Visible to the public A Collaborative Filtering Model for Link Prediction of Fusion Knowledge Graph

TitleA Collaborative Filtering Model for Link Prediction of Fusion Knowledge Graph
Publication TypeConference Paper
Year of Publication2021
AuthorsYu, Zaifu, Shang, Wenqian, Lin, Weiguo, Huang, Wei
Conference Name2021 21st ACIS International Winter Conference on Software Engineering, Artificial Intelligence, Networking and Parallel/Distributed Computing (SNPD-Winter)
Keywordscollaborative filtering, cybersecurity, Data models, Human Behavior, Knowledge engineering, knowledge graph, Linear Weighted, Link prediction, Prediction algorithms, Predictive models, pubcrawl, software engineering, Sparse matrices
AbstractIn order to solve the problem that collaborative filtering recommendation algorithm completely depends on the interactive behavior information of users while ignoring the correlation information between items, this paper introduces a link prediction algorithm based on knowledge graph to integrate ItemCF algorithm. Through the linear weighted fusion of the item similarity matrix obtained by the ItemCF algorithm and the item similarity matrix obtained by the link prediction algorithm, the new fusion matrix is then introduced into ItemCF algorithm. The MovieLens-1M data set is used to verify the KGLP-ItemCF model proposed in this paper, and the experimental results show that the KGLP-ItemCF model effectively improves the precision, recall rate and F1 value. KGLP-ItemCF model effectively solves the problems of sparse data and over-reliance on user interaction information by introducing knowledge graph into ItemCF algorithm.
DOI10.1109/SNPDWinter52325.2021.00016
Citation Keyyu_collaborative_2021