We develop a robust regularized singular value decomposition (RobRSVD) method for analyzing two-way functional data. The research is motivated by the application of modeling human mortality as a smooth two-way function of age group and year. The RobRSVD is formulated as a penalized loss minimization problem where a robust loss function is used to measure the reconstruction error of a low-rank matrix approximation of the data, and an appropriately defined two-way roughness penalty function is used to ensure smoothness along each of the two functional domains. By viewing the minimization problem as two conditional regularized robust regressions, we develop a fast iterative reweighted least squares algorithm to implement the method. Our implem...
A novel penalty for the proportional hazards model under the interval-censored failure time data str...
This paper investigates a high-dimensional vector-autoregressive (VAR) model in mortality modeling a...
Estimating a patient's mortality risk is important in making treatment decisions. Survival trees are...
We develop a robust regularized singular value decomposition (RobRSVD) method for analyzing two-way ...
Two-way functional data consist of a data matrix whose row and column domains are both structured, f...
Robust statistics is an extension of classical statistics that specifically takes into account the c...
Summary The need for analyzing failure time data with high-dimensional covariates arises in investig...
The goal of this thesis is to develop a statistical procedure for selecting pertinent predictors amo...
In this work, we develop efficient solvers for linear inverse problems based on randomized singular ...
International audienceTo estimate a low rank matrix from noisy observations, truncated singular valu...
The eld of robust statistics [3, 4] is concerned with estimation problems in which the data contains...
The notion of developing statistical methods in machine learning which are robust to adversarial per...
We discuss some computationally efficient procedures for robust variable selection in linear regress...
This thesis by publication is built around three articles which are at different stages of publicati...
AbstractThis paper considers the question of the stable determination of the death rate λ in the fun...
A novel penalty for the proportional hazards model under the interval-censored failure time data str...
This paper investigates a high-dimensional vector-autoregressive (VAR) model in mortality modeling a...
Estimating a patient's mortality risk is important in making treatment decisions. Survival trees are...
We develop a robust regularized singular value decomposition (RobRSVD) method for analyzing two-way ...
Two-way functional data consist of a data matrix whose row and column domains are both structured, f...
Robust statistics is an extension of classical statistics that specifically takes into account the c...
Summary The need for analyzing failure time data with high-dimensional covariates arises in investig...
The goal of this thesis is to develop a statistical procedure for selecting pertinent predictors amo...
In this work, we develop efficient solvers for linear inverse problems based on randomized singular ...
International audienceTo estimate a low rank matrix from noisy observations, truncated singular valu...
The eld of robust statistics [3, 4] is concerned with estimation problems in which the data contains...
The notion of developing statistical methods in machine learning which are robust to adversarial per...
We discuss some computationally efficient procedures for robust variable selection in linear regress...
This thesis by publication is built around three articles which are at different stages of publicati...
AbstractThis paper considers the question of the stable determination of the death rate λ in the fun...
A novel penalty for the proportional hazards model under the interval-censored failure time data str...
This paper investigates a high-dimensional vector-autoregressive (VAR) model in mortality modeling a...
Estimating a patient's mortality risk is important in making treatment decisions. Survival trees are...