Journal article

A collaborative filtering recommendation method based on discrete quantum-inspired shuffled frog leaping algorithms in social networks

W Li, J Cao, J Wu, C Huang, R Buyya

Future Generation Computer Systems | ELSEVIER | Published : 2018

Abstract

In social network recommendation systems, the rating score prediction accuracy of the collaborative filtering (CF) method depends on both the extraction of the nearest neighbors and the calculation of user/project similarity. Based on a similar principle to user/project behavior, this paper uses the maximum intersection method to extract the optimal neighbor candidate set, and presents a weighted adjusted cosine similarity method to compute user/project similarity. Furthermore, to optimize the weights of the method, a novel optimization method called the discrete quantum-inspired shuffled frog leaping (DQSFL) algorithm is proposed, which is based on the shuffled frog leaping algorithm and qu..

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University of Melbourne Researchers

Grants

Awarded by National Natural Science Foundation of China


Funding Acknowledgements

This work was supported by National Natural Science Foundation of China under Grant 61370229, 61472253 and 61702151, the funding for visiting scholar from China Scholarship Council No. 201709645006 and the Research Project from Department of Education of Zhejiang Province No. Y201635438, the S&T Projects of Guangdong Province No. 2015A030401087.