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Non-linear PCA: a missing data approach
2005
Bioinformatics
Motivation: Visualizing and analysing the potential non-linear structure of a dataset is becoming an important task in molecular biology. This is even more challenging when the data have missing values. Results: Here, we propose an inverse model that performs non-linear principal component analysis (NLPCA) from incomplete datasets. Missing values are ignored while optimizing the model, but can be estimated afterwards. Results are shown for both artificial and experimental datasets. In contrast
doi:10.1093/bioinformatics/bti634
pmid:16109748
fatcat:pjfjcr6efzewpjfjvu2bj2tu24