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Lisana, Lisana – Education and Information Technologies, 2023
Adopting technology by its intended users is one of the most important contributors to that technology's success. Therefore, the success of mobile learning (ML) depends on the students' acceptance of the method. Regarding this point, this quantitative research aims to identify factors that affect switching intention to adopt ML among university…
Descriptors: Handheld Devices, Telecommunications, Technology Integration, Intention
Walker, Clive Beresford – ProQuest LLC, 2023
The current conditions concerning the use of mobile technology in higher education suggest mobile devices such as smartphones will soon be integrally relied on to support formal and informal student learning. However, the formal use of mobile technologies in higher education has yet to establish a notable foothold, and m-learning pedagogical…
Descriptors: College Students, Student Attitudes, Telecommunications, Handheld Devices
Mohammed A. E. Suliman; Wenlan Zhang; Rehab A. I. Suluman; Kamal Abubker Abrahim Sleiman – Education and Information Technologies, 2025
This study contributes to the knowledge about mobile learning among medical students in the context of developing countries. This research used the Technology Acceptance Model (TAM) to study the preconditions for m-learning among medical students. A twenty-item self-reported survey was used to gather data from 387 medical students, and structural…
Descriptors: Medical Students, Student Attitudes, Information Technology, Technology Integration
Rian-Angelica M. Barreras – ProQuest LLC, 2024
When accessing the internet, smartphones allow users to access social media, search for information, and communicate with others while on the go. Smartphones no longer only provide a way to connect; this technology also allows people relate to others and maintain their relationships. This study explores (a) student smartphone use behaviors, (b)…
Descriptors: College Students, Student Behavior, Telecommunications, Handheld Devices
Kuo, Yu-Chun; Kuo, Yu-Tung; Abi-El-Mona, Issam – Education and Information Technologies, 2023
This study investigated pre-service teachers' perceptions of using iPads in teaching, with a focus on motivation to adopt iPads, iPad-integration self-efficacy, and intention to adopt iPads for future teaching. Changes of pre-service teachers' perceptions of using iPads over time as well as the relationships of motivation, self-efficacy, and…
Descriptors: Telecommunications, Tablet Computers, Preservice Teachers, Student Attitudes
Handan Ürek – Journal of Science Education and Technology, 2024
Science education at different levels can be supported by various mobile applications that can be downloaded for free onto mobile phones, tablets, and other devices. Such applications can also be used in laboratory work, but it must be said that their use in science laboratories is a relatively new approach. This study is aimed at determining the…
Descriptors: Foreign Countries, Preservice Teacher Education, Preservice Teachers, Handheld Devices
Liangyong Xue; Abdullah Mat Rashid; Sha Ouyang – SAGE Open, 2024
This systematic review evaluates the application of the Unified Theory of Acceptance and Use of Technology (UTAUT) model in higher education, analyzing 162 SSCI/SCI-E articles from 2008 to 2022. It reveals a predominant focus on student participants from Asia and North America. Mobile learning tools are the most studied technologies. Surveys…
Descriptors: Research Reports, Technology Uses in Education, Structural Equation Models, Foreign Countries
Sunaina Sharma – Clearing House: A Journal of Educational Strategies, Issues and Ideas, 2024
The proliferation of mobile technology, particularly cell phones, in educational settings has sparked substantial debate in recent years. Academic studies have extensively examined the challenges associated with student cell phone use during class time, highlighting issues such as decreased learning, achievement, and participation. Despite the…
Descriptors: Foreign Countries, Telecommunications, Handheld Devices, Secondary Education
Neda M. Maenza; Tijana Gajic – Research in Pedagogy, 2024
Innovative concepts coupled with cutting-edge digital advancements have ushered in a transformative era for English language learners worldwide. This research delves into the efficacy of the WordUp mobile application in facilitating the acquisition of new English vocabulary. The application has notably organized English words based on their…
Descriptors: Student Attitudes, English (Second Language), Second Language Learning, Second Language Instruction
Khlaif, Zuheir N.; Salha, Soheil – Technology, Pedagogy and Education, 2022
This study proposed and tested an empirical model to examine the relationships between the factors influencing mobile technology integration in higher education from the students' and faculty points of view. A sequential mixed method was used to meet the aim of the study. The findings of the qualitative phase were used to develop the quantitative…
Descriptors: Educational Technology, Technology Integration, Handheld Devices, Telecommunications
Alowayr, Ali – International Journal of Information and Learning Technology, 2022
Purpose: Although several different learning technologies have been integrated into the face-to-face (F2F) learning approach, the effective implementation of mobile learning (m-learning) is still at an early stage. This may be due to the lack of understanding factors that affect learners' acceptance of m-learning. Design/methodology/approach:…
Descriptors: Foreign Countries, Educational Technology, Telecommunications, Handheld Devices
Elizabeth Louanne Keele – ProQuest LLC, 2024
The problem in this study is lack of research regarding perceptions of first-year nontraditional students (FYNTSs) who are enrolled in a face-to-face community college course regarding how mobile learning in the classroom affects their emotional engagement. Understanding this provides critical insights as well as enhanced and more accessible…
Descriptors: Community College Students, Adult Students, Student Attitudes, Handheld Devices
Aburub, Faisal; Alnawas, Ibrahim – Education and Information Technologies, 2019
The aim of this paper is to test the combined effect of the key components of the Technology Acceptance Model (TAM) and those of the Usage and Gratification Approach (U&G) on intention to adopt mobile learning in higher education. Data were collected from 820 students from ten universities in Jordan. Structural equation modeling (AMOS 18) was…
Descriptors: Technology Integration, College Students, Higher Education, Telecommunications
Ybyraimzhanov, Kalibek; Baimyrzayev, Kuat; Taurbekova, Ainur; Gulden, Yespolova; Tynyskhanova, Aiym – World Journal on Educational Technology: Current Issues, 2022
The aim of this study is to create an activity by means of technology integration in the foreign language learning of primary school students. A quantitative research method was used in the study. The research was conducted in the fall semester of 2021-2022. A total of 248 voluntary primary school students who continued their education in…
Descriptors: Second Language Learning, Second Language Instruction, English (Second Language), Technology Integration
Himel Mondal; Juhu Kiran Krushna Karri; Swaminathan Ramasubramanian; Shaikat Mondal; Ayesha Juhi; Pratima Gupta – Advances in Physiology Education, 2025
Large language models (LLMs)-based chatbots use natural language processing and are a type of generative artificial intelligence (AI) that is capable of comprehending user input and generating output in various formats. They offer potential benefits in medical education. This study explored the student's feedback on the utilization of LLMs in…
Descriptors: Computational Linguistics, Physiology, Teaching Methods, Artificial Intelligence