Cascade of Phase Transitions for Multi-Scale Clustering

10/15/2020
by   T. Bonnaire, et al.
0

We present a novel framework exploiting the cascade of phase transitions occurring during a simulated annealing of the Expectation-Maximisation algorithm to cluster datasets with multi-scale structures. Using the weighted local covariance, we can extract, a posteriori and without any prior knowledge, information on the number of clusters at different scales together with their size. We also study the linear stability of the iterative scheme to derive the threshold at which the first transition occurs and show how to approximate the next ones. Finally, we combine simulated annealing together with recent developments of regularised Gaussian mixture models to learn a principal graph from spatially structured datasets that can also exhibit many scales.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/28/2019

Bi-Directional Cascade Network for Perceptual Edge Detection

Exploiting multi-scale representations is critical to improve edge detec...
research
10/10/2016

Phase transitions and optimal algorithms in high-dimensional Gaussian mixture clustering

We consider the problem of Gaussian mixture clustering in the high-dimen...
research
10/31/2018

On the Persistence of Clustering Solutions and True Number of Clusters in a Dataset

Typically clustering algorithms provide clustering solutions with prespe...
research
11/21/2019

The asymptotics of the clustering transition for random constraint satisfaction problems

Random Constraint Satisfaction Problems exhibit several phase transition...
research
10/31/2018

On the True Number of Clusters in a Dataset

One of the main challenges in cluster analysis is estimating the true nu...
research
05/19/2013

Quantum Annealing for Dirichlet Process Mixture Models with Applications to Network Clustering

We developed a new quantum annealing (QA) algorithm for Dirichlet proces...

Please sign up or login with your details

Forgot password? Click here to reset