A tree model with low time complexity can support the application of artificial intelligence to industrial systems. Variable selection based tree learning algorithms are more time efficient than existing Classification and Regression Tree (CART) algorithms. To our best knowledge, there is no attempt to deal with categorical input variable in variable selection based multi-output tree learning. Also, in the case of multi-output regression tree, a conventional variable selection based algorithm is not suitable to large datasets. We propose a mutual information-based multi-output tree learning algorithm that consists of variable selection and split optimization. The proposed method discretizes each variable based on k-means into 2-4 clusters a...
[[abstract]]A variable selection method for constructing decision trees with rank data is proposed. ...
The objective of this thesis is to design a new classification-tree algorithm which will outperform ...
Abstract. This paper focuses on how to perform the unsupervised clus-tering of tree structures in an...
Induction of decision trees and regression trees is a powerful technique not only for performing ord...
Multitask learning is an approach to machine learning, in which algorithm learns to solve multiple r...
Abstract — One of the most informative measures for feature extraction (FE) is mutual information (M...
One of the biggest problem that many data analysis techniques have to deal with nowadays is Combinat...
Feature selection is a valuable technique in data analysis for information-preserving data reduction...
State-of-the-art decision tree methods apply heuristics recursively to create each split in isolatio...
Part IV: ICT and Emerging Technologies in Production ManagementInternational audienceThe main advant...
We focus on developing improvements to algorithms that generate decision trees from training data. T...
Machine learning techniques are becoming indispensable tools for extracting useful information. Amon...
Regression analysis is a statistical procedure that fits a mathematical function to a set of data in...
In Artificial Intelligence (AI) field, decision trees have gained certain importance due to their ef...
International audienceDecision tree learning is a widely used approach in machine learning, favoured...
[[abstract]]A variable selection method for constructing decision trees with rank data is proposed. ...
The objective of this thesis is to design a new classification-tree algorithm which will outperform ...
Abstract. This paper focuses on how to perform the unsupervised clus-tering of tree structures in an...
Induction of decision trees and regression trees is a powerful technique not only for performing ord...
Multitask learning is an approach to machine learning, in which algorithm learns to solve multiple r...
Abstract — One of the most informative measures for feature extraction (FE) is mutual information (M...
One of the biggest problem that many data analysis techniques have to deal with nowadays is Combinat...
Feature selection is a valuable technique in data analysis for information-preserving data reduction...
State-of-the-art decision tree methods apply heuristics recursively to create each split in isolatio...
Part IV: ICT and Emerging Technologies in Production ManagementInternational audienceThe main advant...
We focus on developing improvements to algorithms that generate decision trees from training data. T...
Machine learning techniques are becoming indispensable tools for extracting useful information. Amon...
Regression analysis is a statistical procedure that fits a mathematical function to a set of data in...
In Artificial Intelligence (AI) field, decision trees have gained certain importance due to their ef...
International audienceDecision tree learning is a widely used approach in machine learning, favoured...
[[abstract]]A variable selection method for constructing decision trees with rank data is proposed. ...
The objective of this thesis is to design a new classification-tree algorithm which will outperform ...
Abstract. This paper focuses on how to perform the unsupervised clus-tering of tree structures in an...