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Torus Probabilistic Principal Component Analysis
by
Golalizadeh, Mousa
, Maadooliat, Mehdi
, Nodehi, Anahita
, Agostinelli, Claudio
in
Algorithms
/ Bioinformatics
/ Biology
/ Data
/ Datasets
/ Efficacy
/ Euclidean geometry
/ Euclidean space
/ Geology
/ Likelihood ratio
/ Marketing
/ Mathematics and Statistics
/ Medical informatics
/ Original Research
/ Pattern Recognition
/ Principal components analysis
/ Probability
/ Proteins
/ Psychometrics
/ Random variables
/ Signal,Image and Speech Processing
/ Simulation
/ Statistical analysis
/ Statistical tests
/ Statistical Theory and Methods
/ Statistics
/ Toruses
2025
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Torus Probabilistic Principal Component Analysis
by
Golalizadeh, Mousa
, Maadooliat, Mehdi
, Nodehi, Anahita
, Agostinelli, Claudio
in
Algorithms
/ Bioinformatics
/ Biology
/ Data
/ Datasets
/ Efficacy
/ Euclidean geometry
/ Euclidean space
/ Geology
/ Likelihood ratio
/ Marketing
/ Mathematics and Statistics
/ Medical informatics
/ Original Research
/ Pattern Recognition
/ Principal components analysis
/ Probability
/ Proteins
/ Psychometrics
/ Random variables
/ Signal,Image and Speech Processing
/ Simulation
/ Statistical analysis
/ Statistical tests
/ Statistical Theory and Methods
/ Statistics
/ Toruses
2025
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Do you wish to request the book?
Torus Probabilistic Principal Component Analysis
by
Golalizadeh, Mousa
, Maadooliat, Mehdi
, Nodehi, Anahita
, Agostinelli, Claudio
in
Algorithms
/ Bioinformatics
/ Biology
/ Data
/ Datasets
/ Efficacy
/ Euclidean geometry
/ Euclidean space
/ Geology
/ Likelihood ratio
/ Marketing
/ Mathematics and Statistics
/ Medical informatics
/ Original Research
/ Pattern Recognition
/ Principal components analysis
/ Probability
/ Proteins
/ Psychometrics
/ Random variables
/ Signal,Image and Speech Processing
/ Simulation
/ Statistical analysis
/ Statistical tests
/ Statistical Theory and Methods
/ Statistics
/ Toruses
2025
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Journal Article
Torus Probabilistic Principal Component Analysis
2025
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Overview
Analyzing data in non-Euclidean spaces, such as bioinformatics, biology, and geology, where variables represent directions or angles, poses unique challenges. This type of data is known as circular data in univariate cases and can be termed spherical or toroidal in multivariate contexts. In this paper, we introduce a novel extension of probabilistic principal component analysis (PPCA) designed for toroidal (or torus) data, termed torus probabilistic PCA (TPPCA). We provide detailed algorithms for implementing TPPCA and demonstrate its applicability to torus data. To assess the efficacy of TPPCA, we perform comparative analyses using a simulation study and three real datasets. Our findings highlight the advantages and limitations of TPPCA in handling torus data. Furthermore, we propose statistical tests based on likelihood ratio statistics to determine the optimal number of components, enhancing the practical utility of TPPCA for real-world applications.
Publisher
Springer US,Springer Nature B.V
Subject
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