Weighting Features for Partition around Medoids Using the Minkowski Metric
Cordeiro De Amorim, Renato and Fenner, Trevor
(2012)
Weighting Features for Partition around Medoids Using the Minkowski Metric.
Springer Nature.
In this paper we introduce the Minkowski weighted partition around medoids algorithm (MW-PAM). This extends the popular partition around medoids algorithm (PAM) by automatically assigning K weights to each feature in a dataset, where K is the number of clusters. Our approach utilizes the within-cluster variance of features to calculate the weights and uses the Minkowski metric. We show through many experiments that MW-PAM, particularly when initialized with the Build algorithm (also using the Minkowski metric), is superior to other medoid-based algorithms in terms of both accuracy and identification of irrelevant features.
Item Type | Other |
---|---|
Date Deposited | 14 Nov 2024 11:06 |
Last Modified | 14 Nov 2024 11:06 |