학위논문 (석사)-- 서울대학교 대학원 : 통계학과, 2012. 2. 김우철.Multi class classification is an important topic in real world problems. The most popular strategy in doing multi class classification is classifying all at once based on posterior probability or distance metric. Discriminant analysis, k-nearest neighbors, neural network and multi logit regression are belong to this strategy. Friedman(1996) suggested the a new intuitive approach for the multi class problems: solve each of the two-class problems and combine all the results of pairwise decisions to form a multiclass classifier. Trevor Hastie and Robert Tibshirani(1998) developed this strategy and applied it to many other areas in their studies. Linear discriminants, K nearest neighbors and support v...
Abstract—In this paper we give a survey of the combination of classifiers. We briefly describe basic...
We discuss a strategy for polychotomous classification that involves estimating class probabilities ...
22nd Annual International Scientific Conference on Research for Rural Development -- MAY 18-20, 2016...
The multi-class classification algorithms are widely used by many areas such as machine learning and...
Several supervised learning algorithms are suited to classify instances into a multiclass value spac...
Forest is one of the most important natural resource that correlate to biodiversity, climate, geoche...
Nested dichotomies are a standard statistical technique for tackling certain polytomous classificati...
Accuracy scores of multinomial logistic regression, SVM, and neural network with different number of...
Nested dichotomies are a standard statistical technique for tackling certain polytomous classi cati...
Does simultaneous classification of multiple target variables perform better than building a classif...
M (Statistics), North-West University, Mafikeng CampusThis study compared the performance of two of ...
Abstract. We introduce a new method for building classification models when we have prior knowledge ...
The statistical classification of N individuals into G mutually exclusive groups when the actual gro...
Abstract – Automated text classification has been considered as a vital method to manage and process...
In this paper we show the results of a comparison simulation study for three classification techniqu...
Abstract—In this paper we give a survey of the combination of classifiers. We briefly describe basic...
We discuss a strategy for polychotomous classification that involves estimating class probabilities ...
22nd Annual International Scientific Conference on Research for Rural Development -- MAY 18-20, 2016...
The multi-class classification algorithms are widely used by many areas such as machine learning and...
Several supervised learning algorithms are suited to classify instances into a multiclass value spac...
Forest is one of the most important natural resource that correlate to biodiversity, climate, geoche...
Nested dichotomies are a standard statistical technique for tackling certain polytomous classificati...
Accuracy scores of multinomial logistic regression, SVM, and neural network with different number of...
Nested dichotomies are a standard statistical technique for tackling certain polytomous classi cati...
Does simultaneous classification of multiple target variables perform better than building a classif...
M (Statistics), North-West University, Mafikeng CampusThis study compared the performance of two of ...
Abstract. We introduce a new method for building classification models when we have prior knowledge ...
The statistical classification of N individuals into G mutually exclusive groups when the actual gro...
Abstract – Automated text classification has been considered as a vital method to manage and process...
In this paper we show the results of a comparison simulation study for three classification techniqu...
Abstract—In this paper we give a survey of the combination of classifiers. We briefly describe basic...
We discuss a strategy for polychotomous classification that involves estimating class probabilities ...
22nd Annual International Scientific Conference on Research for Rural Development -- MAY 18-20, 2016...