We present a novel method for the construction of decision trees. The method utilises concept lattices in that certain formal concepts of the concept lattice associated to input data are used as nodes of the decision tree constructed from the data. The concept lattice provides global information about natural clusters in the input data, which we use for selection of splitting attributes. The usage of such global information is the main novelty of our approach. Experimental evaluation indicates good performance of our method. We describe the method, experimental results, and a comparison with standard methods on benchmark datasets
The aim of the article is to analyse and thoroughly research the methods of construction of the deci...
One of the tasks of Artificial Intelligence is to model abilities that are generally considered as h...
Abstract. This article introduces a new method of a decision tree construction. Such deci-sion tree ...
We present a novel method for the construction of decision trees. The method utilises concept lattic...
Concept lattices are systems of conceptual clusters, called formal concepts, which are partially ord...
Abstract. The paper presents theorems characterizing concept lattices which happen to be trees after...
Property-oriented concept lattices are systems of conceptual clusters called property-oriented conce...
A machine learning technique called Graph-Based Induction (GBI) efficiently extracts typical pattern...
Some apparently simple numeric data sets cause significant problems for existing decision tree induc...
We focus on developing improvements to algorithms that generate decision trees from training data. T...
A novel first order clustering system, called C 0.5, is presented. It inherits its logical decision ...
In this article we show that there is a strong connection between decision tree learning and local p...
We discuss an approach to constructing composite features during the induction of decision trees. Th...
Taxonomies are exploited to generate improved decision trees. Experiments show very considerable imp...
This thesis investigates the problem of growing decision trees from data, for the purposes of classi...
The aim of the article is to analyse and thoroughly research the methods of construction of the deci...
One of the tasks of Artificial Intelligence is to model abilities that are generally considered as h...
Abstract. This article introduces a new method of a decision tree construction. Such deci-sion tree ...
We present a novel method for the construction of decision trees. The method utilises concept lattic...
Concept lattices are systems of conceptual clusters, called formal concepts, which are partially ord...
Abstract. The paper presents theorems characterizing concept lattices which happen to be trees after...
Property-oriented concept lattices are systems of conceptual clusters called property-oriented conce...
A machine learning technique called Graph-Based Induction (GBI) efficiently extracts typical pattern...
Some apparently simple numeric data sets cause significant problems for existing decision tree induc...
We focus on developing improvements to algorithms that generate decision trees from training data. T...
A novel first order clustering system, called C 0.5, is presented. It inherits its logical decision ...
In this article we show that there is a strong connection between decision tree learning and local p...
We discuss an approach to constructing composite features during the induction of decision trees. Th...
Taxonomies are exploited to generate improved decision trees. Experiments show very considerable imp...
This thesis investigates the problem of growing decision trees from data, for the purposes of classi...
The aim of the article is to analyse and thoroughly research the methods of construction of the deci...
One of the tasks of Artificial Intelligence is to model abilities that are generally considered as h...
Abstract. This article introduces a new method of a decision tree construction. Such deci-sion tree ...