Treffer: Consistency, Breakdown Robustness, and Algorithms for Robust Improper Maximum Likelihood Clustering
Title:
Consistency, Breakdown Robustness, and Algorithms for Robust Improper Maximum Likelihood Clustering
Authors:
Source:
Journal of Machine Learning Research , 18 (142) pp. 1-39. (2017)
Publisher Information:
Microtome Publishing
Publication Year:
2017
Collection:
University College London: UCL Discovery
Subject Terms:
Document Type:
Fachzeitschrift
article in journal/newspaper
File Description:
text
Language:
English
Availability:
Rights:
open
Accession Number:
edsbas.A48D8F9
Database:
BASE
Weitere Informationen
The robust improper maximum likelihood estimator (RIMLE) is a new method for robust multivariate clustering finding approximately Gaussian clusters. It maximizes a pseudo- likelihood defined by adding a component with improper constant density for accommodating outliers to a Gaussian mixture. A special case of the RIMLE is MLE for multivariate finite Gaussian mixture models. In this paper we treat existence, consistency, and breakdown theory for the RIMLE comprehensively. RIMLE's existence is proved under non-smooth covariance matrix constraints. It is shown that these can be implemented via a computationally feasible Expectation-Conditional Maximization algorithm.