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储能系统技术 储能系统 ★ 4.0

推荐系统中非负矩阵分解的近似性研究

Onto Proximality in Non Negative Matrix Factorization for Recommender Systems

作者 Rachana Mehta · Shakti Mishra · Snehanshu Saha
期刊 IEEE Access
出版日期 2025年1月
技术分类 储能系统技术
技术标签 储能系统
相关度评分 ★★★★ 4.0 / 5.0
关键词 推荐系统 时间效率 矩阵分解 近邻梯度下降优化器 实验分析
语言:

中文摘要

本文针对大规模推荐系统的时间效率问题,提出基于近端梯度下降优化器的非负矩阵分解模型。传统协同过滤方法虽准确但耗时,该方法在保证准确性的同时显著提升响应速度,特别适用于非平滑数据场景。实验证明该模型在时间和精度上均优于六种基准推荐模型,是在线推荐系统的理想选择。

English Abstract

Recommender Systems have become integral to most e-commerce applications and online platforms. The recommended suggestions heavily impact customer retention and business performance. One of the essential parameters in large-scale recommender systems is the time required to present a recommendation. The more time it takes, the more it loses the customer’s attention and interest. It is currently necessary for recommenders to be time-efficient and optimal. Collaborative filtering-based Matrix Factorization approaches have proven to be powerful for recommender systems. The standard approach uses the Singular Value Decomposition-based recommender systems with Gradient Descent optimizer and its advanced variants. These models provide good accuracy for recommenders. However, they are time-intensive. To alleviate these issues, the proximal gradient descent optimizer-based Nonnegative Matrix Factorization model is adapted for recommender systems to improve their performance in terms of time and accuracy. There has been no research on integrating proximal descent models in Nonnegative matrix factorization for recommender systems. These novel adaptations are analyzed with six other baseline recommender models on two datasets. The experimental analysis proves that these novel recommender models are the preferable choice for online recommenders and work well when the data is not smooth.
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SunView 深度解读

该算法优化技术可应用于阳光电源储能系统的能量管理优化。ST系列储能变流器需要实时响应电网需求,快速准确的矩阵分解算法能提升负荷预测精度,优化电池充放电策略。该技术与阳光电源BMS系统深度融合后,可实现毫秒级响应,提升系统调度效率和经济性。