Please use this identifier to cite or link to this item: http://hdl.handle.net/1942/37254
Title: A PCA-based Data Prediction Method
Authors: Daugulis, Peteris
Vagale, Vija
MANCINI, Emiliano 
Castiglione, Filippo
Issue Date: 2022
Publisher: UNIV LATVIA
Source: BALTIC JOURNAL OF MODERN COMPUTING, 10 (1) , p. 1 -16
Abstract: The problem of choosing appropriate values for missing data is often encountered in the data science. We describe a novel method containing both traditional mathematics and machine learning elements for prediction (imputation) of missing data. This method is based on the notion of distance between shifted linear subspaces representing the existing data and candidate sets. The existing data set is represented by the subspace spanned by its first principal components. Solutions for the case of the Euclidean metric are given.
Notes: Daugulis, P (corresponding author), Daugavpils Univ, Daugavpils, Latvia.
peteris.daugulis@du.lv; vija.vagale@du.lv; emiliano.mancini@uhasselt.be;
filippo.castiglione@cnr.it
Document URI: http://hdl.handle.net/1942/37254
ISSN: 2255-8942
e-ISSN: 2255-8950
DOI: 10.22364/bjmc.2022.10.1.01
ISI #: WOS:000779690500001
Category: A1
Type: Journal Contribution
Appears in Collections:Research publications

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