Mixture model-based clustering, usually applied to multidimensional data, has become a popular approach in many data analysis problems, both for its good statistical properties and for the simplicity of implementation of the Expectation-Maximization (EM) algorithm. Within the context of a railway application, this paper introduces a novel mixture model for dealing with time series that are subject to changes in regime. The proposed approach, called ClustSeg, consists in modeling each cluster by a regression model in which the polynomial coefficients vary according to a discrete hidden process. In particular, this approach makes use of logistic functions to model the (smooth or abrupt) transitions between regimes. The model parameters are es...
Clustering problems are central to many knowledge discovery and data mining tasks. However, most exi...
A method for clustering of multidimensional non-stationary meteorological time se-ries is presented....
In this paper we propose a clustering technique for discretely ob- served continuous-time models in ...
Mixture model-based clustering, usually applied to multidimensional data, has become a popular appro...
Nowadays, diagnosis and monitoring for predictive maintenance of railway components are important ke...
For purposes such as rate setting and long-term capacity planning, electrical utility companies are ...
A new family of mixture models for the model-based clustering of longitudinal data is introduced. ...
The focus of the present paper is on clustering, namely the problem of finding distinct groups in a ...
In this paper we address the problem of clustering trajectories, namely sets of short sequences of d...
Clustering is a widely used statistical tool to determine subsets in a given data set. Frequently us...
Finite mixture models are being increasingly used to model the distributions of a wide variety of ra...
Change point estimation in standard process observed over time is an important problem in literature...
In this paper we present a family of algorithms that can simultaneously align and cluster sets of mu...
In many research fields, scientific questions are investigated by analyzing data collected over spac...
Model-based clustering represents nowadays a popular tool of analysis thanks to its probabilistic fo...
Clustering problems are central to many knowledge discovery and data mining tasks. However, most exi...
A method for clustering of multidimensional non-stationary meteorological time se-ries is presented....
In this paper we propose a clustering technique for discretely ob- served continuous-time models in ...
Mixture model-based clustering, usually applied to multidimensional data, has become a popular appro...
Nowadays, diagnosis and monitoring for predictive maintenance of railway components are important ke...
For purposes such as rate setting and long-term capacity planning, electrical utility companies are ...
A new family of mixture models for the model-based clustering of longitudinal data is introduced. ...
The focus of the present paper is on clustering, namely the problem of finding distinct groups in a ...
In this paper we address the problem of clustering trajectories, namely sets of short sequences of d...
Clustering is a widely used statistical tool to determine subsets in a given data set. Frequently us...
Finite mixture models are being increasingly used to model the distributions of a wide variety of ra...
Change point estimation in standard process observed over time is an important problem in literature...
In this paper we present a family of algorithms that can simultaneously align and cluster sets of mu...
In many research fields, scientific questions are investigated by analyzing data collected over spac...
Model-based clustering represents nowadays a popular tool of analysis thanks to its probabilistic fo...
Clustering problems are central to many knowledge discovery and data mining tasks. However, most exi...
A method for clustering of multidimensional non-stationary meteorological time se-ries is presented....
In this paper we propose a clustering technique for discretely ob- served continuous-time models in ...