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Non-negativity constrained missing data estimation for high-dimensional and sparse matrices

机译:高维和稀疏矩阵的非负性约束丢失数据估计

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摘要

Latent factor (LF) models have proven to be accurate and efficient in extracting hidden knowledge from high-dimensional and sparse (HiDS) matrices. However, most LF models fail to fulfill the non-negativity constraints that reflect the non-negative nature of industrial data. Yet existing non-negative LF models for HiDS matrices suffer from slow convergence leading to considerable time cost. An alternating direction method-based non-negative latent factor (ANLF) model decomposes a non-negative optimization process into small sub-tasks. It updates each LF non-negatively based on the latest state of those trained before, thereby achieving fast convergence and maintaining high prediction accuracy and scalability. This paper theoretically analyze the characteristics of an ANLF model, and presents detailed empirical study regarding its performance on several HiDS matrices arising from industrial applications currently in use. Therefore, its capability of addressing HiDS matrices is validated in both theory and practice.
机译:事实证明,潜在因子(LF)模型在从高维和稀疏(HiDS)矩阵中提取隐藏知识方面是准确而有效的。但是,大多数LF模型都无法满足反映工业数据非负性的非负性约束。然而,现有的用于HiDS矩阵的非负LF模型收敛速度慢,从而导致大量的时间成本。基于交替方向方法的非负潜在因子(ANLF)模型将非负优化过程分解为小的子任务。它根据之前受过训练的人员的最新状态非负地更新每个LF,从而实现快速收敛并保持较高的预测准确性和可伸缩性。本文从理论上分析了ANLF模型的特征,并提供了有关其在当前使用的工业应用产生的几种HiDS矩阵上的性能的详细实证研究。因此,其解决HiDS矩阵的能力在理论和实践上都得到了验证。

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