The development of cities supported by communication and information technologies

This research aims to analyze the relationship between economic, social and digital performance in cities of different sizes in Brazil. Data provided by the following official agencies: National Treasury Secretariat, National Mayors' Front and Risk Classification Agency were used. Pearson's correlation was used to identify the influence of digital, social, and economic performance variables in cities divided into groups based on the number of inhabitants. There was a strong correlation between Communication and Information Technologies and social and economic aspects. The greater the needs of cities, the more intense is the use of Communication and Information Technologies, reinforcing the establishment of the perspective of smart cities.


Introduction
The question of how social arrangements contribute to the performance of cities has attracted the attention of many researchers interested in understanding the factors involved in the best performance of cities and the indicators used to measure this performance (Amankwaa & Blay's, 2018). With the establishment of standards of municipal management as benchmarking, city managers can identify strategic plans and activities that generate social and economic development for citizens. The positioning of cities as centers of development, through superior performance indicators (with emphasis on science) makes them attractive to companies and individuals (Giffinger & Gudrun, 2010), and helps retain economic and social actors who are already in the locality.
Cities should not be analyzed only in terms of the problems they present, but also in terms of the social development potential of the people who compose them. For Prado-Lorenzo, García-Sánchez, and Cuadrado-Ballesteros (2012) the analysis of cities is not limited to negative factors such as pollution, crime, congestion, among others; for them, the understanding of cities must establish an approach that incorporates the sources of development and innovation, which amalgamate the poles of economic, social, environmental, and cultural incentives, beneficial to society.
The behavior of cities is analyzed under different conceptual approaches, which are still in the consolidation phase. As indicated by Tanguay, Rajaonson, Lefebvre and Lanoie (2010) and Ahvenniemi, Huovila, Pinto-Seppä and Airaksinen (2017) despite the existence of common elements, in the conceptual propositions of the cities, there is a distinction in the approaches of the economic, social, environmental, and technological variables presented in the conceptual consolidation. The study by Fu and Zhang (2017) orders a thematic evolution of research on cities. In the study, the authors identified that over time there has been an alternation of concepts used in city studies, with emphasis on the terms eco-city, green city, sustainable city, habitable city, city of knowledge, ubiquitous city, low carbon city, information city, and smart city -more recently added to these concepts -that of sanctuary city proposed by Ridgley (2011) and resilient city analyzed by Ribeiro and Gonçalves (2019).
A recent study by Machado Jr., Ribeiro, Pereira and Bazanini (2018) found that municipal managers in Brazil develop monitoring and action plans supported by Communication and Information Technologies (ICT) and socioeconomic indicators, characterizing management in perspective of the smart city concept. It is worth mentioning that recent studies address the association of the concept of smart cities with that of sustainable city, proposing the concept of smart and sustainable cities (Duvier, Anand & Oltean-Dumbrava, 2018;Bibri, 2018a;Bibri, 2018b;Ibrahim, El-Zaart & Adams, 2018;Yadav, Mangla, Luthra & Rai, 2019;Martin, Evans, Karvonen, Paskaleva, Yang & Linjordet, 2019). Although the subject of smart city is still under construction, Kummitha and Crutzen (2017) consider it an approach that can bring about positive social changes through the adoption of ICTs. The establishment of smart cities involves the provision of better services and digital access through the adoption of digital and technological resources to improve the economic conditions of the city; thus, the relevance of digital access matters to knowledge in cities is positioned as an element of interest to society. In this context, the objective of the present study is to analyze the relationship between economic, social, and digital performance in cities of different sizes in Brazil.
This introduction aims to present the research topic and justify the adequacy of the proposed research. In the sequence, the other sections present the theoretical framework that supports the research and the methodology adopted for the collection of data, the presentation and analysis of the results obtainedwhich in the sequence are discussed together with the elaborated theory -and finally, the conclusions of the research are presented.

Theoretical framework
In the early 1960s, Webber (1964) proposed the concept of city as the center of citizen relations to be replaced by a new configuration dominated by social networks and supported by relationships with virtual connections. From Webber's point of view, ICTs have a greater influence on the establishment of social networks than the geographic space in which these networks are located; thus, cities would have little influence on the ordering of social arrangements, which would be established through the influence of common interests and shared virtually. ICTs incorporate communication systems, information processing approaches, and data collection automation to systematize and automate planning and management (Faheem, Shah, Butt, Raza, Anwar, Ashraf, Ngade, & Gungor, 2018). The internet of Things (IoT), Big data, Blockchain, and Artificial Intelligence (AI) are some of the resources that make up ICTs.
Although the concepts proposed for smart cities are not yet consolidated, two perspectives stand out. The first deals with the relevance of ICTs for the provision of adequate infrastructure (Hollands, 2008), and the second deals with the importance of social development to offer the best possible quality of life (Bakıcı, Almirall & Wareham, 2013;Heaton, & Parlikad, 2019). These approaches are not mutually exclusive, but synergistic.
Adopting the approach presented by Webber (1964) and contextualizing the current advances in ICTs and society, it becomes possible to identify in the studies by Amankwaa andBlay's (2018), Di Dio et al. (2018), Zong and Zhang (2019) and Clarry, Imani and Miller (2019) the influence of smartphones in the establishment of new spatial and social contexts in cities. The simplicity of using smartphones, thanks to their portability and connectivity, allows virtual access with instant and unlimited effect. According to the authors, the benefits of using smartphones are closely related to the concept of smart cities in the organization of smart urban planning. City managers must provide creative and inclusive urban spaces, in which the services provided are of high quality and supported by ICT systems. In this sense, Amankwaa and Blay's (2018) observe that the city of London builds a behavior of individuality on the part of its inhabitants associated with the trends observed to establish virtual social arrangements.
The ICT systems, in which smartphones are incorporated, have established a new paradigm for public managers. This paradigm is in line with the approach of smart cities under construction, and supported by intricate social changes to ICTs, as proposed by Kummitha and Crutzen (2017). Thus, the focus of the municipal manager is on expanding the city's competitiveness and attractiveness, expressed in terms of the provision of socioeconomic and environmental improvements supported by an adequate logistical structure (Graham & Marvin, 2001). The management of a city allows to improve the standard of living of its inhabitants using ICTs. Neirotti et al. (2014) present a perspective in which the qualification of human capital of a municipality enhances access to a smart city, thus, the combination of intensive ICT employment with people's social advancement contributes to its establishment (Kummitha & Crutzen, 2017).
Initiatives by municipal managers who seek to position their locations as smart cities can be seen in various regions of the world. These initiatives are usually proposed by municipal managers and supported by innovative technological solutions, which address current and potential problems, large or small (Bibri, 2018a;Malik, Sam, Hussain & Abuarqoub, 2018;Bouzguenda, Alalouch & Fava, 2019). Efforts to identify and publicize the actions developed by municipal managers can be seen at events such as the IBM Smarter Cities Challenge, which aims to analyze and disseminate innovative solutions supported by ICTs. Wiig (2016) developed an analysis within the Smarter Cities Challenge to identify cities that made significant urban changes guided by a logical and targeted treatment of the available data, thus positioning themselves within the smart cities approach. However, the author criticizes cities that offer digital changes, which do little to mitigate existing social inequalities and, instead, aim to present a contemporary self-image and to engage in the global economy. This approach by Wiig (2016) is still controversial, since the study by Weiss, Bernardes, and Consoni (2015) concluded that public services are more efficient in cities that have implemented services incorporating innovations supported by ICTs.
It is worth mentioning, that the Internet of Things (IoT) is positioned as an important factor in the process of improving people's quality of life through the integration of technologies and infrastructure in the consolidation of the concept of smart cities (Khan, Babar, Ahmed, Shah & Han, 2017;Bibri, 2018a;Silva, Khan & Han, 2018;Malik, Sam, Hussain & Abuarqoub, 2018;Rathore, Paul, Hong, Seo, Awan & Saeed, 2018).
Based on the discussion of the benefits of using ICTs to establish the concept of smart cities, Mora, Bolici and Deakin (2017) point out in their literature review, that studies carried out in the context of smart cities are more focused on technological aspects, thus requiring greater attention to factors such as social intelligence, cultural artifacts, and environmental attributes. In this perspective, ICTs are considered relevant, but they must be analyzed in the social, cultural, and environmental context of the community. Thus, ICTs have the potential to help municipal managers to develop innovative solutions for the most diverse social problems, as proposed by Gil-Garcia, Pardo, and Nam (2015). It is worth mentioning, that the focus of attention of smart cities must be directed towards citizens and smart communities. It is therefore necessary to use the city resources to provide a better quality of life for people.
An aspect underlying the concept of smart cities is the expansion of the responsibility of municipal managers, as highlighted by Ultramari, Silva, and Meister (2018). The expansion of the managerial performance spectrum incorporates a greater responsibility associated with the demands of the people of a city. Efforts to provide better conditions for citizens are considered objectives to be fulfilled by the municipal manager. In this way, needs that were previously interpreted as latent, now have the status of demands to be met by municipal managers, who commit themselves to solving social problems, incorporating the approach of smart cities.
A relevant perspective of the contribution of the concept of smart cities, that is not related to ICTs is presented by Grimaldi, Fernandez, and Carrasco (2019). The authors address the social importance of recovering regions with a large volume of closed stores, interpreted as decertified. The authors develop an approach that prioritizes the opening of new stores between empty locations based on business and social criteria, thus enabling the urban and social recovery of the region. Then, it is identified that initiatives led by the private sector can meet business and social objectives (Grimaldi, & Fernandez, 2017;Harris, 2015;Ziehl, & Oßwald, 2015).
Smart cities are structured through the combination of ICT facilities, with the presence of qualified workers attracted by a better quality of life. This combination of skilled labor and ICT enhances the economic development of the locality, mainly in activities related to technology and knowledge. The research by Adler, Florida, King and Mellander (2019) that analyzes cities and high-tech startups, indicates that local diversity and specialization, combined in a geographic space, enhance innovation and economic development. These researchers observed the emergence of high-tech business clusters and ecosystems, corresponding to two geographic profiles. The first profile consists of a small number of global cities and metropolitan areas, and the second consists of a high concentration of activities in small neighborhoods within these same metropolises. The city of London, as observed by Foord (2013), fits this profile as it is contextualized within the geography of creative and digital economies. According to the author, the current London business cluster is made up of small and medium-sized companies, which are organized in networks with fragile ties, characterized by vitality in their activities, and identified with urban economies.
The concentration of companies and knowledge of high technology in global cities, results from the easy access to complex productive chains, and the diversity of specialized labor markets (Scott, 2006;Kong, 2020). In addition, Evans (2012) and McCann and Van Oort (2019) include, as collaborative elements, the existence of public cultural institutions and networks of artistic organizations that encourage the so-called soft innovation, which is characterized as intelligent, intuitive, and valuable, and which anyone in an organization can imagine (Stoneman, 2010;Cockayne, 2016). This context is important, as it allows the reduction of transaction costs in creative work, which is developed in projects organized by short-term alliances, among individual creative specialists (Pratt, 2006;Taylor, 2015;Haans & Van Witteloostuijn, 2018 (2019) emphasize the importance of openness to new actors in creative processes as a counterpoint to the fixation of various creative skills in certain urban places. The next section presents the methodology used in the present research.

Research methods
The documentary research technique was used employing reports and yearbooks published by the Brazilian government. The data were provided by the federal government in the form of seventeen indicators of effective performance in Brazilian municipalities, and later consolidated and released by the Instituto Brasileiro de Geografia e Estatística (IBGE). The data are based on prior consolidation made available in a report by Austin Rating, a risk rating agency that grouped the indicators released by Brazilian municipalities into categories. The present study focuses on digital, social, and economic indicators.
The methods and techniques used to obtain the data are based on approaches carried out in similar research. Among the studies that adopt a similar methodology, the following stand out: (i) the analysis of 287 Chinese cities supported by a federal government yearbook (Yang, Xu & Shi, 2017); (ii) the use of population survey data developed in the UK government (Webb, Hawkey & Tingey, 2016); and (iii) data collected in local policy reports, local planning documents, and specialized magazines and maps of the city of Novi Sad in Serbia (Mrkajić & Anguelovski, 2016).
This research was developed in a four-stage dynamic: (1) to establish which institutions disseminate relevant information about cities, (2) to identify and select relevant indexes for the comparison process, (3) to identify cities relevant to the composition of groups of comparison, and (4) selection and application of mathematical (statistical) models to identify differences between groups. More details of each stage are presented below.
Stage (1). In Brazil, municipalities send their performance information to different federal agencies. Since the imposition of the so-called transparency laws, these bodies have been providing information to society; some of them are (i) the Secretaria do Tesouro Nacional (STN), which systematically receives and supervises the information provided by the municipalities, who in turn are responsible for carrying out the surveys; (ii) the Frente Nacional de Prefeitos (FNP), which generates a diagnosis of the financial situation of the municipalities, the results obtained by this institution were published in the 'Multicidades' report; and (iii) Risk Rating Agency -Austin Rating -, whose report is based on official data to develop an analysis of the best cities in Brazil. The survey data was used to consolidate the information disseminated over a ten-year analysis period, from 2007 to 2016. The average values were used to eliminate any nonrandom variations in performance.
Stage (2). In view of the amount and diversity of available municipal information, this research selected the following variables: i) three digital performance indicators: Digital Indicators, Digital Mobility and Digital Knowledge Access; ii) Social indicator, formed by: Quality of Life, Education, Health, Housing, Social Responsibility, Attention to Young People, and Human Development; iii) Economic Indicator, formed by: Life Standard, Labor Market, and Foreign Trade; iv) General Indicator that in addition to aggregating the social and economic indicators already presented, also incorporates the following fiscal indicators: Funding Capacity, Budget Execution, Application: Health and Education, Financial Sustainability.
Stage (3). In this stage, Brazilian cities were divided into three groups according to the number of inhabitants: (i) small cities (municipalities with up to 50,000 inhabitants); (ii) medium-sized cities (municipalities with 50,000 to 200,000 inhabitants); and (iii) large cities (municipalities with more than 200,000 inhabitants). Brazil has 5,570 cities (including the Federal District of Brasília) categorized according to the number of inhabitants. Due to the large number of cities involved, and because they are not divided equally in terms of number of inhabitants, the study analyzed only the 50 cities with the best indicators in each group (small, medium, and large), these cities were surveyed for each indicator, and this resulted in a total of 181 cities selected for analysis. This approach was adopted to establish uniformity in the development of correlation analyzes.
Stage (4). In this phase of the research, a statistical analysis of the data collected in the previous steps was carried out. The analysis techniques were chosen according to the proposed objective to expand the knowledge of the area. The data were inserted and analyzed in a database prepared by the authors, containing the seventeen indicators presented in stage (2) originating from three different sources indicated in stage (1) made up the analysis data. It is worth mentioning that the indicators used were obtained directly from the research sources, this experiment did not perform any composition to establish a new indicator.
The analysis was performed only for Brazilian cities, which is a limitation of this study; however, with the necessary caveats, the results can be applied to other contexts.

Results
This section presents and analyzes the data collected for this study. It should be noted that many factors can influence cities positively or negatively in their goal to become smart. These factors can act in isolation or be influenced by other variables. This research analyzes the relationship that digital indicators have with social, economic variables and within the scope of the general sum of the indicators. Table 1 shows the correlation indexes for these variables, segmented by city size.
The Pearson correlation values in Table 1 indicate the existence of a strong relationship between the digital indicators and the social, economic, and general indicators. Although all groups show a strong correlation, the strongest association is in the mediumsized cities. In Figures 1, 2 and 3, the dispersion of the digital indicator is analyzed against the other indicators. Figure 1 shows the dispersion of the digital indicator in relation to the social indicator. Figure 1 shows that in all three groups there is an adequate dispersion of the digital indicator in relation to the social indicator. Big cities have higher values for social indicators compared to medium-sized cities, which in turn have values higher than those of small cities. Thus, although big cities have a lower Pearson correlation value, their social indicator performance is high in relation to the other groups.
In the next link in the analysis chain, Figure 2 shows the dispersion of the digital indicator in relation to the economic indicator. Figure 2 shows that the digital indicator presents an adequate dispersion in relation to the economic indicator in all three groups. It is notable that big cities have higher values for economic indicators than medium-sized cities, which in turn have values higher than those of small cities. Thus, although large cities have a lower Pearson correlation value, their economic indicator performance is high in relation to the other groups.
Concluding the Pearson correlation analysis chain and the dispersion of the indicators, Figure 3 shows the dispersion of the digital indicator in relation to the general indicator.    Figure 3 shows that the general indicator presents an adequate dispersion in relation to the digital indicator, as is the case of the social and economic indicators in the three groups. Figure 3 consolidates the superior performance of large cities in relation to the medium ones, and of the medium ones in relation to the small ones. Thus, the superior performance of the indicators in large cities in relation to the other groups is evident, although Pearson's correlation is lower. Finding a lesser Pearson correlation between indicators in large cities can be justified by the fact that large cities have a greater diversity of factors operating in society. Individuals in large cities are subject to a greater volume and diversity of economic activities and have a broader set of cultural, artistic, and sporting options; the correlation of digital indicators with other indicators is, therefore, of slightly lower intensity.
Brazil is a large territory marked by significant differences in economic activity. Thus, the geographic location of a city has the potential to be a determining factor in its performance in the indicators analyzed in this study. The most recent demographic census (IBGE, 2018) indicates that Brazil is composed of 26 federal states and 5,570 cities The Federal District, also known as Brasilia, is the country's capital, and despite having the size of a city, it holds the status of a State of the Union and elects representatives to the country's national congress. Figure 4 shows the dispersion of the following indicators: digital access to knowledge, digital indicators, and digital mobility of the cities distributed by the states of the Union that form Brazil.  Table 2 shows the Brazilian states by region, the number of municipalities, the number of inhabitants, and the average number of inhabitants per municipality. It also shows a total of 181 cities for the 450 indicators analyzed, establishing an average of 2.5 indicators per city. It should be noted that the main factor of analysis is the performance of the indicator, not the city; therefore, some cities perform well on just one indicator. This context justifies the inclusion of 181 cities in the analysis, instead of just 150, which would be the result if the same cities always obtained the best performance in all indicators. A city can perform better for one or more indicators, limiting itself to the three considered in the analysis. Thus, an average of 2.5 digital indicators shows high performance of these cities in meeting the digital indicators in relation to other cities in the country. Table 2, referring to the period from 2007 to 2016, shows that the states of the South and Southeast regions have the highest concentration of municipalities with the best performance in digital indicators. The state of São Paulo has 88 municipalities (13.6% of the total) with at least one superior digital performance indicator; in the second position, the state of Santa Catarina has 30 municipalities (10.2% of the total); in the third position the state of Rio Grande do Sul with 29 cities (4.8% of the total), and in the sequence the state of Rio de Janeiro with four cities (4.2% of the total). It is also possible to observe six states with less participation of cities with digital indicators. It should be noted that, in the survey, 16 states did not have cities with the best digital performance indicators in the country. The city of Brasilia (Identified in Table 2 as 'Distrito Federal') had 100% participation, which is explained by the fact that it is a differentiated city and presents good performance in the three digital indicators under study.
The states with the highest concentration of cities with superior performance in digital indicators are geographically close, indicating the existence of a region potentially more favorable to the emergence of smart cities. Figure 5 shows the distribution of the 450 superior digital performance indicators by state.  The data show differences in the performance of digital indicators according to the size of the city and in relation to the location in the Brazilian territory. The exploratory nature of this study did not allow the establishment of casual relationships between the indexes analyzed. In this context, an individualized analysis of city performance indicators is established as an opportunity for future studies, because in this approach it will be possible to identify the cause-andeffect relationship between the indicators. The next section discusses that this information is in line with the theoretical structure of this study.

Discussion
The research carried out by Webber (1964) and Amankwaa and Blay (2018) propose that ICTs establish the possibility of understanding society by organizing itself no longer in terms of its geographical position, but in terms of relationship networks. However, the data analyzed indicates that a limited set of cities has good digital indicators. Cities, which present this good performance of digital indicators, position themselves as attractive to people whose activities are supported by ICTs. This fact potentiates the concentration of people in large cities for having better digital indicators, as evidenced in this study, thus corroborating the approach of Kummitha and Crutzen (2017) and Graham and Marvin (2001), in which ICTs are an element of attractiveness of a city, and consequently the possibility of establishing the place as an smart city.
The aspects related to ICTs are relevant to the contextualization of smart cities, as proposed by Mora, Bolici and Deakin (2017); however, as highlighted by Wiig (2016), in smart cities, ICTs must be considered as an element that contributes to the solution of existing social inequalities. The strong correlation between digital indicators (an important component of ICTs) and social and economic indicators shows that ICTs have the potential to generate improvements in society. It is important to note that there is still no data to indicate whether digital indicators influence social and economic factors, or whether the relationship between cause and effect is reversed. Cities with better social and economic indicators have greater attention and investments in digital indicators, thus favoring ICTs. Regardless of the discernment of who is the cause and who is influenced, as this relationship may not be distinguishable, the relevant fact is that they are related to each other and that ICTs can provide beneficial innovations for society. As Bakıcı et al. (2013) observe, andas Gil-Garcia, Pardo andNam (2015) emphasize, these factors are synergistic, not excluding. In this context, the responsibility of municipal managers for planning and managing the city's digital performance increases with the incorporation of ICTs, as pointed out by Ultramari, Silva and Meister (2018).
A different perspective of this research is the identification of a correlation between digital indicators and economic indicators. This finding is in line with the conclusions of the research by Adler et al. (2019), in which the greatest emergence of high-tech startups in corporate clusters in global cities in metropolitan areas is observed, and in some cases in small districts of these localities. The approach by Adler et al. (2019) is confirmed and expanded by the results identified in this research. However, the data obtained make it possible to expand performance and knowledge of city management as it was identified that large cities have the best digital social and economic indicators. Thus, geographic space, particularly in some large cities, has an influence on the way ICTs combine with economic factors, as observed in the city of London by Foord (2013). It is also noteworthy, that other factors may influence the establishment of high-tech clusters in large cities. For Scott (2006), this concentration results from easy access to complex production chains and the diversity of specialized labor markets. Additionally, for Evans (2012), public cultural institutions and networks of artistic organizations work collaboratively in the constitution of these clusters. In this way, it is evident that intrinsic characteristics of large cities collaborate in obtaining better performance in digital and economic indicators, as well as in the expansion of the regional economy.
This study focuses on Brazilian cities, and in this perspective, it was observed a high concentration of cities with good digital indicators in the southeastern and southern regions, with emphasis on the state of São Paulo and surrounding states. Thus, the state of São Paulo, and from a broader perspective the states of Santa Catarina, Rio Grande do Sul and Rio de Janeiro (all located nearby in the south and southeast), can be seen as potential geographic spaces for the emergence of global smart cities. It is worth mentioning that the state of São Paulo has a particularly active economy, having historically positioned itself as a center for internal immigration. As a result, the state of São Paulo has a greater concentration of economic activity and a greater variety of employment opportunities. These aspects potentially favor the emergence of smart cities, as the region is more commercially oriented, as MacGregor (2012) points out, and is more open to new actors, as noted by De Propris and Hypponen (2008). The following section presents the conclusions of this study.

Conclusion
The process of public management of personal needs, associated with the establishment of attractions for social arrangements with specific demands, is positioned as complex because it involves many variables to be met. However, the analysis of some of these variables makes it possible to identify trends and positions made by public management, to establish attractive places of living through the resources of information and communication technologies.
The first aspect to be highlighted in the research is the identification that the good performance of the digital indicators results in a better social and economic performance in the city. This correlation explains the importance of financial resources in the development of an urban architecture that finances ICTs, and still provides better performance in social indicators. Therefore, the concept of smart cities must consider performance in terms of economic indicators since they are important for the incorporation of ICTs in municipal management, as well as for the financing of social policies that provide a better quality of life for people. It should not be concluded that only cities with good economic performance become smart cities; instead, we can infer that urban management supported by the smart cities approach results in better local economic performance.
Large cities have performed better in economic and social indicators than medium and small cities, which makes them better platforms for the development of activities supported by ICTs. It this perspective, a large city can establish a more conducive environment to become a smart city. Considering the characteristics of large cities, such as large geographic dimensions, more complex transport logistics, longer commuting times and greater concentration of people, the need for greater planning and actions of public management is identified to solve these problems. This greater pressure on public management favors the introduction of Information and Communication Technology solutions aimed at solving people's needs.
The benefits arising from the use of ICTs by the cities are extended to all individuals who live in the locality. However, people and companies that work directly with ICTs tend to choose settling in the cities that best offer this resource, thus enjoying better social and economic conditions. The proximity of people and companies in places with a better offer of ICT occurs more sharply in activities developed in a virtual environment.
The analysis of the relationship between ICTs and people establishes the reflection of an interesting paradox. Although ICTs facilitate communication and relationships between people without the need to be physically close, cities that offer better ICTs are in a favorable position to attract people to a location. This attractiveness results from a better offer of quality of life, and more opportunities for work and business. The cities that offer the most ICTs, attract the people who depend on them the most. Thus, the ICTs instead of expanding the possibilities of housing places, act as a pole of attraction for the people who depend most on it.
This analysis of Brazilian cities shows a greater concentration of cities with good digital indicators in the states of São Paulo and Santa Catarina. Expanding the perspective of the analysis, cities in the Southeast (which includes the state of São Paulo) and the South (which includes the state of Santa Catarina) are among those with the best digital indicators, which points to these regions as the one with the greatest potential for the flourishing of smart cities.