AI RESEARCH
ALPCAH: Subspace Learning for Sample-wise Heteroscedastic Data
arXiv CS.LG
•
ArXi:2505.07272v2 Announce Type: replace-cross Principal component analysis (PCA) is a key tool in the field of data dimensionality reduction. However, some applications involve heterogeneous data that vary in quality due to noise characteristics associated with each data sample. Heteroscedastic methods aim to deal with such mixed data quality. This paper develops a subspace learning method, named ALPCAH, that can estimate the sample-wise noise variances and use this information to improve the estimate of the subspace basis associated with the low-rank structure of the data.