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Exploring the Role of Mobile Technologies in Higher Education: The Impact of Online Teaching on Traditional Learning

In: Novel Financial Applications of Machine Learning and Deep Learning

Author

Listed:
  • Syed Far Abid Hossain

    (BRAC University)

  • Armana Hakim Nadi

    (Bangladesh University of Professionals)

  • Rahma Akhter

    (BRAC University)

  • Md. Ahmedul Islam Sohan

    (IUBAT University)

  • Faiza Tanaz Ahsan

    (North South University)

  • Mahbuba Rahman Shofin

    (IUBAT University)

  • Saadmann Shabab

    (North South University)

  • Tanusree Karmoker

    (IUBAT University)

  • Krishna Paul

    (North South University)

Abstract

The chapter aims to explore the role of mobile technologies in higher education especially the impact of online teaching on traditional learning. The transformation of the educational setting from online to offline draws limited attention from researchers in the post-pandemic era. The key reason for conducting this chapter is to explore the hidden issues of student coping strategies in the offline learning environment. In addition, the chapter explores the opportunities and limitations of technology usage in higher education. The study utilized a qualitative research approach to conduct the chapter with an extensive literature review. The result shows that with the advanced usage of mobile technology, the academic resources are freely available and accessible to all the learners that can ensure effective teaching and learning, however, the study is conducted among a limited number of respondents in a single country. This may affect the generalization of the study.

Suggested Citation

  • Syed Far Abid Hossain & Armana Hakim Nadi & Rahma Akhter & Md. Ahmedul Islam Sohan & Faiza Tanaz Ahsan & Mahbuba Rahman Shofin & Saadmann Shabab & Tanusree Karmoker & Krishna Paul, 2023. "Exploring the Role of Mobile Technologies in Higher Education: The Impact of Online Teaching on Traditional Learning," International Series in Operations Research & Management Science, in: Mohammad Zoynul Abedin & Petr Hajek (ed.), Novel Financial Applications of Machine Learning and Deep Learning, pages 197-216, Springer.
  • Handle: RePEc:spr:isochp:978-3-031-18552-6_12
    DOI: 10.1007/978-3-031-18552-6_12
    as

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