Recently, recommendation systems have become an important tool to support and improve decision making for educational purposes. However, developing recommendation systems is far from trivial and there are specific issues associated with individual problems. Low-correlated input features is a problem that influences the overall accuracy of decision tree models. Weak relationship between input features can cause decision trees work inefficiently. This paper reports the use of features grouping method to improve the classification accuracy of decision trees. Such method groups related input features together based on their ontologies. The new inherited features are then used instead as new features to the decision trees. The proposed method wa...
Decision trees are often used for decision support since they are fast to train, easy to understand ...
The aim of the article is to analyse and develop an ontology-based classification system methodology...
Recently, the decision trees have been adopted among the preeminent utilized classification models. ...
Recommendation systems, also known as intelligent decision support systems, have been used to suppor...
Abstract: A new method for decision-tree-based recommender systems is proposed. The proposed method ...
Data mining is an important part of information management technology. Simply put, it is a method to...
Some apparently simple numeric data sets cause significant problems for existing decision tree induc...
Learning Classifier Systems (LCS) are a well-known machine learning method, producing sets of interp...
This article studies data structure investigation possibilities using cluster analysis. Density stru...
Data mining is for new pattern to discover. Data mining is having major functionalities: classificat...
Living in the era of big data, it is crucial to develop and improve techniques that aid in data proc...
One of the general techniques for improving classification accuracy is learning ensembles of classif...
Abstract. The removal of irrelevant or redundant attributes could benefit us in making decisions and...
There is a lot of approaches for data classification problems resolving. The most significant data c...
Decision trees are often used for decision support since they are fast to train, easy to understand ...
Decision trees are often used for decision support since they are fast to train, easy to understand ...
The aim of the article is to analyse and develop an ontology-based classification system methodology...
Recently, the decision trees have been adopted among the preeminent utilized classification models. ...
Recommendation systems, also known as intelligent decision support systems, have been used to suppor...
Abstract: A new method for decision-tree-based recommender systems is proposed. The proposed method ...
Data mining is an important part of information management technology. Simply put, it is a method to...
Some apparently simple numeric data sets cause significant problems for existing decision tree induc...
Learning Classifier Systems (LCS) are a well-known machine learning method, producing sets of interp...
This article studies data structure investigation possibilities using cluster analysis. Density stru...
Data mining is for new pattern to discover. Data mining is having major functionalities: classificat...
Living in the era of big data, it is crucial to develop and improve techniques that aid in data proc...
One of the general techniques for improving classification accuracy is learning ensembles of classif...
Abstract. The removal of irrelevant or redundant attributes could benefit us in making decisions and...
There is a lot of approaches for data classification problems resolving. The most significant data c...
Decision trees are often used for decision support since they are fast to train, easy to understand ...
Decision trees are often used for decision support since they are fast to train, easy to understand ...
The aim of the article is to analyse and develop an ontology-based classification system methodology...
Recently, the decision trees have been adopted among the preeminent utilized classification models. ...