How can you use dimensionality reduction to optimize model performance?

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Dimensionality reduction is a technique that reduces the number of features or variables in a dataset, while preserving the essential information or structure. It can help you optimize your model performance by improving the speed, accuracy, and interpretability of your data analysis. In this article, you will learn how to use dimensionality reduction for different purposes and methods, and what are the benefits and challenges of applying it to your data science projects.

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