This paper explores the personalized approach of the public opinion cluster analysis for learning resources based on the server-side predetermined analysis, in order to introduce the personalized learning resource recommender into the traditional online instruction. In allusion to further validation on its implementation, the fuzzy aggregation of learning resources is mined up based on the proposed WRTC algorithm. The personalized learning resource recommender mechanism is then described. In the end, the common evaluation parameters in the personalized recommender model are applied in the evaluation on the system performance. The experiment is carried out with learner's access data online to validate whether the algorithm and the model indi...
According to cross-domain personalized learning resources recommendation, a new personalized learnin...
The multi-dimensional characteristics of public opinion in online education lead to the difficulty o...
Fragmented learning aims to fully utilize fragmented time slices to learn and accumulate fragmented ...
With the rapid development of information technology and data science, as well as the innovative con...
In recent years, under the guidance of the educational concept of equality and sharing, universities...
[EN]—The enormous growth of learning objects on the internet and the availability of preferences of ...
Through the current research on e-learning, it is found that the present e-learning system applied t...
To personalize the recommended learning information according to the interests of the learner, a rec...
Higher education students are increasingly enrolling in online courses, they are, at the same time, ...
“Big data” is becoming a hot topic in the Internet. The long tail problem of the massive online cour...
As smart education is continuously deepened in higher education, personalized learning resource reco...
An interest-oriented teaching method can stimulate students' interest in learning, thus generating g...
If the learning resource recommendation method fully considers the efficiency improvement of college...
Recommender systems attempt to influence one’s behavior based on explicit and implicit information p...
This study aims to develop a recommender system for a social learning platform to be provided by EU ...
According to cross-domain personalized learning resources recommendation, a new personalized learnin...
The multi-dimensional characteristics of public opinion in online education lead to the difficulty o...
Fragmented learning aims to fully utilize fragmented time slices to learn and accumulate fragmented ...
With the rapid development of information technology and data science, as well as the innovative con...
In recent years, under the guidance of the educational concept of equality and sharing, universities...
[EN]—The enormous growth of learning objects on the internet and the availability of preferences of ...
Through the current research on e-learning, it is found that the present e-learning system applied t...
To personalize the recommended learning information according to the interests of the learner, a rec...
Higher education students are increasingly enrolling in online courses, they are, at the same time, ...
“Big data” is becoming a hot topic in the Internet. The long tail problem of the massive online cour...
As smart education is continuously deepened in higher education, personalized learning resource reco...
An interest-oriented teaching method can stimulate students' interest in learning, thus generating g...
If the learning resource recommendation method fully considers the efficiency improvement of college...
Recommender systems attempt to influence one’s behavior based on explicit and implicit information p...
This study aims to develop a recommender system for a social learning platform to be provided by EU ...
According to cross-domain personalized learning resources recommendation, a new personalized learnin...
The multi-dimensional characteristics of public opinion in online education lead to the difficulty o...
Fragmented learning aims to fully utilize fragmented time slices to learn and accumulate fragmented ...