Fragmented learning aims to fully utilize fragmented time slices to learn and accumulate fragmented knowledge. The current mobile online learning apps fail to fully consider the preferences, demands, and adaptability of users. The content and difficulty of the recommended resources are not in match with user features. Therefore, this paper explored the issue of the recommendation of personalized online learning resources for fragmented learning based on mobile devices. Firstly, the authors developed an architecture for the adaptive recommendation model of online learning resources, modeled the learners and fragmented learning resources. Next, the recommendation model was constructed for personalized online learning resources, the flow of th...
This paper deals with adaptive learning technologies that fit the individual learner’s needs. Thereb...
1 Abstract Mobile learning through open educational resources (OERs) evidently differs from its trad...
International audienceIn recent years, the development of recommendation systems has aroused growing...
This paper firstly designs a five-dimensional model of learners’ characteristics (learners’ English ...
With technology advancement, online learning has become a trend that ease the learning activity with...
Most education platforms attempt to plan reasonable learning paths for college student users,...
In recent years, under the guidance of the educational concept of equality and sharing, universities...
The current methods for online course learning resource recommendation tend to continuously push sim...
5 pagesInternational audienceThe paper presents an ongoing research about the development of a new r...
In this paper, a personalized online education platform based on a collaborative filtering algorithm...
With the rapid development of information technology and data science, as well as the innovative con...
We live in an e-learning era, where the fast growth of e-learning around the world is inspiring many...
Abstract- With the rapid development of wireless networks and mobile devices, mobile learning has go...
Abstract — Mobile Learning (mLearning) describes a new trend of learning that uses innovations like ...
An interest-oriented teaching method can stimulate students' interest in learning, thus generating g...
This paper deals with adaptive learning technologies that fit the individual learner’s needs. Thereb...
1 Abstract Mobile learning through open educational resources (OERs) evidently differs from its trad...
International audienceIn recent years, the development of recommendation systems has aroused growing...
This paper firstly designs a five-dimensional model of learners’ characteristics (learners’ English ...
With technology advancement, online learning has become a trend that ease the learning activity with...
Most education platforms attempt to plan reasonable learning paths for college student users,...
In recent years, under the guidance of the educational concept of equality and sharing, universities...
The current methods for online course learning resource recommendation tend to continuously push sim...
5 pagesInternational audienceThe paper presents an ongoing research about the development of a new r...
In this paper, a personalized online education platform based on a collaborative filtering algorithm...
With the rapid development of information technology and data science, as well as the innovative con...
We live in an e-learning era, where the fast growth of e-learning around the world is inspiring many...
Abstract- With the rapid development of wireless networks and mobile devices, mobile learning has go...
Abstract — Mobile Learning (mLearning) describes a new trend of learning that uses innovations like ...
An interest-oriented teaching method can stimulate students' interest in learning, thus generating g...
This paper deals with adaptive learning technologies that fit the individual learner’s needs. Thereb...
1 Abstract Mobile learning through open educational resources (OERs) evidently differs from its trad...
International audienceIn recent years, the development of recommendation systems has aroused growing...