Sift - Local Outlier Factor Dialog: Local Outlier Factor Dialog

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The Local Outlier Factor is a machine learning algorithm that detects outliers by using nearest neighbour distances (k-nearest neighbour). The LOF finds points that are outliers relative to local clusters. The LOF outlier score takes into account the relative density of the data points to the local clusters.

The Local Outlier Factor is found on the toolbar and under 'Outlier Detection Using PCA' in the Analysis menu.

Dialog

The Local Outlier Factor using PCA allows the user to automatically search the data and identify traces that are outside the norm. The search for outliers can be done by Combined Groups, Group, and Workspaces. Users can decide if they want to auto-exclude any outliers that are detected in the groups or workspaces. Users can specify conditions of the LOF technique, including number of nearest neighbours, thresholds, p-values, and outlier percentage.

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