The Knowledge Mapping of Mobile Commerce Research: A Visual Analysis Based on I-Model
Abstract
:1. Introduction
2. Literature Review and Related Work
3. Conceptual Framework and Research Questions
3.1. CiteSpace
3.2. I-Model
3.3. Problem Statement
4. Methodology
5. Analysis and Results
5.1. Mapping and Analysis on Author and Citied Authors
5.2. Mapping and Analysis on Institutions and Countries
5.3. Mapping and Analysis on References
5.4. Mapping and Analysis on Journals
5.5. Mapping and Analysis on Keywords
5.6. Analysis on the Factors from Abstracts
6. Discussion
- (1)
- The publications grow linearly from 2012. Mainly because of the wireless network technology and huge mobile users. However, with an explosion of m-commerce APP, there are some challenges that cannot be anticipated by 4G, such as the spectrum crisis and high energy consumption. We have to face the continuously increasing demand for high data rates and mobility required by m-commece users. The 5G technologies are expected to be deployed by wireless system designers beyond 2020, such as massive MIMO, energy-efficient communications [42,43]. RFID is a technology which can be employed to complete payment functions on m-commerce. The related security of RFID is very important [44]. The ultra-lightweight RFID authentication scheme ia proposed to improve m-commerce [45].
- (2)
- The top three productive countries and territories were China, TAIWAN and USA. Table 7 and Figure 5 show the complete list. Huazhong Univ Sci & Technol is the most productive academic institution. Professor Zhang at Huazhong Univ Sci & Technol is the strongest research team in m-commerce field. His research subject focused on mobile service value chain, TAM extension and m-commerce risk [46,47,48,49].
- (3)
- The keywords are divided into 6 clusters in Figure 9. The papers within these clusters are similar to the intellectual base of the subfield which can be labeled as the cluster label. We obtained four major clusters of research by mutual information, namely mobile commerce consumer, m-banking service, mobile technologies and mobile marketing research. In order to discover the research fronts. We collected the papers with high frequency in the cluster and citing papers were tracked. For example, Table 15 shows that the first largest cluster has 29 papers as its intellectual base. This cluster is concerned with the applications of the SEM–neural networks methods for the purpose of m-commerce adoption. The papers which cite elements of this cluster can be viewed as research fronts. For example, the work in the 94th reference can be considered as a current research front which builds on the intellectual base of SEM–neural networks methods for customer satisfaction.
7. Conclusions
7.1. Suggestions for Research
7.2. Methodological Contributions
7.3. Practical Contributions
7.4. Limitations and Future Research
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Ranking | Operator | User/Million | Contry |
---|---|---|---|
1 | AT&T | 129 | American |
2 | China Mobile | 910.2 | China |
3 | Verizon Communications | 110.2 | American |
4 | NTT | 61.73 | Japan |
5 | T-Mobile | 140 | Germany |
6 | Vodafone | 730.2 | British |
7 | SoftBank | 40.2 | Japan |
8 | Telefonica/O2 | 460.2 | Spain |
9 | China Unicom | 180.6 | China |
10 | Americas Mobile | 80.3 | Mexico |
Class of Applications | Description | Examples |
---|---|---|
Mobile financial applications | Applications which is Banking, brokerage and payments though mobile device. | E-Bank, brokerage, mobile payment. |
Mobile advertising | Applications turning the network platform and mobile device into a selling tool. | Mobile marketing |
Mobile inventory management | Applications that concentrate on cutting down the number of inventory by mobile inventory management system. | Location tracking of goods, boxes, troops and people. |
Proactive service management | Applications provide information and services to users immediately. | Wearher forecast, stock information |
Wireless re-engineering | Applications attemptting to enhance the quality of services using wireless mobile infrastructure. | Instant payments by insurance companies. |
Mobile auction or reverse auction | Applications allowing users to persuit good and service in the form of auction. | E-bey. |
Mobile entertainment services and games | Applications offering the entertainment to mobile users. | Online vedio, music interactive games. |
Mobile office | Applications attempting to provide the office environment to users anywhere. | Vedio conference |
Mobile distance education | Applications provide education to mobile users without the limitations of distance. | Online class |
Wireless data cente | Applications provide data storage services to mobile users for decision support. | Baidu cloud storage |
Source Website | Web of Science |
---|---|
Database | SCI-EXPANDED; SSCI; CPCI-S; CPCI-SSH |
Years | January 2007–October 2018 |
Searching term | “Mobile commerce” or “M-commerce” |
Sample size | 1130 |
Reference | 25,502 |
Author | Publications | Main Focuses |
---|---|---|
Ooi K.B. | 16 | mobile payment, trust, mobile technology acceptance model |
Lu Y.B. | 9 | mobile brokerage service |
Chong A.Y.L. | 9 | technology acceptance model, customer satisfaction analysis |
Min Q.F. | 7 | mobile system usability, information communication media |
Tan G.W.H. | 7 | mobile learning, mobile credit card, hybrid structural equation modeling |
Zhou T. | 6 | m-commerce user acceptance behavior, technology acceptance model |
Xin C. | 6 | m-commerce application, business model, mobile payment, m-commerce service |
Morosan C. | 6 | interactive mobile technologies |
Chang S.E. | 5 | mobile devices, mobile financial services |
Zhang R.T. | 5 | mobile commerce identity, authentication mechanism |
Author | Frequency | Centrality |
---|---|---|
Davis F.D. | 243 | 0.13 |
Venkatesh V. | 237 | 0.06 |
Fornell C. | 158 | 0.07 |
Gefen D. | 142 | 0.14 |
Fishbein M. | 123 | 0.07 |
Wu J.H. | 121 | 0.07 |
Hair J.F. | 109 | 0.04 |
Rogers E.M. | 106 | 0.07 |
Bagozzi R.P. | 92 | 0.06 |
Ajzen I. | 91 | 0.02 |
Institution | Publications | Centrality |
---|---|---|
Huazhong Univ Sci & Technol | 24 | 0.02 |
Univ Tunku Abdul Rahman | 20 | 0.04 |
Natl Chung Hsing Univ | 17 | 0.01 |
Beijing Univ Posts & Telecommun | 15 | 0 |
Beijing Jiaotong Univ | 14 | 0 |
Dalian Univ Technol | 13 | 0 |
Natl Chiao Tung Univ | 12 | 0 |
Natl Sun Yat Sen Univ | 11 | 0.01 |
Hong Kong Polytech Univ | 11 | 0.03 |
Wuhan Univ | 11 | 0 |
Country/ Territory | Publications | Centrality |
---|---|---|
People R China | 348 | 0.12 |
Taiwan | 175 | 0.07 |
USA | 171 | 0.54 |
India | 77 | 0.01 |
Malaysia | 58 | 0.07 |
South Korea | 51 | 0.09 |
Spain | 39 | 0.25 |
England | 37 | 0.55 |
Canada | 31 | 0.18 |
Germany | 29 | 0.15 |
Study (Frequency) | Research Question | Method | Findings |
---|---|---|---|
Wu J.H. (49) | What key drives of technology acceptance model in mobile commerce. | empirical analysis, mathematical modeling | The paper indicated perceived ease of use and perceived risk have significant influence on behavioral intention. |
Wei T.T. (46) | What drives of m-commerce adoption in Malaysian? | empirical analysis | The findings revealed that perceived financial cost and trust have great influence on mobile user in Malaysia. |
Ngai E.W.T. (46) | A literature review for mobile commerce applications | literature review | This paper reviewed the literature on m-commerce applications and provided future research directions. |
Venkatesh V. (45) | What do you do to improve the usability of mobile commerce. | empirical analysis | Customers’ interface experience can create good customer sensory satisfation. |
Chong A.Y.L. (45) | Predicting consumer decisions to adopt mobile commerce in China. | empirical analysis | The paper extended the TAM and DOI model and described the newly added variables such as trust and multi-service. There are some control variables such as educational level and gender. |
Kim H.W. (38) | Value-based Adoption of Mobile Internet | empirical analysis | The paper provided the value perspective for researcher to understand Mobile Internet and Communication Technology. |
Li Y.M. (35) | How aesthetics design affects consumer trust. | empirical analysis | Good aesthetics of mobile website design can increase trust in m-commerce. |
Zhang L.Y. (32) | How culture factors affect mobile commerce adoption. | empirical analysis, mathematical modeling | The paper indicated that culture have a very significant impact on mobile commerce adoption by using structural equation modeling. |
Kim C. (31) | What factors affect the intention to use mobile payment. | empirical analysis | The paper analyzed the characteristics of m-payment system and its applicability to different nature of mobile payment users. |
Barnes S.J. (30) | What mobile commerce value chain made of from. | literature review | It analyzed the key players and technologies of the m-commerce value chain, providing a basic study of business strategy. |
Journal | Frequency | Scope |
---|---|---|
MIS Quarterly | 371 | Studies about integrated management, the resources management, management science and engineering and economics of IT. |
Information and Management | 331 | The journal serves researchers in the information science and computer science field, computer software, machine translation and natural language understanding are its subjects. |
Communications of the ACM | 313 | The main research direction of ACM involved engineering technology and theoretical method. |
Decision Support Systems | 309 | Engineering technology; Computer information system; DSS Interfaces; artificial intelligence |
Information Systems Research | 278 | The journal covers many areas related to management, information science and library science |
Computers in Human Behavior | 258 | This Journal dedicated to computer synthesis and frontier research from psychological perspective. |
Management Science | 251 | The journal covers all aspects of management related to plan, process, organization, strategy and culture. |
Journal of Marketing Research | 241 | Empirical research that analyze consumers behavior. Develop sales and marketing strategies depending on the type of consumer. |
Journal of the Academy of Marketing Science | 228 | The journal devoted to proposing new methodologies of marketing and making up the gap between theory research and practice in the marketing field. |
Electronic Commerce Research and Applications | 223 | The journal aims to create the knowledge, method, problem and applications for the development of electronic commerce. |
Year | Keyword | Centrality | Frequency | Year | Keyword | Centrality | Frequency |
---|---|---|---|---|---|---|---|
2007 | Information technology | 0.18 | 136 | 2009 | Online | 0.03 | 31 |
2007 | Adoption | 0.07 | 121 | 2013 | Customer satisfaction | 0.02 | 30 |
2007 | TAM | 0.08 | 110 | 2011 | Behavioral intention | 0.04 | 27 |
2007 | Trust | 0.17 | 94 | 2011 | Planned behavior | 0.01 | 27 |
2007 | Internet | 0.07 | 84 | 2009 | Loyalty | 0.03 | 26 |
2007 | User acceptance | 0.13 | 80 | 2011 | Perceived risk | 0.04 | 25 |
2007 | Service | 0.13 | 80 | 2009 | Application | 0 | 25 |
2007 | Eechnology | 0.14 | 77 | 2009 | Framework | 0 | 25 |
2007 | Acceptance | 0.12 | 74 | 2007 | quality | 0.01 | 24 |
2007 | e-commerce | 0.01 | 62 | 2009 | perspective | 0 | 23 |
2009 | intention | 0.08 | 58 | 2013 | empirical analysis | 0.01 | 23 |
2009 | Determinant | 0.07 | 52 | 2009 | Perceived usefulness | 0 | 22 |
2007 | Commerce | 0.06 | 49 | 2009 | Usage | 0.01 | 21 |
2011 | Satisfaction | 0.06 | 46 | 2007 | Information system | 0 | 19 |
2007 | System | 0.03 | 46 | 2015 | Service quality | 0 | 18 |
2007 | Behavior | 0.03 | 43 | 2007 | Technology adoption | 0.1 | 18 |
2009 | Design | 0.09 | 42 | 2007 | Commerce-system | 0.01 | 16 |
2007 | Security | 0.09 | 41 | 2007 | Performance | 0.04 | 16 |
2007 | Payment | 0.04 | 38 | 2007 | Mobile | 0.02 | 15 |
Keywords | Strength | Begin | End | Keywords | Strength | Begin | End |
---|---|---|---|---|---|---|---|
Mobile-user | 6.35 | 2007 | 2008 | Structual equation modelling | 3.72 | 2013 | 2018 |
Payment-system | 4.75 | 2007 | 2008 | Intelligent decision-making | 4.79 | 2013 | 2014 |
Privacy | 4.24 | 2007 | 2010 | SVM | 4.51 | 2014 | 2018 |
Mobile commerce value | 2.63 | 2007 | 2008 | Perceived usefulness | 3.04 | 2013 | 2016 |
Value chain | 3.61 | 2007 | 2009 | Social commerce | 3.42 | 2015 | 2018 |
Business-model | 4.95 | 2007 | 2010 | Customer satisfaction | 6.39 | 2014 | 2018 |
Communication-technology | 4.76 | 2007 | 2008 | Behavioral intention | 6.19 | 2015 | 2018 |
Mobile internet | 2.63 | 2007 | 2008 | m-commerce adoption | 5.31 | 2015 | 2018 |
Mobile device | 3.88 | 2007 | 2010 | Laction based service | 2.93 | 2015 | 2016 |
RFID | 2.82 | 2007 | 2010 | Mobile shopping | 3.92 | 2015 | 2016 |
Mobile marketing | 2.59 | 2009 | 2010 | Service quality | 5.97 | 2015 | 2018 |
Mobile agent | 3.63 | 2009 | 2010 | O2O | 3.42 | 2015 | 2018 |
Web service | 2.59 | 2011 | 2012 | Neural network | 3.66 | 2015 | 2018 |
Mobile advertising | 2.80 | 2011 | 2012 | Word of mouth | 4.06 | 2015 | 2018 |
Data mining | 2.81 | 2011 | 2012 | Neural network approach | 3.42 | 2015 | 2016 |
Social influence | 3.37 | 2011 | 2012 | Cross-border e-commerce | 5.11 | 2016 | 2018 |
Empirical analysis | 3.88 | 2013 | 2018 | Mobile-app | 2.93 | 2015 | 2018 |
Information system | 3.18 | 2013 | 2014 | Cloud-computing | 3.92 | 2015 | 2016 |
Wireless communication | 4.26 | 2013 | 2014 | Personal-innovativeness | 4.97 | 2015 | 2018 |
Cluster ID | Size | Mean (Year) | Label |
---|---|---|---|
#0 | 29 | 2012 | (0.03) e-commerce; (0.06) security; (0.03) mobilecommunication; (0.08)authentication; (0.03) mobile; (0.01) privacy; (0.02) network; (0.01) mobiledevice; (0.01) consumer behaviour; (0.02) m-payment; (0.08) technology acceptance model; |
#1 | 27 | 2011 | (0.14) information technology; (0.10) user acceptance; (0.03) customer satisfaction; (0.04) behavioral intention; (0.01) planned behavior; (0.03) perceived risk; (0.02) perceived usefulness; (0.01) empirical analysis; (0.02) m-commerce adoption |
#2 | 13 | 2009 | (0.08) model; (0.08) adoption; (0.10) internet; (0.06) service; (0.12) technology; (0.06) acceptance; (0.03) online; (0.03) banking; (0.02) mobile payment system; (0.01) game theory |
#3 | 13 | 2009 | (0.06) trust; (0.09) determinant; (0.08) satisfation; (0.05) e-commerce; (0.01) mobilepayment; (0.01) quality; (0.01) loyalty; (0.01) service quality; (0.01) mobile banking; (0.01) social influence; (0.01) web site; (0.01) location-based service; (0.01) expectation confirmation model |
#4 | 11 | 2008 | (0.02) framwork; (0.03) information system; (0.01) mobile service; (0.01) performance; (0.01) intrinsic motivation; (0.01) market; (0.01) design aesthetics; (0.01) fit index |
#5 | 7 | 2010 | (0.08) involvement; (0.07) attitude; (0.02) mobile advertising; (0.02) mobile marketing |
Mean Year (Range) | Number of Cluster | Cluster ID and Labels |
---|---|---|
2008–2009 | 3 | m-banking service (#2, 2009); mobile technologies (#3, 2009); ubiquitous service-oriented design (#4,2008) |
2010–2011 | 2 | sms advertising (#1, 2011); mobile marketing research (#5, 2012) |
2012 | 1 | mobile commerce consumer (#0, 2010) |
Independent Variable | Dependent Variable | Theory |
---|---|---|
Service quality | Purchase intention | Technology acceptance model |
Perceived risk | Trust | Game theory |
Information quality | Satisfaction | Empirical analysis |
Design | Buying behavior | Expectation confirmation model |
System quality | Consumer behavior | Unified theory |
Information system | Purchase intention | Commitment-trust theory |
Perceived usefulness | Word of mouth | Decision-making process |
Design aesthetics | loyalty | Innovation diffusion theory |
Information technology | User acceptance | TRA |
Mobile service | Decision making | Network externality theory |
Web | M-commerce adoption | Interpretive structural model |
Network | Neural network | |
Social influence | SVM | |
Cloud computing | ||
Decision makers | ||
Mobile users | ||
Social value | ||
Application | ||
LBS | ||
RFID | ||
Mobile Interface | ||
Legal | ||
Information interaction | ||
Intellectual property |
Cluster | Intellectual Base | Research Fronts | |||
---|---|---|---|---|---|
Cluster ID | MI | Total | Papersin the Cluster | Total | Citing Papers |
#0 | Mobile commerce consumer | 29 | [7,49,50,51,52,53,54,55,56,57,58,59,60,61,62,63,64,65,66,67,68,69,70,71,72,73,74,75,76] | 19 | [39,77,78,79,80,81,82,83,84,85,86,87,88,89,90,91,92,93,94] |
#2 | m-banking service | 13 | [95,96,97,98,99,100,101,102,103,104,105,106,107] | 11 | [86,87,88,89,90,91,92,93,108,109,110] |
#3 | mobile technologies | 13 | [4,42,44,111,112,113,114,115,116,117,118,119,120] | 8 | [45,121,122,123,124,125,126,127] |
#5 | mobile marketing research | 7 | [115,116,117,118,128,129,130] | 5 | [131,132,133,134,135] |
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Du, S.; Li, H. The Knowledge Mapping of Mobile Commerce Research: A Visual Analysis Based on I-Model. Sustainability 2019, 11, 1580. https://doi.org/10.3390/su11061580
Du S, Li H. The Knowledge Mapping of Mobile Commerce Research: A Visual Analysis Based on I-Model. Sustainability. 2019; 11(6):1580. https://doi.org/10.3390/su11061580
Chicago/Turabian StyleDu, Shan, and Hua Li. 2019. "The Knowledge Mapping of Mobile Commerce Research: A Visual Analysis Based on I-Model" Sustainability 11, no. 6: 1580. https://doi.org/10.3390/su11061580
APA StyleDu, S., & Li, H. (2019). The Knowledge Mapping of Mobile Commerce Research: A Visual Analysis Based on I-Model. Sustainability, 11(6), 1580. https://doi.org/10.3390/su11061580