Title
Cold Start and Learning Resource Recommendation Mechanism Based on Opportunistic Network in the Context of Campus Collaborative Learning.
Abstract
The mainstream cold start scheme in social network mainly deals with the problems of information overload and the accuracy and efficiency of recommendation. However, the problem of information overload is quite different from the problem of information transmission delay caused by insufficient contact of nodes in the mobile Opportunistic network. And in the campus collaborative learning environment, learner nodes often have a lack of awareness of their own needs of learning resources and lack of search ability for learning resources, in order to solve the above problems, this paper for the mobile social network cold start stage definition and stage division, On this basis, the paper provides solutions to the file transfer strategies in the cold start-up stage and the community operation stage of the nodes respectively, And according to the high degree of activity nodes can often be contact more information, the higher intimacy between nodes means that the nodes are more familiar and higher transmission success rate characteristics, In this paper, a learning resource recommendation mechanism based on node activity and social intimacy is proposed, and the algorithm has been tested and verified to have high accuracy for the recommendation mechanism based on message attributes.
Year
DOI
Venue
2020
10.1007/978-3-030-59016-1_26
WASA (1)
DocType
Citations 
PageRank 
Conference
0
0.34
References 
Authors
0
8
Name
Order
Citations
PageRank
Hong Liu150279.68
Peng Li230.72
Yuanru Cui300.34
Qian Liu41413.73
Lichen Zhang5183.69
Longjiang Guo617726.73
Xiaojun Wu7229.54
Xiaoming Wang834027.86