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A novel approach to extracting non-negative latent factors from non-negative big sparse matrices

机译:从非负大稀疏矩阵中提取非负潜因子的新方法

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摘要

An inherently non-negative latent factor model is proposed to extract non-negative latent factors from non-negative big sparse matrices efficiently and effectively. A single-element-dependent sigmoid function connects output latent factors with decision variables, such that non-negativity constraints on the output latent factors are always fulfilled and thus successfully separated from the training process with respect to the decision variables. Consequently, the proposed model can be easily and fast built with excellent prediction accuracy. Experimental results on an industrial size sparse matrix are given to verify its outstanding performance and suitability for industrial applications.
机译:提出了一种固有的非负潜在因子模型,可以有效地从非负大稀疏矩阵中提取非负潜在因子。单元素相关的S型函数将输出潜在因子与决策变量相连接,从而始终满足对输出潜在因子的非负约束,从而成功地将训练变量与决策变量分开。因此,所提出的模型可以容易且快速地以优异的预测精度建立。在工业规模的稀疏矩阵上给出了实验结果,以验证其出色的性能和对工业应用的适用性。

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