TY - JOUR
T1 - MATT
T2 - A Mobile Assisted Tense Tool for flexible m-grammar learning based on cloud-fog-edge collaborative networking
AU - Refat, Nadia
AU - Rahman, Md Arafatur
AU - Taufiq Asyhari, A.
AU - Kassim, Hafizoah
AU - Kurniawan, Ibnu Febry
AU - Rahman, Mahbubur
N1 - Funding Information:
The work of Md. Arafatur Rahman was supported in part by the University Malaysia Pahang under Grant RDU192215 and Grant RDU190374.
Publisher Copyright:
© 2013 IEEE.
PY - 2020/4/13
Y1 - 2020/4/13
N2 - The proliferation of modern mobile technologies on grammar learning (i.e., m-grammar learning) has generated a multitude of challenges in developing effective pedagogically-informed learning tools. The existing systems have mostly suffered from low motivation and poor learning effectiveness because of the three key reasons, namely: i) a weak tie to motivational theoretical principles, ii) a lack of proper instructional design, and iii) a lack of proper infrastructural design for data sharing between students and instructors. To deal with this issue, this paper presents MATT: a Mobile-Assisted Tense Tool that encapsulates an m-grammar instructional design leveraging upon cloud-fog-edge collaborative networking. Central to MATT is the incorporation of the Cognitive Theory of Multimedia Learning principles to minimize the extraneous cognitive load and a motivational model to increase motivation and learning effectiveness. To ensure effective instructional design, we exploit adaptive and dynamic approaches embodied in a flexible instructional paradigm that takes advantage of collective learning data exchange across cloud (central unit), fog (regional units) and edge (end devices/learners). To demonstrate the overall effectiveness of this system, we describe our findings in the evaluation of both the learning aspect (using a quantitative research design) and collaborative network performance (using numerical simulation). With an appropriate condition of delay-tolerant network-enabled learning data exchange, the results suggest that the students' cognitive load is low and motivational nature is high after using this system, which led them to perform more positively in the post-test evaluation.
AB - The proliferation of modern mobile technologies on grammar learning (i.e., m-grammar learning) has generated a multitude of challenges in developing effective pedagogically-informed learning tools. The existing systems have mostly suffered from low motivation and poor learning effectiveness because of the three key reasons, namely: i) a weak tie to motivational theoretical principles, ii) a lack of proper instructional design, and iii) a lack of proper infrastructural design for data sharing between students and instructors. To deal with this issue, this paper presents MATT: a Mobile-Assisted Tense Tool that encapsulates an m-grammar instructional design leveraging upon cloud-fog-edge collaborative networking. Central to MATT is the incorporation of the Cognitive Theory of Multimedia Learning principles to minimize the extraneous cognitive load and a motivational model to increase motivation and learning effectiveness. To ensure effective instructional design, we exploit adaptive and dynamic approaches embodied in a flexible instructional paradigm that takes advantage of collective learning data exchange across cloud (central unit), fog (regional units) and edge (end devices/learners). To demonstrate the overall effectiveness of this system, we describe our findings in the evaluation of both the learning aspect (using a quantitative research design) and collaborative network performance (using numerical simulation). With an appropriate condition of delay-tolerant network-enabled learning data exchange, the results suggest that the students' cognitive load is low and motivational nature is high after using this system, which led them to perform more positively in the post-test evaluation.
KW - Cloud-fog-edge collaboration
KW - cognitive load
KW - collaborative interaction
KW - cooperative networks
KW - e-learning
KW - m-grammar learning
KW - motivation model
KW - student learning experience
UR - https://www.scopus.com/pages/publications/85084150337
U2 - 10.1109/ACCESS.2020.2983310
DO - 10.1109/ACCESS.2020.2983310
M3 - Article
AN - SCOPUS:85084150337
SN - 2169-3536
VL - 8
SP - 66074
EP - 66084
JO - IEEE Access
JF - IEEE Access
ER -