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Algorithms of Unconstrained Non-Negative Latent Factor Analysis for Recommender Systems

机译:推荐系统不受约束非负潜在因子分析的算法

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摘要

Non-negativity is vital for a latent factor (LF)-based model to preserve the important feature of a high-dimensional and sparse (HiDS) matrix in recommender systems, i.e., none of its entries is negative. Current non-negative models rely on constraints-combined training schemes. However, they lack flexibility, scalability, or compatibility with general training schemes. This work aims to perform unconstrained non-negative latent factor analysis (UNLFA) on HiDS matrices. To do so, we innovatively transfer the non-negativity constraints from the decision parameters to the output LFs, and connect them through a single-element-dependent mapping function. Then we theoretically prove that by making a mapping function fulfill specific conditions, the resultant model is able to represent the original one precisely. We subsequently design highly efficient UNLFA algorithms for recommender systems. Experimental results on four industrial-size HiDS matrices demonstrate that compared with four state-of-the-art non-negative models, a UNLFA-based model obtains advantage in prediction accuracy for missing data and computational efficiency. Moreover, such high performance is achieved through its unconstrained training process which is compatible with various general training schemes, on the premise of fulfilling non-negativity constraints. Hence, UNLFA algorithms are highly valuable for industrial applications with the need of performing non-negative latent factor analysis on HiDS matrices.
机译:基于潜在因子(LF)的模型对于潜在因子(LF)的模型至关重要,以保留推荐系统中的高维和稀疏(HID)矩阵的重要特征,即,其条目都不为负。目前的非负模型依赖于约束组合培训方案。但是,它们缺乏灵活性,可扩展性或与一般培训计划的兼容性。这项工作旨在在HIDS矩阵上执行无约束的非负潜在因子分析(UNLFA)。为此,我们创新地将非负面约束从决策参数转移到输出LFS,并通过单元素依赖的映射函数连接它们。然后我们理论上证明,通过制作映射函数满足特定条件,所得到的模型能够精确地表示原始原件。我们随后为推荐系统设计高效的UNLFA算法。四个工业大小隐藏矩阵的实验结果表明,与四个最先进的非负模型相比,基于UNLFA的模型以缺失数据和计算效率的预测精度获得优势。此外,通过其无限制的培训过程实现了这种高性能,该过程与各种一般培训计划兼容,在实现非消极性限制的前提下。因此,UNLFA算法对于工业应用对于具有对HIDS矩阵的非负面潜在因子分析的需要非常有价值。

著录项

  • 来源
    《Big Data, IEEE Transactions on》 |2021年第1期|227-240|共14页
  • 作者单位

    Dongguan Univ Technol Sch Comp Sci & Technol Dongguan 523808 Guangdong Peoples R China|Chinese Acad Sci Chongqing Engn Res Ctr Big Data Applicat Smart Ci Chongqing 400714 Peoples R China|Chinese Acad Sci Chongqing Inst Green & Intelligent Technol Chongqing Key Lab Big Data & Intelligent Comp Chongqing 400714 Peoples R China;

    New Jersey Inst Technol Dept Elect & Comp Engn Newark NJ 07102 USA;

    Hong Kong Polytech Univ Dept Comp Hong Kong 999077 Peoples R China;

    Chinese Acad Sci Chongqing Engn Res Ctr Big Data Applicat Smart Ci Chongqing 400714 Peoples R China|Chinese Acad Sci Chongqing Inst Green & Intelligent Technol Chongqing Key Lab Big Data & Intelligent Comp Chongqing 400714 Peoples R China;

    Chinese Acad Sci Chongqing Engn Res Ctr Big Data Applicat Smart Ci Chongqing 400714 Peoples R China|Chinese Acad Sci Chongqing Inst Green & Intelligent Technol Chongqing Key Lab Big Data & Intelligent Comp Chongqing 400714 Peoples R China;

    Chinese Acad Sci Chongqing Engn Res Ctr Big Data Applicat Smart Ci Chongqing 400714 Peoples R China|Chinese Acad Sci Chongqing Inst Green & Intelligent Technol Chongqing Key Lab Big Data & Intelligent Comp Chongqing 400714 Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Data models; Training; Sparse matrices; Recommender systems; Computational modeling; Big Data; Scalability; Non-negative latent factor analysis; non-negativity; latent factor analysis; unconstrained optimization; high-dimensional and sparse matrix; collaborative filtering; recommender system; big data;

    机译:数据模型;训练;稀疏矩阵;推荐系统;计算建模;大数据;可扩展性;非负面潜在因子分析;非负性;潜在的因子分析;无约束的优化;高维和稀疏矩阵;协作过滤;推荐系统;大数据;

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