Fast, Exact Bootstrap Principal Component Analysis for p > 1 Million
Many have suggested a bootstrap procedure for estimating the sampling variability of
principal component analysis (PCA) results. However, when the number of measurements …
principal component analysis (PCA) results. However, when the number of measurements …
Geometric consistency of principal component scores for high‐dimensional mixture models and its application
In this article, we consider clustering based on principal component analysis (PCA) for high‐
dimensional mixture models. We present theoretical reasons why PCA is effective for …
dimensional mixture models. We present theoretical reasons why PCA is effective for …
Statistical exploration of the Manifold Hypothesis
N Whiteley, A Gray, P Rubin-Delanchy - 2022 - research-information.bris.ac.uk
Abstract The Manifold Hypothesis is a widely accepted tenet of Machine Learning which
asserts that nominally high-dimensional data are in fact concentrated near a low …
asserts that nominally high-dimensional data are in fact concentrated near a low …
When and why are principal component scores a good tool for visualizing high‐dimensional data?
KH Hellton, M Thoresen - Scandinavian Journal of Statistics, 2017 - Wiley Online Library
Principal component analysis is a popular dimension reduction technique often used to
visualize high‐dimensional data structures. In genomics, this can involve millions of …
visualize high‐dimensional data structures. In genomics, this can involve millions of …
[PDF][PDF] Consistency of principal component scores in visualizations of high-dimensional data Kristoffer H. Hellton* Dept. of Biostatistics, University of Oslo, Oslo …
M Thoresen - 2015.isiproceedings.org
Plots of principal component scores are a popular approach to visualize and explore high-
dimensional data. However, the inconsistency of high-dimensional eigenvectors prompted …
dimensional data. However, the inconsistency of high-dimensional eigenvectors prompted …
[PDF][PDF] Asymptotic distribution of principal component scores connected to pervasive, high-dimensional eigenvectors
K Hellton, M Thoresen - 2013 - Citeseer
Principal component analysis (PCA) is a widely used technique for dimension reduction,
also for high-dimensional data. In the high-dimensional framework, PCA is not …
also for high-dimensional data. In the high-dimensional framework, PCA is not …
[PDF][PDF] Methods for High Dimensional Analysis, Multiple Testing, and Visual Exploration
AJ Fisher - 2016 - jscholarship.library.jhu.edu
My thesis work focuses on aiding the practical implementation of advanced statistical
methods. Chapter 2 concerns the common practice of visual exploratory data analysis, and …
methods. Chapter 2 concerns the common practice of visual exploratory data analysis, and …
On high-dimensional principal component analysis in genomics: consistency and robustness
KH Hellton - 2015 - duo.uio.no
The technological developments of the last decades have made us able to generate
massive amounts of measurements, enhancing the need for data exploration. We often …
massive amounts of measurements, enhancing the need for data exploration. We often …
[PDF][PDF] Why principal component scores are a good exploratory tool for high-dimensional data
K Hellton, M Thoresen - sintef.no
Aim Principal component analysis (PCA) is a widely used method for reducing the
dimension of high-dimensional data, even though the estimated eigenvectors are …
dimension of high-dimensional data, even though the estimated eigenvectors are …
[引用][C] Asymptotic distribution of principal component scores for pervasive, high-dimensional eigenvectors
K Hellton, M Thoresen - arXiv preprint arXiv:1401.2781, 2014