The use of image covariates to build a classification model has lots of impact in various fields, such as computer science, medicine, and so on. The aim of this paper is to develop an estimation method for logistic regression model with image covariates. We propose a novel regularized estimation approach, where the regularization is a combination of L1 regularization and Sobolev norm regularization. The L1 penalty can perform variable selection, while the Sobolev norm penalty can capture the shape edges information of image data. We develop an efficient algorithm for the optimization problem. We also establish a nonasymptotic error bound on parameter estimation. Simulated studies and a real data application demonstrate that our proposed met...
The focus of this thesis is fast and robust adaptations of logistic regression (LR) for data mining ...
[[abstract]]This paper is emphasized on the logistic regression model fit with continuous and catego...
We propose covariance-regularized regression, a family of methods for prediction in high dimensional...
In this thesis, sparse logistic regression models are applied in a set of real world machine learnin...
In this paper, we propose a novel method for sparse logistic regression with non-convex regularizati...
Regularized logistic regression is a useful classification method for problems with few samples and ...
In this paper, we propose a novel method for sparse logistic regression with non-convex reg-ularizat...
In knowledge-based systems, besides obtaining good output prediction accuracy, it is crucial to unde...
Fitting logistic regression models is challenging when their parameters are restricted. In this arti...
In this work we investigate the relationship be-tween Bregman distances and regularized Lo-gistic Re...
Logistic regression has been widely used in classification tasks for many years. Its optimization in...
In the high dimensional setting, we investigate common regularization approaches for fitting logisti...
The problem of sample size estimation is important in medical applications, especially in cases of e...
Proceedings of the International Conference on Science and Science Education August 2015, p. MA.8-12...
We develop a novel covariate ranking and selection algorithm for regularized ordinary logistic regre...
The focus of this thesis is fast and robust adaptations of logistic regression (LR) for data mining ...
[[abstract]]This paper is emphasized on the logistic regression model fit with continuous and catego...
We propose covariance-regularized regression, a family of methods for prediction in high dimensional...
In this thesis, sparse logistic regression models are applied in a set of real world machine learnin...
In this paper, we propose a novel method for sparse logistic regression with non-convex regularizati...
Regularized logistic regression is a useful classification method for problems with few samples and ...
In this paper, we propose a novel method for sparse logistic regression with non-convex reg-ularizat...
In knowledge-based systems, besides obtaining good output prediction accuracy, it is crucial to unde...
Fitting logistic regression models is challenging when their parameters are restricted. In this arti...
In this work we investigate the relationship be-tween Bregman distances and regularized Lo-gistic Re...
Logistic regression has been widely used in classification tasks for many years. Its optimization in...
In the high dimensional setting, we investigate common regularization approaches for fitting logisti...
The problem of sample size estimation is important in medical applications, especially in cases of e...
Proceedings of the International Conference on Science and Science Education August 2015, p. MA.8-12...
We develop a novel covariate ranking and selection algorithm for regularized ordinary logistic regre...
The focus of this thesis is fast and robust adaptations of logistic regression (LR) for data mining ...
[[abstract]]This paper is emphasized on the logistic regression model fit with continuous and catego...
We propose covariance-regularized regression, a family of methods for prediction in high dimensional...