Part 1.
Part 1 covers the basic ideas of outlier detection: what outliers are, some techniques to find outliers in data, and how to manage outlier detection projects.
In chapter 1, we cover the idea of outliers and provide some examples of where outlier detection may be used, along with high-level descriptions of how outlier detection may be applied to these cases. We look at the subjective nature of outliers, provide some history of outlier detection, and describe the place of outlier detection in machine learning generally.
In chapter 2, we introduce techniques for outlier detection with simple statistical methods (such as z-score and interquartile range), which can find rare or extreme values in sequences of values. These techniques are straightforward ...
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