Optimal decision trees are not easily improvable in terms of accuracy. However, improving the pre-processing of underlying dataset can be the answer to creating more accurate decision trees. In this paper, multiple methods of binarising datasets are considered and the resulting decision trees compared. The binarisation is divided into two stages: discretisation and encoding, with various algorithms considered for both of the stages. Additionally, processing the data during the decision tree building, referred to as online processing, instead of beforehand, was considered. It was discovered that for smaller datasets, unsupervised discretisation was preferred, and extending one-hot encoding to also consider multiple categories at once as targ...
Abstract: In this paper, several algorithms have been developed for building decision trees from lar...
Data mining is for new pattern to discover. Data mining is having major functionalities: classificat...
Abstract: The construction of efficient decision and classification trees is a fundamental task in B...
This thesis investigates the problem of growing decision trees from data, for the purposes of classi...
Decision tree learning is a widely used approach in machine learning, favoured in applications that ...
Abstract: This paper describes boosting – a method, which can improve results of classification algo...
State-of-the-art decision tree methods apply heuristics recursively to create each split in isolatio...
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 ...
Machine learning algorithms are used to learn models capable of predicting on unseen data. In recent...
In this paper, we address the issue of evaluating decision trees generated from training examples by...
peer reviewedThis paper investigates enhancements of decision tree bagging which mainly aims at impr...
We improve the analysis of the decision tree boosting algorithm proposed by Mansour and McAllester. ...
Decision trees are fundamental in machine learning due to their interpretability and versatility. Th...
Abstract: Decision tree study is a predictive modelling tool that is used over many grounds. It is c...
Abstract: In this paper, several algorithms have been developed for building decision trees from lar...
Data mining is for new pattern to discover. Data mining is having major functionalities: classificat...
Abstract: The construction of efficient decision and classification trees is a fundamental task in B...
This thesis investigates the problem of growing decision trees from data, for the purposes of classi...
Decision tree learning is a widely used approach in machine learning, favoured in applications that ...
Abstract: This paper describes boosting – a method, which can improve results of classification algo...
State-of-the-art decision tree methods apply heuristics recursively to create each split in isolatio...
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 ...
Machine learning algorithms are used to learn models capable of predicting on unseen data. In recent...
In this paper, we address the issue of evaluating decision trees generated from training examples by...
peer reviewedThis paper investigates enhancements of decision tree bagging which mainly aims at impr...
We improve the analysis of the decision tree boosting algorithm proposed by Mansour and McAllester. ...
Decision trees are fundamental in machine learning due to their interpretability and versatility. Th...
Abstract: Decision tree study is a predictive modelling tool that is used over many grounds. It is c...
Abstract: In this paper, several algorithms have been developed for building decision trees from lar...
Data mining is for new pattern to discover. Data mining is having major functionalities: classificat...
Abstract: The construction of efficient decision and classification trees is a fundamental task in B...