A hierarchical scheme for clustering data is presented which applies to spaces with a high number of dimension ($N_{_{D}}>3$). The data set is first reduced to a smaller set of partitions (multi-dimensional bins). Multiple clustering techniques are used, including spectral clustering, however, new techniques are also introduced based on the path length between partitions that are connected to one another. A Line-Of-Sight algorithm is also developed for clustering. A test bank of 12 data sets with varying properties is used to expose the strengths and weaknesses of each technique. Finally, a robust clustering technique is discussed based on reaching a consensus among the multiple approaches, overcoming the weaknesses found individually.
CITATION STYLE
Mcilhany, K., & Wiggins, S. (2018). High Dimensional Cluster Analysis Using Path Lengths. Journal of Data Analysis and Information Processing, 06(03), 93–125. https://doi.org/10.4236/jdaip.2018.63007
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