Different methods exist to explore multiway data. In this article, we focus on the widely used PARAFAC (parallel factor analysis) model, which expresses multiway data in a more compact way without ignoring the underlying complex structure. An alternating least squares procedure is typically used to fit the PARAFAC model. It is, however, well known that least squares techniques are very sensitive to outliers, and hence, the PARAFAC model as a whole is a nonrobust method. Therefore a robust alternative, which can deal with fully observed data possibly contaminated by outlying samples, has already been proposed in literature. In this paper, we present an approach to perform PARAFAC on data that contain both outlying cases and missing elements....
The standard multivariate analysis addresses data sets represented as two dimensional matrices. In ...
A new nonparametric technique to impute missing data is proposed in order to obtain a completed data...
In missing data analysis, there is often a need to assess the sensitivity of key inferences to depar...
Different techniques exist to analyze multi-way data but PARAFAC is one of the most popular. The usu...
Abstract—Parallel factor (PARAFAC) analysis is an extension of low-rank matrix decomposition to high...
A new diagnostic called the core consistency diagnostic (CORCONDIA) is suggested for determining the...
Abstract — R-dimensional parameter estimation problems are common in a variety of signal processing ...
PARAFAC is a generalization of principal component analysis (PCA) to the situation where a set of da...
Parallel factor (PARAFAC) analysis is an extension of a low rank decomposition to higher way arrays,...
A simple approach is described to calculate sample-specific standard errors for the concentrations p...
Recently, the CORe CONsistency DIAgnostic (CORCONDIA) has attracted more and more attention as an ef...
© 2021 Ruoxu TanThe thesis mainly studies three different topics on missing data, where we intend to...
In many research areas, the Parafac model is adopted to disclose the underlying structure of three-w...
Factor analysis is a well-known model for describing the covariance structure among a set of manifes...
We consider multi-set data consisting of inline image observations, k = 1,…, K (e.g., subject scores...
The standard multivariate analysis addresses data sets represented as two dimensional matrices. In ...
A new nonparametric technique to impute missing data is proposed in order to obtain a completed data...
In missing data analysis, there is often a need to assess the sensitivity of key inferences to depar...
Different techniques exist to analyze multi-way data but PARAFAC is one of the most popular. The usu...
Abstract—Parallel factor (PARAFAC) analysis is an extension of low-rank matrix decomposition to high...
A new diagnostic called the core consistency diagnostic (CORCONDIA) is suggested for determining the...
Abstract — R-dimensional parameter estimation problems are common in a variety of signal processing ...
PARAFAC is a generalization of principal component analysis (PCA) to the situation where a set of da...
Parallel factor (PARAFAC) analysis is an extension of a low rank decomposition to higher way arrays,...
A simple approach is described to calculate sample-specific standard errors for the concentrations p...
Recently, the CORe CONsistency DIAgnostic (CORCONDIA) has attracted more and more attention as an ef...
© 2021 Ruoxu TanThe thesis mainly studies three different topics on missing data, where we intend to...
In many research areas, the Parafac model is adopted to disclose the underlying structure of three-w...
Factor analysis is a well-known model for describing the covariance structure among a set of manifes...
We consider multi-set data consisting of inline image observations, k = 1,…, K (e.g., subject scores...
The standard multivariate analysis addresses data sets represented as two dimensional matrices. In ...
A new nonparametric technique to impute missing data is proposed in order to obtain a completed data...
In missing data analysis, there is often a need to assess the sensitivity of key inferences to depar...