In high-dimensional data, structured noise caused by observed and unobserved factors affecting multiple target variables simultaneously, imposes a serious challenge for modeling, by masking the often weak signal. Therefore, (1) explaining away the structured noise in multiple-output regression is of paramount importance. Additionally, (2) assumptions about the correlation structure of the regression weights are needed. We note that both can be formulated in a natural way in a latent variable model, in which both the interesting signal and the noise are mediated through the same latent factors. Under this assumption, the signal model then borrows strength from the noise model by encouraging similar effects on correlated targets. We introduce...
Motivated by a practical problem, [Z.W. Cai, P.A. Naik, C.L. Tsai, De-noised least squares estimator...
AbstractMotivated by a practical problem, [Z.W. Cai, P.A. Naik, C.L. Tsai, De-noised least squares e...
A proposal for multivariate regression modeling based on latent predictors (LPs) is presented. The i...
In high-dimensional data, structured noise caused by observed and unobserved factors affecting multi...
In high dimensional statistics, estimation and inference are often done by making use of the underly...
The O2-PLS method is derived from the basic partial least squares projections to latent structures (...
We propose the Factor Augmented (sparse linear) Regression Model (FARM) that not only admits both th...
Analytical understanding of how low-dimensional latent features reveal themselves in large-dimension...
We consider a multivariate time series model which represents a high dimensional vector process as a...
We consider a multivariate time series model which represents a high dimensional vector process as a...
Multi-task prediction methods are widely used to couple regressors or classification models by shari...
Background: A challenge in developing machine learning regression models is that it is difficult to ...
Multiple-output regression models require estimating multiple parameters, one for each output. Struc...
202 pagesThis work first studies the finite-sample properties of the risk of the minimum-norm interp...
This thesis focuses on the investigation of partial least squares (PLS) method- ology to deal with h...
Motivated by a practical problem, [Z.W. Cai, P.A. Naik, C.L. Tsai, De-noised least squares estimator...
AbstractMotivated by a practical problem, [Z.W. Cai, P.A. Naik, C.L. Tsai, De-noised least squares e...
A proposal for multivariate regression modeling based on latent predictors (LPs) is presented. The i...
In high-dimensional data, structured noise caused by observed and unobserved factors affecting multi...
In high dimensional statistics, estimation and inference are often done by making use of the underly...
The O2-PLS method is derived from the basic partial least squares projections to latent structures (...
We propose the Factor Augmented (sparse linear) Regression Model (FARM) that not only admits both th...
Analytical understanding of how low-dimensional latent features reveal themselves in large-dimension...
We consider a multivariate time series model which represents a high dimensional vector process as a...
We consider a multivariate time series model which represents a high dimensional vector process as a...
Multi-task prediction methods are widely used to couple regressors or classification models by shari...
Background: A challenge in developing machine learning regression models is that it is difficult to ...
Multiple-output regression models require estimating multiple parameters, one for each output. Struc...
202 pagesThis work first studies the finite-sample properties of the risk of the minimum-norm interp...
This thesis focuses on the investigation of partial least squares (PLS) method- ology to deal with h...
Motivated by a practical problem, [Z.W. Cai, P.A. Naik, C.L. Tsai, De-noised least squares estimator...
AbstractMotivated by a practical problem, [Z.W. Cai, P.A. Naik, C.L. Tsai, De-noised least squares e...
A proposal for multivariate regression modeling based on latent predictors (LPs) is presented. The i...