International audienceIn data mining, large differences in prior class probabilities known as the class imbalance problem have been reported to hinder the performance of classifiers such as decision trees. Dealing with imbalanced and cost-sensitive data has been recognized as one of the 10 most challenging problems in data mining research. In decision trees learning, many measures are based on the concept of Shannons entropy. A major characteristic of the entropies is that they take their maximal value when the distribution of the modalities of the class variable is uniform. To deal with the class imbalance problem, we proposed an off-centered entropy which takes its maximum value for a distribution fixed by the user. This distribution can ...
We propose a new variant of decision tree for imbal-anced classification. Decision trees use a greed...
Many algorithms of machine learning use an entropy measure as optimization criterion. Among the wide...
In data mining, large differences between multi-class distributions regarded as class imbalance issu...
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 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 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 supervised learning, many measures are based on the concept of entropy. A m...
International audienceIn supervised learning, many measures are based on the concept of entropy. A m...
International audienceIn supervised learning, many measures are based on the concept of entropy. A m...
International audienceIn supervised learning, many measures are based on the concept of entropy. A m...
We propose a new variant of decision tree for imbal-anced classification. Decision trees use a greed...
Many algorithms of machine learning use an entropy measure as optimization criterion. Among the wide...
In data mining, large differences between multi-class distributions regarded as class imbalance issu...
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 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 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 supervised learning, many measures are based on the concept of entropy. A m...
International audienceIn supervised learning, many measures are based on the concept of entropy. A m...
International audienceIn supervised learning, many measures are based on the concept of entropy. A m...
International audienceIn supervised learning, many measures are based on the concept of entropy. A m...
We propose a new variant of decision tree for imbal-anced classification. Decision trees use a greed...
Many algorithms of machine learning use an entropy measure as optimization criterion. Among the wide...
In data mining, large differences between multi-class distributions regarded as class imbalance issu...