Movie recommendation model based on probabilistic matrix decomposition using hybrid AdaBoost integration

Author:

Zhang Zhengjin123,Wu Qilin13,Zhang Yong1,Liu Li24

Affiliation:

1. Chaohu University, Hefei, China

2. Macau University of Science and Technology, Macau, China

3. Institute of Network and Distribution, Chaohu University, Hefei, China

4. Sichuan film and television University, Chengdu, China

Abstract

In recent years, recommendation systems have already played a significant role in major streaming video platforms.The probabilistic matrix factorization (PMF) model has advantages in addressing high-dimension problems and rating data sparsity in the recommendation system. However, in practical application, PMF has poor generalization ability and low prediction accuracy. For this reason, this article proposes the Hybrid AdaBoost Ensemble Method. Firstly, we use the membership function and the cluster center selection in fuzzy clustering to calculate the scoring matrix of the user-items. Secondly, the clustering user items’ scoring matrix is trained by the neural network to improve the scoring prediction accuracy further. Finally, with the stability of the model, the AdaBoost integration method is introduced, and the score matrix is used as the base learner; then, the base learner is trained by different neural networks, and finally, the score prediction is obtained by voting results. In this article, we compare and analyze the performance of the proposed model on the MovieLens and FilmTrust datasets. In comparison with the PMF, FCM-PMF, Bagging-BP-PMF, and AdaBoost-SVM-PMF models, several experiments show that the mean absolute error of the proposed model increases by 1.24% and 0.79% compared with Bagging-BP-PMF model on two different datasets, and the root-mean-square error increases by 2.55% and 1.87% respectively. Finally, we introduce the weights of different neural network training based learners to improve the stability of the model’s score prediction, which also proves the method’s universality.

Funder

Anhui Key Research and Development Plan

Key projects of natural science research in universities of Anhui Province: Research on key technologies of digital survival of ceramic cultural relics

Key projects of excellent young talents support program in universities: Research on virtual restoration of cultural relic fragments based on 3D depth feature

National first-class undergraduate major construction funds of Sichuan Film and Television University

Publisher

PeerJ

Subject

General Computer Science

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