Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Thresholding Approach For Low-Rank Correlation Matrix Based On Mm Algorithm

View through CrossRef
ABSTRACTBackgroundLow-rank approximation is used for interpreting the features of a correlation matrix using visualization tools; however, a low-rank approximation may result in estimation that is far from zero even if the corresponding original value is zero. In such a case, the results lead to a misinterpretation.MethodsTo 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.ResultsThrough numerical simulation, we found that the false positive rate (FPR) 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 withd= 2, 3, and 5 were 0.128, 0.139, and 0.197, respectively, whereas the FPR of the tandem approach was 0.285.ConclusionsWe 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 through the use of a heatmap, thereby avoiding result misinterpretations. We demonstrated the superiority of the proposed method through both numerical simulations and real examples.
Title: Thresholding Approach For Low-Rank Correlation Matrix Based On Mm Algorithm
Description:
ABSTRACTBackgroundLow-rank approximation is used for interpreting the features of a correlation matrix using visualization tools; however, a low-rank approximation may result in estimation that is far from zero even if the corresponding original value is zero.
In such a case, the results lead to a misinterpretation.
MethodsTo 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.
ResultsThrough numerical simulation, we found that the false positive rate (FPR) 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 withd= 2, 3, and 5 were 0.
128, 0.
139, and 0.
197, respectively, whereas the FPR of the tandem approach was 0.
285.
ConclusionsWe 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 through the use of a heatmap, thereby avoiding result misinterpretations.
We demonstrated the superiority of the proposed method through both numerical simulations and real examples.

Related Results

Matrix Subgridding and Its Effects in Dual Porosity Simulators
Matrix Subgridding and Its Effects in Dual Porosity Simulators
Abstract Naturally fractured reservoirs are found throughout the world and contain significant amounts of oil reserves. The so-called dual porosity model is one o...
Efficiency of Steamflooding in Naturally Fractured Reservoirs
Efficiency of Steamflooding in Naturally Fractured Reservoirs
Abstract This study aims to identify the effective parameters on matrix heating and recovery, and the efficiencies of these processes while there is a continuous ...
Low rank approximation of difference between correlation matrices by using inner product
Low rank approximation of difference between correlation matrices by using inner product
ABSTRACTIntroductionIn the domain of functional magnetic resonance imaging (fMRI) data analysis, given two correlation matrices between regions of interest (ROIs) for the same subj...
Line survey joint denoising via low-rank minimization
Line survey joint denoising via low-rank minimization
Prestack seismic data denoising is an important step in seismic processing due to the development of prestack time migration. Reduced-rank filtering is a state-of-the-art method fo...
Pseudo Bayesian and Linear Regression Global Thresholding
Pseudo Bayesian and Linear Regression Global Thresholding
Pseudo Bayesian and Linear Regression Global ThresholdingClassification is an important task in image analysis. Simply recognizing an object in an image can be a daunting step for ...
On Evaluation of Ensemble Forecast Calibration Using the Concept of Data Depth
On Evaluation of Ensemble Forecast Calibration Using the Concept of Data Depth
Abstract Various generalizations of the univariate rank histogram have been proposed to inspect the reliability of an ensemble forecast or analysis in multidimension...
A tissue engineering approach to trabecular bone replacement
A tissue engineering approach to trabecular bone replacement
Due to the limitations of current bone graft materials, tissue engineers have looked to develop a synthetic alternative to trabecular bone. This thesis has examined the development...
Accelerated Simulation of Multi-Electrode Arrays Using Sparse and Low-Rank Matrix Techniques
Accelerated Simulation of Multi-Electrode Arrays Using Sparse and Low-Rank Matrix Techniques
AbstractObjectiveModeling of Multi-Electrode Arrays used in neural stimulation can be computationally challenging since it may involve incredibly dense circuits with millions of in...

Back to Top