We give a commentary on the challenges of big data for Statistics. We then narrow our discussion to one of those challenges: dimension reduction. This leads to consideration of one particular dimension reduction method—partial least-squares (PLS) regression—for prediction in big high-dimensional regressions where the sample size and the number of predictors are both large. We show that in some regression contexts single-component PLS predictions converge at the usual root-n rate as n,p → ∞ regardless of the relationship between the sample size n and number of predictors p. Asymptotically, PLS predictions then behave as regression predictions in the usual context where p is fixed and n→ ∞ These results support the conjecture that PLS regress...
Dimension reduction is a crucial aspect of modern data science, offering computational efficiency, i...
Nowadays, data is extremely growing very fast to become “BIG DATA”, anyvoluminous amount of structur...
Nowadays, data analysis applied to high dimension has arisen. The edification of high-dimensional da...
We study the asymptotic behavior of a class of methods for sufficient dimension reduction in high-di...
University of Minnesota Ph.D. dissertation. May 2009. Major: Statistics. Advisor: Ralph Dennis Cook....
Dimension reduction for regression is a prominent issue today because technological advances now all...
Dimension reduction techniques are important in the problem of regression and prediction when the no...
This thesis focuses on the investigation of partial least squares (PLS) method- ology to deal with h...
International audienceMotivation: In some prediction analyses, predictors have a natural grouping st...
Volume 56 ; Print ISBN : 978-1-4614-8282-6Partial least squares (PLS) regression combines dimensiona...
It has long been emphasized that standard PLS regression algorithms like NIPALS and SIMPLS are not s...
International audienceHigh dimensional data means that the number of variables p is far larger than ...
Abstract Partial least squares (PLS) regression combines dimensionality reduction and prediction usi...
In this paper we demonstrate that a higher-ranking principal component of the predictor tends to hav...
We propose a new nonparametric regression method for high-dimensional data, nonlinear partial least ...
Dimension reduction is a crucial aspect of modern data science, offering computational efficiency, i...
Nowadays, data is extremely growing very fast to become “BIG DATA”, anyvoluminous amount of structur...
Nowadays, data analysis applied to high dimension has arisen. The edification of high-dimensional da...
We study the asymptotic behavior of a class of methods for sufficient dimension reduction in high-di...
University of Minnesota Ph.D. dissertation. May 2009. Major: Statistics. Advisor: Ralph Dennis Cook....
Dimension reduction for regression is a prominent issue today because technological advances now all...
Dimension reduction techniques are important in the problem of regression and prediction when the no...
This thesis focuses on the investigation of partial least squares (PLS) method- ology to deal with h...
International audienceMotivation: In some prediction analyses, predictors have a natural grouping st...
Volume 56 ; Print ISBN : 978-1-4614-8282-6Partial least squares (PLS) regression combines dimensiona...
It has long been emphasized that standard PLS regression algorithms like NIPALS and SIMPLS are not s...
International audienceHigh dimensional data means that the number of variables p is far larger than ...
Abstract Partial least squares (PLS) regression combines dimensionality reduction and prediction usi...
In this paper we demonstrate that a higher-ranking principal component of the predictor tends to hav...
We propose a new nonparametric regression method for high-dimensional data, nonlinear partial least ...
Dimension reduction is a crucial aspect of modern data science, offering computational efficiency, i...
Nowadays, data is extremely growing very fast to become “BIG DATA”, anyvoluminous amount of structur...
Nowadays, data analysis applied to high dimension has arisen. The edification of high-dimensional da...