The document provides an introduction to unsupervised learning in machine learning, covering its types, challenges, and applications, including clustering and dimensionality reduction. It details various preprocessing techniques like scaling and transformations applied to datasets to prepare them for supervised learning. Additionally, it discusses Principal Component Analysis (PCA) for dimensionality reduction and feature extraction, particularly in image processing and face recognition applications.
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