This paper analyzes the interaction between interpersonal trust (as informal rules and behavior) and trust in banks (as formal rules and institutions) as well as institutional sources of trust. Structural equation modeling and cluster analysis were applied to data from the World Values Survey extracted from the Wave 6 (2010-2014). The results of cross-sectional estimations show complementary view on interaction-a positive link between interpersonal trust and trust in banks. Using cluster method, strong impact of institutional environment (GDP per capita, Education Index, Inequality Index, Rule of Law Index) on the level of interaction has been found. The lowest level of linkages between interpersonal trust and trust in banks is associated with the worst institutional environment, the highest level of impact-with the best institutional environment.
Research background: Because of enabling a greater amount of money circulation and addressing the needs of individuals in specific regions, local and digital currencies have become more important for local economic and sustainable development, especially in last decade. However, their awareness by potential users have become one of major constraints to their extensive usage. In this regard, discount have been used to increase the awareness of individuals. Purpose of the article: As discount is used as an effective promotional tool. This study pays regard to this indicator and aims to investigate whether the discount rate is positively associated with local and digital currency awareness of potential users. Moreover, this research also includes job positions and age of the respondents into the analyses due to potential existence of differences in the awareness of people regarding their characteristics. Methods: The research employs a questionnaire survey and acquires data from 407 workers of a local business in Cieszyn Silesia region of the Czech Republic. The researchers run Binary Logistic Regression analyses in IBM SPSS Software to examine the relationship between these specified variables. Findings & Value added: The research substantiates the fact that potential users who demand more discount rates are more likely to be aware of local and digital currencies. Moreover, potential users who work in lower job positions and demand more discounts are more acquainted with these currencies. Although the existence of a relationship between age and local currency awareness is not proved, older people who demand discounts with higher percentages are more informed about digital currencies than younger individuals. Higher elasticity in discount demand, mutual interactions and relations, such as social media and internet usage of potential users, might be the reasons of these results. This study makes significant contributions to the literature by confirming the significance of individuals’ ages and occupational statuses in the awareness of local and digital currencies and the positive relationship between their discount propensity and awareness.
Research background: The rapid development of digital economy has set off a new wave of enterprise reform. Developing the digital economy is not only an urgent requirement of the current situation, but also an important way to meet the people's better life. Purpose of the article: This paper attempts to reveal the important role of the development of digital technology on the debt financing cost of micro enterprises, and provide micro evidence for the integration of digital economy and real economy. At the same time, this paper wants to provide relevant guidance for formulating digital related policies and reducing the financing cost of the real economy. Methods: Taking China?s A-share listed companies from 2007 to 2020 as a sample, this paper empirically tests the impact of enterprise digital transformation on debt financing cost and its mechanism. In the robustness test, this paper uses the measures of changing independent variables and dependent variables, instrumental variable method and quantile regression method. In the mechanism test, this paper uses the intermediary effect model. In the further study, this paper uses the method of group regression. Findings & value added: The study finds that the digital transformation of enterprises significantly reduces the cost of debt financing. Mechanism tests show that the role of enterprise digital transformation in reducing debt financing costs is mainly realized by reducing information asymmetry and alleviating agency problems. Further tests show that the relationship between enterprise digital transformation and debt financing cost is affected by the degree of market competition, whether it is a high-tech enterprise and audit quality. When the degree of market competition is high, the enterprise is a high-tech one, or it is audited by the four major international accounting firms, the effect of enterprise digital transformation on the reduction of debt financing cost is more significant. The method used in this paper is also applicable to the study of other economic management problems. This paper proves a positive significance of digital transformation, which is conducive to promoting the digital transformation of enterprises. Especially for those enterprises in non-high-tech industries, they should speed up the pace. At the same time, this paper has a certain guiding role for the introduction and implementation of policies to encourage digital transformation.
Research background: Preparation for retirement is a major concern for the people in the workforce as they have to encounter considerable difficulties in making the right investment decisions for their retirement. Purpose of the article: This research extends the literature on personal finance by investigating the impact of both financial literacy levels and pension knowledge on employees’ investment choice decision for their retirement, while in previous literature the role of these factors has mainly been explored separately. Methods: To conduct the research, a survey questionnaire was applied to collect data in three main regions of Vietnam comprising Northern, Central and Southern Vietnam. Data collection was made in 2018, in which 427 valid questionnaires were used for data analysis from 700 questionnaires. Two estimation methods are employed for analysis in this study, including a linear probability model (LPM) and two-stage least squares (2SLS) model. The findings of this research remain significant after the Two-Stage Least Squares (2SLS) regression model is used as an estimation technique to eliminate potential bias caused by endogenous problems. Finding & Value added: The results show that basic financial literacy level and pension knowledge are principal factors which significantly increase the probability of exercising retirement investment choice of employees, while advanced financial literacy level factor has a significant effect on choosing growth investing options for their retirement. Further, this research finds that there is no correlation between employees’ financial risk tolerance and their retirement investment choice. Furthermore, the study proposes and offers new evidence that pension knowledge is a decisive factor providing employees with encouragement to exercise retirement investment choice and those who consult with financial advisors tend to take part in growth investing option.
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