Unsupervised Decision Forest for Data Clustering and Density Estimation

07/15/2015
by   Hayder Albehadili, et al.
0

An algorithm to improve performance parameter for unsupervised decision forest clustering and density estimation is presented. Specifically, a dual assignment parameter is introduced as a density estimator by combining Random Forest and Gaussian Mixture Model. The Random Forest method has been specifically applied to construct a robust affinity graph that provides information on the underlying structure of data objects used in clustering. The proposed algorithm differs from the commonly used spectral clustering methods where the computed distance metric is used to find similarities between data points. Experiments were conducted using five datasets. A comparison with six other state-of-the-art methods shows that our model is superior to existing approaches. Efficiency of the proposed model is in capturing the underlying structure for a given set of data points. The proposed method is also robust, and can discriminate between the complex features of data points among different clusters.

READ FULL TEXT

page 3

page 4

page 6

research
06/22/2021

Modal clustering on PPGMMGA projection subspace

PPGMMGA is a Projection Pursuit (PP) algorithm aimed at detecting and vi...
research
06/24/2019

Density-based Clustering with Best-scored Random Forest

Single-level density-based approach has long been widely acknowledged to...
research
04/05/2020

Unsupervised and Supervised Learning with the Random Forest Algorithm for Traffic Scenario Clustering and Classification

The goal of this paper is to provide a method, which is able to find cat...
research
04/05/2020

An Unsupervised Random Forest Clustering Technique for Automatic Traffic Scenario Categorization

A modification of the Random Forest algorithm for the categorization of ...
research
03/22/2021

Forest Fire Clustering: Cluster-oriented Label Propagation Clustering and Monte Carlo Verification Inspired by Forest Fire Dynamics

Clustering methods group data points together and assign them group-leve...
research
09/26/2017

Scale Adaptive Clustering of Multiple Structures

We propose the segmentation of noisy datasets into Multiple Inlier Struc...
research
07/25/2022

Orthogonalization of data via Gromov-Wasserstein type feedback for clustering and visualization

In this paper we propose an adaptive approach for clustering and visuali...

Please sign up or login with your details

Forgot password? Click here to reset