1. Introduction
The introduction of information and communication technologies (ICTs) into government has significantly transformed the way public administrations interact with their citizens and has led to the development of a global phenomenon called electronic government or e-government. This is defined as the delivery of government information and services to citizens via the Internet or other digital means [
1,
2,
3] and currently is a very relevant aspect of governance [
4].
The e-government combines government use of ICTs with organisational change to improve its structures and functioning [
5] and currently is getting a lot of interest in public administration studies [
6]. This new electronic government involves technological changes but also new styles of leadership, new decision-making processes, different ways of organising and delivering services, and new concepts of citizenship [
7].
A growing corpus of literature has been analysing the impact of ICTs on the public sector from multiple perspectives, as reflected in extensive bibliographical reviews and meta-analyses covering definitions, scope, methods and recommendations (e.g., [
8]), citizen orientation and adoption [
9,
10], stage models [
11], diffusion [
12,
13], and the quality of these services [
14]. The literature is flourishing, but [
15] point out in their meta-analysis of empirical e-government research that in the literature there is still a shortage of authoritative quantitative empirical approaches and the topic is still perceived as a young field of research.
The e-government is intended to offer new possibilities and advantages for various groups of stakeholders, such as government agencies (G2G), citizens (G2C), and business organisations (G2B), according to [
16]. Digital interaction with citizens is a particularly complex challenge as population behaviour can vary over time [
17]. Margetts and Dunleavy [
18] introduced the concept of digital era governance and, proposing new challenges for public sector governance, among others, citizen-oriented government. Recently, trying to evaluate whether e-government performance boosts citizen use, [
19] argued that the effect of national e-government performance may differ among various social groups, and suggested that the moderating effects of demographic and socio-economic variables should continue to be tested in future research. There is a need to adopt a social-contextual perspective. The citizen and the digital citizen’s capabilities matter.
In this context, our investigation considers the following research questions: What factors influence European citizens in their e-government adoption and use? What is the influence of digital skills in its adoption? We need to understand the impact of citizen behaviour and characteristics on e-government activities. In this sense, our contribution is mainly twofold: firstly, we develop the e-government literature through this empirical comparative analysis at the European level, increasing the understanding of the European e-citizen; secondly, we provide a theoretical contribution behind the behaviour of e-citizens in the EU, highlighting especially the influence of their digital skills, together with personal characteristics and the environment.
Furthermore, very little research delves into the spatial implications of the digital profile of European citizens, considering Europe in a comprehensive manner [
20]. Comparing with other big geographies, such as Australia [
21,
22], Canada [
23], and China [
24], the shortage of studies at a pan-European level is more evident [
19,
25,
26].
This study consists of five sections. After the introduction,
Section 2 reviews the theoretical framework associated with our analysis of the e-citizen.
Section 3 presents the empirical analysis and discussion concerning the behaviour of e-government users within Europe depending on their adoption levels. Finally,
Section 4 and
Section 5 contain a discussion about the findings, the conclusions reached in the document, the limitations, and the future avenues of research.
3. Methodology and Data
To carry out the study, we have worked with the data from the survey “EU survey on ITC usage in households and by individuals 2016” (Eurostat Model Questionnaire Version 3.1.), last wave available when closing this investigation. This survey is carried out on an annual basis.
The purpose is to study the users’ characteristics who used e-government in the three months prior to conducting this survey. For this reason, we work with those individuals who have used the Internet in the last three months. This group consists of 154,149 individuals.
A binary logistic regression model has been used to determine the profile of e-government users, since it allows us to explain or predict the characteristic of a dichotomous event based on a set of variables considered as influential [
74].
One of the purposes is to establish whether the user profiles are different depending on the way they make use of e-government. The uses considered are the use of e-government to find information on the website, to download forms and to deliver completed forms. In this sense, three logistic regression models have been carried out, each with a different variable to be explained, namely the three different uses indicated above: information from the website, downloading forms, and delivering completed forms. This way we can observe the evolution to more complex models of interaction with digital public services, as established in the theoretical framework.
To perform the calculations for the three regression models, SPSS v.24 has been used. To perform these logistic regressions and prevent the size of the sample affecting the statistical significance of the variables, a 10% sample has been selected by means of simple random sampling, so 15,434 cases have been used. For the fraction of the sample with which we are working, as can be seen in
Table 1, the most common use of electronic government is the search for information, with almost 59% compared to downloading forms and filing complex forms, with 34.3% and 34.6%, respectively.
The coding has been carried out by Eurostat and corresponds directly to the different uses of electronic government that have been established in the survey, where individuals had to mark whether they had used them. The data come from the survey question: “Did you contact or interact with public authorities or public services over the Internet for private purposes in the last 12 months for the following activities?”, giving the possibility of marking the three uses that they are studying (obtaining information from websites, downloading official forms, and submitting completed forms). The three dependent variables will take the value 1 if the individual has made use of e-government, and zero otherwise.
Among the multiple variables included in the survey, the variables that could explain the use of e-government are grouped into socio-demographic aspects, user digital skills, and type of Internet connection, to assess its preeminence as it has been hypothesised in the theoretical framework. The different explanatory variables and their forms are described in
Table 2. In those variables where there are more than two categories, the reference category has been determined as the one with the least connection of e-government uses.
The distribution of the different variables in the sample fraction is shown in
Table 3.
3.1. Results of the Estimation for the Use of E-Government to Obtain Information from Websites
In this case, the dependent variable in the logistic regression is the use of e-government for obtaining information from the websites of public bodies. A total of 50.8% of individuals in the sample fraction have declared that they have used electronic government to search for information on websites, compared to 49.2% who have not used it. It is a dichotomous variable that takes the value one if the individual has used this service in the three months prior to the survey date, and zero otherwise. We have worked with 15,227 valid cases with goodness of fit measures of 27.4% for Cox and Snell’s R-square, 36.6% for Nagelkerke’s R-square, and Hosmer and Lemeshow values of 0.289. With this model, it is possible to correctly classify 72.9% of the total number of cases, correctly classifying 82% of the users who use e-government to obtain information, and 62% of those who do not.
As can be seen in
Table 4, the socio-demographic variables are significant except for the category of average density, unemployed, and secondary education.
Digital skills in communication are not statistically significant and this is also the case for the unemployed category.
In terms of population density, it should be noted that for individuals who live in regions of high population density, the probability of using e-government is almost 13% lower compared to those who live in low-population regions. However, moving from areas of low population density to those of average population density leads to the probability of using websites being 1.1 times higher.
In relation to age, for individuals over 65 years of age, the probability of using government websites to obtain information is 1.73 higher compared to those aged between 25 and 44 years. For higher education levels, the probability of this use of e-government is 1.7 times higher, values equivalent to the age increase indicated above.
Connecting to the Internet at home or outside the home also increases this probability, with the fact of connecting outside the home having a greater weight in the probability.
In terms of gender, being a woman is an influential variable regarding the search for information, but the probability for men is not very different.
3.2. Results of the Estimation for the Use of E-Government to Download Forms
The dependent variable in the logistic regression is the use of e-government to download forms. This variable takes the value one when the individual has used this service in the three months prior to the survey date, and zero otherwise. A total of 34.3% of the individuals in the sample fraction have downloaded official forms compared to 65.6% who stated that they have not made this use of electronic government. We have worked with 15,276 valid cases with goodness of fit measures of 22% for Cox and Snell’s R-square, 30.6% for Nagelkerke’s R-square, and Hosmer and Lemeshow values of 0.412. With this model, it is possible to correctly classify 73% of the total number of cases, correctly classifying 52.2% of the users who use e-government to download forms, and 83.6% of those who do not. The results are shown in
Table 5.
As in the previous regression, the unemployed category remains statistically insignificant and the sex variable joins this, so being male or female does not influence the downloading of documents on government websites.
In terms of population density, as in the previous case, moving from a low to a high density level means that the probability is reduced by 16.4%, while moving from a low to a medium density does result in an increase in the probability, compared to the decrease seen for areas of greater density.
In regions with the greatest economic development, the probability of downloading forms is 1.6 times higher than compared to those that are less developed.
At higher levels of education, the probability of this use of e-government is doubled and it decreases by 40% for those under 25 years of age.
Connecting to the Internet at home and mobile broadband also increases the probability. The highest score is presented by accessing e-government using Internet broadband at home.
3.3. Results of the Estimation for the Use of E-Government for the Delivery of Completed Forms
The dependent variable in the logistic regression is the use of e-government to deliver completed forms. This variable takes the value one when the individual has used this service in the three months prior to the survey date, and zero otherwise. The percentage of citizens who submitted complete forms online is 33.6% in the fraction of the sample who declared that they have used electronic government to submit completed forms, compared to 66.4% who have not completed this procedure electronically. We have worked with 15,227 valid cases with goodness of fit measures of 19% for Cox and Snell’s R-square, 26% for Nagelkerke’s R-square, and Hosmer and Lemeshow values of 0.109. With this model, it is possible to correctly classify 72.7% of the total number of cases, correctly classifying 47% of the users who use e-government to download forms, and 86% of those who do not (
Table 6).
In this case, the variables that are not statistically significant are sex, the average population density category, being unemployed, and having secondary education.
Having higher levels of education compared to primary school studies makes it 1.9 times more likely that people will deliver forms electronically.
Regarding Internet connections, both outside the main residence and inside it, the probability increases compared to not using these connections. Here, being connected to the Internet outside the home results in a probability 1.5 higher than that for delivering forms over the Internet among those who have not connected in this way.
4. Discussion
Comparing the results of the logistic regression carried out for each of the uses of e-government analysed,
Table 7 shows both the effects it has on the probability of performing this use as well as the importance of the weights of each of the explanatory variables on the dependent variable. The variables included in these comparisons are those that are statistically significant in all or some of the categories considered.
When obtaining information from websites for e-government, individuals who have a superior skill level in the search for information are 16 times more likely to search government websites than those with a basic skill level or no skills at all. Those who have a superior level of problem solving skills are twice as likely to use government websites to search for information, while software skills make them 1.56 times more likely to do this. In terms of e-government to download forms, this use is higher if people have superior digital skill levels as opposed to having no skills or basic levels. In this case, the variable with the greatest influence compared to its corresponding reference category for downloading forms is to have a superior level of digital skills in the search for information, since those individuals who possess it are six times more likely to make this use than those who have no skills or a basic level. Continuing with digital skills, the rest of the probabilities increase as the skill level grows, so having a superior level of digital skills in software or problem solving means that the probability of downloading documents is practically twice as high as it is for those who do not have any skills or basic skills in this regard. Finally, obtaining a superior skill level in information triples the probability of delivering completed forms on government websites. When delivering completed forms, it is the variable with the greatest influence compared to having no skills or basic skills, while with problem solving the probability is doubled and for software skills it is multiplied by 1.7.
A ranking has been established for the weight of each explanatory variable in the increase in the probability of the different uses of e-government being studied. This weight is understood as those variables with more variability (distance) with respect to the reference category. That is to say, they lead to a greater increase in the probability with respect to the different uses of e-government. For those variables that have more than one category, only the one with the highest odd ratio EXP (B) has been selected.
The variable that leads to the greatest increase in the probability of carrying out the three uses is having a superior skill level in the search for information, but it can be seen that it becomes more complicated depending on the use, with the marginal value decreasing from 16.5 in the first regression to 3.08 in the third. The other digital skills also show high figures in the three uses of e- government, being among the top five except in the case of communication skills. In this sense, the problem solving skill exceeds the ability to use software for handling content in the search for information and in the delivery of completed forms, but it should be noted that, for the use of downloading forms, the increase in probability with respect to the reference category is very similar for the problem solving skill and the software skill, although the weight moves to fourth position.
For all uses, as the level of education increases, the probability of being a user of e-government increases. Having secondary education influences the use except when delivering completed documents. In the case of downloading documents, higher education levels double the probability of this use of the Internet compared to primary education. Education is one of the variables that are within the top five positions in the established ranking, being the fourth for the use of electronic government in information and for the download of documents and delivery of complete forms, reaches the second and third position, respectively. Age is another of the influential variables when it comes to using e-government. Individuals who are 65 years of age or older see their probabilities increased, compared to the reference category, for the respective uses by values that range from 1.4 times (download forms) to almost 1.8 times (search for information). For the use of searching for government information, this category occupies third place in the ranking of the weights of all variables. In the case of users under 25 years of age, the probabilities decrease by between 38% (delivery of forms) and 54% (downloading of forms). For the delivery of completed forms, age reaches fifth place in importance, and for the downloading of forms, it reaches sixth place. The results are consistent will previous studies, such as [
75] that found that age along with gender and education were significant in influencing citizens’ intentions to adopt and use e-government services (in the United Kingdom).
Living in more developed regions similarly increases the use of e-government in all regions, although for the downloading of documents, it is within the five with the highest weight, but for the rest of the uses, it is positioned in sixth and seventh. The same happens with employment status, which has a similar increase in the three uses, moving to unremarkable places in the classification. Therefore, being an employee or self-employed leads to similar probability increases in the three uses and the unemployed category only influences the delivery of completed forms.
There are no significant differences in terms of the sex variable in relation to the use for forms, both downloading and delivering these, and only in the case of information search is this variable statistically significant, but with a low impact on the increase in probability and occupying values that are distant in terms of the importance of the weights of the variables.
The type of Internet connection of the users increases the probability of the three uses in a similar way, with connection outside the home generally occupying a higher position in terms of weights.
Regarding the population density where the habitual place of residence is found, the average density affects the search for information and the downloading of forms, but with a very low probability increase compared to low-density regions. This is the variable that for all uses occupies last place in the classification. However, for the delivery of completed forms, only high density has an influence. For all the uses of e-government, in the three cases analysed there is a reduction in probability for high-density regions, of between 28% (delivery of forms) and 13% (search for information on government websites). The low influence of population density is consistent with the fact that very low populated parts of the EU, such as Estonia and Scandinavia, are leading the process of digitalisation of public services. There are also opposite examples, such as the Netherlands. The results open a clear area of future research to delve into this question.
5. Conclusions
This research area undoubtedly was, and still is, timely and fascinating: it is a well-known fact that the way the public sector relates to citizens has undergone a drastic transformation since the 1980s with the arrival of information and communication technologies (ICTs), and especially since the late 1990s with the advent of the Internet. Quantitative empirical e-government research still reflects a growing, open-ended field that provides many opportunities for investigation [
9,
15].
The results highlight the importance of the four digital skills analysed in all types of e-government usage. Having performed previous e-government activities (simpler ones, such as obtaining information) is the most important factor. Our results are in line with other models on e-service adoption developed by [
76], which stress the importance of learning and previous visits for further usage. E-government is becoming mandatory in many countries, as part of the transformation of public services, and citizens are thus forced to interact with the government using these applications [
77,
78,
79], so the development of digital skills is increasingly important.
The study has highlighted the differences in behavioural patterns in Europe according to economic development. This leads to an interesting reflection: a degree of divergence in behaviour can be found at the EU level, conducting, therefore, inequalities among citizens. This fact may point to a certain digital divide within the EU as far as e-government services are concerned. There is a need to focus the attention of the EU authorities and policymakers to avoid the degree of economic development of the regions influencing the degree to which e-government services are used, resulting in inequalities between European citizens. Now in Europe, the beginning of the EU programming period 2021–2027 represents a good opportunity to delve into the territorial cohesion policies, and particularly in the field of digital public policies. If utilised properly, these digital tools can improve services to citizens, smooth administrative processes, and enhance democracy [
80], avoiding any kind of digital divide.
Age, connectivity, and especially acquiring digital skills are all factors that have effects that vary from one use of e-government to another. It has been pointed out that senior citizens have received little attention in the e-government literature and that different generations of e-citizens behave in different ways [
81], provoking a digital divide. This could be also related to an impairment in the cognitive, sensory, and motor functions of older people that may make IT use difficult and limit computer literacy (skills) in relation to digital services [
82]. The increasing interest in e-government use by elderly people is a relevant finding, since little research has been done into the growing adoption of digital services by the senior market in Europe [
83]. Our results confirm the changing trend: among senior citizens, there is a dynamic of change and a proactive attitude with respect to the use of e-government, recently observed [
84,
85]. Additionally, it seems that minor training has a positive effect on digital inclusion for elderly citizens and that the effects seem more or less permanent also from a longer perspective [
82].
In the study of the digital divide, recent conceptualisations appear to be moving away from a traditional emphasis on the technological gap, and particularly, the connectivity gap ([
86], for a systematic literature review). During the first decade of the twenty-first century, the preliminary understanding of the “digital divide” concept evolved to include users’ skills and usage gaps. All groups must be supported in their transition to the world or digital. The rhetoric of “digital natives”, far from being useful, is often a distraction to understanding the challenges in a networked world [
87].
The e-government and digital divide research are intrinsically intertwined as e-government policies can be both impeded by and exacerbate the digital divide [
70,
88]. However, though many citizens have access to the Internet, this does not automatically mean a high uptake of e-government use. Our findings, similar to [
70], indicate that instead of an access divide, a skills divide is much more relevant. Digital literacy appears to be the most critical factor for e-government uptake as a whole. As argued by [
89], digital literacy policies seem to be really cost-effective initiatives for increasing the uptake of e-governmental services, taking into consideration not only their pervasiveness in all types of interactions. Educational programmes will be necessary [
90], and taking a more decided citizen-centric approach is required to increase uptake of e-government [
91], as these digital technologies create environments that affect the citizens using them [
92].
Inequalities in digital skills will not automatically disappear in the future, even in countries with high Internet diffusion levels, unless clearly targeted interventions are implemented [
93]. The results invite one to suggest to institutions and policy makers a greater effort to consider a sociodemographic perspective, adopt a target groups strategy (for example, promoting training, and support for elderly people and other digitally vulnerable groups, as suggested by [
94]), or go further with the mere technological skills, for example, encouraging the practice of problem solving or critical thinking. It is recommended to enhance skills related to critical thought, skills in the cognitive and ethical areas, and also the productive skills to promote a critical approach to media production, sharing, and consumption [
92,
95,
96]. On the other hand, the influence of population density, linking e-government to population concentration, is an interesting topic for further investigation.
Our study is one of the first to conduct a pan-European analysis using the most recent data, as this survey wave has recently become available, distancing itself from previous research mainly focused on certain countries or cities. It is an approach that enables us to have a comprehensive overview of the situation for the EU as a whole.
This exploratory work has several limitations, most of which arise from the survey design, incorporating a large number of dichotomous variables. The available data available are from 2016, which is in itself a limitation, because more recent data were not yet available that could give a more accurate and updated view. Work has not been done at the country level but rather in distinguishing less developed, in transition, and more developed regions, introducing the degree of development as one of the variables of the analysis. This may be a limitation of the study, if interest is focused on countries. Another limitation of our research is that we do not propose a specific model, but rather focus specifically on the particular aspect of the evolving role of digital skills, along with other socioeconomic factors. In any case, given the importance of interaction with public administrations in the digital context, which becomes mandatory in several countries, our findings add value in the dissemination of these services. The article also contributes to the academic literature on a question that is very important for EU policies: it opens up an approach that is more ambitious, from a geographical viewpoint, and links the question to regional development and population density, which is an original contribution that deserves to be investigated in future research.