Next Article in Journal
The Consequences of Spatial Inequality for Adolescent Residential Mobility
Previous Article in Journal
Exploring the Experiences of Heterosexual and Asexual Transgender People
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

Introduction of a New Mobile Player App Store in Selected Countries of Southeast Asia

1
Faculty of Management, Comenius University in Bratislava, Odbojárov 10, P.O.BOX 95, 82005 Bratislava, Slovakia
2
Faculty of Economics, Matej Bel University in Banská Bystrica, Tajovského 10, Banská Bystrica 97590, Slovakia
3
Faculty of Wood Science and Technology, Technical University in Zvolen, T. G. Masaryka 24, 96053 Zvolen, Slovakia
4
Faculty of Multimedia Communications, Tomas Bata University in Zlín, 2431 Stefanikova Str., 76001 Zlín, Czech Republic
*
Author to whom correspondence should be addressed.
Soc. Sci. 2018, 7(9), 163; https://doi.org/10.3390/socsci7090163
Submission received: 12 July 2018 / Revised: 28 August 2018 / Accepted: 13 September 2018 / Published: 15 September 2018
(This article belongs to the Section Social Economics)

Abstract

:
Trends in modern society have a significant impact on the way organizations operate. The use of mobile phones makes it possible to create completely new high-availability communication and business channels. Mobile phones are used in mobile marketing, which has come to the fore via SMS marketing. In this article, the focus is on the use of mobile phones in e-business. The introduction of a new mobile player app store was analyzed through research conducted in 2017. The aim of the research was to find out whether it is possible—in terms of the sustainability of the consumption of a marketing product—to introduce a single campaign with the same content but in different language mutations in selected markets, or whether it is necessary to use a completely different campaign and means of communication for each market. Overall, 287 respondents from the Philippines, Thailand, and India were examined. The dependency between the socio-demographic characteristics of the respondents (country, gender, and age) and site engagement was tested, and user experience was tested, too. The results of the research revealed that there was no dependency between belonging to the selected countries and site engagement. Furthermore, there was also no dependency between gender and site engagement. On the other hand, there was a statistically significant dependency between belonging to the country and the design of the website.

1. Introduction

The third millennium is linked to globalization, the rapid development of information, and communication technologies. In addition to these trends, the modern economy is characterized by growth in both consumption and information. The role of national governance is to ensure the social responsibility and sustainable development of all actors in the economic sphere. In the corporate sector, these trends are reflected in the introduction of innovations which make it possible to implement a new way of business.
The rapid development of new technologies also penetrates marketing (Aretoulis 2018; Čierna et al. 2017; Waheed and Yang 2017; Zaborova et al. 2017; Hiadlovský et al. 2016; Malichova et al. 2016; Hockicko et al. 2015; Tokarčíková and Kucharčíková 2015; Jaroslav et al. 2013; Li and Zhang 2013; Kuzman et al. 2012; Chu et al. 2011; Deng et al. 2009; Metke 2006). A few years ago, people watched the same media, and so advertising could act simultaneously for several million consumers. Currently, consumers have unlimited opportunities, so the classical media that used to promote advertising messages have lost their position (Tsai et al. 2017; Parobek et al. 2016; Liu et al. 2018; Marsden and Chaney 2013; Vysekalová and Mikeš 2007). In this context, the mobile phone is becoming increasingly relied upon to create completely new communications and business channels with high availability. Mobile phones are used in e-business, which can be defined as the use of the internet to network and empower business processes, electronic commerce, organizational communication, and collaboration within a company and with its customers, suppliers, and other stakeholders (Combe 2006). The advantage is that customers, suppliers, and other stakeholders can be placed anywhere in the world, in other time zones, possibly speaking different languages and paying in different currencies. Currently, in this respect, mobile phones know no boundaries (Brzozowska and Bubel 2015).
Mobile phones are considered to be one of the latest technological inventions that affect a company’s marketing activities. Mobile phones—in particular smartphones—are used in the promotion of goods and services (Bakopoulos et al. 2017; Wu and Stilwell 2017; Berman 2016; Dovaliene et al. 2015; Lim et al. 2015; Öztaş 2015; Mirchev and Dicke 2011). Marketing activities are provided through a ubiquitous network, to which consumers are constantly connected by using a personal mobile device (Kaplan 2012). It can be multilateral or bilateral communication and promotion between the company and its customers (Shankar and Balasubramanian 2009). Marketing activities take place through wireless mobile technologies using services such as SMS (Short Message Service), MMS (Multimedia Messaging Service), WAP (Wireless Application Protocol), third-generation network, or other technology (Ližbetinová 2017; Persaud and Azhar 2012; Smutkupt et al. 2010; Leppäniemi et al. 2006; Částek and Škapa 2005; Dickinger et al. 2004).
The high penetration of mobile phones shows that they have become a widespread mass media. Thanks to the fact that almost all people now own a mobile phone, communication has become simpler and faster. This enables mobile marketing to reach a much wider and more diverse audience. Promotional campaigns via mobile devices are faster, easier, and cheaper to create and launch. Users can save information to their device, which they can retrieve and use whenever necessary at anytime and anywhere. Customer communication is personal, direct, targeted, and it has an immediate impact on customers (Musová 2015). Because users have their mobile phones on their person almost at all times, they receive messages right after they are sent. Therefore, user responses can be tracked in real-time. In addition, after getting feedback, marketers can better understand and analyze user behavior and thereby improve their products and services (Wilhite 2012; Michael and Salter 2006).
In order to maximize the efficiency of promotional campaigns, companies need to consider different factors affecting consumer behavior, such as cultural (the society, culture, sub-culture, and social class system in which a person grows and lives), social (the family, family life cycle, and social class to which an individual belongs), personal (life cycle stage, occupation, financial and economic conditions, lifestyle, personal situation, self-concept, and personality), psychological (internal and external motivation, perceptions, beliefs, and attitudes), and individual (age, gender, education level, income), as presented in Figure 1 (Abdolmaleki et al. 2018; SivaKumar and Gunasekaran 2017; Anisimova 2016; He et al. 2016; Olšiaková 2003).
The key to a successful marketing strategy is to take these factors into account because it is demanding to address and engage customers correctly, especially if the target customer group comes from completely different social classes, and from other geographic locations with diverse beliefs. It is confirmed by international literature (i.e., Kim and Baek 2018; Benda-Prokeinová et al. 2017; Lin et al. 2017; Ližbetinová 2017; Musa et al. 2017; Xu et al. 2017; Grencikova et al. 2016; Knapcova and Kucharcikova 2015; Venkatesh et al. 2012). The research of Kim et al. (2015) demonstrates that socio-demographic characteristics (e.g., gender, age, education, and income) are the main predictors for mobile applications. Studies by Seneviratne et al. (2014a, 2014b) investigated the relationship between mobile apps and user attributes such as gender, religion, country, and language. The results showed that user gender can be predicted with an accuracy of 70%, and most of their personality traits with an accuracy of over 90%. Gender differences were also confirmed by the research of Unal et al. (2017). Liu et al. (2018) highlight gender differences in the average amount of money spent on online shopping. Kim et al. (2015) further found that women tend to make greater use of e-commerce applications. According to Kraft and Weber (2012), women meet long-term needs while men look to meet immediate, short-term needs. The findings of Bazhan et al. (2018) show that women have quite diverse preferences.
Understanding the individual socio-demographic characteristics of consumers allows programmers to understand preferences, and therefore to better customize mobile applications to their users (Unal et al. 2017). This is a key process for properly designing and targeting advertisements (Hsu and Chen 2018; Tarute et al. 2017; Li and Zhang 2013; Venkatesh et al. 2012).

2. Methodological Approach

In the context of e-business, the introduction of a new mobile player app store was investigated. Different studies address this issue (Li et al. 2017; Bastinos et al. 2014; Marmol et al. 2014; Roman et al. 2014; Ok et al. 2013; Pagano and Maalej 2013). Our research is a joint venture project between a Slovak company and an Asian mobile game reseller. A blockchain was created between 2016 and 2017 to sell any digital content (video, audio, e-books, etc.). Compared to traditional sales, the advantage of this solution lies in the fact that intermediaries (i.e., third parties) are excluded from the buying and selling process, which leads to a reduction of commission costs that have disproportionately increased the final cost of digital content sold to end users.
The research was conducted through the purchase of a research panel in 2017. When designing a campaign for the Philippines, Thailand, and India, ethnic, religious, cultural, and linguistic differences were taken into account, as these are markets where consumers—in comparison to European ones—have a completely different mentality, religion, and perception of reality, as well as different habits. The aim of this research was to determine if it is possible—in terms of the sustainability of the consumption of a marketing product—to launch a single campaign aimed at all markets using the same content but different languages, or whether it is necessary to use a completely different campaign and means of communication for each market.
Altogether, 317 respondents from the Philippines, Thailand, and India were addressed. In total, 287 questionnaires were used for statistical evaluation. The return rate was 90.54%. Table 1 shows the sample size.
The model presented in Figure 1 shows that there is a wide spectrum of different factors affecting consumer behavior. The research was focused on the individual factors—mainly socio-demographic characteristics.
At the level of significance α = 5%, in the context of inductive statistics through the Chi-square goodness of fit test, the dependency between the two categorical variables was verified. Two scientific hypotheses were tested:
Hypothesis 1 (H1).
Is there a dependency between the socio-demographic characteristics of the respondents (country, gender, and age) and site engagement of visitors?
Hypothesis 2 (H2).
Is there a dependency between the socio-demographic characteristics of the respondents (country, gender, and age) and the user experience?
If the calculated p-value was less than the chosen significance level (α = 5%), we rejected the zero hypothesis H0 of the Chi-square test (Pacáková 2009; Rimarčík 2007) and support H1 (i.e., the statistically significant dependence between socio-demographic characteristics and the site engagement, as well as user experience). The categorical data, at which statistically significant dependency was confirmed, are presented in the table of residual abilities (observed/theoretical). Looking at the table, it can be seen where dependency was most visible.
This project, aiming to introduce a new mobile app store built on blockchain technology, can serve as a test for modern communication media, such as: advertising space directly in the app store; web/banner campaigns; video campaigns; campaigns through affiliate programs; social networking campaigns; sales promotion campaigns using influencers such as bloggers, YouTubers, and chatters in new discussion forums; push notification campaigns; and SMS campaigns. The aim of the article is to explore whether a single e-business marketing campaign can be launched in the selected Southeast Asian countries.

3. Results

In the first step, the H1 hypothesis (Is there a dependency between the socio-demographic characteristics of the respondents (country, gender, and age) and visitor site engagement?) was tested.
Based on the contingency coefficient presented in Table 2, it can be concluded that there was a slight dependency between the country and site engagements. Following the results in Table 2, the Chi-square test presented no statistically significant dependency on the country’s relevance and site engagement.
In all countries analyzed, the site engagement was above 80% (Table 3).
Table 4 presents the dependence between the country and site engagement. The contingency coefficient (Table 5) presented a slight dependence between the gender and site engagements. Based on the Chi-square test results (Table 5), there was no statistically significant dependence between gender and the site engagement.
From the point of view of gender, there was high site engagement, at the level of 80% (Table 6). Table 7 presents the dependence between gender and site engagement. Table 8 presents the contingency coefficient. It can be concluded that there was a slight dependence between age and site engagement. Based on the Chi-square results (Table 8), there was no statistically significant dependence between age and site engagement. Against the age group of respondents, there was a high interest in the site engagement of over 79% (Table 9). Table 10 presents the dependence between age and site engagement. As age increased, the level of interest grew.
In the following step, the H2 hypothesis was tested. The dependence between the socio-demographic characteristics of the respondents (country, gender, and age) and the user experience was tested.
Based on the contingency coefficient presented in Table 11, it can be concluded that there was a stronger dependence between the country and user experience. Based on the Chi-square results presented in Table 11, there was a statistically significant dependence between the country and the user experience. Table 12 presents the user experience in the countries analyzed. Dependence between the country and the user experience is presented in Table 13.
A slight dependence between age and the user experience based on the results of the contingency coefficient is presented in Table 8. Based on the results presented in Table 14 and the Chi-square results, it can be stated that there was no statistically significant dependency between age and the user experience.
The user experience according to the age group analyzed is presented in Table 15. It can be stated that for most respondents, the user experience was characterized as calm/peaceful. Table 16 presents the dependence between age and the user experience.
The results of the contingency coefficient presented in Table 17 indicate a slight dependence between gender and the user experience. No statistically significant dependence between gender and the user experience was confirmed by the Chi-square results (Table 17).
Table 18 presents the user experience according to gender. For most respondents, the user experience was characterized as calm/peaceful. Gender dependency and the user experience is presented in Table 19.

4. Discussion and Conclusions

Increasing customer diversity is exerting pressure on businesses to keep track of current trends, adjust to them, and reach a strong market position with comprehensive marketing activities (Van Kerrebroeck et al. 2017; Krasnova et al. 2017; Gejdoš and Danihelová 2015; Ďurišová et al. 2015; Gubiniová and Bartáková 2014; Pyatnitskaya 2013; Cambal et al. 2012; Strišš 2008; Vaštíková 2008). Old methods of marketing communications are not bad, but if a company wants to be a step ahead of its competition, and if it wants to be more effective in addressing increasingly demanding customers, it must adapt to these trends and include them in its processes. The same view is shared by the research of Chernova et al. (2018). The authors argue that in order to increase the effectiveness of commercial activities, PR and marketing specialists have to use new technologies, marketing tools, and non-standard approaches to mass communications.
Due to the opportunities brought about by the digital revolution, customer behavior has changed significantly. Customers are less tolerant, less loyal, more informed, and they are becoming multichannel users (Urbancova et al. 2017; Ližbetín et al. 2016; Poliacikova and Vaclavikova 2016; Fu et al. 2015; Buehlmann et al. 2013). Therefore, in an effort to secure and maintain a strong competitive position, companies are looking for new ways to impress the customer and raise awareness of the brand and its products (Javorčíková 2017; Korauš et al. 2018; Mayett-Moreno et al. 2018; Ďuračík et al. 2017; Gamache et al. 2017; Lee 2017; Stacho et al. 2015; Makhnush and Oliynyk 2011).
In our research, we explored the introduction of a new mobile player app store. The research was conducted in 2017 by purchasing a research panel. With a sample of 287 respondents, we analyzed whether a single marketing campaign could be conducted for selected countries in Southeast Asia. Based on the results of Chi-square tests, we could define statistically significant dependencies between the socio-demographic characteristics of respondents (country, gender, and age) and the selected analyzed factors.
In the H1 research hypothesis as to whether there is a dependency between the socio-demographic characteristics of the respondents (country, gender, and age) and the site engagement, it can be concluded that—based on the results of the Chi-square test—there was no statistically significant dependency between the country and the site engagement, there was no statistically significant dependency between age and the site engagement, and there was no statistically significant dependency between gender and the site engagement. This analysis did not confirm H1.
In the H1 hypothesis, as to whether there is a dependency between the socio-demographic characteristics of the respondents (country, gender, and age) and the user experience, it can be concluded that—based on the results of the Chi-square tests—there was a statistically significant dependency between the country and the user experience, there was no statistically significant dependency between age and the user experience, and there was no statistically significant relationship between gender and the user experience. In our analysis, we confirmed H2 in only one of three demographic characteristics, and in two the input assumption was not confirmed. Thus, H2 was rejected.
Looking at the analyses and practical benefits of the research, it is clear that in the field of e-business in the analyzed countries it is possible to carry out marketing campaigns uniformly, because there was no statistically significant dependency between the analyzed characteristics and the selected results of the marketing survey. In the field of e-business, mobile marketing has great potential. If a company uses the right combination of marketing communication tools, the final effect of advertising can be multiplied, leading to an increased demand for products and the sustainability of the product consumption (Wilhite 2012; Michael and Salter 2006).
Future research can be provided in comparing European and Asian markets, as well as other markets around the world. Due to the globalization of the world market, it is possible to analyze the similarities between marketing campaigns in different parts of the world. Research is a rather limited by necessary method by which to obtain additional data from markets in various other countries.

Author Contributions

Conceptualization, P.S., M.V., J.M., S.L., M.H. and D.W.; Methodology, J.M., M.H., S.L.; Software, J.M. and M.H.; Validation, P.S. and M.H.; Formal Analysis, J.M., M.H. and S.L.; Investigation, J.M. and M.H.; Resources, P.S., M.V., J.M., S.L., M.H. and D.W.; Data Curation, J.M. and M.H.; Writing-Original Draft Preparation, P.S., M.V., J.M., S.L., M.H. and D.W.; Writing-Review & Editing, P.S., M.V., J.M., S.L., M.H. and D.W.; Visualization, M.H. and S.L.; Supervision, P.S., M.V., M.H.; Project Administration, M.H. and S.L.; Funding Acquisition, M.H. and S.L.

Funding

This research was funded by VEGA grant number 1/0024/17, VEGA grant number 1/0116/18 and APVV grant number 16-0297.

Conflicts of Interest

The authors declare no conflicts of interest.

References

  1. Abdolmaleki, Hossein, Zahra Sadat Mirzazadeh, and Ebrahim Alidoust Ghahfarokhhi. 2018. Identify and prioritise factors affecting sports consumer behaviour in Iran. International Journal of Sport Management and Marketing 18: 42–62. [Google Scholar] [CrossRef]
  2. Anisimova, Tatiana. 2016. Integrating Multiple Factors Affecting Consumer Behavior Toward Organic Foods: The Role of Healthism, Hedonism, and Trust in Consumer Purchase Intentions of Organic Foods. Journal of Food Products Marketing 22: 809–23. [Google Scholar] [CrossRef]
  3. Aretoulis, Georgios. 2018. Gender based perception of successful construction of project managers’ attributes. Social Sciences 7: 112. [Google Scholar] [CrossRef]
  4. Bakopoulos, Vassilis, John Baronello, and Rex Briggs. 2017. How brands can make smarter decisions in mobile marketing: Strategies for improved media-mix effectiveness and questions for future research. Journal of Advertising Research 57: 447–61. [Google Scholar] [CrossRef]
  5. Bastinos, Ana Sasa, Peter Haase, Georg Heppner, Stefan Zander, and Nadia Ahmed. 2014. ReApp store—A semantic AppStore for applications in the robotics domain. Paper presented at the Industry Track at the International Semantic Web Conference 2014, Riva del Garda, Italy, October 19–23. [Google Scholar]
  6. Bazhan, Marjan, Naser Kalantari, Nastaran Keshavarz-Mohammadi, Hedayat Hosseini, Hassan Eini-Zinab, and Hamid Alavi-Majd. 2018. Applying social marketing mix to identify consumers’ preferences towards functional dairy products in Iran. Nutrition and Food Science 48: 45–60. [Google Scholar] [CrossRef]
  7. Benda-Prokeinová, Renata, Kamil Dobeš, Ladislav Mura, and Ján Buleca. 2017. Engel’s Approach as a tool for estimating consumer behaviour. E & M Ekonomie a Management 20: 15–29. [Google Scholar] [CrossRef]
  8. Berman, Barry. 2016. Planning and implementing effective mobile marketing programs. Business Horizons 59: 431–39. [Google Scholar] [CrossRef]
  9. Brzozowska, Anna, and Dagmara Bubel. 2015. E-business as a new trend in the economy. Procedia Computer Science 65: 1095–104. [Google Scholar] [CrossRef]
  10. Buehlmann, Urs, Matt Bumgardner, and Michael Sperber. 2013. How small firms contrast with large firms regarding perceptions, practices, and needs in the U.S. secondary woodworking industry. BioResources 8: 2669–80. [Google Scholar] [CrossRef]
  11. Cambal, Milos, Dagmar Caganova, and Jana Sujanova. 2012. The industrial enterprise performance increase through the competency model application. Paper presented at the 4th European Conference on Intellectual Capital (ECIC), Helsinki, Finland, April 23–24. [Google Scholar]
  12. Částek, Ondrej, and Radoslav Škapa. 2005. Faktory Ovlivňující Osvojení Mobilních Služeb: Mezikulturní Porovnání, Vývojové Tendence Podniků. Brno: Masarykova univerzita v Brně. [Google Scholar]
  13. Chernova, Dana V., Anastasia N. Skvortsova, Ekaterina V. Loginova, Sergey S. Sariev, and Anastasia Y. Polshinskaya. 2018. Social networks as a tool of marketing communications in the commodity and service market. Paper presented at 5th National scientific and practical conference on Perspectives on the use of New Information and Communication Technology (ICT) in the Modern Economy, Pyatigorsk, Russian Federation, February 1. [Google Scholar]
  14. Chu, Hai-Cheng, Der-Jiunn Deng, and Jong Hyuk Park. 2011. Live data mining concerning social networking forensics based on a Facebook session through aggregation of social data. IEEE Journal on Selected Areas in Communications 29: 1368–76. [Google Scholar] [CrossRef]
  15. Čierna, Helena, Erika Sujová, Patrycja Hąbek, Elena Horská, and Zuzana Kapsdorferová. 2017. Learning organization at higher education institutions in the EU: Proposal for implementing philosophy of learning organization—Results from research. Quality and Quantity 51: 1305–20. [Google Scholar] [CrossRef]
  16. Combe, Colin. 2006. Introduction to E-Business. Burlington: Elsevier. [Google Scholar]
  17. Deng, Der-Jiunn, Rung-Shiang Cheng, Heng-Jia Chang, Hui-Tang Lin, and Ruay-Shiung Chang. 2009. A cross-layer congestion and contention window control scheme for TCP performance improvement in wireless LANs. Telecommunication Systems 42: 17–27. [Google Scholar] [CrossRef]
  18. Dickinger, Astrid, Parissa Haghirian, Jamie Murphy, and Arno Scharl. 2004. An investigation and conceptual model of SMS marketing. Paper presented at the Hawaii International Conference on System Sciences, January 5–8. [Google Scholar]
  19. Dovaliene, Aiste, Akvile Masiulyte, and Zaneta Piligrimiene. 2015. The relations between customer engagement, perceived value and satisfaction: The case of mobile applications. Procedia-Social and Behavioral Sciences 213: 659–64. [Google Scholar] [CrossRef]
  20. Ďuračík, Michal, Emil Kršák, and Patrik Hrkút. 2017. Current Trends in Source Code Analysis, Plagiarism Detection and Issues of Analysis Big Datasets. Procedia Engineering 192: 136–41. [Google Scholar] [CrossRef]
  21. Ďurišová, Mária, Lukáš Falát, and Eva Malichová. 2015. The influence of business intelligence on digital marketing and the economic situation of the enterprise. Paper presented at the International Scientific Conference Marketing Identity: Digital Life, Smolenice, Slovakia, November 10–11. [Google Scholar]
  22. Fu, Tao, Chenguang Li, Liping Guo, and Yanni Wang. 2015. How we view competitions between the converging Internet social platforms: Does higher user number mean the final victory? International Journal of Modern Physics C 26. [Google Scholar] [CrossRef]
  23. Gamache, Shelby L., Omar Espinoza, and Matthew Aro. 2017. Professional consumer perceptions about thermally modified wood. BioResources 12: 9487–501. [Google Scholar] [CrossRef]
  24. Gejdoš, Miloš, and Zuzana Danihelová. 2015. Valuation and timber market in the Slovak Republic. Procedia Economics and Finance 34: 697–703. [Google Scholar] [CrossRef]
  25. Grencikova, Adriana, Jana Spankova, and Marcel Kordos. 2016. Entry of a new generation “millenians” on the labor market. Paper presented at the 3rd International Multidisciplinary Scientific Conferences on Social Sciences and Arts, SGEM 2016, Albena, Bulgaria, August 24–31. [Google Scholar]
  26. Gubíniová, Katarína, and Gabriela Pajtinková Bartáková. 2014. Customer experience management as a new source of competitive advantage for companies. Paper presented at the 5th International Scientific Conference on Trade, International Business and Tourism: Application of Knowledge in Process of Business Dynamization in Central Europe, Mojmirovce, Slovakia, October 16–17. [Google Scholar]
  27. He, Ai-zhong, Tom Cai, Tian-xiang Deng, and Xue Li. 2016. Factors affecting non-green consumer behaviour: An exploratory study among Chinese consumers. International Journal of Consumer Studies 40: 345–56. [Google Scholar] [CrossRef]
  28. Hiadlovský, Vladimír, Ivana Rybovičová, and Miroslava Vinczeová. 2016. Importance of liquidity analysis in the process of financial management of companies operating in the tourism sector in Slovakia: An empirical study. International Journal for Quality Research 10: 799–812. [Google Scholar] [CrossRef]
  29. Hockicko, Peter, L’uboš Krišt’ák, and Miroslav Němec. 2015. Development of students’ conceptual thinking by means of video analysis and interactive simulations at technical universities. European Journal of Engineering Education 40: 145–66. [Google Scholar] [CrossRef]
  30. Hsu, Chia-Lin, and Mu-Chen Chen. 2018. How gamification marketing activities motivate desirable consumer behaviors: Focusing on the role of brand love. Computers in Human Behavior 88: 121–33. [Google Scholar] [CrossRef]
  31. Jaroslav, Dado, Janka Táborecká Petrovicová, Riznic Dejan, and Tamara Rajic. 2013. Linking service quality and satisfaction to behavioural intentions in higher education setting. Ekonomicky casopis 61: 578–96. [Google Scholar]
  32. Javorčíková, Jana. 2017. Motivation, engagement and achievement in the EFL literature class: 21st century perspectives. Teaching literature for the 21st Century. Available online: https://slovakedu.com/_files/200004066-6ce696de0f/TL21c-Javor%C4%8D%C3%ADkov%C3%A1.pdf (accessed on 2 July 2018).
  33. Kaplan, Andreas M. 2012. If you love something, let it go mobile: Mobile marketing and mobile social media 4x4. Business Horizons 55: 129–39. [Google Scholar] [CrossRef]
  34. Kim, Seeun, and Tae Hyun Baek. 2018. Examining the antecedents and consequences of mobile app engagement. Telematics and Informatics 35: 148–58. [Google Scholar] [CrossRef]
  35. Kim, Yeolib, Daniel A. Briley, and Melissa G. Ocepek. 2015. Differential innovation of smartphone and application use by sociodemographics and personality. Computers in Human Behavior 44: 141–47. [Google Scholar] [CrossRef]
  36. Knapcova, Dominika, and Alžbeta Kucharcikova. 2015. The status of women on the regional labour market. Paper presented at International Scientific Conference on Knowledge for Market Use—Women in Business in the Past and Present, Olomouc, Czech Republic, September 10–11. [Google Scholar]
  37. Korauš, Antonín, Michal Mazák, and Ján Dobrovič. 2018. Quantitative analysis of the competitiveness of Benelux countries. Entrepreneurship and Sustainability Issues 5: 1069–83. [Google Scholar] [CrossRef]
  38. Kraft, Heather, and J. Michael Weber. 2012. A look at gender differences and marketing implications. International Journal of Business and Social Science 3: 247–53. [Google Scholar]
  39. Krasnova, Hanna, Natasha F. Veltri, Nicole Eling, and Peter Buxmann. 2017. Why men and women continue to use social networking sites: The role of gender differences. Journal of Strategic Information Systems 26: 261–84. [Google Scholar] [CrossRef]
  40. Kuzman, Manja, Darko Motik, Kristina Bičanić, Richard Vlosky, and Leon Oblak. 2012. A comparative analysis of consumer attitudes on the use of wood products in Slovenia and Croatia. Drvna Idustrija: Znanstveni časopis za pitanja drvne tehnologije 63: 71–79. [Google Scholar] [CrossRef]
  41. Lee, You Kyung. 2017. A comparative study of green purchase intention between Korean and Chinese Consumers: The moderating role of collectivism. Sustainability 9: 1930. [Google Scholar] [CrossRef]
  42. Leppäniemi, Matti, Heikki Karjaluoto, Jaakko Sinisalo, and Jari Salo. 2006. Integrated marketing communications in mobile context. In International Advertising and Communication. Wiesbaden: DUV, pp. 397–415. [Google Scholar]
  43. Li, Chong Guo, and Ying Angela Zhang. 2013. CAS Simulation Study on the Cluster Innovation Network Structure Influences Innovative Capacity. Paper presented at the 2nd International Conference on Social Science and Education, Hong Kong, China, December 24–25. [Google Scholar]
  44. Li, Lisha, Liang Ma, Pei-Luen Patrick Rau, and Qin Gao. 2017. A pilot study of mining the differences in patterns of customer review text between US and China AppStore. Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) 10281: 693–702. [Google Scholar] [CrossRef]
  45. Lim, Soo Ling, Peter Bentley, Natalie Kanakam, Fuyuki Ishikawa, and Shinichi Honiden. 2015. Investigating country differences in mobile app user behavior and challenges for software engineering. IEEE Transactions on Software Engineering 41: 40–64. [Google Scholar] [CrossRef]
  46. Lin, Xiaolin, Mauricio Featherman, and Saonee Sarker. 2017. Understanding factors affecting users’ social networking site continuance: A gender difference perspective. Information & Management 54: 383–95. [Google Scholar] [CrossRef]
  47. Liu, Xuanzhe, Huoran Li, Xuan Lu, Tao Xie, Qiaozhu Mei, Feng Feng, and Hong Mei. 2018. Understanding diverse usage patterns from large-scale appstore-service profiles. IEEE Transactions on Software Engineering 44: 384–411. [Google Scholar] [CrossRef]
  48. Ližbetín, Ján, Petr Vejs, Zdeněk Caha, Lenka Ližbetinová, and Philip Michalk. 2016. The possibilities of dynamic shipment weighing in rail freight transport. Communications - Scientific Letters of the University of Zilina 18: 113–17. [Google Scholar]
  49. Ližbetinová, Lenka. 2017. Attitude college students in the South Bohemian region to opportunities of increasing employability in the labour market. Paper presented at the 20th International Colloquium on Regional Sciences, Kurdejov, Czech Republic, June 14–16. [Google Scholar]
  50. Ližbetinová, Lenka. 2017. Clusters of Czech consumers with focus on domestic brands. Paper presented at the 29th International-Business-Information-Management-Association Conference, Vienna, Austria, May 3–4. [Google Scholar]
  51. Makhnush, Svetlana Mikhailovna, and Oksana Victorivna Oliynyk. 2011. Rebranding as a way of company long-lasting existence in the market. Marketing and Management of Innovations 3: 143–50. [Google Scholar]
  52. Malichova, Eva, Mária Durisova, and Alžbeta Kucharcikova. 2016. The influence of selected tools of economic policy on managerial decision making on investments. Paper presented at 27th International Business Information Management Association Conference, Milan, Italy, May 4–5. [Google Scholar]
  53. Marmol, Felix Gomez, Gregor Rozinaj, Sebastian Schumann, Ondrej Labaj, and Juraj Kacur. 2014. Smart AppStore: Expanding the frontiers of smartphone ecosystems. Computer 6: 42–47. [Google Scholar] [CrossRef]
  54. Marsden, Paul, and Paul Chaney. 2013. The Social Commerce Handbook: 20 Secrets for Turning Social Media into Social Sales. New York City: McGraw Hill Professional. [Google Scholar]
  55. Mayett-Moreno, Yesica, Jennie Sheerin Popp, Mauricio Sabogal-Salamanca, Sandra Rodríguez-Piñeros, Edith Salomé-Castañeda, and Daniel Alberto Flores-Alonso. 2018. Consumers’ and retailers’ attitudes towards a Mexican native species of Aztec lily as an ornamental plant. Sustainability 10: 224. [Google Scholar] [CrossRef]
  56. Metke, Jozef. 2006. M-Marketing Mobilný Telefón Ako Nový Nástroj Marketing. Bratislava: Univerzita Komenského v Bratislave. [Google Scholar]
  57. Michael, Alex, and Ben Salter. 2006. Mobile Marketing: Achieving Competitive Advantage Through Wireless Technology. Amsterdam: Butterworth-Heinemann. [Google Scholar]
  58. Mirchev, Angel, and Philipp Dicke. 2011. Mobile marketing and the usage of a smartphone. Marketing and Management of Innovations 4: 50–54. [Google Scholar]
  59. Musa, Hussam, Lenka Debnárová, Zdenka Musová, and Peter Krištofík. 2017. Gender equality and corporate governance in Slovakia. E & M Ekonomie a Management 20: 98–110. [Google Scholar] [CrossRef]
  60. Musová, Zdenka. 2015. Consumer attitudes to cause related marketing in Slovakia. Acta Oeconomica Universitatis Selye 4: 93–105. [Google Scholar]
  61. Ok, Changsoo, H.-Y. Kang, and Bohyun Kim. 2013. A new collaborative filtering-based recommender system for manufacturing appstore: Which applications would be useful to your business? Lecture Notes in Mechanical Engineering 7: 737–47. [Google Scholar] [CrossRef]
  62. Olšiaková, Miriam. 2003. Poznávanie zákazníka a faktorov ovplyvňujúcich nákupné rozhodnutie. Marketing a obchod 2003: Príležitosti a riziká jednotného Európskeho trhu, 157–60. [Google Scholar]
  63. Öztaş, Y. Burçak Boydak. 2015. The increasing importance of mobile marketing in the light of the improvement of mobile phones, confronted problems encountered in practice, solution offers and expectations. Procedia—Social and Behavioral Sciences 195: 1066–73. [Google Scholar] [CrossRef]
  64. Pacáková, Viera. 2009. Štatistické Metódy Pre Ekonómov. Bratislava: Ekonómia. [Google Scholar]
  65. Pagano, Dennis, and Walid Maalej. 2013. User feedback in the appstore: An empirical study. Paper presented at the 21st IEEE International Requirements Engineering Conference, Rio de Janeiro, Brazil, July 15–19. [Google Scholar]
  66. Parobek, Ján, Hubert Palus, Erika Loucanová, Martina Kalamárová, and Branko Glavonic. 2016. Competitiveness of central European countries in the EU forest products market with the emphasis on Slovakia. Acta Facultatis Xylogiae Zvolen 58: 125–36. [Google Scholar]
  67. Persaud, Ajax, and Irfan Azhar. 2012. Innovative mobile marketing via smartphones: Are consumers ready? Marketing Intelligence and Planning 30: 418–43. [Google Scholar] [CrossRef]
  68. Poliacikova, Eva, and Dáša Vaclavikova. 2016. Participation of Slovak products in consumer´s perception. Marketing Identity: Brands We Love, 244–54. [Google Scholar]
  69. Pyatnitskaya, Galina Tezievna. 2013. Innovative development of organizations: Integral parts and influencing factors. Marketing and Management of Innovations 4: 76–91. [Google Scholar]
  70. Rimarčík, Marián. 2007. Štatistika Pre Prax. SR: Marián Rimarčík. [Google Scholar]
  71. Roman, Dumitru, Claudia Daniela Pop, Roxana I. Roman, Bjørn Magnus Mathisen, Leendert Wienhofen, Brian Elvesæter, and Arne J. Berre. 2014. The linked data AppStore: A software-as-a-service platform prototype for data integration on the web. Paper presented at the 2nd International Conference on Mining Intelligence and Knowledge Exploration, Cork, Ireland, December 10–12; Available online: https://link.springer.com/chapter/10.1007/978-3-319-13817-6_37 (accessed on 15 September 2018).
  72. Seneviratne, Suranga, Aruna Seneviratne, Prasant Mohapatra, and Anirban Mahanti. 2014a. Predicting user traits from a snapshot of apps installed on a smartphone. ACM SIGMOBILE Mobile Computing and Communications Review 18: 1–8. [Google Scholar] [CrossRef]
  73. Seneviratne, Suranga, Aruna Seneviratne, Prasant Mohapatra, and Anirban Mahanti. 2014b. Your installed apps reveal your gender and more! Paper presented at ACM MobiCom Workshop on Security and Privacy in Mobile Environments (SPME ’14), Maui, Hawaii, USA, September 11. [Google Scholar]
  74. Shankar, Venkatesh, and Sridhar Balasubramanian. 2009. Mobile marketing: A synthesis and prognosis. Journal of Interactive Marketing 23: 118–29. [Google Scholar] [CrossRef]
  75. SivaKumar, ArunKumar, and Abirami Gunasekaran. 2017. An Empirical Study on the Factors Affecting Online Shopping Behavior of Millennial Consumers. Journal of Internet Commerce 16: 219–30. [Google Scholar] [CrossRef]
  76. Smutkupt, Phumisak, Donyaprueth Krairit, and Vatcharaporn Esichaikul. 2010. Mobile marketing: Implications for marketing strategies. International Journal for Marketing Strategies 5: 126–39. [Google Scholar]
  77. Stacho, Zdenko, Katarína Stachová, and Monika Hudáková. 2015. Approach of companies to customers as suitable source of incentive to innovate. Procedia Economics and Finance 34: 11–18. [Google Scholar] [CrossRef]
  78. Strišš, Jozef. 2008. Aktuálne marketingové trendy v teórií a praxi. Žilina: Žilinská univerzita. [Google Scholar]
  79. Tarute, Asta, Shahrokh Nikou, and Rimantas Gatautis. 2017. Mobile application driven consumer engagement. Telematics and Informatics 34: 145–56. [Google Scholar] [CrossRef]
  80. Tokarčíková, Emese, and Alžbeta Kucharčíková. 2015. Diffusion of innovation: The case of the Slovak mobile communication market. International Journal of Innovation and Learning 17: 359–70. [Google Scholar] [CrossRef]
  81. Tsai, Yao-Te, Shu-Ching Wang, Kuo-Qin Yan, and Chih-Ming Chang. 2017. Precise positioning of marketing and behaviour intentions of location-based mobile commerce in the Internet of things. Symmetry 9: 139. [Google Scholar] [CrossRef]
  82. Unal, Perin, Tugba Taskaya Temizel, and P. Erhan Eren. 2017. What installed mobile applications tell about their owners and how they affect users’ download behavior. Telemetrics and Informatics 34: 1153–65. [Google Scholar] [CrossRef]
  83. Urbancova, Hana, Richter Petr, Kucirkova Lenka, and Jarkovska Martina. 2017. Employer branding in the agricultural sector: Making a company attractive for the potential employees. Agricultural Economics-Zemedelska Ekonomika 63: 217–27. [Google Scholar] [CrossRef]
  84. Van Kerrebroeck, Helena, Malaika Brengman, and Kim Willems. 2017. When brands come to life: Experimental research on the vividness effect of virtual reality in transformational marketing communications. Virtual Reality 21: 177–91. [Google Scholar] [CrossRef]
  85. Vaštíková, Miroslava. 2008. Marketing Služeb: Efektivně a Moderně. Praha: Grada Publishing. [Google Scholar]
  86. Venkatesh, Viswanath, James Y. L. Thong, and Xin Xu. 2012. Consumer acceptance and use of information technology: Extending the unified theory of acceptance and use of technology. MIS Quarterly 36: 157–78. [Google Scholar]
  87. Vysekalová, Jitka, and Mikeš Jiří. 2007. Reklama—Jak Delat Reklamu. Praha: Grada Publishing. [Google Scholar]
  88. Waheed, Abdul, and Jianhua Yang. 2017. The effect of mobile marketing and email marketing on exploratory information seeking (EIS) behavior of the consumers: Communication through wireless technologies. International Journal of Enterprise Information Systems 13: 76–89. [Google Scholar] [CrossRef]
  89. Wilhite, Mary E. 2012. The Mobile Marketing Bible. USA. [Google Scholar]
  90. Wu, Linwan, and Matthew A. Stilwell. 2017. Exploring the marketing potential of location-based mobile games. Journal of Research in Interactive Marketing 12: 22–44. [Google Scholar] [CrossRef]
  91. Xu, Yan, Yougui Wang, Xiaobo Tao, and Lenka Ližbetinová. 2017. Evidence of Chinese income dynamics and its effects on income scaling law. Physsica A-Statistical Mechanics and its Applications 487: 143–52. [Google Scholar] [CrossRef]
  92. Zaborova, Elena, Irina Glazkova, and Tatiana Markova. 2017. Distance learning: Students’ perspective. Sociological Studies 2: 131–39. [Google Scholar]
Figure 1. Factors affecting consumer behavior. Sources: (Abdolmaleki et al. 2018; SivaKumar and Gunasekaran 2017; Anisimova 2016; He et al. 2016; Olšiaková 2003).
Figure 1. Factors affecting consumer behavior. Sources: (Abdolmaleki et al. 2018; SivaKumar and Gunasekaran 2017; Anisimova 2016; He et al. 2016; Olšiaková 2003).
Socsci 07 00163 g001
Table 1. Sample size.
Table 1. Sample size.
Absolute FrequencyRelative Frequency
CountryPhilippines11138.68
Thailand7626.48
India10034.84
GenderMen16557.49
Women12242.51
Age<1800.00
18−2915353.31
30−4411640.42
45−60186.27
>6000.00
Table 2. Dependency between the country and site engagement.
Table 2. Dependency between the country and site engagement.
Chi-Squaredfp
Pearson’s Chi-square0.7918211df = 2p = 0.67307
Chi-square0.8063621df = 2p = 0.66819
Phi0.0525258
Contingency coefficient0.0524535
Cramér’s V0.0525258
Table 3. The number of responses based on the country and site engagement.
Table 3. The number of responses based on the country and site engagement.
CountryDid This Website Catch Your Attention?
YesNoRow Sums
Philippines9120111
Column sum37.76%43.48%
Row sum81.98%18.02%
Total31.71%6.97%38.68%
Thailand661076
Column sum27.39%21.74%
Row sum86.84%13.16%
Total23.00%3.48%26.48%
India8416100
Column sum34.85%34.78%
Row sum84.00%16.00%
Total29.27%5.57%34.84%
Total absolute frequency24146287
Total relative frequency83.97%16.03%100.00%
Table 4. Contingency table of dependence between the country and site engagement.
Table 4. Contingency table of dependence between the country and site engagement.
CountryDid This Website Catch Your Attention?
YesNoRow Sums
Philippines−2.209062.209060.00
Thailand2.18118−2.181180.00
India0.02787−0.027870.00
Total0.000000.000000.00
Table 5. Dependence between gender and site engagement.
Table 5. Dependence between gender and site engagement.
Chi-Squaredfp
Pearson’s Chi-square1.604175df = 1p = 0.20531
Chi-square1.588636df = 1p = 0.20752
Phi−0.075423
Contingency coefficient−0.141547
Cramér’s V0.0752089
Table 6. The number of responses based on gender and site engagement.
Table 6. The number of responses based on gender and site engagement.
GenderDid This Website Catch Your Attention?
YesNoRow Sums
Female9723120
Column sum40.93%51.11%
Row sum80.83%19.17%
Total34.40%8.16%42.55%
Male14022162
Column sum59.07%48.89%
Row sum86.42%13.58%
Total49.65%7.80%57.45%
Total absolute frequency23745282
Total relative frequency84.04%15.96%100.00%
Table 7. Contingency table of dependence between gender and site engagement.
Table 7. Contingency table of dependence between gender and site engagement.
GenderDid This Website Catch Your Attention?
YesNoRow Sums
Female−3.851063.851060.00
Male3.85106−3.851060.00
Total0.000000.000000.00
Table 8. Dependence between age and site engagement.
Table 8. Dependence between age and site engagement.
Chi-Squaredfp
Pearson’s Chi-square5.084163df = 2p = 0.07870
Chi-square5.225980df = 2p = 0.07332
Phi0.1342719
Contingency coefficient0.1330776
Cramér’s V0.1342719
Table 9. The number of responses based on age and site engagement.
Table 9. The number of responses based on age and site engagement.
AgeDid This Website Catch Your Attention?
YesNoRow Sums
18–2912031151
Column sum50.63%68.89%
Row sum79.47%20.53%
Total42.55%10.99%53.55%
30–4410212114
Column sum43.04%26.67%
Row sum89.47%10.53%
Total36.17%4.26%40.43%
45–6015217
Column sum6.33%4.44%
Row sum88.24%11.76%
Total5.32%0.71%6.03%
Total absolute frequency23745282
Total relative frequency84.04%15.96%100.00%
Table 10. Contingency table of dependence between age and site engagement.
Table 10. Contingency table of dependence between age and site engagement.
AgeDid This Website Catch Your Attention?
YesNoRow Sums
18–29−6.904266.904260.00
30–446.19149−6.191490.00
45–600.71277−0.712770.00
Total0.000000.000000.00
Table 11. Dependency between the country and the user experience.
Table 11. Dependency between the country and the user experience.
Chi-Squaredfp
Pearson’s Chi-square42.73984df = 10p = 0.00001
Chi-square44.25333df = 10p = 0.00000
Phi0.3859006
Contingency coefficient0.3600234
Cramér’s V0.2728730
Table 12. The number of respondents’ responses based on the country and the user experience.
Table 12. The number of respondents’ responses based on the country and the user experience.
CountryHow Does This Web Design Make You Feel?
Calm/PeacefulIntriguedOtherHappyConfused/UncertainExcited/EnergizedRow Sums
Philippines5118810159111
Column sum45.95%66.67%42.11%14.93%53.57%25.71%
Row sum45.95%16.22%7.21%9.01%13.51%8.11%
Total17.77%6.27%2.79%3.48%5.23%3.14%38.68%
Thailand2264324876
Column sum19.82%22.22%21.05%47.76%14.29%22.86%
Row sum28.95%7.89%5.26%42.11%5.26%10.53%
Total7.67%2.09%1.39%11.15%1.39%2.79%26.48%
India383725918100
Column sum34.23%11.11%36.84%37.31%32.14%51.43%
Row sum38.00%3.00%7.00%25.00%9.00%18.00%
Total13.24%1.05%2.44%8.71%3.14%6.27%34.84%
Total absolute frequency1112719672835287
Total relative frequency38.68%9.41%6.62%23.34%9.76%12.20%100.00%
Table 13. Contingency table of dependence between the country and the user experience.
Table 13. Contingency table of dependence between the country and the user experience.
CountryHow Does This Web Design Make You Feel?
Calm/PeacefulIntriguedOtherHappyConfused/
Uncertain
Excited/
Energized
Row Sums
Philippines8.069697.557490.65157−15.91294.17073−4.536590.00
Thailand−7.39373−1.14983−1.0313614.2578−3.41463−1.268290.00
India−0.67596−6.407670.379791.6551−0.756105.804880.00
Total0.00000.00000.00000.00000.00000.00000.00
Table 14. Dependency between the age and the user experience.
Table 14. Dependency between the age and the user experience.
Chi-Squaredfp
Pearson’s Chi-square13.34995df = 10p = 0.20476
Chi-square13.21551df = 10p = 0.21187
Phi0.2175781
Contingency coefficient0.2126040
Cramér’s V0.1538510
Table 15. The number of responses based on age and the user experience.
Table 15. The number of responses based on age and the user experience.
AgeHow Does This Web Design Make You Feel?
Calm/PeacefulIntriguedOther
18–29671310
Column sum62.62%48.15%52.63%
Row sum44.37%8.61%6.62%
Total23.76%4.61%3.55%
30–4433137
Column sum30.84%48.15%36.84%
Row sum28.95%11.40%6.14%
Total11.70%4.61%2.48%
45–60712
Column sum6.54%3.70%10.53%
Row sum41.18%5.88%11.76%
Total2.48%0.35%0.71%
Total absolute frequency1072719
Total relative frequency37.94%9.57%6.74%
Table 16. Contingency table of dependence between age and the user experience.
Table 16. Contingency table of dependence between age and the user experience.
AgeHow Does This Web Design Make You Feel?
Calm/
Peaceful
IntriguedOtherHappyConfused/
Uncertain
Excited/
Energized
Row Sums
30–44−10.25532.08511−0.6808519.319150.68085−1.148940.00
45–600.5496−0.627660.854610−0.978721.31206−1.109930.00
Total0.00000.00000.00000.00000.00000.00000.00
Table 17. Dependence between gender and the user experience.
Table 17. Dependence between gender and the user experience.
Chi-Squaredfp
Pearson’s Chi-square4.359730df = 5p = 0.49887
Chi-square4.383676df = 5p = 0.49560
Phi0.1243384
Contingency coefficient0.1233883
Cramér’s V0.1243384
Table 18. The number of responses based on gender and site engagement.
Table 18. The number of responses based on gender and site engagement.
GenderHow Does This Web Design Make You Feel?
Calm/
Peaceful
IntriguedOtherHappyConfused/
Uncertain
Excited/
Energized
Row Sums
Female45158271411120
Column sum42.06%55.56%42.11%40.91%50.00%31.43%
Row sum37.50%12.50%6.67%22.50%11,67%9.17%
Total15.96%5.32%2.84%9.57%4.96%3.90%42.55%
Male621211391424162
Column sum57.94%44.44%57.89%59.09%50.00%68.57%
Row sum38.27%7.41%6.79%24.07%8.64%14.81%
Total21.99%4.26%3.90%13.83%4.96%8.51%57.45%
Total absolute frequency1072719662835282
Total relative frequency37.94%9.57%6.74%23.40%9.93%12.41%100.00%
Table 19. Contingency table of gender dependency and the user experience.
Table 19. Contingency table of gender dependency and the user experience.
Gender How Does This Web Design Make You Feel?
Calm/
Peaceful
IntriguedOtherHappyConfused/
Uncertain
Excited/
Energized
Row Sums
Female−0.5319153.51064−0.085106−1.085112.08511−3.893620.00
Male0.531915−3.510640.0851061.08511−2.085113.893620.00
Total0.0000000.000000.0000000.000000.000000.000000.00

Share and Cite

MDPI and ACS Style

Štarchoň, P.; Vetráková, M.; Metke, J.; Lorincová, S.; Hitka, M.; Weberová, D. Introduction of a New Mobile Player App Store in Selected Countries of Southeast Asia. Soc. Sci. 2018, 7, 163. https://doi.org/10.3390/socsci7090163

AMA Style

Štarchoň P, Vetráková M, Metke J, Lorincová S, Hitka M, Weberová D. Introduction of a New Mobile Player App Store in Selected Countries of Southeast Asia. Social Sciences. 2018; 7(9):163. https://doi.org/10.3390/socsci7090163

Chicago/Turabian Style

Štarchoň, Peter, Milota Vetráková, Jozef Metke, Silvia Lorincová, Miloš Hitka, and Dagmar Weberová. 2018. "Introduction of a New Mobile Player App Store in Selected Countries of Southeast Asia" Social Sciences 7, no. 9: 163. https://doi.org/10.3390/socsci7090163

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop