Loading web-font TeX/Math/Italic
An α–β-Divergence-Generalized Recommender for Highly Accurate Predictions of Missing User Preferences | IEEE Journals & Magazine | IEEE Xplore

An α–β-Divergence-Generalized Recommender for Highly Accurate Predictions of Missing User Preferences


Abstract:

To quantify user–item preferences, a recommender system (RS) commonly adopts a high-dimensional and sparse (HiDS) matrix. Such a matrix can be represented by a non-negati...Show More

Abstract:

To quantify user–item preferences, a recommender system (RS) commonly adopts a high-dimensional and sparse (HiDS) matrix. Such a matrix can be represented by a non-negative latent factor analysis model relying on a single latent factor (LF)-dependent, non-negative, and multiplicative update algorithm. However, existing models’ representative abilities are limited due to their specialized learning objective. To address this issue, this study proposes an \alpha - \beta -divergence-generalized model that enjoys fast convergence. Its ideas are three-fold: 1) generalizing its learning objective with \alpha - \beta -divergence to achieve highly accurate representation of HiDS data; 2) incorporating a generalized momentum method into parameter learning for fast convergence; and 3) implementing self-adaptation of controllable hyperparameters for excellent practicability. Empirical studies on six HiDS matrices from real RSs demonstrate that compared with state-of-the-art LF models, the proposed one achieves significant accuracy and efficiency gain to estimate huge missing data in an HiDS matrix.
Published in: IEEE Transactions on Cybernetics ( Volume: 52, Issue: 8, August 2022)
Page(s): 8006 - 8018
Date of Publication: 18 February 2021

ISSN Information:

PubMed ID: 33600329

Funding Agency:

Citations are not available for this document.

I. Introduction

People are suffering from a serious problem of extracting desired information from enormous data scattering in the ever-exploding worldwide web. Recommender systems (RSs) that are able to find their favorites out of massive data are becoming increasingly important for various applications [1]–[10]. The fundamental data source of an RS is a user–item rating matrix [2], [3], [8], where each user’s preference on each item such as movies, music, and another user, is modeled according to his/her user–item usage history. With rapidly growing user and item counts, a user touches a tiny subset of items only. Hence, a rating matrix is inevitably high-dimensional and sparse (HiDS) [8], [13], [16], [50] with numerous missing entries. For instance, the Douban matrix [26] consists of 16830839 known ratings by 129490 users on 58541 items, with 99.78% of its entries missing.

Cites in Papers - |

Cites in Papers - IEEE (39)

Select All
1.
Chenhong Luo, Yong Wang, Yanjun Zhang, Leo Yu Zhang, "Distributed Differentially Private Matrix Factorization for Implicit Data via Secure Aggregation", IEEE Transactions on Computers, vol.74, no.2, pp.705-716, 2025.
2.
Lujia Lv, Di Wu, Yangyi Xia, Jia Wu, Xiaojing Liu, Yi He, "Differential Evolution Integrated Hybrid Deep Learning Model for Object Detection in Pre-made Dishes", 2024 IEEE International Conference on Data Mining Workshops (ICDMW), pp.44-50, 2024.
3.
Jialiang Wang, Yan Xia, Ye Yuan, "A PID-Incorporated Second-Order Latent Factor Analysis Model", 2024 International Conference on Networking, Sensing and Control (ICNSC), pp.1-6, 2024.
4.
Ling Wang, Yixiang Huang, Hao Wu, "Diverse Transformation-Augmented Graph Tensor Convolutional Network for Dynamic Graph Representation Learning", 2024 IEEE International Conference on Systems, Man, and Cybernetics (SMC), pp.3384-3389, 2024.
5.
Junfeng Long, Hao Wu, "Latent Factor Analysis Enhanced Graph Contrastive Learning for Recommendation", 2024 IEEE International Conference on Systems, Man, and Cybernetics (SMC), pp.547-552, 2024.
6.
Tiqiao Wei, Ye Yuan, "NO-GAT: Neighbor Overlay-Induced Graph Attention Network", 2024 IEEE International Conference on Systems, Man, and Cybernetics (SMC), pp.2987-2992, 2024.
7.
Pengcheng Gao, Zicheng Gao, Ye Yuan, "A Compact-Dynamic Graph Convolutional Network for Spatiotemporal Signal Recovery", 2024 IEEE International Conference on Systems, Man, and Cybernetics (SMC), pp.3535-3540, 2024.
8.
Yonghong Yu, Aoran Zhang, Li Zhang, Rong Gao, Shang Gao, Hongzhi Yin, "Hyperbolic Translation-Based Sequential Recommendation", IEEE Transactions on Computational Social Systems, vol.11, no.6, pp.7467-7483, 2024.
9.
Beibei Yang, Weiling Li, Guangyu Jiang, Zhigang Liu, Yurong Zhong, Yan Fang, "Spatiotemporal Representation Learning on Event Stream", 2024 7th International Symposium on Autonomous Systems (ISAS), pp.1-6, 2024.
10.
Ling Wang, Ye Yuan, "Tensor Graph Convolutional Network for Dynamic Graph Representation Learning", 2024 7th International Symposium on Autonomous Systems (ISAS), pp.1-5, 2024.
11.
Ruiyang Xu, Di Wu, "A Multi-grained Cascade Structure for Online Sparse Streaming Feature Selection", 2024 7th International Symposium on Autonomous Systems (ISAS), pp.1-6, 2024.
12.
Jinli Li, Ye Yuan, "An ADRC-Incorporated Stochastic Gradient Descent Algorithm for Latent Factor Analysis", 2024 7th International Symposium on Autonomous Systems (ISAS), pp.1-6, 2024.
13.
Jielong Lu, Zhihao Wu, Luying Zhong, Zhaoliang Chen, Hong Zhao, Shiping Wang, "Generative Essential Graph Convolutional Network for Multi-View Semi-Supervised Classification", IEEE Transactions on Multimedia, vol.26, pp.7987-7999, 2024.
14.
Ye Yuan, Xin Luo, MengChu Zhou, "Adaptive Divergence-Based Non-Negative Latent Factor Analysis of High-Dimensional and Incomplete Matrices From Industrial Applications", IEEE Transactions on Emerging Topics in Computational Intelligence, vol.8, no.2, pp.1209-1222, 2024.
15.
Xiaofeng Yuan, Nuo Xu, Lingjian Ye, Kai Wang, Feifan Shen, Yalin Wang, Chunhua Yang, Weihua Gui, "Attention-Based Interval Aided Networks for Data Modeling of Heterogeneous Sampling Sequences With Missing Values in Process Industry", IEEE Transactions on Industrial Informatics, vol.20, no.4, pp.5253-5262, 2024.
16.
Xiaolin Tang, Yuyou Yang, Teng Liu, Xianke Lin, Kai Yang, Shen Li, "Path Planning and Tracking Control for Parking via Soft Actor-Critic Under Non-Ideal Scenarios", IEEE/CAA Journal of Automatica Sinica, vol.11, no.1, pp.181-195, 2024.
17.
Yangying He, Linying Chen, Junmin Mou, Qingsong Zeng, Yamin Huang, Pengfei Chen, Song Zhang, "Ship Emission Reduction via Energy-Saving Formation", IEEE Transactions on Intelligent Transportation Systems, vol.25, no.3, pp.2599-2614, 2024.
18.
Zhaoliang Chen, Zhihao Wu, Zhenghong Lin, Shiping Wang, Claudia Plant, Wenzhong Guo, "AGNN: Alternating Graph-Regularized Neural Networks to Alleviate Over-Smoothing", IEEE Transactions on Neural Networks and Learning Systems, vol.35, no.10, pp.13764-13776, 2024.
19.
Teng Huang, Cheng Liang, Di Wu, Yi He, "A Debiasing Autoencoder for Recommender System", IEEE Transactions on Consumer Electronics, vol.70, no.1, pp.3603-3613, 2024.
20.
Yurong Zhong, Weiling Li, Zhigang Liu, Xin Luo, "An Adaptive Alternating-direction-method-based Nonnegative Latent Factor Model", 2023 IEEE International Conference on Data Mining Workshops (ICDMW), pp.451-455, 2023.
21.
Jiufang Chen, Ye Yuan, "A Neighbor-Induced Graph Convolution Network for Undirected Weighted Network Representation", 2023 IEEE International Conference on Systems, Man, and Cybernetics (SMC), pp.4058-4063, 2023.
22.
Ruiyang Xu, Di Wu, Xin Luo, "Online Sparse Streaming Feature Selection via Decision Risk", 2023 IEEE International Conference on Systems, Man, and Cybernetics (SMC), pp.4190-4195, 2023.
23.
Liping Zhang, Di Wu, Xin Luo, "An Error Correction Mid-term Electricity Load Forecasting Model Based on Seasonal Decomposition", 2023 IEEE International Conference on Systems, Man, and Cybernetics (SMC), pp.2415-2420, 2023.
24.
Tinghui Chen, Shuai Li, "A Novel Industrial Robot Calibration Method Based on Multi-Planar Constraints", 2023 IEEE International Conference on Systems, Man, and Cybernetics (SMC), pp.4046-4051, 2023.
25.
Yurong Zhong, Zhe Xie, Weiling Li, Xin Luo, "Multi-Constrained Symmetric Nonnegative Latent Factor Analysis for Accurately Representing Undirected Weighted Networks", 2023 IEEE International Conference on Systems, Man, and Cybernetics (SMC), pp.4920-4925, 2023.
26.
Ying Wang, Ye Yuan, Di Wu, "A Node-Collaboration-Informed Graph Convolutional Network for Precise Representation to Undirected Weighted Graphs", 2023 IEEE International Conference on Systems, Man, and Cybernetics (SMC), pp.811-816, 2023.
27.
Juan Wang, Hao Wu, Chunlin He, "A Double-Norm Aggregated Latent Factorization of Tensors Model for Temporal-Aware QoS Prediction", 2023 IEEE International Conference on Systems, Man, and Cybernetics (SMC), pp.3913-3918, 2023.
28.
Jiajia Mi, Hao Wu, Weiling Li, Xin Luo, "Spatio-Temporal Traffic Data Recovery Via Latent Factorization of Tensors Based on Tucker Decomposition", 2023 IEEE International Conference on Systems, Man, and Cybernetics (SMC), pp.1512-1517, 2023.
29.
Ye Yuan, Renfang Wang, Guangxiao Yuan, Luo Xin, "An Adaptive Divergence-Based Non-Negative Latent Factor Model", IEEE Transactions on Systems, Man, and Cybernetics: Systems, vol.53, no.10, pp.6475-6487, 2023.
30.
Zhenyu Lei, Shangce Gao, Zhiming Zhang, Haichuan Yang, Haotian Li, "A Chaotic Local Search-Based Particle Swarm Optimizer for Large-Scale Complex Wind Farm Layout Optimization", IEEE/CAA Journal of Automatica Sinica, vol.10, no.5, pp.1168-1180, 2023.

Cites in Papers - Other Publishers (16)

1.
Xing Luo, Zijian Hu, Zhoujun Ma, Zhan Lv, Qu Wang, Aoling Zeng, "An L1-and-L2-regularized nonnegative tensor factorization for power load monitoring data imputation", Frontiers in Energy Research, vol.12, 2024.
2.
Peng Tang, Tao Ruan, Hao Wu, Xin Luo, "Temporal pattern-aware QoS prediction by Biased Non-negative Tucker Factorization of tensors", Neurocomputing, pp.127447, 2024.
3.
Yurong Zhong, Zhe Xie, Weiling Li, Xin Luo, "A Dynamic Linear Bias Incorporation Scheme for Nonnegative Latent Factor Analysis", PRICAI 2023: Trends in Artificial Intelligence, vol.14325, pp.39, 2024.
4.
Cheng Liang, Di Wu, Yi He, Teng Huang, Zhong Chen, Xin Luo, "MMA: Multi-Metric-Autoencoder for Analyzing High-Dimensional and Incomplete Data", Machine Learning and Knowledge Discovery in Databases: Research Track, vol.14173, pp.3, 2023.
5.
Xin Luo, Zhibin Li, Long Jin, Shuai Li, "Novel Evolutionary Computing Algorithms for Robot Calibration", Robot Control and Calibration, pp.91, 2023.
6.
Xin Luo, Zhibin Li, Long Jin, Shuai Li, "A Projected Zeroing Neural Network Model for the Motion Generation and Control", Robot Control and Calibration, pp.51, 2023.
7.
Ming Wei, Ming Zhu, Yaoyuan Zhang, Jiarong Wang, Jiaqi Sun, "Real-time depth completion based on LiDAR-stereo for autonomous driving", Frontiers in Neurorobotics, vol.17, 2023.
8.
Xianghua Tang, Zhihui Jiang, Lijuan Zhang, Jiayu Wang, Youran Zhang, Liping Zhang, "A Hybrid Machine Learning Model for Urban Mid- and Long-Term Electricity Load Forecasting", Mobile Computing and Sustainable Informatics, vol.166, pp.109, 2023.
9.
Di Wu, "Generalized Deep Latent Feature Learning", Robust Latent Feature Learning for Incomplete Big Data, pp.97, 2023.
10.
Di Wu, "Improve Robustness of Latent Feature Learning Using Double-Space", Robust Latent Feature Learning for Incomplete Big Data, pp.47, 2023.
11.
Dongxiao Yin, Yanhua Wang, Ying Huang, "Predicting soil moisture content of tea plantation using support vector machine optimized by arithmetic optimization algorithm", Journal of Algorithms & Computational Technology, vol.17, pp.174830262211511, 2023.
12.
Lei Yang, Weimin Lei, Wei Zhang, Tianbing Ye, "Dual-flow network with attention for autonomous driving", Frontiers in Neurorobotics, vol.16, 2023.
13.
Di Wu, "Posterior-neighborhood-regularized Latent Feature Learning", Robust Latent Feature Learning for Incomplete Big Data, pp.85, 2023.
14.
Ye Yuan, Xin Luo, "Learning Rate and Regularization Coefficient-Free Latent Factor Analysis via PSO", Latent Factor Analysis for High-dimensional and Sparse Matrices, pp.29, 2022.
15.
Laixiang Xu, Fengjie Zhao, Peng Xu, Bingxu Cao, "Infrared target recognition with deep learning algorithms", Multimedia Tools and Applications, 2022.
16.
Qing Li, Guansong Pang, Mingsheng Shang, "An efficient annealing-assisted differential evolution for multi-parameter adaptive latent factor analysis", Journal of Big Data, vol.9, no.1, 2022.
Contact IEEE to Subscribe

References

References is not available for this document.