نتایج جستجو برای: principal components analysispca

تعداد نتایج: 498150  

Journal: :Journal of Multivariate Analysis 1995

Journal: :Scandinavian Journal of Statistics 2007

Journal: :The Annals of Mathematical Statistics 1972

Journal: :AIMS mathematics 2023

<abstract><p>Let $ T:X\to Y be a bounded linear operator between Banach spaces X, $. A vector x_0\in {\mathsf{S}}_X in the unit sphere of X is called supporting T provided that \|T(x_0)\| = \sup\{\|T(x)\|:\|x\| 1\} \|T\| Since matrices induce operators finite-dimensional Hilbert spaces, we can consider their vectors. In this manuscript, unveil relationship principal components matri...

2010
Robert L. Wolpert

Let X be an n× p matrix whose rows are iid random vectors Xi· with mean μ ∈ R and covariance Σ ∈ Sp+— for example, they might be (Xi·) iid ∼ No(μ,Σ). For many problems (such as multivariate regression of some Y on X) we might wish to reduce the dimension p of these rows. For example, if we have a vector of p = 1000 possible explanatory variables about each individual, we may hope that a small s...

Journal: :Communications in Statistics - Simulation and Computation 2014
Jennifer Umali Erniel B. Barrios

In ordinary least squares regression, dimensionality is a sensitive issue. As the number of independent variables approaches the sample size, the least squares algorithm could easily fail, i.e., estimates are not unique or very unstable, (Draper and Smith, 1981). There are several problems usually encountered in modeling high dimensional data, including the difficulty of visualizing the data, s...

2012
Marc HALLIN Siegfried HOERMANN Lukasz KIDZINSKI Siegfried Hörmann Łukasz Kidziński Marc Hallin

In this paper, we address the problem of dimension reduction for sequentially observed functional data (X k : k ∈ Z). Such functional time series arise frequently, e.g., when a continuous time process is segmented into some smaller natural units, such as days. Then each X k represents one intraday curve. We argue that functional principal component analysis (FPCA), though a key technique in the...

Journal: :CoRR 2017
Xianghui Luo Robert J. Durrant

Principal Component Analysis (PCA) is a very successful dimensionality reduction technique, widely used in predictive modeling. A key factor in its widespread use in this domain is the fact that the projection of a dataset onto its first K principal components minimizes the sum of squared errors between the original data and the projected data over all possible rank K projections. Thus, PCA pro...

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