In this paper, the binary classification problem of multi‑dimensional functional data is considered. To solve this problem a regression technique based on functional logistic regression model is used. This model is re‑expressed as a particular logistic regression model by using the basis expansions of functional coefficients and explanatory variables. Based on re‑expressed model, a classification rule is proposed. To handle with outlying observations, robust methods of estimation of unknown parameters are also considered. Numerical experiments suggest that the proposed methods may behave satisfactory in practice
[[abstract]]Logistic regression algorithm and SVM algorithm are two well-known classification algori...
The Global COE Program Math-for-Industry Education & Research HubグローバルCOEプログラム「マス・フォア・インダストリ教育研究拠点」L...
Whenever there is a relationship between the explanatory variables (X_S). This relationship causes m...
In this paper, the binary classification problem of multi‑dimensional functional data is considered....
Functional logistic regression has been developed to forecast a binary response variable from a func...
The main ideas behind the classic multivariate logistic regression model make sense when translated ...
Multi-class classification methods based on both labeled and unlabeled functional data sets are disc...
Robust estimators are indispensable tools in statistics. Frequently, a (small) part of the data samp...
Darbs veltīts loģistiskās regresijas izpētei, kas ir viena no populārākajām metodēm, risinot klasifi...
Robust estimators are indispensable tools in statistics. Frequently, a (small) part of the data samp...
Data in the form of a continuous vector function on a given interval are referred to as multivariate...
In this paper robustness properties of the maximum likelihood estimator (MLE) and several robust est...
Wydział Matematyki i Informatyki: Zakład Rachunku Prawdopodobieństwa i Statystyki MatematycznejW kla...
In many statistical applications data are curves measured as functions of a continuous parameter as...
Logistic Regression, being both a predictive and an explanatory method, is one of the most commonly ...
[[abstract]]Logistic regression algorithm and SVM algorithm are two well-known classification algori...
The Global COE Program Math-for-Industry Education & Research HubグローバルCOEプログラム「マス・フォア・インダストリ教育研究拠点」L...
Whenever there is a relationship between the explanatory variables (X_S). This relationship causes m...
In this paper, the binary classification problem of multi‑dimensional functional data is considered....
Functional logistic regression has been developed to forecast a binary response variable from a func...
The main ideas behind the classic multivariate logistic regression model make sense when translated ...
Multi-class classification methods based on both labeled and unlabeled functional data sets are disc...
Robust estimators are indispensable tools in statistics. Frequently, a (small) part of the data samp...
Darbs veltīts loģistiskās regresijas izpētei, kas ir viena no populārākajām metodēm, risinot klasifi...
Robust estimators are indispensable tools in statistics. Frequently, a (small) part of the data samp...
Data in the form of a continuous vector function on a given interval are referred to as multivariate...
In this paper robustness properties of the maximum likelihood estimator (MLE) and several robust est...
Wydział Matematyki i Informatyki: Zakład Rachunku Prawdopodobieństwa i Statystyki MatematycznejW kla...
In many statistical applications data are curves measured as functions of a continuous parameter as...
Logistic Regression, being both a predictive and an explanatory method, is one of the most commonly ...
[[abstract]]Logistic regression algorithm and SVM algorithm are two well-known classification algori...
The Global COE Program Math-for-Industry Education & Research HubグローバルCOEプログラム「マス・フォア・インダストリ教育研究拠点」L...
Whenever there is a relationship between the explanatory variables (X_S). This relationship causes m...