exports, confirming that export performance has some path-dependence: the current export propensity is partly explained by past export propensity.

Table 1. Estimation results for all the Italian provinces

Source: our elaborations. ISTAT, Bank of Italy, and Nifo and Vecchione (Reference Nifo and Vecchione2014) data.

Note: *statistically significant at the 10%; **statistically significant at 5%; *** statistically significant at 1%. Standard errors clustered by provinces are given in parenthesis. Except for the rule of law, all the variables are expressed in logarithm.

As far as our key regressor is concerned, the rule of law in the province is positively related to export performance: it plays a significant and positive role even in model 3, where the coefficientFootnote 9 of the variable is 0.33. Such empirical evidence suggests that the call for greater awareness about the role of this institutional dimension in local economic growth (Haggard et al., Reference Haggard, MacIntyre and Tiede2008) can be extended also to provincial export performance, thus implying that the improvement of the quality of the dimensions underlying the rule of law should be considered as a priority policy target at the local level. Several studies, especially in the field of political science, have highlighted the possible policy levers to enlarge the rule of law base of a region: increasing the quality of contract enforcement (Kaufmann et al., Reference Kaufmann, Kraay and Mastruzzi2011); reducing the degree of tax evasion as well as the likelihood of crime and violence (Głowacki et al., Reference Głowacki, Hartwell, Karunska, Kurczewski, Botsch, Göhring and Priesmeyer-Tkocz2021; Kaufmann et al., Reference Kaufmann, Kraay and Mastruzzi2011); increasing magistrate productivity, which runs through a reduction of trial times (Nifo and Vecchione, Reference Nifo and Vecchione2014); protecting legal certainty, and property rights (Haggard et al., Reference Haggard, MacIntyre and Tiede2008).

As for the control variables, the employment in the manufacturing sector, the import propensity and the level of specialization have in general a significant and positive association with provincial export performance. These results are in line with the findings and the predictions in the previous literature (see Section 2.1). As for the employment share in the manufacturing sector, its connection with better export performance at the provincial level is theoretically well grounded. As Altenburg and Rodrik (Reference Altenburg, Rodrik, Altenburg and Assmann2017: 3) clarify, ‘manufacturing creates particularly large knowledge spillovers which enhance productivity in non-manufacturing activities. […] Most manufacturing goods are easily tradable and can therefore be exported to world markets almost without demand restrictions; this allows countries to reap economies of scale even when their internal market is constrained by low purchasing power and small population size.’

The positive relationship between import and export propensity can be related to the fact that exporting firms that are also import-oriented have some additional strengths (e.g. reduction of cultural barriers, business partners) compared to those that are only export-oriented, and have an experience that drives proactive behaviour (Holmlund et al., Reference Holmlund, Kock and Vanyushyn2007, on Finnish SMEs)Footnote 10. Even productive specialization and banking development show positive and statistically significant coefficients, in line with the existing evidence.

The variable proxying human capital turns out to be not statistically significant in any of the models. As already mentioned in Section 2.1, there are other reported cases with analogous findings in the literature, so this is not entirely surprising. However, there is no doubt that this result is not aligned with the prevailing evidence, and there are several possible explanations for this. One could be related to the different ways of measuring human capital: we used the only proxy variable available at the provincial level, so we could not check alternative options. Another, more substantial, set of possible explanations is rooted in the extreme heterogeneity of both the levels and the dynamics over time of the provincial export level of sophistication. In some provinces, the complexity of exports has increased, implying a change in its sectoral structure towards more knowledge- and human capital-intensive productive activities, for which these local capabilities are the engine of productivity growth and, consequently, of competitiveness in international markets. Some of these provinces are located in the less developed areas of the country and follow a distinct pattern vis-à-vis neighbouring provinces (the so-called ‘islands of complexity’, see Coniglio et al., Reference Coniglio, Lagravinese and Vurchio2016). In other provinces, the complexity of exports has decreased, presumably as a result of the increasing prevalence of exported goods and services characterized by a high intensity of physical capital, the competitiveness of which is not necessarily linked to local knowledge and human capital endowments, but rather to the exploitation of scale economies.

Lastly, the presence of coastal areas is positively associated with export performance (in models 1 and 3), while the coefficient related to the presence of at least an airport is not statistically significant (this might be explained on the grounds that air cargo has a marginal role in Italy's international freight).

In the spatial regressions (models 4 and 5 in Table 1), two features emerge. First, in both models the parameters estimated for the spatial lag of the dependent variable Wexport (ρ), the spatio-temporal interactions corresponding to the spatial lag of the dependent variable Wexport at t-1 (ψ), and the coefficients associated to the spatial lag of almost all the independent variables (Wruleoflaw and WX) are all not significant. These results may be eventually due to the inclusion of both individual (i.e. provincial) and temporal effects, sometimes linked to a reduction of spatial autocorrelation (Benedetti et al., Reference Benedetti, Palma and Postiglione2020). Second, the dynamic spatial panel estimation also confirms stable relationships between export and our set of covariates.

A sensitivity analysis has been carried out (results in the supplementary material) to test the determinants of export propensity in alternative econometric models. We begin by estimating the basic model with the rule of law and then adding: the ratio of imports to GDP, the manufacturing employment, the specialization index, the share of tertiary educated, the financial risk, the two dummiesFootnote 11. As can be observed, the results appear to be quantitatively and qualitatively in line with the complete model.

3.2. Within macro-areas: North, Centre, and South

In this section, we present the results for the northern, central, and southern provinces. As seen in Section 2.1, the institutional conditions are intimately connected to the territorial disparities between the macro-areas. In fact, the consolidated socioeconomic differences across the three aggregates also include differences in the efficiency of the functioning of institutions (Giannola et al., Reference Giannola, Petraglia and Scalera2016; Malanima and Zamagni, Reference Malanima and Zamagni2010). Regarding the possible effects on our topic, the disparities between the macro-areas in the effective quality of local institutions may be reflected in their export performance (D'Ingiullo and Evangelista, Reference D'Ingiullo and Evangelista2020; Lasagni et al., Reference Lasagni, Nifo and Vecchione2015).

In Table 2 we report the more robust results of SYS-GMM estimator for the three groups of provinces, while the estimates of OLS and FE are reported in the supplementary material (Tables A4, A5, respectively).

Table 2. SYS-GMM estimation results by macro-areas (North, Centre, and South)

Source: our elaborations. ISTAT, Bank of Italy, and Nifo and Vecchione (Reference Nifo and Vecchione2014) data.

Note: *statistically significant at the 10%; **statistically significant at 5%; *** statistically significant at 1%. Standard errors clustered by provinces are given in parenthesis. Except for the rule of law, all the other variables are expressed in logarithm.

The evidence shown in Table 2 confirms commonalities, on the one hand, but also marked differences between the macro-areas, on the other, with regard to the factors that influence local exports. The persistence of the export phenomenon over time (Exporti,t−1) is an aspect that emerges in all groups, but it is stronger in the Centre, historically more accustomed to competition in international markets.

Interestingly, there are significant differences between North, Centre and South in terms of the relation between the rule of law and export propensity. The northern provinces are the only ones for which the rule of law shows a positive and statistically significant relationship with export performance (model 6 in Table 2), which adds one more dimension to the contrast between the northern regions and the rest of ItalyFootnote 12. The mechanisms, processes and institutions that secure contract enforcement and reduce transaction costs in a framework of incomplete contracts positively contribute to export intensity where a favourable social and economic background exists. In other words, a secure and well-defined legal framework is a driver of export performance only when a set of suitable economic incentive mechanisms are already in place. More dynamic areas of the country, characterized by more innovative and contract-intensive sectors, benefit the most from formal institutions. This confirms the fact that socioeconomic and institutional features determine the different effectiveness of institutional dimensions across Italian macro-areas (Agostino et al., Reference Agostino, Nifo, Trivieri and Vecchione2020). The less evolved contexts (or, to speak as do Guerrieri and Iammarino, Reference Guerrieri and Iammarino2006, the areas with lower contextual dynamism) that characterize the Centre and the South, instead, might be the reason for the lack of a statistically significant relationship between the rule of law and the export propensity, because of lower quality of the institutions (Boschma et al., Reference Boschma, Marrocu and Paci2016) or the higher presence of inefficiencies (e.g. O'Brien, Reference O'Brien2013) which shape inappropriate underlying economic incentives. The cooperative and civic culture present in more developed areas could make institutions work better (e.g. Huysseune, Reference Huysseune, Hooghe and Stolle2003), and in turn, the rule of law, or more generally, local institutions, can help to explain the gaps in economic performance among the macro-areas (Agostino et al., Reference Agostino, Nifo, Trivieri and Vecchione2020).

As concerns the control variables, the coefficients of import propensity and employment in the manufacturing sector are statistically significant and have the expected sign in nearly all macro-areas and models.

The level of banking development, instead, is positive and statistically significant only in the northern provinces. This might be related to a lower cost of credit and a lower probability of being rationed in the North (Accetturo et al., Reference Accetturo, Albanese, Ballatore, Ropele and Sestito2022; Albareto et al., Reference Albareto, Cascarano, De Mitri, Demma and Rossi2022).

The propensity to export of the central provinces is highly path dependent. This finding might be related to the so called Third Italy, areas of the (north-eastern and) central Italy characterized by crafts-based small firms clustered in specialized industrial districts, the export performance of which have benefited from the increased competitiveness due to the adoption of more flexible production (Shin et al., Reference Shin, Agnew, Breau and Richardson2006).

The South shows a greater role of manufacturing in export performance in the period considered, probably as a result of the recovery occurring for decades due to price competitiveness strategies and low domestic demand (Basile, Reference Basile2001). The export performance of the provinces of the South also relies on having a direct access to the sea, as suggested by the positive and significant coefficient related to coasts. This result could stem from the growing importance of exchanges with Mediterranean countries, which make the South the area with the highest ‘Mediterranean specialization’ (by sea), with great repercussions in many productive sectors (Ungaro, Reference Ungaro, Marrone and Nones2016).

4. Conclusions

We have presented an empirical investigation of the relationship between the export performance of Italian provinces and the quality of their local institutions, with particular reference to the rule of law component. According to the different approaches adopted in our econometric analysis (OLS, FE, dySAR, dySDM, SYS-GMM), in general a secure and well-defined legal framework (with low rates of criminality and tax evasion, higher efficiency of the police and the administration of justice, low weight of the underground economy – all dimensions of the rule of law sub-index) is associated with better export performance. This finding is consistent with the theoretical literature, whereby the rule of law –by reducing transaction costs and uncertainty, facilitating capital accumulation and the increase in the production scale of firms– contributes to the productivity and the competitiveness of the local economy, indirectly improving also its export performance.

For the 103 Italian provinces examined, the rule of law adds to the drivers of export performance already investigated in the literature, the role of which is mostly confirmed even in our analysis: proactivity and openness to international markets –developed through import and past export activities, higher share of the manufacturing sector –which ensures economies of scale and intersectoral spillovers, an outlet to the sea, are all positively associated with export intensity.

Interesting insights come from the analysis by geographic macro-area (groups of northern-central-southern provinces), which confirms significant disparities between the North and the less developed rest of the country, even in terms of the rule of law. The SYS-GMM results indicate that the rule of law has a statistically significant and positive association with export performance only in the northern provinces, thus suggesting that the effectiveness of this institutional dimension might depend on the level of development of the socioeconomic and institutional features at the local level. In fact, the results by area may have been conditioned by structural aspects rooted in the Italian context. Large disparities characterize several ‘economic and social indicators across different regions of the country, which testify the multifaceted nature of the Southern lag’ (Nifo et al., Reference Nifo, Scalera and Vecchione2017: 1050): a significant heterogeneity characterizes also the local economic vitality, which varies greatly between the more export-oriented northern provinces and the southern ones, with the Centre in an intermediate position.

These considerations offer room for further investigation, especially in order to obtain a better understanding of the reasons why, and the mechanisms through which, the rule of law is relevant for northern provinces and not for the others. There are several possible explanations from the theoretical point of view.

The effectiveness of the rule of law might be affected by the quality of other institutional dimensions, such as the ‘government effectiveness’ or the ‘regulatory quality’: for instance, the local endowment of social and economic facilities, as well as the business environment, are aspects that, complementing the rule of law, determine its actual importance.

Another possible reading of this evidence is that the shortcomings of a context like the Italian one, characterized by an often non-transparent and anything but simplified legislation, might be compensated for by the local presence of established social norms, relational capital, and interorganizational relations among independent firms (Rus and Iglič, Reference Rus and Iglič2005), all features that might give substance to the rule of law by enhancing the level of trust perceived by entrepreneurs and consequently the incentive to invest and innovate.

On the other hand, given that the goods and services exported by northern regions are characterized by a higher level of ‘sophisticatedness’ –so that the related sectors are typically more contract-intensive– compared to the other macroareas, it is perfectly reasonable that the rule of law constitutes an institutional comparative advantage that produces better export capabilities in the north of Italy.

Understanding in detail which specific mechanisms are at work is a necessary step to make more granular and sounder policy recommendations that go beyond a general reference to the need to improve the quality of the local institutions. Furthermore, as clarified above, further research is needed also to refine the empirical analysis, to probe more deeply into the issue of endogeneity, and to better identify the causal nexus between the dependent and independent variables.

Supplementary material

The supplementary material for this article can be found at https://doi.org/10.1017/S1744137422000480

Footnotes

1 Institutions, according to the definition proposed by North (Reference North1991), represent the ‘rules of the game in a society or, more formally, are the humanly devised constraints that shape human interaction’ (p. 97). More specifically, they consist of both formal and informal rules (norms, laws, statutes, regulations, social norms, conventions, and traditions) that act as incentives which promote certain social interactions.

3 Besides the following economic arguments, the creation of a ‘statistical-data based’ bottom-up ‘rule of law’ indicator for LLMs would be unfeasible, since none of the data underlying the elementary indexes used to build the ‘rule of law’ indicator are available at either the LLM or at the municipality level.

4 Three additional considerations might, in our opinion, further support the choice of the NUTS-3 level: (1) one of the components of the rule of law indicator is the estimation of irregular employment, and it would be paradoxical and inconsistent if the empirical evidence were derived on the basis of a geographical breakdown based on mobility flows by (only) regular workers (i.e. which in itself neglects the essence of one of the elementary indexes); (2) the rule of law's elementary indexes related to the actions of the judiciary in the territory (number of crimes, duration of trials, magistrate productivity) imply that the key explicative variable in our paper, and the corresponding policy area, have a territorial extension coinciding with the geographic competence of court districts. In Italy, there are approximately 140 judicial districts (the general rule is one for each provincial capital), the number and geographic coverage of which are thus much better approximated by provinces (NUTS-3); (3) the adoption of the NUTS-3 level allows for a full comparability with the findings of other papers in the literature on the economic effects of institutional quality.

6 In the supplementary material a more detailed description of the rule of law index calculated by Nifo and Vecchione (Reference Nifo and Vecchione2014) can be found.

7 Measured in several ways, such as the average years of schooling of the population, the highly educated labour share, the number of workers with at least three years of university education employed, labour cost per employee.

8 For the three macro-areas, given the lower size of the groups (46 provinces in the North, 21 in the Centre, and 36 in the South), we have used only the second lag of the instrumented variables in combination with the ‘collapse’ option of STATA 14 to further limit the number of instruments for the first differences equation, while we keep the same lag structure for the level equation.

9 It must be noted that the coefficient associated with the rule of law is higher in the SYS-GMM model than in the OLS one, which raises a possible concern that some of the internal instruments may be not valid to address the alleged issue of reverse causality between the rule of law and exports.

10 Small and medium enterprises.

11 In the supplementary material, we also present the correlation between the residuals and the predicted values of the dependent variable (see Figure D1).

12 Following the suggestion by one of the anonymous referees, we have carried out a supplementary analysis in which macro-areas which provinces belong to are controlled for, in order to verify whether the results of statistical significance of the rule of law regressor in the regression involving all of the provinces (Table 1) and lack of statistical significance of the same variable for Centre and South in the regressions with separate macroareas (Table 2) could be explained by the lack of a macroarea control in the regression involving all of the provinces. If that were the case, this would mean that the rule of law variable in the regression with all of the provinces presented in Table 1 would be capturing a positive effect on the export actually due to other features (omitted, i.e. not controlled for) which in the North are correlated with the rule of law. Therefore, we extended the model adding alternatively a dummy variable which takes value 1 if the province belongs to the North or a categorical variable taking value 1 if the province belongs to the North and 2 if it belongs to the Centre. The results obtained in both cases are in line with those in Table 1 (these additional estimations are available from the Authors upon request), which strengthens the hypothesis that it is precisely the institutional quality of the province, rather than its being a northern one, to contribute to its export performance.

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Figure 0

Table 1. Estimation results for all the Italian provinces

Figure 1

Table 2. SYS-GMM estimation results by macro-areas (North, Centre, and South)

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