Most of existing methods of functional data classification deal with one or a few processes. In this work we tackle classification of high-dimensional functional data, in which each observation is potentially associated with a large number of functional processes, p, which is comparable to or even much larger than the sample size n. The challenge arises from the complex inter-correlation structures among multiple functional processes, instead of a diagonal correlation for a single process. Since truncation is often needed for approximation in functional data, another difficulty stems from the fact that the discriminant set of the infinite-dimensional optimal classifier may be different from that of the truncated optimal classifier, when mul...
Learning the relationship between a response variable (e.g., a quality characteristic) and a set of ...
University of Minnesota Ph.D. dissertation. June 2013. Major: Statistics. Advisor: Hui Zou. 1 comput...
A new type of discriminant space for functional data is presented, com-bining the advantages of a fu...
Linear discriminant analysis is studied when the predictors are data of functional type(curves). Due...
Thesis (Master's)--University of Washington, 2022We introduce a penalized discriminant analysis meth...
Functional linear regression has occupied a central position in the area of functional data analysis...
International audienceIn this paper, we deal with the issue of classifying normally distributed data...
This dissertation is a collection of three papers on the development of statistical methods for vari...
When classification methods are applied to high-dimensional data, selecting a subset of the predicto...
Bayes classifiers for functional data pose a challenge. One difficulty is that probability density f...
Bayes classifiers for functional data pose a challenge. This is because probability density...
A fast nonparametric procedure for classifying functional data is introduced. It consists of a two-s...
From the end of the 80's, the most significant advances in FDA (Functional Data Analysis) have been ...
We consider classification of functional data into two groups by linear classifiers based on one-dim...
A popular approach for classifying functional data is based on the distances from the function or it...
Learning the relationship between a response variable (e.g., a quality characteristic) and a set of ...
University of Minnesota Ph.D. dissertation. June 2013. Major: Statistics. Advisor: Hui Zou. 1 comput...
A new type of discriminant space for functional data is presented, com-bining the advantages of a fu...
Linear discriminant analysis is studied when the predictors are data of functional type(curves). Due...
Thesis (Master's)--University of Washington, 2022We introduce a penalized discriminant analysis meth...
Functional linear regression has occupied a central position in the area of functional data analysis...
International audienceIn this paper, we deal with the issue of classifying normally distributed data...
This dissertation is a collection of three papers on the development of statistical methods for vari...
When classification methods are applied to high-dimensional data, selecting a subset of the predicto...
Bayes classifiers for functional data pose a challenge. One difficulty is that probability density f...
Bayes classifiers for functional data pose a challenge. This is because probability density...
A fast nonparametric procedure for classifying functional data is introduced. It consists of a two-s...
From the end of the 80's, the most significant advances in FDA (Functional Data Analysis) have been ...
We consider classification of functional data into two groups by linear classifiers based on one-dim...
A popular approach for classifying functional data is based on the distances from the function or it...
Learning the relationship between a response variable (e.g., a quality characteristic) and a set of ...
University of Minnesota Ph.D. dissertation. June 2013. Major: Statistics. Advisor: Hui Zou. 1 comput...
A new type of discriminant space for functional data is presented, com-bining the advantages of a fu...