Publication | Open Access
<b>RSKC</b>: An<i>R</i>Package for a Robust and Sparse K-Means Clustering Algorithm
56
Citations
15
References
2016
Year
Cluster ComputingEngineeringR Package RskcRsk-means PerformsUnsupervised Machine LearningOptimization-based Data MiningData ScienceData MiningPattern RecognitionPrincipal Component AnalysisSparse K-meansStatisticsDocument ClusteringOutlier DetectionKnowledge DiscoveryComputer ScienceClustering (Data Mining)Fuzzy ClusteringBig Data
Witten and Tibshirani (2010) proposed an algorithim to simultaneously find clusters and select clustering variables, called sparse K-means (SK-means). SK-means is particularly useful when the dataset has a large fraction of noise variables (that is, variables without useful information to separate the clusters). SK-means works very well on clean and complete data but cannot handle outliers nor missing data. To remedy these problems we introduce a new robust and sparse K-means clustering algorithm implemented in the R package RSKC. We demonstrate the use of our package on four datasets. We also conduct a Monte Carlo study to compare the performances of RSK-means and SK-means regarding the selection of important variables and identification of clusters. Our simulation study shows that RSK-means performs well on clean data and better than SK-means and other competitors on outlier-contaminated data.
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