推荐系统
非负矩阵分解
计算机科学
协同过滤
稀疏矩阵
代表性启发
收敛速度
背景(考古学)
趋同(经济学)
矩阵分解
计算复杂性理论
特征(语言学)
基质(化学分析)
算法
人工智能
机器学习
数学优化
数学
钥匙(锁)
古生物学
材料科学
高斯分布
经济
复合材料
特征向量
哲学
物理
统计
生物
量子力学
计算机安全
语言学
经济增长
作者
Xin Luo,MengChu Zhou,Shuai Li,Zhu‐Hong You,Yunni Xia,Qingsheng Zhu
标识
DOI:10.1109/tnnls.2015.2415257
摘要
Nonnegative matrix factorization (NMF)-based models possess fine representativeness of a target matrix, which is critically important in collaborative filtering (CF)-based recommender systems. However, current NMF-based CF recommenders suffer from the problem of high computational and storage complexity, as well as slow convergence rate, which prevents them from industrial usage in context of big data. To address these issues, this paper proposes an alternating direction method (ADM)-based nonnegative latent factor (ANLF) model. The main idea is to implement the ADM-based optimization with regard to each single feature, to obtain high convergence rate as well as low complexity. Both computational and storage costs of ANLF are linear with the size of given data in the target matrix, which ensures high efficiency when dealing with extremely sparse matrices usually seen in CF problems. As demonstrated by the experiments on large, real data sets, ANLF also ensures fast convergence and high prediction accuracy, as well as the maintenance of nonnegativity constraints. Moreover, it is simple and easy to implement for real applications of learning systems.
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