How can you remove outliers for a specific ML task?

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Outliers are data points that deviate significantly from the rest of the distribution. They can affect the performance and accuracy of your machine learning models, especially if they are not representative of the underlying problem or domain. Therefore, it is important to identify and remove outliers for a specific ML task, depending on the type of data, the algorithm, and the objective. In this article, you will learn some common methods and criteria for outlier detection and removal, as well as some examples and code snippets to help you apply them.

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