IRMA-International.org: Creator of Knowledge
Information Resources Management Association
Advancing the Concepts & Practices of Information Resources Management in Modern Organizations

Development of Adaptive Kanji Learning System for Mobile Phone

Development of Adaptive Kanji Learning System for Mobile Phone
View Sample PDF
Author(s): Mengmeng Li (University of Tokushima, Japan), Hiroaki Ogata (University of Tokushima, Japan), Bin Hou (University of Tokushima, Japan), Satoshi Hashimoto (University of Tokushima, Japan), Yuqin Liu (Dalian University of Technology, China), Noriko Uosaki (University of Tokushima, Japan)and Yoneo Yano (University of Tokushima, Japan)
Copyright: 2012
Pages: 12
Source title: Intelligent Learning Systems and Advancements in Computer-Aided Instruction: Emerging Studies
Source Author(s)/Editor(s): Qun Jin (Waseda University, Japan)
DOI: 10.4018/978-1-61350-483-3.ch011

Purchase

View Development of Adaptive Kanji Learning System for Mobile Phone on the publisher's website for pricing and purchasing information.

Abstract

This paper describes an adaptive learning system based on mobile phone email to support the study of Japanese Kanji. In this study, the main emphasis is on using the adaptive learning to resolve one common problem of the mobile-based email or SMS language learning systems. To achieve this goal, the authors main efforts focus on three aspects: sending the contents to a learner following his or her interests, adjusting the difficulty level of the tests to suit the learner’s proficiency level, and adapting the system to his or her learning style. Additionally, this system has already been evaluated by the learners and the results show that most of them benefited from the system and would like to continue using it.

Related Content

Sylvia Robertson. © 2023. 28 pages.
Dimitrios Stamovlasis, Charalampos Tsanidis. © 2023. 23 pages.
Ikram Chelliq, Lamya Anoir, Mohamed Erradi, Mohamed Khaldi. © 2023. 26 pages.
Vasiliki Ioakeimidou. © 2023. 27 pages.
Eleni Bonti. © 2023. 25 pages.
Lamya Anoir, Ikram Chelliq, Mohamed Erradi, Mohamed Khaldi. © 2023. 29 pages.
Shibu Puthalath, M. R. Mallaiah, Viswesh Sekhar. © 2023. 17 pages.
Body Bottom