opticskxi:OPTICS K-Xi Density-Based Clustering
Density-based clustering methods are well adapted to the clustering of high-dimensional data and enable the discovery of
core groups of various shapes despite large amounts of noise.
This package provides a novel density-based cluster extraction
method, OPTICS k-Xi, and a framework to compare k-Xi models
using distance-based metrics to investigate datasets with
unknown number of clusters. The vignette first introduces
density-based algorithms with simulated datasets, then presents
and evaluates the k-Xi cluster extraction method. Finally, the
models comparison framework is described and experimented on 2
genetic datasets to identify groups and their discriminating
features. The k-Xi algorithm is a novel OPTICS cluster
extraction method that specifies directly the number of
clusters and does not require fine-tuning of the steepness
parameter as the OPTICS Xi method. Combined with a framework
that compares models with varying parameters, the OPTICS k-Xi
method can identify groups in noisy datasets with unknown
number of clusters. Results on summarized genetic data of 1,200
patients are in Charlon T. (2019)
<doi:10.13097/archive-ouverte/unige:161795>. A short video
tutorial can be found at
<https://www.youtube.com/watch?v=P2XAjqI5Lc4/>.