Robust Hierarchical Clustering for Directed Networks: An Axiomatic Approach

08/16/2021
by   Gunnar Carlsson, et al.
2

We provide a complete taxonomic characterization of robust hierarchical clustering methods for directed networks following an axiomatic approach. We begin by introducing three practical properties associated with the notion of robustness in hierarchical clustering: linear scale preservation, stability, and excisiveness. Linear scale preservation enforces imperviousness to change in units of measure whereas stability ensures that a bounded perturbation in the input network entails a bounded perturbation in the clustering output. Excisiveness refers to the local consistency of the clustering outcome. Algorithmically, excisiveness implies that we can reduce computational complexity by only clustering a subset of our data while theoretically guaranteeing that the same hierarchical outcome would be observed when clustering the whole dataset. In parallel to these three properties, we introduce the concept of representability, a generative model for describing clustering methods through the specification of their action on a collection of networks. Our main result is to leverage this generative model to give a precise characterization of all robust – i.e., excisive, linear scale preserving, and stable – hierarchical clustering methods for directed networks. We also address the implementation of our methods and describe an application to real data.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/01/2020

Motivic clustering schemes for directed graphs

Motivated by the concept of network motifs we construct certain clusteri...
research
11/12/2017

Convergence of Hierarchical Clustering and Persistent Homology Methods on Directed Networks

While there has been much interest in adapting conventional clustering p...
research
04/26/2020

Order preserving hierarchical agglomerative clustering of strict posets

We present a method for hierarchical clustering of directed acyclic grap...
research
01/31/2013

Axiomatic Construction of Hierarchical Clustering in Asymmetric Networks

This paper considers networks where relationships between nodes are repr...
research
07/21/2016

Hierarchical Clustering of Asymmetric Networks

This paper considers networks where relationships between nodes are repr...
research
07/21/2016

Admissible Hierarchical Clustering Methods and Algorithms for Asymmetric Networks

This paper characterizes hierarchical clustering methods that abide by t...
research
12/03/2018

Measuring the Robustness of Graph Properties

In this paper, we propose a perturbation framework to measure the robust...

Please sign up or login with your details

Forgot password? Click here to reset