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Personalized Recommendation Strategy and Algorithm Optimization on Cloud Computing Platform

Volume 14, Number 10, October 2018, pp. 2492-2503
DOI: 10.23940/ijpe.18.10.p25.24922503

Xiang Li and Li Wei

School of Software, East China University of Technology, Nanchang, 330013, China

(Submitted on July 8, 2018; Revised on August 12, 2018; Accepted on September 11, 2018)

Abstract:

Information overload is a key issue of the current network information retrieval, and a personalized recommendation with special information filtering methods is an important way and means to solve this problem. Based on the analysis of the common methods used of personalized recommendation, the architectural design of the personalized recommendation is proposed on the cloud computing platform. Then, combined with the specific issues of employment recommendation, this article proposes an optimized algorithm of Mahout distributed personalized recommendation based on content and items. Compared with the current single target recommendation algorithm, this algorithm is more efficient with a good practical significance and reference value.

 

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