Clustering by Hierarchical Nearest Neighbor Descent (H-NND)

09/09/2015
by   Teng Qiu, et al.
0

Previously in 2014, we proposed the Nearest Descent (ND) method, capable of generating an efficient Graph, called the in-tree (IT). Due to some beautiful and effective features, this IT structure proves well suited for data clustering. Although there exist some redundant edges in IT, they usually have salient features and thus it is not hard to remove them. Subsequently, in order to prevent the seemingly redundant edges from occurring, we proposed the Nearest Neighbor Descent (NND) by adding the "Neighborhood" constraint on ND. Consequently, clusters automatically emerged, without the additional requirement of removing the redundant edges. However, NND proved still not perfect, since it brought in a new yet worse problem, the "over-partitioning" problem. Now, in this paper, we propose a method, called the Hierarchical Nearest Neighbor Descent (H-NND), which overcomes the over-partitioning problem of NND via using the hierarchical strategy. Specifically, H-NND uses ND to effectively merge the over-segmented sub-graphs or clusters that NND produces. Like ND, H-NND also generates the IT structure, in which the redundant edges once again appear. This seemingly comes back to the situation that ND faces. However, compared with ND, the redundant edges in the IT structure generated by H-NND generally become more salient, thus being much easier and more reliable to be identified even by the simplest edge-removing method which takes the edge length as the only measure. In other words, the IT structure constructed by H-NND becomes more fitted for data clustering. We prove this on several clustering datasets of varying shapes, dimensions and attributes. Besides, compared with ND, H-NND generally takes less computation time to construct the IT data structure for the input data.

READ FULL TEXT
research
02/16/2015

Clustering by Descending to the Nearest Neighbor in the Delaunay Graph Space

In our previous works, we proposed a physically-inspired rule to organiz...
research
07/29/2015

IT-Dendrogram: A New Member of the In-Tree (IT) Clustering Family

Previously, we proposed a physically-inspired method to construct data p...
research
12/17/2009

Optimal construction of k-nearest neighbor graphs for identifying noisy clusters

We study clustering algorithms based on neighborhood graphs on a random ...
research
12/07/2015

Clustering by Deep Nearest Neighbor Descent (D-NND): A Density-based Parameter-Insensitive Clustering Method

Most density-based clustering methods largely rely on how well the under...
research
02/11/2019

Nearest Neighbor Median Shift Clustering for Binary Data

We describe in this paper the theory and practice behind a new modal clu...
research
06/19/2015

A general framework for the IT-based clustering methods

Previously, we proposed a physically inspired rule to organize the data ...
research
02/17/2015

Nonparametric Nearest Neighbor Descent Clustering based on Delaunay Triangulation

In our physically inspired in-tree (IT) based clustering algorithm and t...

Please sign up or login with your details

Forgot password? Click here to reset