Bi-convolution matrix factorization algorithm based on improved ConvMF

06/02/2022
by   Peiyu Liu, et al.
0

With the rapid development of information technology, "information overload" has become the main theme that plagues people's online life. As an effective tool to help users quickly search for useful information, a personalized recommendation is more and more popular among people. In order to solve the sparsity problem of the traditional matrix factorization algorithm and the problem of low utilization of review document information, this paper proposes a Bicon-vMF algorithm based on improved ConvMF. This algorithm uses two parallel convolutional neural networks to extract deep features from the user review set and item review set respectively and fuses these features into the decomposition of the rating matrix, so as to construct the user latent model and the item latent model more accurately. The experimental results show that compared with traditional recommendation algorithms like PMF, ConvMF, and DeepCoNN, the method proposed in this paper has lower prediction error and can achieve a better recommendation effect. Specifically, compared with the previous three algorithms, the prediction errors of the algorithm proposed in this paper are reduced by 45.8

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/20/2018

Optimization Matrix Factorization Recommendation Algorithm Based on Rating Centrality

Matrix factorization (MF) is extensively used to mine the user preferenc...
research
06/17/2021

Understanding the Effectiveness of Reviews in E-commerce Top-N Recommendation

Modern E-commerce websites contain heterogeneous sources of information,...
research
09/14/2019

LGLMF: Local Geographical based Logistic Matrix Factorization Model for POI Recommendation

With the rapid growth of Location-Based Social Networks, personalized Po...
research
01/18/2017

Recommendation under Capacity Constraints

In this paper, we investigate the common scenario where every candidate ...
research
07/13/2022

The Impact of Feature Quantity on Recommendation Algorithm Performance: A Movielens-100K Case Study

Recent model-based Recommender Systems (RecSys) algorithms emphasize on ...
research
05/12/2022

Integrating User and Item Reviews in Deep Cooperative Neural Networks for Movie Recommendation

User evaluations include a significant quantity of information across on...
research
08/08/2023

UniRecSys: A Unified Framework for Personalized, Group, Package, and Package-to-Group Recommendations

Recommender systems aim to enhance the overall user experience by provid...

Please sign up or login with your details

Forgot password? Click here to reset