What are some common applications of dimensionality reduction in data science?

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Dimensionality reduction is a technique that reduces the number of features or variables in a data set, while preserving as much information as possible. It can help data scientists to simplify, visualize, and analyze complex and high-dimensional data. In this article, we will explore some common applications of dimensionality reduction in data science, and how it can benefit your projects.

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