Title
The GH-EXIN neural network for hierarchical clustering.
Abstract
Hierarchical clustering is an important tool for extracting information from data in a multi-resolution way. It is more meaningful if driven by data, as in the case of divisive algorithms, which split data until no more division is allowed. However, they have the drawback of the splitting threshold setting. The neural networks can address this problem, because they basically depend on data. The growing hierarchical GH-EXIN neural network builds a hierarchical tree in an incremental (data-driven architecture) and self-organized way. It is a top-down technique which defines the horizontal growth by means of an anisotropic region of influence, based on the novel idea of neighborhood convex hull. It also reallocates data and detects outliers by using a novel approach on all the leaves, simultaneously. Its complexity is estimated and an analysis of its user-dependent parameters is given. The advantages of the proposed approach, with regard to the best existing networks, are shown and analyzed, qualitatively and quantitatively, both in benchmark synthetic problems and in a real application (image recognition from video), in order to test the performance in building hierarchical trees. Furthermore, an important and very promising application of GH-EXIN in two-way hierarchical clustering, for the analysis of gene expression data in the study of the colorectal cancer is described.
Year
DOI
Venue
2020
10.1016/j.neunet.2019.07.018
Neural Networks
Keywords
Field
DocType
Convex hull,Dynamic tree,Hierarchical divisive clustering,Neural network,Self-organization,Two-way clustering
Drawback,Hierarchical clustering,Data mining,Self-organization,Convex hull,Outlier,Artificial intelligence,Artificial neural network,Machine learning,Mathematics
Journal
Volume
Issue
ISSN
121
1
0893-6080
Citations 
PageRank 
References 
3
0.53
0
Authors
5
Name
Order
Citations
PageRank
G. Cirrincione1467.06
Gabriele Ciravegna233.23
Pietro Barbiero331.20
V. Randazzo452.24
Eros Pasero56721.35