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LOF calculation

kNN is useful for finding global anomalies, but is less able to surface local outliers. In this exercise, you'll practice using the lof() function to calculate local outlier factors for the wine data.

lof() has the arguments:

  • x: the data for scoring,
  • k: the number of neighbors used to calculate the LOF.

This exercise is part of the course

Introduction to Anomaly Detection in R

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Exercise instructions

  • Calculate the local outlier factor using the 5-nearest neighbors.
  • Append the LOF to the wine data set as a new column called score.

Hands-on interactive exercise

Have a go at this exercise by completing this sample code.

# Calculate the LOF for wine data
wine_lof <- lof(___, ___)

# Append the LOF score as a new column
___$score <- ___
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