| Literature DB >> 27794219 |
Jakob Spiegelberg1, Ján Rusz1.
Abstract
Principal component analysis (PCA) is among the most commonly applied dimension reduction techniques suitable to denoise data. Focusing on its limitations to detect low variance signals in noisy data, we discuss how statistical and systematical errors occur in PCA reconstructed data as a function of the size of the data set, which extends the work of Lichtert and Verbeeck, (2013) [16]. Particular attention is directed towards the estimation of bias introduced by PCA and its influence on experiment design. Aiming at the denoising of large matrices, nullspace based denoising (NBD) is introduced.Keywords: Bias estimation; Blind source separation; Nullspace based denoising; PCA; Spectrum imaging
Year: 2016 PMID: 27794219 DOI: 10.1016/j.ultramic.2016.10.008
Source DB: PubMed Journal: Ultramicroscopy ISSN: 0304-3991 Impact factor: 2.689