Download PDFOpen PDF in browserPrincipal Component AnalysisEasyChair Preprint 43845 pages•Date: October 13, 2020AbstractPrincipal Component analysis or aka PCA is one of the most important dimensionality reduction technique out there. This paper is devoted towards why we need PCA, what are the steps to be taken and what are the benefits of using Principal component analysis. While in Data Exploratory Analysis we need to reduce the dimension in such a way that the maximum of what we need is to be captured. Keyphrases: Data Exploratory Analysis, Principal Component Analysis, dimension reduction
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