In this paper we present a new entropy measure to grow decision trees. This measure has the characteristic to be asymmetric, allowing the user to grow trees which better correspond to his expectation in terms of recall and precision on each class. Then we propose decision rules adapted to such trees. Experiments have been realized on real medical data from breast cancer screening units
International audienceIn data mining, large differences in prior class probabilities known as the cl...
International audienceIn data mining, large differences in prior class probabilities known as the cl...
International audienceDealing with skewed class distribution and cost- sensitive data has been recog...
In this paper we present a new entropy measure to grow decision trees. This measure has the characte...
In this paper we present a new entropy measure to grow decision trees. This measure has the characte...
Many algorithms of machine learning use an entropy measure as optimization criterion. Among the wide...
Entropy gain is widely used for learning decision trees. However, as we go deeper downward the tree,...
International audienceEntropy gain is widely used for learning decision trees. However, as we go dee...
ABSTRACT. We introduce an extension of the notion of Shannon conditional entropy to a more general f...
ABSTRACT. We introduce an extension of the notion of Shannon conditional entropy to a more general f...
In this paper, we consider decision trees that use both conventional queries based on one attribute ...
International audienceIn data mining, large differences in prior class probabilities known as the cl...
International audienceDealing with skewed class distribution and cost- sensitive data has been recog...
International audienceDealing with skewed class distribution and cost- sensitive data has been recog...
International audienceDealing with skewed class distribution and cost- sensitive data has been recog...
International audienceIn data mining, large differences in prior class probabilities known as the cl...
International audienceIn data mining, large differences in prior class probabilities known as the cl...
International audienceDealing with skewed class distribution and cost- sensitive data has been recog...
In this paper we present a new entropy measure to grow decision trees. This measure has the characte...
In this paper we present a new entropy measure to grow decision trees. This measure has the characte...
Many algorithms of machine learning use an entropy measure as optimization criterion. Among the wide...
Entropy gain is widely used for learning decision trees. However, as we go deeper downward the tree,...
International audienceEntropy gain is widely used for learning decision trees. However, as we go dee...
ABSTRACT. We introduce an extension of the notion of Shannon conditional entropy to a more general f...
ABSTRACT. We introduce an extension of the notion of Shannon conditional entropy to a more general f...
In this paper, we consider decision trees that use both conventional queries based on one attribute ...
International audienceIn data mining, large differences in prior class probabilities known as the cl...
International audienceDealing with skewed class distribution and cost- sensitive data has been recog...
International audienceDealing with skewed class distribution and cost- sensitive data has been recog...
International audienceDealing with skewed class distribution and cost- sensitive data has been recog...
International audienceIn data mining, large differences in prior class probabilities known as the cl...
International audienceIn data mining, large differences in prior class probabilities known as the cl...
International audienceDealing with skewed class distribution and cost- sensitive data has been recog...