Associative classification is a promising technique to build accurate classifiers. However, in large or correlated data sets, association rule mining may yield huge rule sets. Hence, several pruning techniques have been proposed to select a small subset of high-quality rules. Since the availability of a “rich” rule set may improve the accuracy of the classifier, we argue that rule pruning should be reduced to a minimum. The L3 associative classifier is built by means of a lazy pruning technique that discards exclusively rules that only misclassify training data. The classification of unlabeled data is performed in two steps. A small subset of high-quality rules is first considered. When this set is not able to classify the data, a larger ru...
Associative classification is a branch in data mining that employs association rule discovery method...
Associative classification (AC) is a branch in data mining that utilises association rule discovery ...
Associative classification mining is a promising approach in data mining that utilizes the associat...
Classification and association rule discovery are important data mining tasks. Using association rul...
Association rule discovery and classification are common data mining tasks. Integrating association ...
ABSTRACT: Association rule discovery and classification are common data mining tasks. Integrating as...
Associative classification is a well-known technique for struc-tured data classification. Most previ...
Decision tree classifiers perform a greedy search for rules by heuristically selecting the most prom...
Recent studies in data mining revealed that Associative Classification (AC) data mining approach bui...
Abstract. Classification aims to map a data instance to its appropriate class (or label). In associa...
Associative classification integrates association rule and classification in data mining to build cl...
In this paper, the problem of rule pruning in associative text categorisation is investigated. We pr...
The study on the use of association rules for the purpose of classification gave rise to a new field...
In Associative classification (AC), the step of rule generation is necessarily exhaustive because of...
Associative classification is a promising approach that utilises association rule mining to build cl...
Associative classification is a branch in data mining that employs association rule discovery method...
Associative classification (AC) is a branch in data mining that utilises association rule discovery ...
Associative classification mining is a promising approach in data mining that utilizes the associat...
Classification and association rule discovery are important data mining tasks. Using association rul...
Association rule discovery and classification are common data mining tasks. Integrating association ...
ABSTRACT: Association rule discovery and classification are common data mining tasks. Integrating as...
Associative classification is a well-known technique for struc-tured data classification. Most previ...
Decision tree classifiers perform a greedy search for rules by heuristically selecting the most prom...
Recent studies in data mining revealed that Associative Classification (AC) data mining approach bui...
Abstract. Classification aims to map a data instance to its appropriate class (or label). In associa...
Associative classification integrates association rule and classification in data mining to build cl...
In this paper, the problem of rule pruning in associative text categorisation is investigated. We pr...
The study on the use of association rules for the purpose of classification gave rise to a new field...
In Associative classification (AC), the step of rule generation is necessarily exhaustive because of...
Associative classification is a promising approach that utilises association rule mining to build cl...
Associative classification is a branch in data mining that employs association rule discovery method...
Associative classification (AC) is a branch in data mining that utilises association rule discovery ...
Associative classification mining is a promising approach in data mining that utilizes the associat...