What are the most common mistakes to avoid when using decision trees in data mining?

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Decision trees are powerful and popular tools for data mining, as they can handle both categorical and numerical data, deal with missing values and outliers, and provide intuitive and interpretable results. However, they also have some limitations and pitfalls that can affect their performance and validity. In this article, you will learn about some of the most common mistakes to avoid when using decision trees in data mining, and how to overcome them.

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