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Article

Modernisation of a Country in the Context of Social Environmental Sustainability: Example of Lithuania

by
Olga Navickienė
*,
Ieva Meidutė-Kavaliauskienė
,
Renata Činčikaitė
,
Mangirdas Morkūnas
and
Asta Valackienė
General Jonas Žemaitis Military Academy of Lithuania, Silo 5a, LT-10322 Vilnius, Lithuania
*
Author to whom correspondence should be addressed.
Sustainability 2023, 15(4), 3689; https://doi.org/10.3390/su15043689
Submission received: 30 December 2022 / Revised: 14 February 2023 / Accepted: 15 February 2023 / Published: 16 February 2023

Abstract

:
This paper seeks to encourage deeper scientific discussions about the country’s modernisation in the context of social environmental sustainability. Emphasizing the importance of this study, the research problem was identified in response to the questions of how the country’s modernisation manifests itself in the context of social environment sustainability and what are the consequences for the society. This paper is based on a quantitative empirical study to support the structural perspective of the modernisation of the country, to develop an integrated system of indicators for the formation of a modern country following an analysis of the country’s modernisation trends in terms of the social environment. The scientific value of the study: the present paper investigates the ‘soft’ determinants of social environmental sustainability of the country; provides a methodological framework for the methods used (descriptive statistics, confirmatory factor analysis (CFA) and structural equation modelling (SEM). A three-dimensional research approach, covering the education system and educational culture; socio-economic integration; the legal system and the importance of public administration and citizenship, was utilized. A cross-sectional survey of 1021 respondents and structural equation modelling were selected as the main research tools. Lithuania served as an empirical basis for the research. It was revealed that the most important factors in shaping the modernisation of the country through the lens of social environmental sustainability are the participation of citizens in social communities and social activities. Factors that need improvement are public participation and tolerance for the disabled.

1. Introduction

In 2015, the United Nations (UN) adopted 17 sustainable development goals (SDGs) covering social development, economic development, environmental protection and cooperation, to ensure the sustainable development of countries. Sustainable development is based on three fundamental dimensions—economic growth, societal well-being and environmental quality—ensuring the sustainable development of all three, without prioritising any one over the other two. The authors note that nowadays, it is especially pertinent and essential to developing the scientific debate by representing the interaction of these three dimensions from an interdisciplinary perspective when a country’s modernisation trends are directly correlated with the field of social environment sustainability. It should be stressed that the field of modernisation of a country reduces to the construction of new parallels of thinking, assessing the sustainability of the social environment and the criteria of modernisation, emphasising the change in the concept of the ‘modernisation revolution’, i.e., highlighting the qualitative aspect of the modernisation of society [1].
The modernisation of the country in the context of social sustainability is not analysed in the scientific literature. Kanger and Shot [2] provided information on the social and technical aspects of the transition by distinguishing two main problems: social inequality and deterioration of the environment. In his work [3], Lavopa emphasises the assimilation of technology as a necessary condition to ensure constant growth; otherwise, the economy is doomed to stagnation, and as a result, the well-being of the social environment will also deteriorate. Biggs [4] provided insights related to families, generational mechanisms, and helping older generations in light of social modernisation and postmodern family conceptualisations. Yang [5] described the modernisation of society in three aspects: political, economic, and sociocultural change. Adloff [6] distinguished modernisation, transformation, and control as typical trajectories and possibilities for social change. In conclusion, the paper focuses on sustainability as a sociological category, showing that it is possible to understand current socio-economic changes, the emergence of new conflicts, inequalities, hierarchies, and justification patterns that arise from the inclusion of sustainability imaginaries in different fields, institutions and value systems [6,7,8].
The European Social Survey (ESS) is a new approach to modernisation. The ESS is a biennial international survey initiated by researchers concerning the attitudes, beliefs and behaviour of people in different countries. Its main objectives are: to monitor changes in Europe’s social, political and value picture; to develop and implement a high-standard methodology for international social surveys; for training purposes; to increase access to data; and to use reliable indicators of national progress [9]. The Social Progress Imperative, a US non-profit organisation, calculates a social progress index based on three components: basic human needs, well-being and opportunity. Lithuania’s progress strategy, Lithuania 2030, identifies specific indicators to monitor change and set targets: the Quality of Life Index; the Happiness Index; the Democracy Index; and the Sustainable Society Index. The study shows that many instruments are used to assess the social environment. Moreover, there is a dearth of comprehensive research on the topic of social environment sustainability, which could suggest theoretical conceptions of the country’s modernisation, as well as empirical data. Based on this methodological stance, the research questions are: how does this conceptual shift reflect the changes in the country’s modernisation in the context of the sustainability of the social environment; and what are the implications for society?
The aim of this paper is to develop an integrated system of indicators for the formation of a modern country and the directionality of its governance following an analysis of the country’s modernisation trends in terms of the social environment. To achieve this goal, three hypotheses are formulated:
H1. 
The better developed the education system and educational culture of a nation, the more modern the country is in the context of a social environment.
H2. 
The better the social support and socio-economic integration are in a nation, the more modern the country is in the context of the social environment.
H3. 
The better developed the legal system is and the more significant the public governance and citizenship are, the more modern the country is in the context of the social environment.
The next section provides a summary of the relevant literature on modernisation, the modernisation processes, and sustainable social environments. The third section provides a methodological framework for the methods used: descriptive statistics, confirmatory factor analysis (CFA) and structural equation modelling (SEM). The fourth section discusses the results, highlighting the practical/managerial implications of the insights gained, and the final section presents the contribution and limitations of the study and offers perspectives for future research.

2. Modernisation of the Country

A country’s development is inextricably linked to its social, economic and political environment. The analysis of different sources reveals a contradiction in the definition of modernisation, however. In [10], Marcinkevičienė summarised the results of the study of Soviet historiography through the works of different foreign authors. Contradictions have been noted in the definitions of modernisation and the beginning of modernisation; however, it is emphasised that the modernisation processes vary between countries. There are also contradictions regarding the modernisation of Lithuania and its preconditions [11]. Similarly, there is disagreement as to which year (1861 or later) is considered the beginning of the modernisation era. However, a concept is put forward: the modern Lithuanian nation is not a nationality, nor are ‘ethnic Lithuanians’ the main subject of Lithuanian history in the modern period. The basis of modernisation is the transformation of the economy and economic relations, agriculture and industry, which are associated with changes in the social and political order. In his article [12], the historian Nefas reviews the facts of the beginning of modern Lithuania (1918) from a historical perspective. Although there is no unanimous agreement in the beginning, there is a general view that a modern state is inseparable from continuous progress and exceptional achievements.
In the academic literature concerning the modernisation processes, there is a general consensus that the driving force behind modernisation has, in any case, been economic or economic development [11]. The modernisation theory distinguishes between ‘traditional’ and ‘modern’ forms of society, politics and economics, and examines the circumstances and policies that should contribute to higher levels of development [13]. The authors have drawn up a flowchart for the study of modernisation in the country, taking into account the analysis of the scientific literature and the National Progress Plan [14] (see Figure 1).
According to Figure 1, three environments are identified: social, economic and political. The social environment includes three fields of research: the education system and educational culture, the social situation and socio-economic integration, the legal system and public governance, and the importance of citizenship. The flowchart also displays three horizontal dimensions: sustainable development, innovation and equal opportunities.

2.1. A Sustainable Social Environment

In 2015, the United Nations (UN) adopted sustainable development goals. These identified additional areas for the environment and cooperation. Sustainable development is understood in the scientific literature as a complex concept and a complex process [15], which aims to ensure the well-being not only of current generations but also of future generations. In [16], other scholars emphasise the non-depletion of key resources, while [17] other scholars define sustainable development as development that maintains the stability of the system and develops a balance between economic, social and environmental development without endangering future generations. Klarin’s analysis of the scientific sources of the concepts of sustainable development and growth summarised sustainable development in three dimensions are (1) the concept of development (socio-economic development that meets ecological constraints), (2) the concept of needs (redistribution) of resources to ensure the quality of life for all), and (3), the concept of future generations (the possibility of sustainable use of resources to ensure the necessary quality of life for future generations) [18].
The socio-environment is one of the components of sustainable development. A literature review has shown that there is no single definition of the term ‘sustainable social environment’. As defined by Colantonio, this is because as a concept, it is too complex to be unambiguously defined [19]. The most common way of presenting it is through the influencing factors, i.e., some scholars [20] analyse the social environment in terms of the following factors: access to basic needs; housing; health; safety; security; education; equity; demographics; poverty level; culture; recreation; and access to credit [20]. Činčikaitė described the social environment through the following factors: human capital; migration; social burden on the city; urban safety, community learning, partnership and activism; social cultural and sports infrastructure, education and education system; psychological climate of the city; the demographic situation of the city; and medical care infrastructure [21].
Several scholars have emphasised community involvement in their work on sustainable social environments [19,22,23]. Others have identified the factors that define the social environment: public transport, health and social protection (health and social protection infrastructure), education and science (general, vocational and post-secondary education systems, research infrastructure), and public safety infrastructure [24,25]. Schools, social and health care institutions, hospitals, and anything else that guarantees that social needs are met contribute to the growth of the national economic level, as the network of social infrastructure enables a country’s residents to acquire the education, vocational skills, and qualifications that they apply to their jobs [25].
Education in the context of sustainable development is part of social capital [15]. This is not only about the education system of the state, but also about the integration of the essential elements of sustainable development into learning (UNESCO) to change the behaviour of the population. Global education is an active learning process based on solidarity, equality, inclusion and cooperation. It aims to provide knowledge about sustainable development, to understand the challenges facing the world and their causes, to understand the impact of local actions on global processes, and to empower people to engage with the international sustainable development goals [15]. Melnikas identified the emergence of a new type of society, perceived as a knowledge society, which reflects the transformation of society itself into a qualitatively new state [26].
The economic prosperity of any country depends on its population. It is particularly important to study the structure of the working-age population because, according to [27], the population aged 30–44 has the greatest impact on labour productivity growth, the population aged 50–64 has a positive impact, and the population aged over 65 has a negative impact. With the continuing rise in the importance of the labour factor in the market, the quality of the labour force is becoming more and more important, with the negative impact of the ‘brain drain’, defined as the departure of educated or professional people for reasons such as better working and living conditions [28]. The decision to emigrate is usually based on economic motives and personal or professional self-fulfilment; however, some emigrants have also identified social and legal insecurity as an important factor influencing their migratory behaviour. The latter processes are increasingly influenced by international migration, which has become an integral part of life in modern societies in the late 20th and early 21st centuries [29]. Researchers Yushi Zhang et al. studied urban–rural migration and found that social protection has a significant positive impact on rural–urban migration while improving the sense of fairness, happiness and security promotes the rural population’s desire to integrate and identity and encourages urbanisation. Social attitudes, therefore, play an important mediating role [30]. Yuan Wang’s researchers have studied migration through the movement of firms within a territory rather than through the movement of people. They argue that as globalisation deepens, cross-border corporate migration and investment are widespread. However, due to market orientation or cost orientation, many firms choose to migrate within their own territory, which has implications for capital flows, personnel, and changes in market structure [31].
The research literature is rich in studies concerning population mortality [32,33], fertility, changes in family patterns [34,35], migration [36] and ageing [37]. However, there is a dearth of literature that examine changes in the working-age population in the context of these topics. Life expectancy, a probabilistic indicator of population mortality, is widely used to assess the health of the population and the overall level of social well-being [32]. Mortality and social development theorists generally consider mortality and the structure of the causes of death to be critical indicators of societal development, and sudden changes in the size and structure of the population are often associated with changes in mortality [38].
The scientific literature [23,27,28,29,30,31] points out that infrastructure is a key prerequisite for the development and needs of national, regional and urban economies [39,40,41,42,43,44]. Studies and calculations by various researchers have shown that physical infrastructure correlates with GDP, labour productivity and investment [45]. However, there is another side to the development of physical infrastructure. A study by the European Environment Agency (EEA) [46] indicates that as much as 88% of Europe’s urban population is affected by pollution. Solutions to reduce air pollution are aimed at sustainable transport, i.e., transport services that justify the costs in terms of social needs and environmental protection and are optimally adapted to the needs of the city. Sustainable transport does not endanger public health or the ecosystem and ensures that long-term targets for renewable sources are met [47]. Sustainable transport aims to ensure that environmental, social and economic factors influence all decisions related to the transport system [48].
A safe environment is the only suitable medium in which the realisation and development of human rights and freedoms are possible. A sense of security determines individual behaviour and quality of life, as well as the social and political stability of the state and the confidence of the population in its legal and institutional mechanisms. Security is a multifaceted and relative category. Firstly, an individual, a state or a region can be secure or insecure. Secondly, the concept of security itself is vague and can be differentiated by object and domain, such as political security or road safety. As state governance becomes more complex and the social fabric of the state changes, the concept of security is also changing [49].
One of the objectives of sustainable development is to eradicate poverty in all its dimensions in all countries, eradicate hunger, ensure food security and better nutrition, and promote sustainable agriculture. The relationship between the natural environment and poverty is a central theme in the sustainability and development literature [50], and one that is gaining increasing attention among scholars [51,52,53]. Research has been carried out at different dimensions, i.e., poverty alleviation through the promotion of entrepreneurship [54] and local investment [55].
Researchers [56] have observed that social security benefits increase with average wages, while earnings increase with education and work experience, and have developed a model for measuring the social security system by combining: different skills, and qualifications.

2.2. In Lithuania

A smart society, according to the Lithuanian Progress Strategy ‘Lithuania 2030,’ is a happy society that strives for increased personal and economic security, equal income distribution, a healthier environment, social and political inclusion, excellent opportunities to learn and improve one’s skills, and good health [57]. Based on the same source, specific indicators are identified and Lithuania’s current position in relation to EU countries is compared:
  • Quality of life index (currently 23rd in the EU);
  • Happiness index (now ranked 20th in the EU);
  • Democracy index (now 22nd in the EU);
  • Sustainable society index (now 13th in the EU).
The Social Progress Imperative, a US non-profit organisation, works with a strategic partner to calculate an annual social progress index. The index covers three groups: basic human needs, well-being and opportunities.
According to the Table 1, Lithuania ranks second among the Baltic States in terms of the Social Progress Index in 2022.
Analysing the quality of life indicators based on the data provided by the Lithuanian Department of Statistics, it is noted that the poverty risk level in 2021 fell by 0.9%, compared to 2020. The number of women in poverty was higher than men (22.4% and 17.1%, respectively); however, the year-on-year change shows that the percentage of men in poverty decreased by 1.3% and the percentage of women by 0.7%. When analysed by age group, the highest percentage of the poor among both men and women was found in the 65+ age group, representing 24.3% of men in this age group and 42% of women. There are no significant differences between urban and rural poverty rates, with a uniform annual change of −0.9%.
The poverty rate for employed individuals is 7.5%, 0.5% less than in 2020.
The unemployment rate by all age groups and without distinction of place of residence, rural or urban, decreased by 0.6% in 2021. The highest unemployment rate by age group was between 15 and 24 years, i.e., 14.3%. The unemployment rate for men was higher than for women (7.6% and 6.6%, respectively). The unemployment rate in rural areas was higher than in urban areas (8.3% and 6.6%, respectively).
The percentage of young people who have dropped out of education has changed slightly (−0.2%); however, interestingly, in 2021, compared to 2020, the percentage of young people who have dropped out of education in urban areas has been increasing (0.9%), while it has been decreasing in rural areas (1.2%).
When analysing social indicators and indices over time, it can be seen that some are worsening whereas others are getting better. There are many reasons for this, but most notably, the modernisation of the country itself, which is a long and complex process involving different areas of the social environment, has a major impact on the creation of a coherent and sustainable social environment.

3. Research Methodology

3.1. Sampling Procedure

A representative survey of the Lithuanian population was undertaken between the 26th October and the 8th November 2022 by the Lithuanian–British market and public opinion Research Company ‘Baltijos tyrimai’ (Baltic Research) according to a questionnaire agreed with the client. The survey involved 1021 Lithuanians (aged 18 and over).
The findings of this survey are applicable to the Lithuanian population aged 18 and over. The survey was undertaken through individual interviews. The age range of this population was chosen in line with the EU’s practice of population opinion surveys (ESOMAR) and to compare the survey data with previous surveys on this topic.
Respondents for the population survey were selected using multi-stage stratified random sampling. There are several social groups that are not included in the sample of this study: persons in prison, persons in hospital and persons without a place of residence.
A total of 1021 Lithuanians (aged 18 and over) participated in the survey. This sample allows for an optimum margin of error of no more than ±3.1%.
The selection of respondents was undertaken in several stages:
  • Determining the proportion of respondents in the districts. This survey is carried out in all counties. The proportion of people interviewed in each county in the total sample corresponds to the proportion of the population aged 18 and over living in that county among the total population of that age in Lithuania.
  • The second stage is to determine the proportion of respondents in different size areas in each county. The categories of settlements used in this study are Vilnius, large cities (over 50,000 inhabitants), towns (2000 to 50,000 inhabitants), and rural areas (up to 2000 inhabitants). The number of respondents in the different sizes of each county corresponds to the proportion of the population aged 18 years and over living among the total population of that age in the county.
  • The third stage is the selection of specific settlements for the survey. From the list of settlements in each category (by population size) in each county, the localities to be surveyed are selected at random.
  • Respondents are selected using a purposive sampling method. In each community, a path is constructed by modifying a specific step in the selection of the residence where the survey is conducted. The responder at a particular household is chosen using the nearest birthday rule. Up to three attempts (visits) per interview are made. This principle of selection of respondents ensures maximum possible random sampling and equal probability of participation.
  • The survey took place between the 26th October and the 8th November 2022 at 116 sampling points (31 towns and 53 villages).
  • The demographic and social characteristics of the respondents (a total of 1021 respondents aged 18 and over) are presented in Table 2.
  • The survey data are compared across key socio-demographic dimensions (age, gender, income groups, settlement type, social status, and education). The margin of error for the results of this survey does not exceed 3.1% (with a 50% response rate) at 50%, with a confidence limit of 0.95 (see Appendix A). The margin of error is calculated for a given sample size at a given response rate with a confidence level of 95%.

3.2. Research Techniques

The survey questionnaire consists of questions composed according to a 5-point Likert scale, ranging from strongly disagree to strongly agree. According to the literature analysis, the 25 questions (statements) of the survey are composed.
First, descriptive statistics are performed to obtain a summary of the representation of the sample of a population. Furthermore, the mean and standard deviation of all variables in the items (constructs) are measured to analyse the variation and dispersion [59].
Then, confirmatory factor analysis (CFA) and structural equation modelling (SEM) are used as research techniques. These techniques are considered the most effective procedures to reveal latent items (constructs) with satisfactory reliability [60,61]. The three proposed hypotheses about the three constructs (factors) consisting of the measured variables are tested by the CFA method. Then SEM is used to assess these three theoretical constructs (latent factors) that cannot be directly measured by CFA.
The factor analysis technique is also used to group variables in several constructs (factors) and to check the eligibility of the selected variables for the research model. For this reason, the variance inflation factor (VIF) was estimated to avoid adverse effects on results. The estimates of VIF for all constructs are statistically sufficient if the degree of multicollinearity varies from 1 to 5. It means that the variables are moderately correlated [62], and further research can be carried out.
The reliability of internal consistency is measured by Cronbach’s alpha coefficient. The value of Cronbach’s alpha coefficient of a properly and qualitatively constructed item (factor) should be greater than 0.7 [63], but less than 0.90 [64]. The extracted average variance (AVE) and composite reliability (CR) indices are analysed to fit the discriminant validity [65]. Furthermore, it is necessary to avoid the problems of multicollinearity and singularity. For this purpose, the variables with insignificant and very strong correlations should be removed from the list of initial variables, that is, eliminate one selected from two variables whose mutual coefficient value is less than 0.2 and greater than 0.8 [66].
SPSS 28.0 for the Windows statistical package and SPSS Amos software were used for CFA and SEM, accordingly.

4. Results

4.1. Preliminary Analysis of the Data

First, descriptive statistics were performed to obtain a summary of the representation of the sample of a population. There were no significant deviations between the mean and median of the variables (see Table 3).
Of the respondents, 69.8% (45.5 and 24.3 cumulative frequency in percent) agree that changes are needed in the Lithuanian education system. Similarly, 66.2% (43.7 and 22.5 cumulative frequency in percent) of the respondents agree that innovative solutions are needed for changes to occur in Lithuanian education. Additionally, 86% of the respondents believe that there are important aspects of education, such as diversity, creativity development, experience-based training, more options, communication, more order and rigour. However, 35.2% of the respondents believe that diversity is the most lacking in our education system, 20% creativity development and 16.8% experience-based training. A total of 48% (42.2 and 5.8 cumulative frequency in percent) of the respondents agree that there are suitable conditions for raising children in Lithuania.
There was 46.4% (9.0 and 37.4 cumulative frequency in percent) of the respondents that do not agree with the statement that in Lithuania, suitable infrastructure has been developed for the disabled in all areas of life, and 32.9% neither agree nor disagree. Furthermore, 42.9% (6.7 and 36.2 cumulative frequency in percent) of the respondents do not agree that there is a bad connection between Lithuania and other EU countries, and 29.5% neither agree nor disagree. Additionally, 44.3% (6.7 and 36.2 cumulative frequency in percent) of the respondents agree with the statement that in Lithuania the connection between individual areas is not developed sufficiently and 27.2% neither agree nor disagree. Furthermore, 34.1% (29.4 and 4.7 cumulative frequency in percent) of the respondents agree that the infrastructure of airports in Lithuania lags far behind the EU average; however, 30.2% neither agree nor disagree. In addition, 35.3% (29.3 and 6.0 cumulative frequency in percent) of the respondents agree with the statement that too little attention is paid to traffic safety in Lithuania, and 30.8% neither agree nor disagree. Furthermore, 29.9% (25.6 and 4.3 cumulative frequency in percent) of the respondents agree that alternative fuels for cars are used too little in Lithuania, 35.7% neither agree nor disagree. In addition, 45.5% (37.8 and 7.7 cumulative frequency in percent) of the respondents agree that transport systems between big cities and suburbs are not well coordinated, 28.5% neither agree nor disagree. Additionally, 28.3% (25.2 and 3.1 cumulative frequency in percent) of the respondents agree that the digital infrastructure is underdeveloped in Lithuania, and 38.1% neither agree nor disagree.
Furthermore, 59.9% (51.5 and 8.4 cumulative frequency in percent) of the respondents agree that they are tolerant of other nationalities. In addition, 30.5% (26.7 and 3.8 cumulative frequency in percent) of the respondents agree that they follow the principles of a healthy lifestyle; however, 45.5% neither agree nor disagree. Although 53.7% (13.2 and 40.5 cumulative frequency in percent) of the respondents do not agree that they actively participate in cultural activities, moreover, 28.6% neither agree nor disagree. Similarly, 56.3% (15.2 and 41.1 cumulative frequency in percent) of the respondents do not agree that they are actively involved in community activities, and 25.5% neither agree nor disagree. Additionally, 57.3% (16.3 and 41.0 cumulative frequency in percent) of the respondents do not agree that they actively participate in social activities, and 27.5% neither agree nor disagree.

4.2. Results of the CFA and SEM Analysis

Since the sample size is 1021, and thus the sample is representative, these conditions help to eliminate additional checks and reduce the risk of inappropriate methods being used.
First, a factor analysis technique was used to group variables (statements of the survey) into three constructs (factors). The significance of factor loadings of the variables is considered significant since the sample size is greater than 1000, so the factor should be greater than 0.162 [67]. Furthermore, according to [68] factor loadings less than 0.3 should be suppressed. Therefore, variables with factor loadings less than 0.3 were removed accordingly.
Second, the validity of the measurement instrument is verified using Cronbach’s alpha coefficient estimation method. As seen in Table 4, the estimates of all Cronbach’s alpha coefficients are above the threshold limit of 0.7. This coefficient for each construct varies from 0.703 to 0.784. It means that the confidence rate of the variables is sufficient for research [69,70]. So, it is not necessary to improve the value of Cronbach’s alpha coefficient for each construct eliminating one of the variables. Furthermore, it is worth noting that the value of Cronbach’s alpha coefficient of the questionnaire (18 questions were left after removing factor loading less than 0.3) is 0.760.
Third, AVE evaluated the convergent validity of each construct. The AVE values range from 0.502 to 0.522. Since the values of the AVE are greater than 0.5, the minimum requirement is reached [64]. Furthermore, the CR ranges from 0.795 to 0.860, so items (constructs) are considered to be matched with questions given to the respondents.
The CFA technique is also used to check the eligibility of the variables selected for the research model. Since the values of the VIF for all constructs are greater than 3 and less than 5, the variables are moderately correlated and there is no problem with collinearity [65]. This allows continuing to analyse the structural model reliability indicators.
The value of the effect size presented as a correlation coefficient shows that the research model has average predictability in the following paths:
H1. Education system and educational culture → Modernisation of the country.
H2. Social situation and socio-economic integration → Modernisation of the country.
H3. The legal system and public governance, and the importance of citizenship → Modernisation of the country.
Furthermore, the unadjusted coefficient of determination R2 for the construct ‘modernisation of the country‘ in the context of social environmental sustainability is equal to 0.511 and is equivalent to 51.1% of the variance, so it shows that 51.1% of the movement in the dependent variable can be explained by the independent variables.
The structural model is appropriate for testing the hypotheses, according to all of the mentioned indications. The path coefficients that were obtained are shown in Table 5. The hypotheses put forth for the study’s purposes were validated. From the methodological point of view, it was found that the opinion of the modernisation of the country in the context of social environmental sustainability of the respondents is a heterogeneous empirical construct (structural model), but it is composed of three different groups (constructs), which were given names summarizing the highlighted statements, taking into account the raised hypotheses.
The results of the SEM analysis supported the conceptual research model.

5. Discussion

The derived results of our research can clearly be separated into two different groups of applied and theoretical significance. From the applied perspective, we reveal that Lithuanian infrastructure is relatively inadequate for the development of a modern society, as statements such as ‘Changes are needed in the Lithuanian education system’ and ‘Innovative solutions are needed for changes to occur in Lithuanian education’ show very high means 4.57 and 4.66, respectively. Additionally, the statement ‘There are suitable conditions for raising children in Lithuania’ received quite a low score, 3.56. These findings correspond to [71] insights into the outdated nature of student education practices in Lithuania. It also echoes [72] a call for more rapid implementation of innovations in the Lithuanian educational system. It is revealed that people associate suitable conditions for raising children not only with economic factors, as was assumed [73,74,75], but also with the level of education the state is able to provide. This insight may be of high value to the government or other decision makers when considering policies aimed at improving the well-being of its citizens [76] and achieving a welfare state status [77]. It should be mentioned that this insight is also of particular importance due to the fact that Lithuanian society is characterised by a high degree of paternalism [78], and expects the state to take care of a number of factors that affect their quality of life, which are typically assigned to the citizen’s personal responsibility. From the theoretical standpoint, we enhance the notions of the education system and educational culture by proposing to include various micro-economic factors associated with the quality of life of citizens when analysing the quality of the educational culture in the country. As revealed, citizens clearly associate the conditions for raising children with the educational system/culture of the state.
Analysing the modernisation of the country through the lens of socio-economic integration, it was revealed that although extensively researched [79,80,81,82], at least in Lithuania the integration of disabled people into society did not play a significant part in the modernisation of the state. This once again confirms the statements about the unsatisfactory situation with the integration of various vulnerable societal groups into public life in Lithuania [83]. It is an interesting finding, which contradicts a statement about being tolerant. This discrepancy can also be a prospective research direction, as it would be useful to determine why people, who consider themselves tolerant of various immigrant communities, find the integration of disabled persons a not very important issue. The revealed importance of the transport infrastructure in the modernisation of the Lithuanian state can easily be explained. The developed road and air connection with western European countries not only allows more easy travel for the labour migrant, who then sends remittances to their relatives within the country contributing to their standards of living, which are one of the prerequisites for a modern country [84]. Another aspect that emphasizes the importance of travel infrastructure in the modernisation of the country is the flow of ideas and the cultural background. Infrastructure enables people to travel and bring Western thinking patterns [85]. This type of cultural diffusion is even argued to serve the modernisation of the country even more than the adoption of European legal norms and practices [86,87]. Today, the largest amounts of information are being shared online [88]. Social networks are even considered the main source of information that people use for most important decisions [89]. The underdeveloped IT infrastructure revealed may be considered to be one of the main obstacles to the continuous modernisation of the country [90].
Analysing the importance of public administration and citizenship, one can notice quite low scores of public participation in Lithuania. It is an important finding that can explain the relatively low trust in government [78], which, in turn, is reflected in the increasing mistrust among various social groups within the society [91]. This revealed issue also has applied and theoretical implications. It is suggested to increase civic participation not only to increase local social cohesion, as assumed [92], but also to increase the perceived legitimacy of government actions in the eyes of its citizens [93]. From a scientific point of view, this is also an important finding. Until now, modern society has been considered to hardly be achieved without high public/civic participation [94,95,96,97]. Lithuania is considered a developed and modern state [98], although, as our research shows, its citizens perceive public participation as not a very important factor in the emergence of the modern state. The relative factor importance of the item ‘I actively participate in social activities’ compared to ‘Do you belong to any public organizations, associations, committees, societies, or collectives?‘ may confirm [78] insights about the perceived social distance between government and the citizens of Lithuania, which manifests itself through low public participation.

6. Conclusions

All three of our hypotheses raised were confirmed: path coefficients for the H1—0.27, for the H2—0.36 and for the H3—0.41 This means that the biggest impact on the country’s modernisation process through the lens of social environmental sustainability has ‘hard’ determinants such as legal acts and efficiency of the public sector. It means, that even in developed countries legal regulation and government institutions play a decisive role in steering the country’s development path. It is a new finding as previous studies stated, that ‘hard’ factors determined the developing country’s modernisation. We want to emphasize, that when a country reaches the level of a developed nation, the ‘soft’ determinants become focal [99]. So, in order to introduce a coherent and sustainable modernisation of the country regardless of its development level, Governments should aim their steering actions at encouraging more efficient and citizen-oriented public sectors. A slightly lower path coefficient for social support and social integration indicates that although this factor also can be attributed to public services, its role in shaping a country’s modernisation is lower compared to other public services. The research factors show that the slightest challenge in our country during the research period is the quality of education. Such a result indicates that Lithuania is a developed country with a very high level of education services [100]. Hence, the results of our study correlate with the data of previous studies conducted in Lithuania. The emerging importance of social and economic sustainability in the formation of modern society offers a new approach to assessing the emergence of a knowledge society [26]. The main novelty of our research is the proposition of a framework for the assessment of socio-environmental sustainability from the eyes of its citizens. It allows for supplementing the widely accepted ‘hard’ indicators of social environmental indicators [85,86,87,88,89,90,91,92,93,94,95,96,97,98,99,100,101,102] with ‘soft’ indicators reflecting the perceptions of citizens.
Our research confirmed that in the long term, the analysis of the country’s modernisation should be based on the social and environmental sustainability point of view, and the evaluation of the modernisation of the country is carried out in three aspects—through the lens of the education system and the quality of education; social and economic integration; legal system and public administration and citizenship. We note that the evaluation of the country’s education quality should be multifaceted and longitudinal/in the long term/evaluation, including various micro-economic indicators that measure the standard of living in the country. The apparent relative negligence of Lithuanians towards the integration of the disabled is one of the inhibiting factors for the state’s continuous social and economic modernisation. Another factor hindering the further development of Lithuanian society is low public participation; involvement in the consideration of public policy issues.
One of the limitations of our study lay in the fact that we have researched only ‘soft’ indicators reflecting the socio-economic sustainability, i.e., without the ‘hard’ ones. Research combining both groups of indicators may produce slightly different results. Such research could be named as a prospective research direction.
Another limitation may be the preselected research method. We aim to analyse the modernisation of the state through the lens of its citizens based on subjective assessment. On the other hand, such a qualitative reflection of citizens shows the feelings and attitudes of society and is valuable in our research. We acknowledge the fact, that country’s modernisation is a very complex multifaceted phenomenon and citizens may be not competent to assess all of its facets. The inclusion of the expert interview supplemented with some statistical analysis of socio-economic indicators may provide additional insights on the topic.
The future research directions revealed could also be aimed at investigating factors that lead to the fact that people consider themselves tolerant toward various immigrant groups present in their country, although they show relative disregard for the needs of disabled citizens of their own country. Another avenue of prospective research is associated with further investigation of the overlooked factors that have an impact on the perceived quality of the educational culture of the country. The revealed importance of some economic indicators allows us to presume that there are more peripheral components which, in the eyes of the citizens, have an impact on the level of educational culture within the country.

Author Contributions

Conceptualization, O.N., I.M.-K., R.Č., M.M. and A.V.; methodology, O.N., I.M.-K., R.Č., M.M. and A.V.; software, O.N.; validation, O.N., I.M.-K., R.Č., M.M. and A.V.; formal analysis, O.N., I.M.-K., R.Č., M.M. and A.V.; investigation, O.N., I.M.-K., R.Č., M.M. and A.V.; resources, O.N., I.M.-K., R.Č., M.M. and A.V.; data curation, O.N., I.M.-K., R.Č., M.M. and A.V.; writing—original draft preparation, O.N., I.M.-K., R.Č., M.M. and A.V.; writing—review and editing, O.N., I.M.-K., R.Č., M.M. and A.V.; visualization, O.N., I.M.-K., R.Č., M.M. and A.V.; supervision, O.N.; project administration, O.N.; funding acquisition, O.N. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by the Research Council of Lithuania (LMTLT) under project agreement No. S-MOD-21-10. The funder had no role in the design of the study; in the collection, analysis or interpretation of data; in the writing of the manuscript; or in the decision to publish the results.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Informed consent was obtained from all subjects involved in the study.

Data Availability Statement

The data of this study are available from the authors upon request.

Conflicts of Interest

The authors declare no conflict of interest. The funder had no role in the design of the study; in the collection, analyses, or interpretation of data; in the writing of the manuscript; or in the decision to publish the results.

Appendix A

Table A1. Calculation table of answers errors.
Table A1. Calculation table of answers errors.
Sample Size (n)
Responses (%)1040751001502002503003504004505006007008009001000
0.11.950.980.720.620.510.440.390.360.330.310.290.280.250.230.220.210.20
0.54.372.191.601.381.130.980.870.800.740.690.650.620.560.520.490.460.44
1.06.173.082.251.951.591.381.231.131.040.980.920.870.800.740.690.650.62
2.08.684.343.172.742.241.941.741.581.471.371.291.231.121.040.970.910.87
3.010.575.293.863.342.732.362.111.931.791.671.581.501.361.261.181.111.06
4.012.156.074.433.843.142.722.432.222.051.921.811.721.571.451.361.281.21
5.013.516.754.934.273.493.022.702.472.282.142.011.911.741.611.511.421.35
6.014.727.365.374.653.803.292.942.692.492.332.192.081.901.761.651.551.47
7.015.817.915.775.004.083.543.162.892.672.502.362.242.041.891.771.671.58
8.016.818.416.145.324.343.763.363.072.842.662.512.382.172.011.881.771.68
9.017.748/876.485.614.583.973.553.243.002.802.642.512.292.121.981.871.77
10.018.599.306.795.884.804.163.723.393.142.942.772.632.402.222.081.961.86
15.022.1311.078.087.005.714.954.434.043.743.503.303.132.262.652.472.332.12
20.024.7912.409.057.846.405.544.964.534.193.923.703.513.202.962.772.612.48
25.026.8413.429.808.496.936.005.374.904.544.244.003.803.463.213.002.832.68
30.028.4014.2010.378.987.336.355.685.194.804.494.234.023.673.393.182.992.84
35.029.5614.7810.799.357.636.615.915.405.004.674.414.183.823.563.313.122.96
40.030.3615.1811.099.607.846.796.075.545.134.804.534.293.923.633.393.203.04
45.030.8315.4211.269.756.896.896.175.635.214.884.604.363.983.693.453.253.08
50.030.9915.5011.329.808.006.936.205.665.244.904.624.384.003.703.463.273.10

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Figure 1. Flowchart for the study of the modernisation of a country in terms of the social environment (compiled by the authors).
Figure 1. Flowchart for the study of the modernisation of a country in terms of the social environment (compiled by the authors).
Sustainability 15 03689 g001
Table 1. Social Progress Index 2022 (based on [58]).
Table 1. Social Progress Index 2022 (based on [58]).
IndicatorsLithuania
Basic human needs88,56
Foundations of well-being81,58
Opportunity80,98
Score83,71
Rank29
Table 2. Sample profile.
Table 2. Sample profile.
VariablesSample DataCensus DataChi-Square Test
Results
Gender: 16.126
Males46546%
Females55654%
Age: 232.563
18–2915615%
30–4933633%
50+52952%
Nationality: 3082.888
Lithuanians91089%
Russians586%
Poles454%
Other nationalities81%
Family income per month: 3038.250
Less than EUR 1000 26226%
EUR 1001–1800 26025%
Above EUR 1800 28528%
DK/NO21421%
Education: 586.744
Graduate, postgraduate596%
Undergraduate university high12212%
Undergraduate non-university Higher (college)11111%
Higher (technical)19119%
Professional qualification27427%
Upper secondary18518%
Lower secondary, incomplete Upper secondary, primary747%
Settlement type: 1039.846
Big cities
(Vilnius, Kaunas, Klaipėda,
Šiauliai, Panevėžys)
43042%
Other towns26626%
Villages, towns with up to 2000 inhabitants32532%
Counties: 606.677
Alytus county434.2%
Kaunas county20119.6%
Klaipėda county11511.2%
Marijampolė county585.6%
Panevėžys county747.2%
Šiauliai county959.3%
Taurine county363.6%
Telšiai county474.6%
Utena county515.0%
Vilnius county30229.6%
Table 3. The descriptive statistics of the researched variables.
Table 3. The descriptive statistics of the researched variables.
ConstructVariableMeanStd Deviation
Education system and educational culture
Changes are needed in the Lithuanian education system4.571.765
Innovative solutions are needed for changes to occur in Lithuanian education4.661.899
There are suitable conditions for raising children in Lithuania3.561.439
How important are these aspects of education to you?3.112.630
Social situation and socio-economic integration
In Lithuania, suitable infrastructure has been developed for the disabled in all areas of life2.861.521
Currently, there is a bad connection between Lithuania and other EU countries3.372.206
In Lithuania, connection between individual
areas is insufficiently developed
3.581.604
The infrastructure of airports in Lithuania lags far behind the EU average4.142.292
Too little attention is paid to traffic safety in Lithuania3.341.521
Alternative fuels for cars are used too little in Lithuania4.302.403
Transport systems between big cities and suburbs are not well coordinated3.991.919
Digital infrastructure is underdeveloped in Lithuania4.382.460
The legal system and public governance, and the importance of citizenship
I am tolerant of other nationalities3.741.113
I follow the principles of healthy lifestyle3.191.181
I actively participate in cultural activities2.611.263
I am actively involved in community activities2.541.214
I actively participate in social activities2.481.171
Do you belong to any public organizations, associations, committees, societies or collectives?
Table 4. Factor loadings and reliability indicators.
Table 4. Factor loadings and reliability indicators.
Constructs and VariablesFactor LoadingsCronbach’s AlphaAVECRVIF
Education system and educational culture 0.7030.5070.7953.642
Changes are needed in the Lithuanian education system0.871
Innovative solutions are needed for changes to occur in Lithuanian education0.853
There are suitable conditions for raising children in Lithuania0.503
How important are these aspects of education to you?0.537
Social situation and socio-economic integration 0.7820.5020.8883.655
In Lithuania, suitable infrastructure has been developed for the disabled in all areas of life0.651
Currently, there is a bad connection between Lithuania and other EU countries0.684
In Lithuania, connection between individual
areas is insufficiently developed
0.658
The infrastructure of airports in Lithuania lags far behind the EU average0.648
Too little attention is paid to traffic safety in Lithuania0.758
Alternative fuels for cars are used too little in Lithuania0.694
Transport systems between big cities and suburbs are not well coordinated0.672
Digital infrastructure is underdeveloped in Lithuania0.871
The legal system and public governance, and the importance of citizenship 0.7840.5220.8602.985
I am tolerant of other nationalities0.502
I follow the principles of healthy lifestyle0.569
I actively participate in cultural activities0.841
I am actively involved in community activities0.892
I actively participate in social activities0.895
Do you belong to any public organizations, associations, committees, societies or collectives?0.501
Table 5. Path coefficients of the structural model.
Table 5. Path coefficients of the structural model.
PathPath Coefficientp-ValueSignificant at
H10.270.0000.001
H20.360.0000.001
H30.410.0000.001
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Navickienė, O.; Meidutė-Kavaliauskienė, I.; Činčikaitė, R.; Morkūnas, M.; Valackienė, A. Modernisation of a Country in the Context of Social Environmental Sustainability: Example of Lithuania. Sustainability 2023, 15, 3689. https://doi.org/10.3390/su15043689

AMA Style

Navickienė O, Meidutė-Kavaliauskienė I, Činčikaitė R, Morkūnas M, Valackienė A. Modernisation of a Country in the Context of Social Environmental Sustainability: Example of Lithuania. Sustainability. 2023; 15(4):3689. https://doi.org/10.3390/su15043689

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Navickienė, Olga, Ieva Meidutė-Kavaliauskienė, Renata Činčikaitė, Mangirdas Morkūnas, and Asta Valackienė. 2023. "Modernisation of a Country in the Context of Social Environmental Sustainability: Example of Lithuania" Sustainability 15, no. 4: 3689. https://doi.org/10.3390/su15043689

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