The following mixture model-based clustering methods are compared in a simulation study with one-dimensional data, fixed number of clusters and a focus on outliers and uniform “noise”: an ML-estimator (MLE) for Gaussian mixtures, an MLE for a mixture of Gaussians and a uniform distribution (interpreted as “noise component” to catch outliers), an MLE for a mixture of Gaussian distributions where a uniform distribution over the range of the data is fixed (Fraley and Raftery in Comput J 41:578–588, 1998), a pseudo-MLE for a Gaussian mixture with improper fixed constant over the real line to catch “noise” (RIMLE; Hennig in Ann Stat 32(4): 1313–1340, 2004), and MLEs for mixtures of t-distributions with and without estimation of the degrees of fr...
Variable selection and other dimensionality reduction methods are more important than ever before. D...
. k-Means clustering algorithm is an unsupervised learning, provides no opportunity for a data poin...
Finite mixture models are being increasingly used to model the distributions of a wide variety of ra...
The following mixture model-based clustering methods are compared in a simulation study with one-dim...
The two main topics of this paper are the introduction of the “optimally tuned improper maximum lik...
The two main topics of this article are the introduction of the “optimally tuned robust improper max...
A new method is proposed to generate sample Gaussian mixture distributions according to prespecified...
We introduce a new approach to deciding the number of clusters. The approach is applied to Optimally...
<p>A, C, E) Example draws from each of three simulation scenarios (Gaussians, arcs & Gaussians, and ...
Abstract. The two main topics of this paper are the introduction of the “optimally tuned improper ma...
Finite mixture models are finite-dimensional generalizations of probabilistic models, which express ...
This paper examines the relative performance of two commonly used clustering methods based on maximu...
Clustering is task of assigning the objects into different groups so that the objects are more simil...
Simulation studies are often used to compare different clustering methods, be it with the aim of pro...
Finite mixtures present a powerful tool for modeling complex heterogeneous data. One of their most i...
Variable selection and other dimensionality reduction methods are more important than ever before. D...
. k-Means clustering algorithm is an unsupervised learning, provides no opportunity for a data poin...
Finite mixture models are being increasingly used to model the distributions of a wide variety of ra...
The following mixture model-based clustering methods are compared in a simulation study with one-dim...
The two main topics of this paper are the introduction of the “optimally tuned improper maximum lik...
The two main topics of this article are the introduction of the “optimally tuned robust improper max...
A new method is proposed to generate sample Gaussian mixture distributions according to prespecified...
We introduce a new approach to deciding the number of clusters. The approach is applied to Optimally...
<p>A, C, E) Example draws from each of three simulation scenarios (Gaussians, arcs & Gaussians, and ...
Abstract. The two main topics of this paper are the introduction of the “optimally tuned improper ma...
Finite mixture models are finite-dimensional generalizations of probabilistic models, which express ...
This paper examines the relative performance of two commonly used clustering methods based on maximu...
Clustering is task of assigning the objects into different groups so that the objects are more simil...
Simulation studies are often used to compare different clustering methods, be it with the aim of pro...
Finite mixtures present a powerful tool for modeling complex heterogeneous data. One of their most i...
Variable selection and other dimensionality reduction methods are more important than ever before. D...
. k-Means clustering algorithm is an unsupervised learning, provides no opportunity for a data poin...
Finite mixture models are being increasingly used to model the distributions of a wide variety of ra...