Tutorial on PCA and approximate PCA and approximate kernel PCA Back 09/08/2023 by นพพร ม่วงระย้า   Metadata Share Document TitleTutorial on PCA and approximate PCA and approximate kernel PCAAuthorMarukatat S.AffiliationsAI Research Group, NECTEC, Pathumthani, ThailandTypeArticleSource TitleArtificial Intelligence ReviewISSN02692821Year2023Volume56Issue6Page5445-5477Open AccessAll Open Access, Hybrid GoldPublisherSpringer NatureDOI10.1007/s10462-022-10297-zFormatPDFAbstractPrincipal Component Analysis (PCA) is one of the most widely used data analysis methods in machine learning and AI. This manuscript focuses on the mathematical foundation of classical PCA and its application to a small-sample-size scenario and a large dataset in a high-dimensional space scenario. In particular, we discuss a simple method that can be used to approximate PCA in the latter case. This method can also help approximate kernel PCA or kernel PCA (KPCA) for a large-scale dataset. We hope this manuscript will give readers a solid foundation on PCA, approximate PCA, and approximate KPCA. © 2022, The Author(s).KeywordApproximate PCA; Eigen-decomposition; Kernel PCA; PCAIndustrial ClassificationInformationKnowledge Taxonomy Level 1Information, Computing and Communication SciencesKnowledge Taxonomy Level 2Artificial Intelligence and signal and image processingKnowledge Taxonomy Level 3Machine learningLinkhttps://www.scopus.com/inward/record.uri?eid=2-s2.0-85140965138&doi=10.1007%2fs10462-022-10297-z&partnerID=40&md5=784ab9f4ab77b9f6fe474edc0b4574c6Publication SourceWOS Continue browsing Pineapple-Leaf-Derived, Copper-PAN-Modified Regenerated Cellulose Sheet Used as a Hydrogen Sulfide Indicator Resistance QTLs controlling leaf and neck blast disease identified in a doubled haploid rice population Back to items list