Prism is a modular classification rule generation method based on the ‘separate and conquer’ approach that is alternative to the rule induction approach using decision trees also known as ‘divide and conquer’. Prism often achieves a similar level of classification accuracy compared with decision trees, but tends to produce a more compact noise tolerant set of classification rules. As with other classification rule generation methods, a principle problem arising with Prism is that of overfitting due to over-specialised rules. In addition, over-specialised rules increase the associated computational complexity. These problems can be solved by pruning methods. For the Prism method, two pruning algorithms have been introduced recently for redu...
Abstract. Inducing rules from very large datasets is one of the most challenging areas in data minin...
decision tree classifiers in two learning situations: minimizing loss and probability estimation. In...
Recent studies in data mining revealed that Associative Classification (AC) data mining approach bui...
Learning of classification rules is a popular approach of machine learning, which can be achieved th...
Abstract. The automatic induction of classification rules from examples is an important technique us...
Abstract: The automatic induction of classification rules from examples is an important technique us...
Generating classification rules from data often leads to large sets of rules that need to be pruned....
A complexity based pruning procedure for classification trees is described, and bounds on its finite...
Rule learning is a popular branch of machine learning, which can provide accurate and interpretable ...
Rule-based classification is considered an important task of data classification.The ant-mining rule...
Cost complexity pruning of classification trees as introduced in the Classification and Regression T...
When learning is based on noisy data, the induced rule sets have a tendency to overfit the training ...
Associative classification integrates association rule and classification in data mining to build cl...
Pruning is one of the key procedures in training decision tree classifiers. It removes trivial rules...
The pruning phase is one of the necessary steps in decision tree induction. Existing pruning algorit...
Abstract. Inducing rules from very large datasets is one of the most challenging areas in data minin...
decision tree classifiers in two learning situations: minimizing loss and probability estimation. In...
Recent studies in data mining revealed that Associative Classification (AC) data mining approach bui...
Learning of classification rules is a popular approach of machine learning, which can be achieved th...
Abstract. The automatic induction of classification rules from examples is an important technique us...
Abstract: The automatic induction of classification rules from examples is an important technique us...
Generating classification rules from data often leads to large sets of rules that need to be pruned....
A complexity based pruning procedure for classification trees is described, and bounds on its finite...
Rule learning is a popular branch of machine learning, which can provide accurate and interpretable ...
Rule-based classification is considered an important task of data classification.The ant-mining rule...
Cost complexity pruning of classification trees as introduced in the Classification and Regression T...
When learning is based on noisy data, the induced rule sets have a tendency to overfit the training ...
Associative classification integrates association rule and classification in data mining to build cl...
Pruning is one of the key procedures in training decision tree classifiers. It removes trivial rules...
The pruning phase is one of the necessary steps in decision tree induction. Existing pruning algorit...
Abstract. Inducing rules from very large datasets is one of the most challenging areas in data minin...
decision tree classifiers in two learning situations: minimizing loss and probability estimation. In...
Recent studies in data mining revealed that Associative Classification (AC) data mining approach bui...