A1 Refereed original research article in a scientific journal
Asymptotic and bootstrap tests for subspace dimension
Authors: Nordhausen Klaus, Oja Hannu, Tyler David E.
Publisher: Academic Press Inc.
Publication year: 2022
Journal: Journal of Multivariate Analysis
Journal name in source: Journal of Multivariate Analysis
Article number: 104830
Volume: 188
eISSN: 1095-7243
DOI: https://doi.org/10.1016/j.jmva.2021.104830
Self-archived copy’s web address: https://research.utu.fi/converis/portal/detail/Publication/67390570
Abstract
Many linear dimension reduction methods proposed in the literature can be formulated using an appropriate pair of scatter matrices. The eigen-decomposition of one scatter matrix with respect to another is then often used to determine the dimension of the signal subspace and to separate signal and noise parts of the data. Three popular dimension reduction methods, namely principal component analysis (PCA), fourth order blind identification (FOBI) and sliced inverse regression (SIR) are considered in detail and the first two moments of subsets of the eigenvalues are used to test for the dimension of the signal space. The limiting null distributions of the test statistics are discussed and novel bootstrap strategies are suggested for the small sample cases. In all three cases, consistent test-based estimates of the signal subspace dimension are introduced as well. The asymptotic and bootstrap tests are illustrated in real data examples.
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