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Advanced Machine Learning with R
book

Advanced Machine Learning with R

by Cory Lesmeister, Dr. Sunil Kumar Chinnamgari
May 2019
Intermediate to advanced
664 pages
15h 41m
English
Packt Publishing
Content preview from Advanced Machine Learning with R

PAM

For PAM, let's first define a medoid.

A medoid is an observation of a cluster that minimizes the dissimilarity (in our case, calculated using the Gower metric) between the other observations in that cluster. So, similar to k-means, if you specify five clusters, you will have five partitions of the data.

With the objective of minimizing the dissimilarity of all the observations to the nearest medoid, the PAM algorithm iterates over the following steps:

  1. Randomly select k observations as the initial medoid
  2. Assign each observation to the closest medoid
  3. Swap each medoid and non-medoid observation, computing the dissimilarity cost
  4. Select the configuration that minimizes the total dissimilarity
  5. Repeat steps 2 through 4 until there is no change ...
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Publisher Resources

ISBN: 9781838641771Supplemental Content