Before applying learning algorithms to datasets, practitioners often globally discretize any numeric attributes. If the algorithm cannot handle numeric attributes directly, prior discretization is essential. Even if it can, prior discretization often accelerates induction, and may produce simpler and more accurate classifiers. As it is generally done, global discretization denies the learning algorithm any chance of taking advantage of the ordering information implicit in numeric attributes. However, a simple transformation of discretized data preserves this information in a form that learners can use. We show that, compared to using the discretized data directly, this transformation significantly increases the accuracy of decision trees ...
7 pagesIn the data mining field, many learning methods -like association rules, Bayesian networks, i...
The two dominant schemes for rule-learning, C4.5 and RIPPER, both operate in two stages. First they ...
AbstractWhen discretization is used for preprocessing datasets in a decision system different repres...
Before applying learning algorithms to datasets, practitioners often globally discretize any numeric...
Before applying learning algorithms to datasets, practitioners often globally discretize any numeric...
Before applying learning algorithms to datasets, practitioners often globally discretize any numeric...
Real-life data usually are presented in databases by real numbers. On the other hand, most inductive...
Real-life data usually are presented in databases by real numbers. On the other hand, most inductive...
AbstractReal-life data usually are presented in databases by real numbers. On the other hand, most i...
Discretization is a common technique to handle numerical attributes in data mining, and it divides c...
Discretization is a common technique to handle numerical attributes in data mining, and it divides c...
AbstractReal-life data usually are presented in databases by real numbers. On the other hand, most i...
Some apparently simple numeric data sets cause significant problems for existing decision tree induc...
Abstract To date, attribute discretization is typically performed by replacing the original set of c...
7 pagesIn the data mining field, many learning methods -like association rules, Bayesian networks, i...
7 pagesIn the data mining field, many learning methods -like association rules, Bayesian networks, i...
The two dominant schemes for rule-learning, C4.5 and RIPPER, both operate in two stages. First they ...
AbstractWhen discretization is used for preprocessing datasets in a decision system different repres...
Before applying learning algorithms to datasets, practitioners often globally discretize any numeric...
Before applying learning algorithms to datasets, practitioners often globally discretize any numeric...
Before applying learning algorithms to datasets, practitioners often globally discretize any numeric...
Real-life data usually are presented in databases by real numbers. On the other hand, most inductive...
Real-life data usually are presented in databases by real numbers. On the other hand, most inductive...
AbstractReal-life data usually are presented in databases by real numbers. On the other hand, most i...
Discretization is a common technique to handle numerical attributes in data mining, and it divides c...
Discretization is a common technique to handle numerical attributes in data mining, and it divides c...
AbstractReal-life data usually are presented in databases by real numbers. On the other hand, most i...
Some apparently simple numeric data sets cause significant problems for existing decision tree induc...
Abstract To date, attribute discretization is typically performed by replacing the original set of c...
7 pagesIn the data mining field, many learning methods -like association rules, Bayesian networks, i...
7 pagesIn the data mining field, many learning methods -like association rules, Bayesian networks, i...
The two dominant schemes for rule-learning, C4.5 and RIPPER, both operate in two stages. First they ...
AbstractWhen discretization is used for preprocessing datasets in a decision system different repres...