For large, real-world inductive learning problems, the number of training examples often must be limited due to the costs associated with procuring, preparing, and storing the training examples and/or the computational costs associated with learning from them. In such circum-stances, one question of practical importance is: if only n training examples can be selected, in what proportion should the classes be represented? In this article we help to answer this question by analyzing, for a fixed training-set size, the relationship between the class distribu-tion of the training data and the performance of classification trees induced from these data. We study twenty-six data sets and, for each, determine the best class distribution for learn...
It is generally recognised that recursive partitioning, as used in the construction of classificatio...
One of the important problems in data mining [SAD + 93] is the classification-rule learning. The c...
. Most existing inductive learning algorithms assume the availability of a training set of labeled ...
For large, real-world inductive learning problems, the number of training examples often must be lim...
For large, real-world inductive learning problems, the number of training examples often must be lim...
For large, real-world inductive learning problems, the number of training examples often must be li...
For large, real-world inductive learning problems, the number of training examples often must be lim...
Many of today's large data sets must be reduced in size before invoking inductive algorithms, due to...
In this article we analyze the effect of class distribution on classifier learning. We begin by des...
Classification is a well-studied problem in machine learning and data mining. Classifier performance...
Tree induction and logistic regression are two standard, off-the-shelf methods for building models f...
Abstract. We propose a novel approach for the estimation of the size of training sets that are neede...
Many real world applications involve highly imbalanced class distribution. Research into learning fr...
Abstract- The classifier built from a data set with a highly skewed class distribution generally pre...
It is generally recognised that recursive partitioning, as used in the construction of classificatio...
It is generally recognised that recursive partitioning, as used in the construction of classificatio...
One of the important problems in data mining [SAD + 93] is the classification-rule learning. The c...
. Most existing inductive learning algorithms assume the availability of a training set of labeled ...
For large, real-world inductive learning problems, the number of training examples often must be lim...
For large, real-world inductive learning problems, the number of training examples often must be lim...
For large, real-world inductive learning problems, the number of training examples often must be li...
For large, real-world inductive learning problems, the number of training examples often must be lim...
Many of today's large data sets must be reduced in size before invoking inductive algorithms, due to...
In this article we analyze the effect of class distribution on classifier learning. We begin by des...
Classification is a well-studied problem in machine learning and data mining. Classifier performance...
Tree induction and logistic regression are two standard, off-the-shelf methods for building models f...
Abstract. We propose a novel approach for the estimation of the size of training sets that are neede...
Many real world applications involve highly imbalanced class distribution. Research into learning fr...
Abstract- The classifier built from a data set with a highly skewed class distribution generally pre...
It is generally recognised that recursive partitioning, as used in the construction of classificatio...
It is generally recognised that recursive partitioning, as used in the construction of classificatio...
One of the important problems in data mining [SAD + 93] is the classification-rule learning. The c...
. Most existing inductive learning algorithms assume the availability of a training set of labeled ...