Multi-class classification methods based on both labeled and unlabeled functional data sets are discussed. We present a semi-supervised logistic model for classification in the context of functional data analysis. Unknown parameters in our proposed model are estimated by regularization with the help of EM algorithm. A crucial point in the modeling procedure is the choice of a regularization parameter involved in the semi-supervised functional logistic model. In order to select the adjusted parameter, we introduce model selection criteria from information-theoretic and Bayesian viewpoints. Monte Carlo simulations and a real data analysis are given to examine the effectiveness of our proposed modeling strategy
A novel approach to semi-supervised learning for classical Fisher linear discriminant analysis is pr...
In this thesis, we are concerned with the classification of partially labeled data. By partially lab...
In this thesis, sparse logistic regression models are applied in a set of real world machine learnin...
MI: Global COE Program Education-and-Research Hub for Mathematics-for-IndustryグローバルCOEプログラム「マス・フォア・イ...
MI: Global COE Program Education-and-Research Hub for Mathematics-for-IndustryグローバルCOEプログラム「マス・フォア・イ...
Multi-class logistic discrimination via wavelet-based functionalization and model selection criteri
A nonparametric approach combining generative models and func-tional data analysis is presented in t...
In this paper, the binary classification problem of multi‑dimensional functional data is considered....
In this thesis, we investigate the use of parametric probabilistic models for classification tasks i...
AbstractLogistic discrimination is a partially parametric method for classifying multivariate observ...
Accepted to the 53èmes Journées de la Société Française de StatistiqueInternational audienceWe devel...
Functional datasets are comprised of data that have been sampled discretely over a continuum, usuall...
Global COE Program Education-and-Research Hub for Mathematics-for-IndustryグローバルCOEプログラム「マス・フォア・インダスト...
In this paper, the binary classification problem of multi‑dimensional functional data is considered....
Many classification algorithms are designed on the assumption that the population of interest is sta...
A novel approach to semi-supervised learning for classical Fisher linear discriminant analysis is pr...
In this thesis, we are concerned with the classification of partially labeled data. By partially lab...
In this thesis, sparse logistic regression models are applied in a set of real world machine learnin...
MI: Global COE Program Education-and-Research Hub for Mathematics-for-IndustryグローバルCOEプログラム「マス・フォア・イ...
MI: Global COE Program Education-and-Research Hub for Mathematics-for-IndustryグローバルCOEプログラム「マス・フォア・イ...
Multi-class logistic discrimination via wavelet-based functionalization and model selection criteri
A nonparametric approach combining generative models and func-tional data analysis is presented in t...
In this paper, the binary classification problem of multi‑dimensional functional data is considered....
In this thesis, we investigate the use of parametric probabilistic models for classification tasks i...
AbstractLogistic discrimination is a partially parametric method for classifying multivariate observ...
Accepted to the 53èmes Journées de la Société Française de StatistiqueInternational audienceWe devel...
Functional datasets are comprised of data that have been sampled discretely over a continuum, usuall...
Global COE Program Education-and-Research Hub for Mathematics-for-IndustryグローバルCOEプログラム「マス・フォア・インダスト...
In this paper, the binary classification problem of multi‑dimensional functional data is considered....
Many classification algorithms are designed on the assumption that the population of interest is sta...
A novel approach to semi-supervised learning for classical Fisher linear discriminant analysis is pr...
In this thesis, we are concerned with the classification of partially labeled data. By partially lab...
In this thesis, sparse logistic regression models are applied in a set of real world machine learnin...