The classification tree is an attractive method for classification as the predictions it makes are more transparent than most other classifiers. The most widely accepted approaches to tree-growth use axis-parallel splits to partition continuous attributes. Since the interpretability of a tree diminishes as it grows larger, researchers have sought ways of growing trees with oblique splits as they are better able to partition observations. The focus of this thesis is to grow oblique trees in a fast and deterministic manner and to propose ways of making them more interpretable. Finding good oblique splits is a computationally difficult task. Various authors have proposed ways of doing this by either performing stochastic searches or by solvin...
Abstract-In this paper we present new algorithm for oblique deision tree induction. We propose new c...
Abstract. In this paper we propose a new evolutionary algorithm for global induction of oblique mode...
Classication and Regression Trees (CART) are a method of structured prediction widely used in machin...
The classification tree is an attractive method for classification as the predictions it makes are m...
This article describes a new system for induction of oblique decision trees. This system, OC1, combi...
This article describes a new system for induction of oblique decision trees. This system, OC1, combi...
This work presents an enhancement to the classification tree algorithm which forms the basis for Ran...
Decision trees (DTs) play a vital role in statistical modelling. Simplicity and interpretability of ...
We develop a theoretical framework for the analysis of oblique decision trees, where the splits at e...
In this paper, we present methods for learning and pruning oblique decision trees, We propose a new ...
Univariate decision tree induction methods for multiclass classification problems such as CART, C4.5...
Decision-tree induction algorithms are widely used in knowledge discovery and data mining, specially...
Decision trees in random forests use a single feature in non-leaf nodes to split the data. Such spli...
This paper is concerned with the construction of regression and classification trees that are more a...
This thesis investigates the problem of growing decision trees from data, for the purposes of classi...
Abstract-In this paper we present new algorithm for oblique deision tree induction. We propose new c...
Abstract. In this paper we propose a new evolutionary algorithm for global induction of oblique mode...
Classication and Regression Trees (CART) are a method of structured prediction widely used in machin...
The classification tree is an attractive method for classification as the predictions it makes are m...
This article describes a new system for induction of oblique decision trees. This system, OC1, combi...
This article describes a new system for induction of oblique decision trees. This system, OC1, combi...
This work presents an enhancement to the classification tree algorithm which forms the basis for Ran...
Decision trees (DTs) play a vital role in statistical modelling. Simplicity and interpretability of ...
We develop a theoretical framework for the analysis of oblique decision trees, where the splits at e...
In this paper, we present methods for learning and pruning oblique decision trees, We propose a new ...
Univariate decision tree induction methods for multiclass classification problems such as CART, C4.5...
Decision-tree induction algorithms are widely used in knowledge discovery and data mining, specially...
Decision trees in random forests use a single feature in non-leaf nodes to split the data. Such spli...
This paper is concerned with the construction of regression and classification trees that are more a...
This thesis investigates the problem of growing decision trees from data, for the purposes of classi...
Abstract-In this paper we present new algorithm for oblique deision tree induction. We propose new c...
Abstract. In this paper we propose a new evolutionary algorithm for global induction of oblique mode...
Classication and Regression Trees (CART) are a method of structured prediction widely used in machin...