Cross-validation is a useful and generally applicable technique often employed in machine learning, including decision tree induction. An important disadvantage of straightforward implementations of the technique is their computational overhead. In this paper we show that, for decision trees, the computational overhead of cross-validation can be reduced significantly by integrating the cross-validation with the normal decision tree induction process. We discuss how existing decision tree algorithms can be adapted to this aim, and provide an analysis of the speedups these adaptations may yield. The analysis is supported by experimental results.status: publishe
Decision tree induction is one of the most employed methods to extract knowledge from data, since th...
There has been some recent interest in using machine learning techniques as part of pattern recognit...
peer reviewedOne of the main difficulties with standard top down induction of decision trees comes fr...
Cross-validation is a useful and generally applicable technique often employed in machine learning, ...
Cross-validation is a useful and generally applicable technique often employed in machine learning, ...
Cross-validation is a useful and generally applicable technique often employed in machine learning, ...
In machine learning data usage is the most important criterion than the logic of the program. With v...
Abstract. We evaluate the power of decision tables as a hypothesis space for supervised learning alg...
Machine learning algorithms for supervised learning are in wide use. An important issue in the use o...
Decision trees are one of the most powerful and commonly used supervised learning algorithms in the ...
Background and aims. Machine learning models are trained using appropriate learning algorithm and tr...
Some apparently simple numeric data sets cause significant problems for existing decision tree induc...
. We evaluate the power of decision tables as a hypothesis space for supervised learning algorithms....
The ability to restructure a decision tree efficiently enables a variety of approaches to decision t...
This paper compares five methods for pruning decision trees, developed from sets of examples. When u...
Decision tree induction is one of the most employed methods to extract knowledge from data, since th...
There has been some recent interest in using machine learning techniques as part of pattern recognit...
peer reviewedOne of the main difficulties with standard top down induction of decision trees comes fr...
Cross-validation is a useful and generally applicable technique often employed in machine learning, ...
Cross-validation is a useful and generally applicable technique often employed in machine learning, ...
Cross-validation is a useful and generally applicable technique often employed in machine learning, ...
In machine learning data usage is the most important criterion than the logic of the program. With v...
Abstract. We evaluate the power of decision tables as a hypothesis space for supervised learning alg...
Machine learning algorithms for supervised learning are in wide use. An important issue in the use o...
Decision trees are one of the most powerful and commonly used supervised learning algorithms in the ...
Background and aims. Machine learning models are trained using appropriate learning algorithm and tr...
Some apparently simple numeric data sets cause significant problems for existing decision tree induc...
. We evaluate the power of decision tables as a hypothesis space for supervised learning algorithms....
The ability to restructure a decision tree efficiently enables a variety of approaches to decision t...
This paper compares five methods for pruning decision trees, developed from sets of examples. When u...
Decision tree induction is one of the most employed methods to extract knowledge from data, since th...
There has been some recent interest in using machine learning techniques as part of pattern recognit...
peer reviewedOne of the main difficulties with standard top down induction of decision trees comes fr...