31 pages, 10 figuresCount data is becoming more and more ubiquitous in a wide range of applications, with datasets growing both in size and in dimension. In this context, an increasing amount of work is dedicated to the construction of statistical models directly accounting for the discrete nature of the data. Moreover, it has been shown that integrating dimension reduction to clustering can drastically improve performance and stability. In this paper, we introduce the mixture of multinomial PCA, a new mixture model for the clustering of count data. Related to the latent Dirichlet allocation model, it offers the flexibility of topic modeling while being able to assign each observation to a unique cluster. We propose an inference procedure, ...
The K-means algorithm is one of the most popular clustering algorithms in current use as it is relat...
<p>Clustering methods are designed to separate heterogeneous data into groups of similar objects suc...
Analysis of medical data and making precise decisions by machine learning is emerging as a hot topic...
34 pages, 11 figuresInternational audienceCount data is becoming more and more ubiquitous in a wide ...
The Multinomial distribution has been widely used to model count data. To increase clustering effici...
In this study, we consider unsupervised clustering of categorical vectors that can be of different s...
Research on cluster analysis for categorical data continues to develop, new clustering algorithms be...
Latent variable models are used extensively in unsupervised learning within the Bayesian paradigm, t...
We consider the problem of inferring an unknown number of clusters in replicated multinomial data. U...
The focus of this thesis is models for non-parametric clustering of multivariate count data. While t...
While the vast majority of clustering algorithms are partitional, many real world datasets have inhe...
In 2009, Yu et al. proposed a multimodal probability model (MPM) for clustering. This paper makes ad...
Summary. Exponential principal component analysis (e-PCA) provides a frame-work for appropriately de...
In clustering, one may be interested in the classification of similar objects into groups, and one m...
This thesis proposes three original contributions for the clustering of particular types of data: mu...
The K-means algorithm is one of the most popular clustering algorithms in current use as it is relat...
<p>Clustering methods are designed to separate heterogeneous data into groups of similar objects suc...
Analysis of medical data and making precise decisions by machine learning is emerging as a hot topic...
34 pages, 11 figuresInternational audienceCount data is becoming more and more ubiquitous in a wide ...
The Multinomial distribution has been widely used to model count data. To increase clustering effici...
In this study, we consider unsupervised clustering of categorical vectors that can be of different s...
Research on cluster analysis for categorical data continues to develop, new clustering algorithms be...
Latent variable models are used extensively in unsupervised learning within the Bayesian paradigm, t...
We consider the problem of inferring an unknown number of clusters in replicated multinomial data. U...
The focus of this thesis is models for non-parametric clustering of multivariate count data. While t...
While the vast majority of clustering algorithms are partitional, many real world datasets have inhe...
In 2009, Yu et al. proposed a multimodal probability model (MPM) for clustering. This paper makes ad...
Summary. Exponential principal component analysis (e-PCA) provides a frame-work for appropriately de...
In clustering, one may be interested in the classification of similar objects into groups, and one m...
This thesis proposes three original contributions for the clustering of particular types of data: mu...
The K-means algorithm is one of the most popular clustering algorithms in current use as it is relat...
<p>Clustering methods are designed to separate heterogeneous data into groups of similar objects suc...
Analysis of medical data and making precise decisions by machine learning is emerging as a hot topic...