6533b7d6fe1ef96bd126701b

RESEARCH PRODUCT

Dimension Estimation in Two-Dimensional PCA

Klaus NordhausenNiko LictzenJoni VirtaUna Radojicic

subject

Computer sciencebusiness.industrydimension reductionDimensionality reductionimage dataEstimatorPattern recognitiondimension estimation16. Peace & justiceImage (mathematics)Data modelingData setMatrix (mathematics)scree plotPrincipal component analysisaugmentationArtificial intelligencebusinessEigenvalues and eigenvectors

description

We propose an automated way of determining the optimal number of low-rank components in dimension reduction of image data. The method is based on the combination of two-dimensional principal component analysis and an augmentation estimator proposed recently in the literature. Intuitively, the main idea is to combine a scree plot with information extracted from the eigenvectors of a variation matrix. Simulation studies show that the method provides accurate estimates and a demonstration with a finger data set showcases its performance in practice. peerReviewed

http://urn.fi/URN:NBN:fi:jyu-202111155671