The present capabilities for collecting and storing all kinds of data exceed the collective ability to analyze, summarize, and extract knowledge from this data. Knowledge management aims to automatically organize a systematic process of learning. Most meta-learning strategies are based on determining data characteristics, usually by computing data complexity measures. Such measures describe data characteristics related to size, shape, density, and other factors. However, most of the data complexity measures in the literature assume the classification problem is binary (just two decision classes), and that the data is numeric and has no missing values. The main contribution of this paper is that we extend four data complexity measures to ove...
Machines capable of automatic pattern recognition have many fascinating uses. Algorithms for supervi...
Abstract Classification is an important data mining technique with broad applications. Classificatio...
International audienceIn classification problem, several different classes may be partially overlapp...
Abstract: It is useful to measure classification complexity for understanding classification tasks, ...
It is widely accepted that the empirical behavior of classifiers strongly depends on available data....
Classification complexity estimation is one of the fundamental steps in pattern recognition in order...
The evaluation of the intrinsic complexity of a supervised domain plays an important role in devisin...
We describe a method for assessing data set complexity based on the estimation of the underlining pr...
Abstract. We investigate the role of data complexity in the context of binary classification problem...
Abstract Most data complexity studies have focused on characterizing the complexity of the entire da...
Data mining has, over recent years, seen big advances because of the spread of internet, which gener...
When choosing a classification rule, it is important to take into account the amount of sample data ...
Learning a classifier when only knowing the features and marginal distribution of class labels in ea...
In this paper, we introduce two independent hybrid mining algorithms to improve the classification a...
In order to train a classifier that generalizes well, different learning problems, in particu-lar hi...
Machines capable of automatic pattern recognition have many fascinating uses. Algorithms for supervi...
Abstract Classification is an important data mining technique with broad applications. Classificatio...
International audienceIn classification problem, several different classes may be partially overlapp...
Abstract: It is useful to measure classification complexity for understanding classification tasks, ...
It is widely accepted that the empirical behavior of classifiers strongly depends on available data....
Classification complexity estimation is one of the fundamental steps in pattern recognition in order...
The evaluation of the intrinsic complexity of a supervised domain plays an important role in devisin...
We describe a method for assessing data set complexity based on the estimation of the underlining pr...
Abstract. We investigate the role of data complexity in the context of binary classification problem...
Abstract Most data complexity studies have focused on characterizing the complexity of the entire da...
Data mining has, over recent years, seen big advances because of the spread of internet, which gener...
When choosing a classification rule, it is important to take into account the amount of sample data ...
Learning a classifier when only knowing the features and marginal distribution of class labels in ea...
In this paper, we introduce two independent hybrid mining algorithms to improve the classification a...
In order to train a classifier that generalizes well, different learning problems, in particu-lar hi...
Machines capable of automatic pattern recognition have many fascinating uses. Algorithms for supervi...
Abstract Classification is an important data mining technique with broad applications. Classificatio...
International audienceIn classification problem, several different classes may be partially overlapp...