Thresholding Approach for Low-Rank Correlation Matrix Based on MM Algorithm

被引:0
作者
Tanioka, Kensuke [1 ]
Furotani, Yuki [2 ]
Hiwa, Satoru [1 ]
机构
[1] Doshisha Univ, Dept Biomed Sci & Informat, Kyoto 6100394, Japan
[2] Doshisha Univ, Grad Sch Life & Med Sci, Kyoto 6100394, Japan
关键词
cross-validation; proportional threshold; sparse estimation; COVARIANCE-MATRIX; SPARSE ESTIMATION; APPROXIMATION; REDUCTION; SELECTION;
D O I
10.3390/e24050579
中图分类号
O4 [物理学];
学科分类号
0702 ;
摘要
Background: Low-rank approximation is used to interpret the features of a correlation matrix using visualization tools; however, a low-rank approximation may result in an estimation that is far from zero, even if the corresponding original value is zero. In such a case, the results lead to a misinterpretation. Methods: To overcome this, we propose a novel approach to estimate a sparse low-rank correlation matrix based on threshold values. We introduce a new cross-validation function to tune the corresponding threshold values. To calculate the value of a function, the MM algorithm is used to estimate the sparse low-rank correlation matrix, and a grid search was performed to select the threshold values. Results: Through numerical simulation, we found that the false positive rate (FPR), interpretability, and average relative error of the proposed method were superior to those of the tandem approach. For the application of microarray gene expression, the FPRs of the proposed approach with d = 2, 3 and 5 were 0.128, 0.139, and 0.197, respectively, while the FPR of the tandem approach was 0.285. Conclusions: We propose a novel approach to estimate sparse low-rank correlation matrices. The advantage of the proposed method is that it provides results that are interpretable using a heatmap, thereby avoiding result misinterpretations. We demonstrated the superiority of the proposed method through both numerical simulations and real examples.
引用
收藏
页数:21
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