This article describes a new system for induction of oblique decision trees. This system, OC1, combines deterministic hill-climbing with two forms of randomization to find a good oblique split (in the form of a hyperplane) at each node of a decision tree. Oblique decision tree methods are tuned especially for domains in which the attributes are numeric, although they can be adapted to symbolic or mixed symbolic/numeric attributes. We present extensive empirical studies, using both real and artificial data, that analyze OC1's ability to construct oblique trees that are smaller and more accurate than their axis-parallel counterparts. We also examine the benefits of randomization for the construction of oblique decision trees. 1. Introduc...
This paper addresses the issue of the induction of orthogonal, oblique and multivariate decision tr...
Univariate decision trees are classifiers currently used in many data mining applications. This clas...
This paper presents an algorithm for learning oblique decision trees, called HHCART(G). Our decisio...
This article describes a new system for induction of oblique decision trees. This system, OC1, combi...
This paper introduces OC1, a new algorithm for generating multivariate decision trees. Multivariate ...
Abstract-In this paper we present new algorithm for oblique deision tree induction. We propose new c...
Abstract. In the paper, a new evolutionary approach to induction of oblique decision trees is descri...
This paper illustrates the application of evolutionary algorithms (EAs) to the problem of oblique de...
Decision-tree induction algorithms are widely used in knowledge discovery and data mining, specially...
In this paper, we present a new algorithm for learning oblique decision trees. Most of the current d...
Decision trees in random forests use a single feature in non-leaf nodes to split the data. Such spli...
In this paper we present a novel algorithm for learning oblique decision trees. Most of the current ...
Decision trees (DTs) play a vital role in statistical modelling. Simplicity and interpretability of ...
In this paper, we present methods for learning and pruning oblique decision trees, We propose a new ...
Decision trees have attracted much attention during the past decades. Previous decision trees includ...
This paper addresses the issue of the induction of orthogonal, oblique and multivariate decision tr...
Univariate decision trees are classifiers currently used in many data mining applications. This clas...
This paper presents an algorithm for learning oblique decision trees, called HHCART(G). Our decisio...
This article describes a new system for induction of oblique decision trees. This system, OC1, combi...
This paper introduces OC1, a new algorithm for generating multivariate decision trees. Multivariate ...
Abstract-In this paper we present new algorithm for oblique deision tree induction. We propose new c...
Abstract. In the paper, a new evolutionary approach to induction of oblique decision trees is descri...
This paper illustrates the application of evolutionary algorithms (EAs) to the problem of oblique de...
Decision-tree induction algorithms are widely used in knowledge discovery and data mining, specially...
In this paper, we present a new algorithm for learning oblique decision trees. Most of the current d...
Decision trees in random forests use a single feature in non-leaf nodes to split the data. Such spli...
In this paper we present a novel algorithm for learning oblique decision trees. Most of the current ...
Decision trees (DTs) play a vital role in statistical modelling. Simplicity and interpretability of ...
In this paper, we present methods for learning and pruning oblique decision trees, We propose a new ...
Decision trees have attracted much attention during the past decades. Previous decision trees includ...
This paper addresses the issue of the induction of orthogonal, oblique and multivariate decision tr...
Univariate decision trees are classifiers currently used in many data mining applications. This clas...
This paper presents an algorithm for learning oblique decision trees, called HHCART(G). Our decisio...