| Literature DB >> 24490618 |
Khadija Musayeva, Tristan Henderson, John Bo Mitchell, Lazaros Mavridis1.
Abstract
BACKGROUND: A well-known problem in cluster analysis is finding an optimal number of clusters reflecting the inherent structure of the data. PFClust is a partitioning-based clustering algorithm capable, unlike many widely-used clustering algorithms, of automatically proposing an optimal number of clusters for the data.Entities:
Year: 2014 PMID: 24490618 PMCID: PMC3940029 DOI: 10.1186/1751-0473-9-5
Source DB: PubMed Journal: Source Code Biol Med ISSN: 1751-0473
Figure 1Execution times. Comparison of the execution times between the original (black, top row) and new (grey, bottom row) implementations, averaged over the seven datasets from [9]. The different steps of the algorithm (Randomization, Clustering and Total Execution time) are shown from left to right. The combined process of randomization and clustering has to be run four times (or occasionally more [9]), the totals given here include these repetitions.