The Quantitative Research on Behavioral Intention towards 5G Rich Communication Services among University Students
Abstract
:1. Introduction
Research Question
- RQ1: What are the factors that influence users’ intentions to use 5G RCS among university students?
- RQ2: How do influencing factors affect users’ intentions to use 5G RCS among university students?
2. Literature Review
2.1. The Usage of SMS
2.2. Theoretical Background
- According to the literature review, we find that few researchers have ever studied the behavioral intention to use 5G RCS among mobile users in China and other countries, although the RCS have already been deployed and realized commercial use in some areas. As a convenient interactive outlet with business and individual users, we conduct a quantitative research to reveal the intentions to use 5G RCS among university students through offline experiment.
- Based on UTAUT and TTF theory, we propose a structural equation model with the influencing factors of task characteristics, technology characteristics, task-technology fit, performance expectancy, perceived risk, perceived trust, perceived convenience and satisfaction for the 5G RCS usage intentions.
- We find that the proposed model has relatively better explanation for the behavioral intention to use 5G RCS among the recruited participants. Therein, satisfaction, perceived convenience and performance expectancy directly affect BIU. Although TTF has no direct significant path connecting to BIU, the indirect paths via TTF→PE→SA→BIU and TTF→PE→BIU exist, which reveals that BIU is largely determined by satisfaction only when the technique benefit and service quality meet the requirements of mobile users.
3. Theoretical Model and Hypotheses
3.1. Task-Technology Fit
3.2. Performance Expectancy
3.3. Perceived Convenience
3.4. Perceived Trust
3.5. Perceived Risk
3.6. Satisfaction and Behavioral Intention to Use
4. Research Method
4.1. Data Collection
4.2. Demographic Characteristics
5. Data Analysis
5.1. Measurement Model
5.2. Structural Equation Model
6. Discussion
Limitations
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
A2P | Application to Person |
AVE | Average Variance Extracted |
BIU | Behavioral Intention to Use |
CR | Composite Reliability |
HMDs | Head-mounted Displays |
ICT | Information and Communications Technology |
MaaP | Message as a Platform |
MMS | Multimedia Messaging Services |
OEMs | Original Equipment Manufacturers |
OTT | Over-the-top Services |
PC | Perceived Convenience |
PE | Performance Expectancy |
PLS | Partial Least Squares |
PR | Perceived Risk |
PT | Perceived Trust |
RCS | Rich Communication Services |
RFID | Radio Frequency Identification |
SA | Satisfaction |
SEM | Structural Equation Modeling |
SMS | Short Messaging Services |
TAC | Task Characteristics |
TAM | Technology Acceptance Model |
TEC | Technology Characteristics |
TTF | Task-technology Fit |
UTAUT | Unified Theory of Acceptance and Use of Technology |
Appendix A. Items of Constructs and Sources
Items | Source | |
---|---|---|
Task characteristics (TAC) | ||
TAC1: I need to use my mobile phone for information inquiry, information sharing, chatting, shopping, mobile payment, etc. | * | T. Zhou et al., 2010 [64] |
TAC2: I often communicate with relatives, friends, or industry users (such as e-commerce sellers, merchants) online. | * | |
TAC3: I need to interact with individual or institutional users (such as government, business, etc.) online in time. | ||
TAC 4: When communicating online, I need to fully express my views by words, pictures, audio and video, location, documents, etc. | ||
TAC5: I have the needs to handle government affairs, people’s livelihood, finance, payment and other services online by the mobile phone. | X. Wang et al., 2021 [93] | |
Technology characteristics (TEC) | ||
TEC1: 5G RCS has the ability to provide required mobile services (such as mobile payments). | * | T. Zhou et al., 2010 [64] |
TEC2: 5G RCS has the ability to provide real-time services. | ||
TEC3: 5G RCS respond timely in information enquiry, business handling or payment. | S. Brown et al., 2010 [94] | |
TEC4: Using 5G RCS, you can send rich media information such as text, pictures, audio and video, and location, and easily interact with other individuals or industry users. | ||
TEC5: The services provided by 5G RCS can meet daily needs. | X. Wang et al., 2021 [93] | |
TEC6: 5G RCS is not capable of providing real-time services. | * | |
Task Technology Fit (TTF) | ||
TTF1: The services provided by 5G RCS are sufficient, when using functions such as information enquiry, business processing, and mobile payment. | T. Zhou et al., 2010 [64] | |
TTF2: 5G RCS have the ability to provide precise services. | ||
TTF3: The media type (audio, video, text), location and other functions provided by 5G RCS can meet my communication needs. | ||
TTF4: Generally speaking, the services provided by 5G RCS are capable of meeting my daily needs (such as mobile payment, appointment registration). | ||
Perceived Convenience (PC) | ||
PC1: The interface is simple and easy to operate for sending 5G messages through the SMS portal. | V. Venkatesh et al., 2003 [30] | |
PC2: It’s easy for me to be proficient in using and sending 5G messages. | * | |
PC3: 5G RCS has the ability to provide similar services that integrate traditional SMS, converged communications (such as WeChat), and converged service apps (such as Alipay) without installing redundant apps. | M. M. Hossain and V. R. Prybutok, 2008 [57] | |
PC4: Compared with all kinds of mobile software, wechat public accounts and small programs, 5G RCS can help save time and simplify the operation process. | ||
PC5: I can access information and services anytime and anywhere with the help of 5G messaging chatbot features. | R. Malik et al., 2021 [55] | |
Performance Expectancy (PE) | ||
PE1: 5G RCS is useful when communicating with individual or institutional users online. | V. Venkatesh et al., 2003 [30] | |
PE2: It is useful when 5G RCS provides personalized rich media information based on my location and scene. | ||
PE3: Using 5G RCS services makes life much easier. | C. W. Hsu et al., 2021 [71] | |
PE4: The use of 5G RCS can improve the efficiency of online services. | ||
PE5: In general, it is useful to use 5G RCS. | ||
Perceived Risk (PR) | ||
PR1: When using 5G RCS, I am concerned about personal or private information being leaked or used without my acceptance. | * | Z. Yu et al., 2021 [95] |
PR2: When using 5G RCS, I may receive precise push ads, as well as spam or scam messages. | K. Al-Saedi et al., 2019 [74] | |
PR3: Rich media messages pushed by 5G RCS may disturb my daily life. | A. Lawson-Body et al., 2020 [81] | |
PR4: When I use 5G messaging RCS, criminals may steal my private information (such as personal location, identity information, photos, etc.) | C. Martins et al., 2014 [79] | |
PR5: Learning how to set up and use 5G RCS would probably waste a lot of my time. | * | |
PR6: At the beginning of commercial use, I think the merchants or scenes covered by 5G RCS are not enough to meet my needs. | C. M. Chiu et al., 2008 [11] | |
Perceived Trust (PT) | ||
PT1: 5G RCS is generally trustworthy. | K. Al-Saedi et al., 2019 [74] | |
PT2: 5G RCS can guarantee the reliable transmission of personal, institutional or transaction data. | ||
PT3: The chatbot service provided by 5G RCS is safe and reliable. | D. L. Kasilingam, 2020 [96] | |
PT4: The content of information provided by 5G RCS chatbots is reliable to a certain extent. | R. Pillai et al., 2020 [54] | |
PT5: Overall, 5G RCS services are not trustworthy. | * | |
Satisfaction (SA) | ||
SA1: I like to use 5G RCS to complete information enquiry, chatting and business handling efficiently. | C. M. Chao, 2019 [18] | |
SA2: I am very satisfied with the real-time service provided by 5G RCS. | L. Li et al., 2021 [97] | |
SA3: I am very content with the accurate and personalized service provided by 5G RCS. | ||
SA4: I am quite pleased with the type of rich media messages provided by 5G RCS. | D. H. Huang et al., 2021 [72] | |
SA5: Compared with SMS, wechat official account and various service applications, I think “one-stop service” makes me satisfied by using 5G RCS. | ||
Behavioral Intention to Use (BIU) | ||
IU1: I plan to continue using 5G RCS services. | V. Venkatesh et al., 2003 [30] | |
IU2: I’m going to often use 5G RCS in the future. | ||
IU3: I would recommend 5G RCS to others. | Z. Yu et al., 2021 [95] | |
IU4: In mobile scenarios, when there are multiple channels such as Wechat, client, mini program, web page and 5G RCS, I will consider using 5G RCS to handle business. | C. S. Yu, 2012 [13] |
Appendix B. Operation Accounts List in Offline Experiment
Category | RCS Account Name | Operation |
---|---|---|
Government | Tianhe Government Affairs-Intelligent consultation | 1. Make an appointment to apply for an ID card |
2. Make an appointment for registered enterprises | ||
3. Make an appointment for vaccination | ||
Life | Beijing_114 | 1. Make an appointment for hospital registration |
2. Inform to move the car | ||
CTRIP | 1. Buy train tickets, air tickets (voice input) | |
2. Book a hotel | ||
Jiaying Information | 1. Make an appointment for a haircut. | |
2. Make a reservation at the restaurant. | ||
3. Book movie tickets | ||
Bank | 5G RCS of Hangzhou Bank | 1. Check the account balance |
2. Pay for water, electricity and coal | ||
3. Mobile phone card recharge | ||
Enterprise | Great Wall Motor | 1. Online car selection |
News | Shun Network | 1. Browse the news |
2. Provide news clues |
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Chatbot Usage | SMS Usage | ||
---|---|---|---|
Main Research Findings | Source | Main Research Findings | Source |
Information quality → Satisfaction | |||
Service quality → Satisfaction | Performance expectancy → Behavioral intention | ||
Perceived enjoyment → Satisfaction | Ashfaq et al. [53] (2020) | Effort expectancy → Behavioral intention | Beza et al. [35] (2018) |
Perceived usefulness→ Satisfaction | Price value → Behavioral intention | ||
Perceived enjoyment → Continuance intention | Trust → Behavioral intention | ||
Perceived usefulness → Continuance intention | |||
Perceived usefulness → Adoption intention | Overall perceived value → Intentions | ||
Perceived ease of use → Adoption intention | Perceived quality → Overall perceived value | ||
Perceived trust →Adoption intention | Pillai et al. [54] (2020) | Perceived emotional value → Overall perceived value | Turel et al. [50] (2007) |
Perceived intelligence →Adoption intention | Perceived value-for-money → Overall perceived value | ||
Anthropomorphism → Adoption intention | Perceived social value → Overall perceived value | ||
Adoption intention → Actual use | Intentions → Usage | ||
Performance expectancy → Usage intention | |||
Social influence → Usage intention | |||
Hedonic motivations → Usage intention | Perceived enjoyment → SMS adoption | ||
Habit → Usage intention | Melin Gonzlez et al. [39] (2021) | Perceived monetary value → SMS adoption | Kim et al. [51] (2008) |
Attitude → Usage intention | Perceived usefulness → SMS adoption | ||
Inconveniences → Usage intention | Perceived ease of use → SMS adoption | ||
Anthropomorphism → Usage intention | |||
Automation → Usage intention | |||
Perceived usefulness → Intention to Adopt | |||
Perceived usefulness → Attitude | |||
Perceived ease of use → Intention to Adopt | Perceived enjoyment → Actual usage | ||
Perceived ease of use → Attitude | Perceived network externalities → Actual usage | ||
Attitude → Intention to Adopt | Malik et al. [55] (2021) | Perceived usefulness → Actual usage | Lu et al. [52] (2010) |
Perceived convenience→ Intention to Adopt | Communication effectiveness → Actual usage | ||
Perceived convenience →Attitude | Perceived service cost → Actual usage | ||
Perceived convenience → Perceived usefulness | |||
Perceived convenience →Perceived ease of use | |||
Intention to Adopt → Enhanced Performance |
Construct | Definition | Reference |
---|---|---|
TAC | The characteristics that 5G RCS might be more necessary for mobile users’ needs. | [56] |
TEC | The characteristics perceived by users when 5G RCS offering services actively or passively. | [56] |
TTF | The degree to which 5G RCS assist mobile users in performing the portfolio of tasks. | [56] |
PE | The benefits that individuals believe will be brought to them by using 5G RCS. | [30] |
PC | The convenience of using 5G RCS or brought by 5G RCS. | [57] |
PT | The degree to which individuals can use 5G RCSto guarantee service completion and the trust of the content. | [58] |
PR | The degree of risks that individuals feel when using 5G RCS. | [59] |
SA | The degree of personal interest in 5G RCS which provides. | [60] |
BIU | The individual’s willingness to use 5G RCS. | [30] |
Characteristic | Category | Frequency | Percentage |
---|---|---|---|
Gender | Male | 49 | 25.13 |
Female | 146 | 74.87 | |
Education | Undergraduate | 111 | 56.92 |
Graduate | 84 | 43.08 | |
Major | Humanities and Social Sciences | 151 | 77.44 |
Science | 44 | 22.56 | |
Reading SMS frequency | 3 times a month or less | 37 | 18.97 |
4 to 10 times a month | 80 | 41.03 | |
11 to 19 times a month | 41 | 21.03 | |
20 times a month or more | 37 | 18.97 | |
Sending SMS frequency | No sending | 99 | 50.77 |
1–5 per month | 90 | 46.15 | |
6–10 per month | 6 | 3.08 |
Characteristic | Num. | Min. | Max. | Mean | Median | SD |
---|---|---|---|---|---|---|
Age (one full year of life) | 195 | 18 | 29 | 21.61 | 22 | 2.420 |
Monthly rent (CNY) | 195 | 8 | 300 | 45.42 | 38 | 34.766 |
BIU | PC | PE | PR | PT | SA | TAC | TEC | TTF | |
---|---|---|---|---|---|---|---|---|---|
BIU | 0.893 | ||||||||
PC | 0.640 | 0.764 | |||||||
PE | 0.598 | 0.712 | 0.802 | ||||||
PR | −0.249 | −0.098 | −0.115 | 0.721 | |||||
PT | 0.429 | 0.456 | 0.469 | −0.173 | 0.840 | ||||
SA | 0.779 | 0.678 | 0.620 | −0.271 | 0.535 | 0.855 | |||
TAC | 0.211 | 0.304 | 0.282 | 0.068 | 0.158 | 0.207 | 0.766 | ||
TEC | 0.363 | 0.574 | 0.590 | −0.008 | 0.364 | 0.441 | 0.325 | 0.751 | |
TTF | 0.429 | 0.591 | 0.626 | −0.089 | 0.429 | 0.496 | 0.301 | 0.646 | 0.821 |
Indicator Reliability | Convergent Validity | Consistency Reliability | |||
---|---|---|---|---|---|
Construct | Item | Factor Loading | AVE | Cronbach’s Alpha | CR |
TAC | TAC3 | 0.648 | 0.587 | 0.654 | 0.808 |
TAC4 | 0.867 | ||||
TAC5 | 0.769 | ||||
TEC | TEC2 | 0.812 | 0.564 | 0.745 | 0.837 |
TEC3 | 0.779 | ||||
TEC4 | 0.644 | ||||
TEC5 | 0.758 | ||||
TTF | TTF1 | 0.822 | 0.674 | 0.839 | 0.892 |
TTF2 | 0.830 | ||||
TTF3 | 0.805 | ||||
TTF4 | 0.828 | ||||
PC | PC1 | 0.773 | 0.583 | 0.764 | 0.847 |
PC3 | 0.714 | ||||
PC4 | 0.872 | ||||
PC5 | 0.682 | ||||
PE | PE1 | 0.746 | 0.643 | 0.861 | 0.900 |
PE2 | 0.719 | ||||
PE3 | 0.876 | ||||
PE4 | 0.837 | ||||
PE5 | 0.821 | ||||
PR | PR2 | 0.698 | 0.520 | 0.749 | 0.811 |
PR3 | 0.645 | ||||
PR4 | 0.732 | ||||
PR6 | 0.800 | ||||
PT | PT1 | 0.763 | 0.705 | 0.860 | 0.905 |
PT2 | 0.865 | ||||
PT3 | 0.866 | ||||
PT4 | 0.862 | ||||
SA | SA1 | 0.860 | 0.731 | 0.908 | 0.932 |
SA2 | 0.871 | ||||
SA3 | 0.872 | ||||
SA4 | 0.833 | ||||
SA5 | 0.839 | ||||
BIU | BIU1 | 0.893 | 0.798 | 0.915 | 0.940 |
BIU2 | 0.926 | ||||
BIU3 | 0.887 | ||||
BIU4 | 0.866 |
Hypotheses | Path | Path Coefficient () | T-Statistics | p-Value | Result | |
---|---|---|---|---|---|---|
H1 | TAC -> TTF | 0.102 | 1.052 | 0.016 | 0.293 | Not supported |
H2 | TEC -> TTF | 0.613 | 10.867 | 0.587 | 0.000 | Supported |
H3 | TTF -> PE | 0.626 | 10.411 | 0.644 | 0.000 | Supported |
H4 | TTF -> BIU | −0.052 | 0.906 | 0.004 | 0.365 | Not supported |
H5 | PE -> BIU | 0.144 | 2.070 | 0.023 | 0.038 | Supported |
H6 | PC -> BIU | 0.169 | 2.399 | 0.030 | 0.016 | Supported |
H7 | PT -> BIU | −0.023 | 0.392 | 0.001 | 0.695 | Not supported |
H8 | PR -> BIU | −0.063 | 1.495 | 0.010 | 0.135 | Not supported |
H9 | SA -> BIU | 0.596 | 8.398 | 0.425 | 0.000 | Supported |
H10 | PE -> SA | 0.280 | 2.944 | 0.077 | 0.003 | Supported |
H11 | PC -> SA | 0.479 | 5.191 | 0.225 | 0.000 | Supported |
Indirect Path | Path Coefficient () | Bca [2.5%, 97.5%] | T-Statistics | -Value | ||
TTF -> PE -> BIU | 0.090 | [0.007, 0.173] | 2.101 | 0.036 | ||
TTF -> PE -> SA -> BIU | 0.104 | [0.040, 0.193] | 2.748 | 0.006 | ||
PE -> SA -> BIU | 0.167 | [0.064, 0.294] | 2.857 | 0.004 | ||
PC -> SA -> BIU | 0.285 | [0.163, 0.413] | 4.168 | 0.000 |
Variables | R | Adjusted R | Q |
---|---|---|---|
BIU | 0.642 | 0.631 | 0.496 |
PE | 0.392 | 0.389 | 0.251 |
SA | 0.498 | 0.492 | 0.352 |
TTF | 0.427 | 0.421 | 0.277 |
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Yu, Z.; Wu, J.; Song, X.; Fu, W.; Zhai, C. The Quantitative Research on Behavioral Intention towards 5G Rich Communication Services among University Students. Systems 2022, 10, 136. https://doi.org/10.3390/systems10050136
Yu Z, Wu J, Song X, Fu W, Zhai C. The Quantitative Research on Behavioral Intention towards 5G Rich Communication Services among University Students. Systems. 2022; 10(5):136. https://doi.org/10.3390/systems10050136
Chicago/Turabian StyleYu, Zhiyuan, Jianming Wu, Xiaoxiao Song, Wenzhao Fu, and Chao Zhai. 2022. "The Quantitative Research on Behavioral Intention towards 5G Rich Communication Services among University Students" Systems 10, no. 5: 136. https://doi.org/10.3390/systems10050136
APA StyleYu, Z., Wu, J., Song, X., Fu, W., & Zhai, C. (2022). The Quantitative Research on Behavioral Intention towards 5G Rich Communication Services among University Students. Systems, 10(5), 136. https://doi.org/10.3390/systems10050136