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Journal of Education, 2023 

Issue 91, http://journals.ukzn.ac.za/index.php/joe                    doi: http://dx.doi.org/10.17159/2520-9868/i91a09 

 

Online ISSN 2520-9868  Print ISSN 0259-479X 

 

 

An empirical analysis of the impact of mobile instant 

messaging for collaborative learning during the Covid-19 

lockdown in a rural-based university 

 

Nkhangweni Lawrence Mashau 

Department of Business Information Systems, Faculty of Management, Commerce and Law, University of 

Venda, Thohoyandou, South Africa 

lawrence.mashau@univen.ac.za 

https://orcid.org/0000-0002-2731-5462 

 

(Received: 28 July 2022; accepted: 8 May 2023) 

 

Abstract 

The world-wide outbreak of Covid-19 effected radical change in most institutions of higher learning. These 

institutions were forced to adopt any technologies at their disposal to continue with teaching and learning and, 

during that time, many students and lecturers at rural-based universities adopted mobile instant messaging 

(MIM) for collaborative learning. This study investigates the impact of MIM for collaborative learning during a 

Covid-19 lockdown in one rural-based university. Data were collected from both students and lecturers using a 

closed-ended questionnaire, and analysed using IBM SPSS Statistics. The study found that MIM had a positive 

impact on collaborative learning in the rural-based university during the Covid-19 lockdown. 

 

Keywords: mobile instant messaging, collaborative learning, rural-based university, Covid-19 

 

 

Introduction 

A decade ago, several scholars predicted that mobile instant messaging (MIM) tools would be 

one of the enablers for teaching and learning in universities (El-Hussein & Cronje, 2010; Ryu 

& Parsons, 2012). MIM tools enable unified communication between students by providing 

cutting-edge functionality for instant connectivity (Kim et al., 2014). More recently, the 

literature has noted an increase in the adoption of MIM tools globally by higher institutions 

of learning (Bere, 2019; Bere & Rambe, 2016; Yadegaridehkordi et al., 2019). This rise in the 

adoption of MIM was due to the Covid-19 pandemic (Zaidi et al., 2021).  

During the Covid-19 lockdown, South African universities were closed for contact lectures 

and were expected to continue teaching and learning using other methods of teaching 

(Netshakhuma, 2021). These universities adopted MIM to realise its optimum benefits for 

communicating, collaborating, and sharing learning material with students (Bere & Rambe, 



156    Journal of Education, No. 91, 2023 

 

 

2016; Netshakhuma, 2021; Zaidi et al., 2021). The literature shows that students in 

universities use MIM tools for collaborative learning, especially for assignments and group 

discussions (Sarwar et al., 2019; Tang & Bradshaw, 2020). Collaborative learning through 

MIM tools is defined as a state in which two or more students study, or try to study 

something together, using these tools (Kim et al., 2014). Collaborative learning using MIM 

improves students’ critical thinking and information sharing through interaction (Bere & 

Rambe, 2016). 

Studies have been conducted on the use of MIM for collaborative learning, focusing on 

students and lecturers (Jeong & Hmelo-Silver, 2016), and some have focused on the process 

of collaborative learning and its outcomes in other countries (Kim et al., 2014). These studies 

do not reveal the impact of instant messaging on collaborative learning in rural-based 

universities. The available literature focuses on semi-urban and urban universities (Bere & 

McKay, 2017). However, there is a lack of literature exploring the impact of MIM on 

collaborative learning in rural-based universities during the Covid-19 lockdown, which 

indicates a need to investigate this. Therefore, this study seeks to investigate the impact of 

MIM on collaborative learning in a rural-based university during the Covid-19 pandemic. 

Theoretical foundation 

To explore the impact of MIM on collaborative learning in rural-based universities, a 

theoretical foundation was needed. To establish the theoretical foundation of this study, 

DeLone and McLean’s (2002, 2003) IS success model (D&M IS) and the diffusion of 

innovation (DOI) theory were employed. The D&M IS success model is one of the most 

significant theories used to measure information system effectiveness and success. This 

theory is critical for understanding the value that information systems have for individuals 

(DeLone & McLean, 2003). The D&M IS success model was created by DeLone and 

McLean in 1992, and Figure 1 shows the adapted model with its six constructs.  

Figure 1 

 D&M IS model (DeLone & McLean, 2002, p. 9) 

 



Mashau: An empirical analysis of the impact of mobile instant messaging . . .    157 

 

 

According to DeLone and McLean (2002), these constructs are described as follows: 

• Information quality. Measures the impact of relevant, complete, accurate, timely, and 

consistent information generated by information systems for individuals.  

• System quality. Measures the perception of the system on how it can be used to 

support and address user needs.  

• Service quality. Measures what the information system can do. 

• Intention to use. Measures the purpose of the system. 

• User satisfaction. This is an important construct used to measure individual opinion 

about the information system. 

• Net benefits. Used to measure the positive and negative impacts of the information 

system. 

The diffusion of innovation theory was developed by Rogers in 1962. This theory comprises 

five characteristics that influence the use of technology (Rogers, 1962, 1995, 2003). Those 

five characteristics are relative advantage, trialability, compatibility, observability, and 

complexity (Rogers, 2003). Relative advantage is a measure used to explore the benefits and 

advantages that promote the innovation (Rogers, 1995); trialability is seen as an experiment 

of the innovation to see if it addresses the user’s requirements (Rogers, 1995, 2003). 

Compatibility refers to an innovation that is able to function together with other innovations 

without causing problems, observability refers to the benefits provided by the innovation and 

lastly, complexity refers to the difficulty of understanding technology (Rogers, 1995, 2003).  

In this study, the D&M IS success model and the DOI theory are selected as an ideal 

foundation to explore the impact of instant messaging for collaborative learning during the 

Covid-19 lockdown in rural-based universities.  

Proposed framework and hypotheses 

The framework proposed for this study was derived from the D&M IS success model and the 

DOI theory using compatibility, information quality, observability, system quality, 

complexity, intention to use, relative advantage, and user satisfaction as constructs to predict 

the impact of instant messaging on collaborative learning in rural-based universities. The 

literature postulates that intention to use, relative advantage, and user satisfaction are critical 

for predicting the impact of using technology (DeLone & McLean, 2002; Rogers, 2003). As 

shown in Figure 2, learner intention to use, relative advantage, and user satisfaction of MIM 

influenced the impact of using MIM tools for collaborative learning. 

 

 

 

 



158    Journal of Education, No. 91, 2023 

 

 

Figure 2  

Proposed conceptual framework 

 
 

This study then hypothesised compatibility, information quality, observability, system 

quality, complexity, intention to use, relative advantage, and user satisfaction to explore the 

impact of MIM on collaborative learning. The following eight hypotheses were derived from 

the aim of the study.  

• Hypothesis 1: Compatibility of the MIM tools for collaborative learning may affect 

the intention to use, relative advantage, and user satisfaction of the learners in rural-

based universities. 

• Hypothesis 2: Information quality will influence the intention to use MIM 

applications and realise their advantages, as well as user satisfaction with 

collaborative learning in rural-based universities. 

• Hypothesis 3: Observable advantages of, and user satisfaction with, using MIM tools 

will affect students’ perception of using these tools for collaborative learning in rural-

based universities.  

• Hypothesis 4: System quality will influence intention to use the MIM and leverage the 

advantages and user satisfaction of using MIM tools for collaborative learning in 

rural-based universities. 

• Hypothesis 5: The complexity of MIM tools will influence the students towards 

realising the advantages and satisfaction of using MIM for collaborative learning in 

rural-based universities. 

• Hypothesis 60: The intention to use MIM tools will affect the relative advantages of 

using MIM for collaborative learning. 

• Hypothesis 6a: The intention to use MIM tools will influence the impact of MIM for 

collaborative learning in rural-based universities. 

• Hypothesis 7: The relative advantage of MIM tools will influence the impact of MIM 

on collaborative learning in rural-based universities. 



Mashau: An empirical analysis of the impact of mobile instant messaging . . .    159 

 

 

• Hypothesis 80: User satisfaction with MIM tools will affect the relative advantage of 

using MIM for collaborative learning. 

• Hypothesis 8a: User satisfaction with MIM tools will influence the impact of MIM on 

collaborative learning in rural-based universities. 

Research design 

Data were collected from students and lecturers at a rural-based university. This study 

followed a quantitative rather than qualitative approach. Qualitative study relies more on 

human understanding, perception, and narrative (Cresswell & Clark, 2011; Myers, 2013); a 

quantitative approach relies more on calculations and statistical analyses that comprise 

aggregations, relationships, or associations between constructs to approve or disprove a 

hypothesis (Myers, 2013; Oates, 2006). A quantitative approach was selected for this study 

because it was aimed at generalising the results analysed from data collected through a survey 

at a rural-based university in South Africa.  

Participants 

The target population for the study was students and lecturers from a rural-based university in 

South Africa. This study was limited to all the lecturers and students from the Business 

Information Systems and Computer Science departments. The researcher used purposive 

sampling to select the lecturers and students from these two departments. Purposive sampling 

is a non-probability sampling technique that is used to select participants through the personal 

judgement of the researcher, examining the qualities and experiences of the participants 

associated with the research problem (Babbie, 2005).  

Data collection procedure 

Data were collected using an online survey. The researcher developed a closed-ended 

questionnaire on Google Forms. An email with a Google Forms link was sent to the lecturers 

and students in the Business Information Systems and Computer Science departments. In 

total, the email was sent to 532 participants, of whom 341 participants completed the survey. 

Of the 341 responses received, 93 were not usable. In total, the researcher analysed 248 

responses to address the research problem. 

Ethical clearance 

This study was cleared for ethical considerations before data collection commenced. Before 

participating in the survey, all participants were requested to sign an informed consent form. 

Where the participant was a minor, consent was sought through their parents or guardians 

who signed the consent form on their behalf. It was stipulated in the consent form that 

participation was voluntary and that there would not be any benefit or financial reward. 

 



160    Journal of Education, No. 91, 2023 

 

 

Results and analysis 

Descriptive statistics 

As indicated in Table 1, the majority of the respondents were female (140; 56.5%)] and most 

of them were students (238; 96.0%). Most of these students were doing undergraduate 

programmes (178; 71.8%). The results show that 186 (75%) of the respondents were between 

17 and 29 years old. Of all the respondents, 70 (28%) held postgraduate degrees and out of 

those respondents, 2 (0.8%) were doctoral students. 

Table 1  

Demographic information 

Moderating factor Moderating variable Frequency Percentage 

Title Dr 2 0.8 

Miss 120 48.4 

Ms 0 0 

Mr 106 42.7 

Mrs 20 8.1 

Gender Male 108 43.5 

Female 140 56.5 

Age 17 to 19 years 90 36.3 

20 to 29 years 96 38.7 

30 to 39 years 52 21.0 

40 years and above 10 4.0 

Status Student 238 96.0 

Lecture 10 4.0 

Level of study 

 

Undergraduate 178 71.8 

Honours 46 18.5 

Master’s 22 8.9 

Doctoral 2 0.8 

 

From the total number of participants, 142 (57.3%) used Facebook, 90 (36.3%) used Twitter, 

88 (35.5%) used Skype and 32 (12.9%) used other instant messaging applications. However, 

all 248 (100%) of the participants used WhatsApp. Most of them had six years or more 

experience using instant messaging applications and most of them used it daily. 

 



Mashau: An empirical analysis of the impact of mobile instant messaging . . .    161 

 

 

Table 2  

Instant messaging application usage 

Moderating factor Moderating variables Frequency Percentage 

Instant messaging 

application 

Facebook 142 57.3 

Twitter 90 36.3 

Skype 88 35.5 

WhatsApp 248 100.0 

Other 32 12.9 

Experience using 

instant messaging 

application 

0 to 1 year 28 11.3 

2 to 3 years 52 21.0 

4 to 5 years 42 16.9 

6 or more 126 50.8 

Instant messaging 

application usage 

frequency 

Frequently 126 50.8 

Daily 104 41.9 

Weekly 14 5.6 

Monthly 4 1.7 

 

Normality testing 

Table 3 below presents the results of normality testing on all measured constructs using the 

Kolmogorov-Smirnov
a
 and Shapiro-Wilk tests. The results show that all measured constructs 

for both Kolmogorov-Smirnov
a
 and Shapiro-Wilk are significant because the p-value is equal 

to 0.000. 
 

Table 3  

Results of normality testing 

Measured constructs 
Kolmogorov-Smirnov

a
 Shapiro-Wilk 

Statistic Df Sig. Statistic Df Sig. 

 Compatibility .298 248 .000 .753 248 .000 

 Information quality .259 248 .000 .764 248 .000 

 Observability .195 248 .000 .886 248 .000 

 System quality .217 248 .000 .879 248 .000 

 Complexity .252 248 .000 .781 248 .000 

 Intention to use .175 248 .000 .916 248 .000 

 Relative advantage .238 248 .000 .706 248 .000 

 User satisfaction .255 248 .000 .811 248 .000 

a. Lilliefors Significance Correction 



162    Journal of Education, No. 91, 2023 

 

 

Reliability analysis 

A reliability test is a way to measure the reliability of the results using a combination of 

constructs (Ritter, 2010). This test uses a set of scores for each construct. To determine 

reliability, Cronbach’s alpha scores were used. According to Gliem and Gliem (2003), 

Cronbach’s alpha reliability score ranges between nil (0) and one (1). An acceptable score 

starts from 0.07 (Ritter, 2010; Schober & Schwarte, 2018). This study’s instruments achieved 

acceptable and good reliability scores (cf. Table 4). Based on Table 4, all constructs were 

consistently acceptable because scores were between 0.703 and 0.843. 

Table 4  

Results for Cronbach’s alpha reliability analysis 

Constructs Cronbach’s alpha Comment 

 Compatibility .716 Acceptable 

 Information quality .721 Acceptable 

 Observability .802 Good 

 System quality .784 Acceptable 

 Complexity .727 Acceptable 

 Intention to use .843 Good 

 Relative advantage .703 Acceptable 

 User satisfaction .796 Acceptable 

 

Correlation analysis 

In this study, correlation analysis is presented to show the relationship between various 

constructs: compatibility, information quality, observability, system quality, complexity, 

intention to use, relative advantage, and user satisfaction. A negative correlation between two 

constructs shows that the constructs are moving in opposite directions (Mukaka, 2012). 

Negative correlation happens when a score between two constructs is less than nil (0) 

(Asuero et al., 2007; Mukaka, 2012; Schober & Schwarte, 2018). The results displayed in 

Table 5 below show that the constructs between observability and system quality, intention to 

use and information quality, intention to use and observability, and user satisfaction and 

information quality relationships move in opposite directions because they have a negative 

correlation. 

 

 

 

 



Mashau: An empirical analysis of the impact of mobile instant messaging . . .    163 

 

 

Table 5  

Correlation analysis results 

CP IQ OB SQ CM IU RA US 

CP 1.00        

IQ 0.14 1.00       

OB 0.03 0.31 1.00      

SQ 0.179 0.07 -0.08 1.00     

CM 0.01 0.15
*
 0.187

**
 0.02 1.00    

IU 0.373
**

 -0.07 -0.07 0.230
**

 0.08 1.00   

RA 0.14 0.07 0.06 0.237
**

 0.179
**

 0.142
*
 1.00 0.339

**
 

US 0.27
*
 -0.02 0.04 0.229

**
 0.01 0.179

**
 0.339

**
 1.00 

** Correlation is significant at the 0.01 level (2-tailed). 

* Correlation is significant at the 0.05 level (2-tailed). 

Abbreviations on the construct for Table 5: Compatibility = CP, Information quality = IQ, Observability = OB, System 

quality = SQ, Complexity = CM, Intention to use = IU, Relative advantage = RA, User satisfaction = US 

 

Hypothesis testing 

In this research, eight hypotheses were created using p-value and beta from the regression 

analysis. Each independent construct was regressed against the dependent construct to test the 

hypothesis. The results depicted in Table 6 show that the impact of using MIM for 

collaborative learning during the Covid-19 lockdown can be associated with compatibility, 

information quality, observability, complexity, intention to use, relative advantage, and user 

satisfaction. In this study, Hypothesis 4 (system quality) was not supported. 

Table 6  

Hypothesis test results 

Hypothesis Variables Beta P-Value Comment 

Hypothesis 1  Compatibility 0.692 0.000 Supported 

Hypothesis 2  Information quality 0.732 0.000 Supported 

Hypothesis 3  Observability 0.710 0.032 Supported 

Hypothesis 4  System quality 0.038 0.423 Not supported 

Hypothesis 5  Complexity 0.890 0.000 Supported 



164    Journal of Education, No. 91, 2023 

 

 

Hypothesis Variables Beta P-Value Comment 

Hypothesis 6  Intention to use 0.713 0.000 Supported 

Hypothesis 7  Relative advantage 0.772 0.013 Supported 

Hypothesis 8  User satisfaction 0.870 0.000 Supported 

 

This research used path co-efficient (β) to test the model. The hypothesis test rejected 

Hypothesis 4 (system quality). The study found that system quality did not have a positive 

influence on intention to use MIM in order to realise its advantages. When students realise 

the advantages, they will probably be satisfied with the use of MIM for collaborative learning 

in rural-based universities. The findings further show that compatibility, information quality, 

observation, and complexity are significant for students to experience the advantages, 

satisfaction, and intention to use MIM for collaborative learning. Thus the findings reveal 

that the impact of using MIM for collaborative learning is dependent on the intention to use 

and the advantages and satisfaction of MIM. 

Figure 3  

Research framework with co-efficient path 

  
 

Discussion 

This research aimed to investigate the impact of MIM on collaborative learning during the 

Covid-19 lockdown in a rural-based university. To achieve the aim of the study, eight 



Mashau: An empirical analysis of the impact of mobile instant messaging . . .    165 

 

 

constructs (compatibility, information quality, observability, system quality, complexity, 

intention to use, relative advantage, and user satisfaction) were used to validate the proposed 

conceptual framework. The uniqueness of this study is that it was conducted at a previously 

disadvantaged university, also known as a rural-based university, to explore the impact of 

MIM on collaborative learning during the Covid-19 lockdown. Rural-based universities have 

limited social, economic, and digital infrastructures (Bere & Rambe, 2016). Therefore, the 

investigation into the impact of students using MIM for collaborative learning in a rural-

based university was crucial. 

Most participants indicated that they had been using MIM (WhatsApp, Facebook, Twitter, 

and Skype) for different purposes before the Covid-19 pandemic. All claimed that they 

resorted to MIM to communicate with their peers during the nationwide lockdown. Most of 

them were using WhatsApp. Consistent with previous studies, the students reported that they 

used WhatsApp for collaborative learning because it was compatible with their digital 

devices, and they used the platform to acquire the information that they needed (Bere, 2019; 

Fu & Hwang, 2018; So, 2016). Moreover, most of the students indicated that they used MIM 

to discuss various concepts and assignments with their peers because of the relative 

advantages that it offers (Habes et al., 2018; Yadegaridehkordi et al., 2019). They claimed 

that they could study wherever they were. Indeed, previous studies have suggested that 

mobile learning enables students to study at any time without being confined within four 

walls (Habes et al., 2018; Mashau, 2016; Sarwar et al., 2019). 

In addition, students indicated that MIM is not complex to use, share, and receive learning 

material (Ansari & Khan, 2020; Alwreikat et al., 2022). This is consistent with findings by 

Mashau and Mokwena (2017) who indicated that if instant messaging is not complicated, 

students are likely to see the advantages of adopting it. Furthermore, instant messaging that is 

simple to use is likely to have a positive impact on the students (Ansari & Khan, 2020; 

Mashau, 2016). 

This study also found that system quality did not have any impact on using MIM for 

collaborative learning in the rural-based universities during the Covid-19 lockdown. 

Therefore, compatibility, information quality, observability, complexity, intention to use, 

relative advantage, and user satisfaction positively impacted the use of mobile instant 

messaging for collaborative learning during the Covid-19 lockdown. 

Limitation and recommendation 

This study has a limitation that could be addressed in future studies. Data were collected from 

only one rural-based university due to Covid-19 restrictions preventing travel to other 

provinces in South Africa. Future studies could sample more than one university, compare 

the results, and possibly reveal critical factors that had an impact on the use of MIM for 

collaborative learning in South African rural-based universities during the Covid-19 

lockdown. Furthermore, future studies could use mixed methods and incorporate interviews 

and questionnaires to collect data. 



166    Journal of Education, No. 91, 2023 

 

 

Conclusion 

This paper investigated the impact of MIM on collaborative learning in a rural-based 

university during the Covid-19 lockdown. The data were collected using a closed-ended 

questionnaire on Google Forms. The data were later analysed with the IBM SPSS statistical 

tool. The constructs derived from the D&M IS success model and the DOI theory were used 

to validate the proposed conceptual framework. 

After conducting hypothesis testing using beta and p-value, Hypothesis 4 (system quality) 

was rejected as a predictor of the impact of the use of MIM for collaborative learning. All the 

other hypotheses were supported as predictors for measuring the impact. The findings show 

that most participants used MIM to communicate and collaborate with their peers. Most of 

them used it to access and share learning materials while others used it to discuss the subject 

matter and assignments. 

The study shows that MIM had a significant impact on the rural-based university because 

students were able to work together even though they were “locked down” in their homes. In 

addition, lecturers were able to continue teaching and learning using MIM. However, going 

forward, more constructs could be explored by examining the issue of the availability of 

devices and internet connectivity for rural-based universities students. 

References 

Alwreikat, A., Zaid, M. K. A., & Shehata, A. (2022). Determinants of Facebook use among 

students and its impact on collaborative learning. Information Development, 38(4), 

641–657. https://doi.org/10.1177/02666669211005819 

Ansari, J. A. N., & Khan, N. A. (2020). Exploring the role of social media in collaborative 

learning the new domain of learning. Smart Learning Environments, 7(9), 1–16. 

https://doi.org/10.1186/s40561-020-00118-7Asuero, A. G., Sayago, A., & González, 

A. G. (2007). The correlation coefficient: An overview. Critical Reviews in Analytical 

Chemistry, 36(1), 41–59. https://doi.org/10.1080/10408340500526766 

Babbie, E. R. (2005). The basics of social research (3rd ed.). Thomson. 

Bere, A. (2019). Understanding mobile learning using a social embeddedness approach: A 

case of instant messaging. International Journal of Education and Development 

Using Information and Communication Technology (IJEDICT), 15(2), 132–153. 

Bere, A., & McKay, E. (2017). Investigating the impact of ICT tutorial strategies to promote 

improved database knowledge acquisition [Paper presentation]. The 28th Australasian 

Conference on Information Systems, Hobart, Australia.  



Mashau: An empirical analysis of the impact of mobile instant messaging . . .    167 

 

 

Bere, A., & Rambe, P. (2016). An empirical analysis of the determinants of mobile instant 

messaging appropriation in university learning. Journal of Computing in Higher 

Education, 28(2), 172–198. https://doi.org/10.1007/s12528-016-9112-2 

Cresswell, J. W., & Clark, V. L. P. (2011). Designing and conducting mixed methods 

research (2nd ed.). SAGE.DeLone, W. H., & McLean, E. R. (2002). Information 

systems success revisited. Proceedings of the Annual Hawaii International 

Conference on System Sciences, 1–11. https://doi.org/10.1109/HICSS.2002.994345 

DeLone, W. H., & McLean, E. R. (2003). The DeLone and McLean model of information 

systems success: A ten-year update. Journal of Management Information Systems, 

19(4), 9–30. https://doi.org/10.1080/07421222.2003.11045748 

El-Hussein, M. O. M., & Cronje, J. C. (2010). Defining mobile learning in the higher 

education landscape. Educational Technology and Society, 13(3), 12–21. 

https://www.academia.edu/633655/Defining_Mobile_Learning_in_the_Higher_Educa

tion_Landscape 

Fu, Q., & Hwang, G. (2018). Trends in mobile technology-supported collaborative learning: 

A systematic review of journal publications from 2007 to 2016. Computers & 

Education, 199(1), 129–143. https://doi.org/10.1016/j.compedu.2018.01.004 

Gliem, J. A., & Gliem, R. R. (2003). Calculating, interpreting, and reporting Cronbach’s 

alpha reliability coefficient for Likert-type scales. Midwest Research-to-Practice 

Conference in Adult, Continuing, and Community Education, 82–88. 

https://hdl.handle.net/1805/344 

Habes, M., Salloum, S. A., Alghizzawi, M., & Alshibly, M. S. (2018). The role of modern 

media technology in improving collaborative learning of students in Jordanian 

universities. International Journal of Information Technology and Language Studies 

(IJITLS), 2(3), 71–22. http://journals.sfu.ca/ijitls 

Jeong, H., & Hmelo-Silver, C. E. (2016). Seven affordances of computer-supported 

collaborative learning: How to support collaborative learning? How can technologies 

help? Educational Psychologist, 51(2), 247–265. 

https://doi.org/10.1080/00461520.2016.1158654 

Kim, H., Lee, M. Y., & Kim, M. (2014). Effects of mobile instant messaging on collaborative 

learning processes and outcomes: The case of South Korea. Educational Technology 

and Society, 17(2), 31–42.  

Mashau, N. L. (2016). Issues affecting the adoption and usage of mobile instant messaging in 

semi-rural public schools of South Africa for learning. Open Access Library Journal, 

3(11), 1–13. https://doi.org/10.4236/OALIB.1103156 



168    Journal of Education, No. 91, 2023 

 

 

Mashau, N. L., & Mokwena, S. N. (2017). Adoption of instant messaging for mathematics 

lessons in rural schools. International Electronic Journal of Mathematics Education, 

12(3), 447–462. https://doi.org/10.29333/IEJME/624 

Mukaka, M. M. (2012). A guide to appropriate use of correlation coefficient in medical 

research. Malawi Medical Journal, 24(3), 69–71. https://doi.org/10.4314/mmj.v24i3. 

Myers, M. D. (2013). Qualitative research in business and management (2nd ed.). SAGE. 

Netshakhuma, N. S. (2021). Assessing South African university adoption of online teaching 

during Covid-19. In P. Isaias, T. Issa, & P. Kommers (Eds.), Measurement 

methodologies to assess the effectiveness of global online learning: Advances in 

mobile and distance learning (pp. 1–21). Information Science Reference. 

Oates, B. J. (2006). Researching information systems and computing. SAGE.  

Ritter, N. L. (2010, February 18). Understanding a widely misunderstood statistic: 

Cronbach’s α [Paper presentation]. Annual meeting of the Southwest Education 

Research Association, New Orleans. 

https://scholar.google.com/scholar?hl=en&as_sdt=0%2C5&q=Understanding+a+wide

ly+misunderstood+statistic%3A+Cronbach%E2%80%99s+%CE%B1.&btnG= 

Rogers, E. M. (1962). Diffusion research. The Free Press. 

Rogers, E. M. (1995). Diffusion of innovations (4th ed.). The Free Press. 

Rogers, E. M. (2003). Diffusion of innovations (5th ed.). The Free Press. 

Ryu, H., & Parsons, D. (2012). Risky business or sharing the load? Social flow in 

collaborative mobile learning. Computers & Education, 58(2), 707–720. 

https://doi.org/10.1016/J.COMPEDU.2011.09.019 

Sarwar, B., Zulfiqar, S., Aziz, S., & Chandia, K. E. (2019). Usage of social media tools for 

collaborative learning: The effect on learning success with the moderating role of 

cyberbullying. Journal of Educational Computing, 57(1), 249–279. 

http://doi.org/10.1177/0735633117748415 

Schober, P., & Schwarte, L. A. (2018). Correlation coefficients: Appropriate use and 

interpretation. Anesthesia and Analgesia, 126(5), 1763–1768. 

https://doi.org/10.1213/ANE.0000000000002864 

So, S. (2016). Mobile instant messaging support for teaching and learning in higher 

education. Internet and Higher Education, 31, 32–42. 

https://doi.org/10.1016/j.iheduc.2016.06.001 



Mashau: An empirical analysis of the impact of mobile instant messaging . . .    169 

 

 

Tang, C. M., & Bradshaw, A. (2020). Instant messaging or face-to-face? How choice of 

communication medium affects team collaboration environments. E-Learning and 

Digital Media, 17(2), 111–130. https://doi.org/10.1177/2042753019899724 

Yadegaridehkordi, E., Shuib, L., Nilashi, M., & Asadi, S. (2019). Decision to adopt online 

collaborative learning tools in higher education: A case of top Malaysian universities. 

Education and Information Technologies, 24(1), 79–102. 

https://doi.org/10.1007/s10639-018-9761-z 

Zaidi, S. F. H., Osmanaj, V., Ali, O., & Zaidi, S. A. H. (2021). Adoption of mobile 

technology for mobile learning by university students during Covid-19. International 

Journal of Information and Learning Technology, 38(4), 329–343. 

https://doi.org/10.1108/IJILT-02-2021-0033/FULL/PDF