The document discusses anomaly detection techniques and best practices, focusing on graphical, statistical, and machine learning approaches. It highlights methodologies such as boxplots, chi-square tests, and clustering methods like k-means and local outlier factor. Additionally, it provides an overview of a full workshop on anomaly detection scheduled for July 2016 in Boston.
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