What are the best ways to communicate outlier detection results to stakeholders?

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Outlier detection is a crucial step in data cleaning and analysis, especially for machine learning applications. Outliers are data points that deviate significantly from the normal distribution or pattern of the data set, and they can affect the accuracy, performance, and interpretation of machine learning models. However, outlier detection is not a straightforward task, and it requires careful consideration of the data context, the detection methods, and the potential impacts of outliers. Moreover, communicating outlier detection results to stakeholders, such as clients, managers, or domain experts, can be challenging, as they may have different expectations, backgrounds, and goals. In this article, you will learn some best practices and tips to communicate outlier detection results to stakeholders effectively and clearly.

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