The search space for the feature selection problem in decision tree learning is the lattice of subsets of the available features. We provide an exact enumeration procedure of the subsets that lead to all and only the distinct decision trees. The procedure can be adopted to prune the search space of complete and heuristics search methods in wrapper models for feature selection. Based on this, we design a computational optimization of the sequential backward elimination heuristics with a performance improvement of up to 100x
We describe five heuristic techniques to optimize decision trees of uniform depth, that is, to minim...
The classification learning task requires selection of a subset of features to represent patterns to...
We develop the first fully dynamic algorithm that maintains a decision tree over an arbitrary sequen...
The search space for the feature selection problem in decision tree learning is the lattice of subse...
The construction of optimal decision trees for the problem stated within can be accomplished by an e...
In the feature subset selection problem, a learning algorithm is faced with the problem of selecting...
AbstractFeature selection is a technique to choose a subset of variables from the multidimensional d...
In the wrapper approach to feature subset selection, a search for an optimal set of features is made...
This dissertation proposes a feature subset selection method that combines several known techniques....
AbstractIn the feature subset selection problem, a learning algorithm is faced with the problem of s...
Decision trees are often used for decision support since they are fast to train, easy to understand ...
Decision trees are often used for decision support since they are fast to train, easy to understand ...
Abstract. This paper addresses the issue of the decision tree induction. We treat this task as a sea...
Abstract—We used decision tree as a model to discover the knowledge from multi-label decision tables...
This paper presents a study of one particular problem of decision tree induction, namely (post-)prun...
We describe five heuristic techniques to optimize decision trees of uniform depth, that is, to minim...
The classification learning task requires selection of a subset of features to represent patterns to...
We develop the first fully dynamic algorithm that maintains a decision tree over an arbitrary sequen...
The search space for the feature selection problem in decision tree learning is the lattice of subse...
The construction of optimal decision trees for the problem stated within can be accomplished by an e...
In the feature subset selection problem, a learning algorithm is faced with the problem of selecting...
AbstractFeature selection is a technique to choose a subset of variables from the multidimensional d...
In the wrapper approach to feature subset selection, a search for an optimal set of features is made...
This dissertation proposes a feature subset selection method that combines several known techniques....
AbstractIn the feature subset selection problem, a learning algorithm is faced with the problem of s...
Decision trees are often used for decision support since they are fast to train, easy to understand ...
Decision trees are often used for decision support since they are fast to train, easy to understand ...
Abstract. This paper addresses the issue of the decision tree induction. We treat this task as a sea...
Abstract—We used decision tree as a model to discover the knowledge from multi-label decision tables...
This paper presents a study of one particular problem of decision tree induction, namely (post-)prun...
We describe five heuristic techniques to optimize decision trees of uniform depth, that is, to minim...
The classification learning task requires selection of a subset of features to represent patterns to...
We develop the first fully dynamic algorithm that maintains a decision tree over an arbitrary sequen...