On some spectral properties of stochastic similarity matrices for data clustering

10/03/2019
by   Denis Gaidashev, et al.
0

Clustering in image analysis is a central technique that allows to classify elements of an image. We describe a simple clustering technique that uses the method of similarity matrices. We expand upon recent results in spectral analysis for Gaussian mixture distributions, and in particular, provide conditions for the existence of a spectral gap between the leading and remaining eigenvalues for matrices with entries from a Gaussian mixture with two real univariate components. Furthermore, we describe an algorithm in which a collection of image elements is treated as a dynamical system in which the existence of the mentioned spectral gap results in an efficient clustering.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/01/2019

Optimality of Spectral Clustering for Gaussian Mixture Model

Spectral clustering is one of the most popular algorithms to group high ...
research
02/05/2021

A simpler spectral approach for clustering in directed networks

We study the task of clustering in directed networks. We show that using...
research
02/22/2023

Improving Model Choice in Classification: An Approach Based on Clustering of Covariance Matrices

This work introduces a refinement of the Parsimonious Model for fitting ...
research
06/25/2019

Spectral Properties of Radial Kernels and Clustering in High Dimensions

In this paper, we study the spectrum and the eigenvectors of radial kern...
research
09/06/2019

AutoGMM: Automatic Gaussian Mixture Modeling in Python

Gaussian mixture modeling is a fundamental tool in clustering, as well a...
research
08/23/2018

On a 'Two Truths' Phenomenon in Spectral Graph Clustering

Clustering is concerned with coherently grouping observations without an...
research
09/01/2023

Consistency of Lloyd's Algorithm Under Perturbations

In the context of unsupervised learning, Lloyd's algorithm is one of the...

Please sign up or login with your details

Forgot password? Click here to reset