Research on Library Personalized Recommendation System Based on Restricted Boltzmann Machine

Xin-Yan WANG, He HUANG

Abstract


At present, most recommendation systems in libraries are content-based and collaborative filtering-based, but these recommendation systems ignore the deep-seated characteristics of readers' personalized information. In order to improve the function of Library recommendation system, this paper proposes a library recommendation system based on restricted Boltzmann machine and collaborative filtering algorithm, and simulates the performance of the algorithm. The results show that the proposed algorithm has good application effect.

Keywords


In-depth learning; Library; Personalized recommendation system


DOI
10.12783/dtssehs/icesd2020/34428