AbstractKnowledge representation and extraction are very important tasks in data mining. In this work, we proposed a variety of rule-based greedy algorithms that able to obtain knowledge contained in a given dataset as a series of inhibitory rules containing an expression “attribute ≠ value” on the right-hand side. The main goal of this paper is to determine based on rule characteristics, rule length and coverage, whether the proposed rule heuristics are statistically significantly different or not; if so, we aim to identify the best performing rule heuristics for minimization of rule length and maximization of rule coverage.Friedman test with Nemenyi post-hoc are used to compare the greedy algorithms statistically against each other for le...
While many papers propose innovative methods for constructing individual rules in separate-and-conqu...
In this thesis, we focused on the construction of classification models based on association rules. ...
AbstractWe present ELEM2, a machine learning system that induces classification rules from a set of ...
AbstractKnowledge representation and extraction are very important tasks in data mining. In this wor...
In this work, we consider so-called nonredundant inhibitory rules, containing an expression "attribu...
AbstractIn this work, we consider so-called nonredundant inhibitory rules, containing an expression ...
The primary goal of the research reported in this thesis is to identify what criteria are responsibl...
The primary goal of the research reported in this paper is to identify what criteria are responsible...
In the context of data mining, classi cation rule discovering is the task of designing accurate rul...
Today's rule mining algorithms all use greedy approaches to generate rules representing the kno...
Conventional rule learning algorithms aim at finding a set of simple rules, where each rule covers a...
In data mining the accuracy of models are associated with the strength of the rules.However, most ma...
Decision rules are popular form of knowledge representation. From this point of view, length of such...
Association rules are among the most important concepts in data mining. Rules of the form X → Y are...
Machine learning has been studied intensively during the past two decades. One motivation has been t...
While many papers propose innovative methods for constructing individual rules in separate-and-conqu...
In this thesis, we focused on the construction of classification models based on association rules. ...
AbstractWe present ELEM2, a machine learning system that induces classification rules from a set of ...
AbstractKnowledge representation and extraction are very important tasks in data mining. In this wor...
In this work, we consider so-called nonredundant inhibitory rules, containing an expression "attribu...
AbstractIn this work, we consider so-called nonredundant inhibitory rules, containing an expression ...
The primary goal of the research reported in this thesis is to identify what criteria are responsibl...
The primary goal of the research reported in this paper is to identify what criteria are responsible...
In the context of data mining, classi cation rule discovering is the task of designing accurate rul...
Today's rule mining algorithms all use greedy approaches to generate rules representing the kno...
Conventional rule learning algorithms aim at finding a set of simple rules, where each rule covers a...
In data mining the accuracy of models are associated with the strength of the rules.However, most ma...
Decision rules are popular form of knowledge representation. From this point of view, length of such...
Association rules are among the most important concepts in data mining. Rules of the form X → Y are...
Machine learning has been studied intensively during the past two decades. One motivation has been t...
While many papers propose innovative methods for constructing individual rules in separate-and-conqu...
In this thesis, we focused on the construction of classification models based on association rules. ...
AbstractWe present ELEM2, a machine learning system that induces classification rules from a set of ...