We propose two algorithms for robust two-mode partitioning of a data matrix in the presence of outliers. First we extend the robust k-means procedure to the case of biclustering, then we slightly relax the definition of outlier and propose a more flexible and parsimonious strategy, which anyway is inherently less robust. We discuss the breakdown properties of the algorithms, and illustrate the methods with simulations and three real examples
Abstract—Nonnegative matrix factorization (NMF) is a pop-ular technique for learning parts-based rep...
We consider the general problem of Multiple Model Learning (MML) from data, from the statistical and...
Mahalanobis-type distances in which the shape matrix is derived from a consistent highbreakdown robu...
Starting from an extension of standard K-means for simultaneously clustering observations and featur...
Two-mode partitioning is a relatively new form of clustering that clusters both rows and columns of ...
New methodologies for two-mode (objects and variables) multi-partitioning of two way data are presen...
Summarization: Over the last years, many variations of the quadratic k-means clustering procedure ha...
International audienceBoth clustering and outlier detection tasks have a wide range of applications ...
In this paper we present a structured overview of methods for two-mode clustering, that is, methods ...
Plain vanilla K-means clustering is prone to produce unbalanced clusters and suffers from outlier se...
This paper proposes an adaptive dual control with outlier detection that is robust to the occurrence...
A number of methods are available to detect outliers in univariate data sets. Most of these tests ar...
In this paper, we present a new algorithm for detecting multiple outliers in linear regression. The ...
We propose a Bayesian procedure for multiple outlier detection in linear models avoiding the maskin...
Variable selection and other dimensionality reduction methods are more important than ever before. D...
Abstract—Nonnegative matrix factorization (NMF) is a pop-ular technique for learning parts-based rep...
We consider the general problem of Multiple Model Learning (MML) from data, from the statistical and...
Mahalanobis-type distances in which the shape matrix is derived from a consistent highbreakdown robu...
Starting from an extension of standard K-means for simultaneously clustering observations and featur...
Two-mode partitioning is a relatively new form of clustering that clusters both rows and columns of ...
New methodologies for two-mode (objects and variables) multi-partitioning of two way data are presen...
Summarization: Over the last years, many variations of the quadratic k-means clustering procedure ha...
International audienceBoth clustering and outlier detection tasks have a wide range of applications ...
In this paper we present a structured overview of methods for two-mode clustering, that is, methods ...
Plain vanilla K-means clustering is prone to produce unbalanced clusters and suffers from outlier se...
This paper proposes an adaptive dual control with outlier detection that is robust to the occurrence...
A number of methods are available to detect outliers in univariate data sets. Most of these tests ar...
In this paper, we present a new algorithm for detecting multiple outliers in linear regression. The ...
We propose a Bayesian procedure for multiple outlier detection in linear models avoiding the maskin...
Variable selection and other dimensionality reduction methods are more important than ever before. D...
Abstract—Nonnegative matrix factorization (NMF) is a pop-ular technique for learning parts-based rep...
We consider the general problem of Multiple Model Learning (MML) from data, from the statistical and...
Mahalanobis-type distances in which the shape matrix is derived from a consistent highbreakdown robu...