Application of Improved Recommendation System Based on Spark Platform in Big Data Analysis

Author:

Xie Li1,Zhou Wenbo1,Li Yaosen1

Affiliation:

1. Institute of Disaster Prevention, Yanjiao Town 065201, China

Abstract

Abstract In the era of big data, people have to face information filtration problem. For those cases when users do not or cannot express their demands clearly, recommender system can analyse user’s information more proactive and intelligent to filter out something users want. This property makes recommender system play a very important role in the field of e-commerce, social network and so on. The collaborative filtering recommendation algorithm based on Alternating Least Squares (ALS) is one of common algorithms using matrix factorization technique of recommendation system. In this paper, we design the parallel implementation process of the recommendation algorithm based on Spark platform and the related technology research of recommendation systems. Because of the shortcomings of the recommendation algorithm based on ALS model, a new loss function is designed. Before the model is trained, the similarity information of users and items is fused. The experimental results show that the performance of the proposed algorithm is better than that of algorithm based on ALS.

Publisher

Walter de Gruyter GmbH

Subject

General Computer Science

Reference13 articles.

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