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Harnessing the power of big data analytics in the cloud to support learning analytics in mobile learning environment

Published: 01 March 2019 Publication History

Abstract

Technology enhanced learning (TEL) such as online learning environment with adaptive technologies has gained growing interest in recent past in the field of teaching and learning. In this context, mobile learning has got much momentum and is exemplified by diverse characteristics associated with the technologies and devices used, the enormous size of data generated throughout a learning session, and the interactions among the learners that occur outside the classroom. Consequently, sophisticated data analysis techniques are required to handle the intricacy of mobile learning and analyze the vast amount of datasets to enhance the learning experiences of mobile learners. This has led to the adoption of big data analytics for efficient processing of big learning data to add value to the mobile learning environments. Yet limited processing capability of the mobile devices is another key challenge faced by such big data analytics in mobile learning environments. To overcome this limitation, certain heavy computational parts could be offloaded to the cloud which can provide enough computation and storage resources. To this end, this paper presents a cloud based mobile learning framework that utilizes big data analytics technique to extract values from huge volume of mobile learners' data. Finally, we investigate learners' readiness and driving factors of mobile learning adoption in higher education institutions. In particular, we propose a hypothesized model for mobile learning adoption built on a locally extended technology acceptance model (TAM).

Highlights

Big data analytics in the cloud to support learning analytics for mobile learning.
Extract values by analyzing mobile learners' data using big data analytics.
Generate actionable insights to improve learners' performance.
Identify driving factors behind the adoption of mobile learning technology.

References

[1]
M.F. Al-ani, S.M. Hameed, L. Faisal, Students' perspectives in adopting mobile learning at university of Bahrain, in: IEEE Fourth International Conference on e-Learning Best Practices in Management, Design and Development of e-Courses: Standards of Excellence and Creativity, 2013, pp. 86–89.
[2]
F.N. Al-Fahad, Students' attitudes and perceptions towards the effectiveness of mobile learning in King Saud University, Saudi Arabia, TOJET: The Turkish Online Journal of Educational Technology 8 (2) (2009).
[3]
O. Al-Hujran, E. Al-Lozi, M.M. Al-Debei, Get ready to mobile learning: Examining factors affecting college students' behavioral intentions to use m-learning in Saudi Arabia, Jordan Journal of Business Administration 10 (1) (2014).
[4]
N.R. Aljohani, H.C. Davis, Significance of learning analytics in enhancing the mobile and pervasive learning environments, in: Proc. of the 6th international conference on next generation mobile applications, services and technologies (NGMAST), pp. 70–74, 2012, 2012.
[5]
N.M.F. Aljuaid, M.A.R. Alzahrani, A. Islam, Assessing mobile learning readiness in Saudi Arabia higher education: An empirical study, Malaysian Online Journal of Educational Technology 2 (2) (2014) 1–14.
[6]
G.P. Anthony, Big data and learning analytics in blended learning Environments: Benefits and concerns, International Journal of Artificial Intelligence and Interactive Multimedia 2 (7) (2014).
[7]
K.E. Arnold, Signals: Applying academic analytics, Educause Quarterly 33 (2010) 10.
[8]
R. Barber, M. Sharkey, Course Correction: Using analytics to predict course success, in: Paper presented at the second international conference on learning analytics and knowledge (LAK12), 2012.
[9]
C. Beer, K. Clark, D. Jones, Indicators of engagement, in: Curriculum, technology & transformation for an unknown future. Proceedings ASCILITE Sydney, 2010, pp. 75–86.
[10]
T. Bernardo, K. Marco, D. Hendrik, S. Marcus, Time will tell: The role of mobile learning analytics in self-regulated learning, Computers and Education 89 (2015) 53–74.
[11]
T.M. Billy, Learning analytics in higher education: An analysis of case studies, Asian Association of Open Universities Journal 12 (1) (2017) 21–40.
[12]
A.Q. Camilo, F.G. Beatriz, S.P. Oswaldo, Comparative study of technologies for mobile learning analytics, in: Proc. of 9th computing Colombian conference (9CCC), 2014.
[13]
J. Cohen, Statistical power analysis for the behavioral sciences, 2nd ed., Erlbaum, Hillsdale, NJ, 1988.
[14]
F.D. Davis, R.P. Bagozzi, P.R. Warshaw, User acceptance of computer technology: A comparison of two theoretical models, Management Science 35 (8) (1989) 982–1003. (1989).
[15]
S. Dawson, A. Bakharia, E. Heathcote, SNAPP: Realising the affordances of real-time SNA within networked learning environments, in: Proc. of the 7th international conference on networked learning, 2010.
[16]
Y. Demchenko, E. Gruengard, S. Klous, Instructional model for building effective big data curricula for online and campus education, in: Proc. of IEEE 6th international conference on cloud computing technology and science (CloudCom), 2014.
[17]
K. Digieco, Ten IT issues, 2015.
[18]
Q. Fang, C. Xu, J. Sang, M.S. Hossain, A. Ghoneim, Folksonomy-based visual ontology construction and its applications, IEEE Transactions on Multimedia 18 (4) (2016) 702–713.
[19]
C. Fornell, D.F. Larcker, Evaluating structural equation models with unobservable variables and measurement error, Journal of Marketing Research 18 (1) (1981) 39–50.
[20]
G. Fulantelli, D. Taibi, M. Arrigo, A semantic approach to mobile learning analytics, in: Proceedings of the first international conference on technological ecosystem for enhancing multiculturality, 2013, pp. 287–292.
[21]
B. Furht, A. Escalante, Handbook of cloud computing, Springer-Verlag, New York, 2010.
[22]
K.W.W. Gary, A new wave of innovation using mobile learning analytics for flipped classroom, lecture notes in educational technology, 2015, pp. 189–218.
[23]
George Siemens, Phil Long, Penetrating the Fog: Analytics in learning and education, 2011, Retrieved 08-06 http://www.educause.edu/EDUCAUSE+Review/EDUCAUSEReviewMagazineVolume46/PenetratingtheFogAnalyticsinLe/235017.
[24]
Y. Huang, Exploring the factors that affect the intention to use collaborative technologies: The differing perspectives of sequential/global learners, Australasian Journal of Educational Technology 31 (3) (2015) 278–292.
[25]
R.M. Jaradat, Exploring the factors that affecting intention to use mobile learning, International Journal of Mobile Learning and Organization 5 (2) (2011) 115–130.
[26]
H.H.M. Jawad, Z.B. Hassan, Applying UTAUT to evaluate the acceptance of mobile learning in higher education in Iraq, Self 46 (2015) (2015) 27.
[27]
L. Johnson, R. Smith, H. Willis, A. Levine, K. Haywood, The 2011 horizon report, in: The new media consortium, Austin, Texas, 2011.
[28]
Y.-C. Lee, An empirical investigation into factors influencing the adoption of an e-learning system, Online Information Review 30 (5) (2006) 517–541. (2006).
[29]
P. Legris, J. Ingham, P. Collerette, Why do people use information technology? a critical review of the technology acceptance model, Information & Management 40 (3) (2003) 191–204.
[30]
I. Liu, M.C. Chen, Y. Sun, D. Wibe, C. Kuo, Extending the TAM model to explore the factors that affect intention to use an online learning community, Computers and Education 54 (2010) (2010) 600–610.
[31]
P.B. Lowry, J. Gaskin, N. Twyman, B. Hammer, T. Roberts, Taking fun and games seriously: Proposing the hedonic-motivation system adoption model (Hmsam), Journal of the Association for Information Systems 14 (11) (2012) 617–671.
[32]
A. Manohar, P. Gupta, V. Priyanka, M.F. Uddin, Utilizing big data analytics to improve education, in: Proceedings of the ASEE North east conference, 2016.
[33]
S. Mohammad, M.A. Job, Adaption of m-learning as a tool in blended learning-a case study in AOU Bahrain, International Journal of Science and Technology 3 (1) (2013).
[34]
A. Mostafa, M.E. Hatem, S. Khaled, Investigating attitudes towards the use of mobile learning in higher education, Computers in Human Behavior 56 (2016) 93–102.
[35]
K. Ozdagon, N. Basoglu, G. Ercetin, Exploring major determinants of mobile learning adoption, in: Proc. of PICMET'12 technology management of emerging technologies, 2012, pp. 1415–1423.
[37]
J. Rikala, M. Vesisenaho, J. Mylläri, Actual and potential pedagogical use of tablets in schools, Human Technology: An Interdisciplinary Journal on Humans in ICT Environments 9 (2) (2013) 113–131.
[38]
J. Roberts, Handbook of mobile learning, Chapter 1, 2013, Print ISBN: 9780415503693.
[39]
R.G. Saadé, F. Nebebe, W. Tan, Viability of the technology acceptance model’ in multimedia learning environments: A comparative study, Interdisciplinary Journal of Knowledge and Learning Objects 3 (2) (2007) 175–184.
[40]
M.E. Seliaman, M. Al-Turki, Mobile learning adoption in Saudi Arabia, World Academy of Science, Engineering and Technology 69 (2012) 293–391.
[41]
J. Song, Y. Zhang, K. Duan, M.S. Hossain, S.K.M. Rahman, Tola: Topic-oriented learning assistance based on cyber-physical system and big data, Future Generation Computer Systems 75 (2017) (2017) 200–205.
[44]
V. Venkatesh, M.G. Morris, G.B. Davis, F.D. Davis, User acceptance of information technology: Toward a unified view, MIS Quarterly (2003) (2003) 425–478.
[45]
WarpPLS, Nonlinear structural equation modeling made easy, Script Warp Systems, 2015.
[46]
G. Wong, A new wave of innovation using mobile learning analytics for flipped classroom, in: Mobile learning design- lecture notes in educational technology, 2016, pp. 189–218.
[47]
Z. Yuan, C. Xu, J. Sang, S. Yan, M.S. Hossain, Learning feature hierarchies: A layer-wise tag-embedded approach, IEEE Transactions on Multimedia 17 (6) (2015) 816–827. June 2015.

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      Information & Contributors

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      Published In

      cover image Computers in Human Behavior
      Computers in Human Behavior  Volume 92, Issue C
      Mar 2019
      739 pages

      Publisher

      Elsevier Science Publishers B. V.

      Netherlands

      Publication History

      Published: 01 March 2019

      Author Tags

      1. Mobile learning (m-learning)
      2. Learning analytics
      3. Big data analytics
      4. Cloud computing
      5. Map-reduce technique
      6. Technology acceptance model (TAM)

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      • (2022)Modeling of Ideological and Political Education System in Colleges and Universities Based on Naive Bayes-BP Neural Network in the Era of Big DataMobile Information Systems10.1155/2022/76096972022Online publication date: 1-Jan-2022
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