Content area
This paper proposes a computer-aided teaching model using knowledge graph construction and learning path recommendation. It first creates a multimodal knowledge graph to illustrate complex relationships among knowledge. Learning elements and sequences are then used to form time sequences stored as directed graphs, supporting flexible path recommendations. Learners select elements based on interests and learning bases, updating behavior data for precise path recommendations. The platform, employing distributed architecture, integrates data processing and teaching applications for comprehensive cycle management and assessment. Controlled experiments validate its efficacy in enhancing learning outcomes compared to traditional methods, catering to personalized learning needs and advancing intelligent teaching.
Details
Literature Reviews;
Geometry;
Character Recognition;
Researchers;
Knowledge Representation;
Language Processing;
Cognitive Structures;
Graphs;
Cognitive Psychology;
Algorithms;
Educational Resources;
Influence of Technology;
Distance Education;
Learning Processes;
Educational Technology;
Periodicals;
Instructional Materials;
Educational Psychology;
Computer Assisted Instruction;
Intelligence;
Computer Graphics;
Data Processing;
College Science;
Educational Needs
Behavior;
Students;
Experiments;
Models;
Computer simulation;
Educational technology;
Efficacy;
Knowledge;
Data processing;
Personalized learning;
Algorithms;
Learning;
Education;
Knowledge representation;
Teaching;
Computer aided design--CAD;
Graphs;
Researchers;
Sequences;
Computer graphics;
Intelligence;
Teaching methods;
Artificial intelligence;
Learning outcomes;
Graph theory;
Design
