Often in supervised learning numerical attributes require special treatment and do not fit the learning scheme as well as one could hope. Nevertheless, they are common in practical tasks and, therefore, need to be taken into account. We characterize the well-behavedness of an evaluation function, a property that guarantees the optimal multi-partition of an arbitrary numerical domain to be defined on boundary points. Well-behavedness reduces the number of candidate cut points that need to be examined in multisplitting numerical attributes. Many commonly used attribute evaluation functions possess this property; we demonstrate that the cumulative functions Information Gain and Training Set Error as well as the non-cumulative functions Gain Ra...
Summary. Association rules for objects with quantitative attributes require the discretization of th...
Abstract. In the context of large databases, data preparation takes a greater importance: instances ...
We present a numerical refinement operator based on multi-instance learning. In the approach, the ta...
Often in supervised learning numerical attributes require special treatment and do not fit the learn...
Numerical data poses a problem to symbolic learning methods, since numerical value ranges inherently...
Abstract. We consider multisplitting of numerical value ranges, a task that is encountered as a disc...
The efficiency of the otherwise expedient decision tree learning can be impaired in processing data-...
Abstract. The class of well-behaved evaluation functions simplifies and makes efficient the handling...
Dynamic programming has been studied extensively, e.g., in computational geometry and string matchin...
Data mining is the process of extracting informative patterns from data stored in a database or data...
Decision trees in which numeric attributes are split several ways are more comprehensible than the u...
Decision trees are a very general computation model. Here the problem is to identify a Boolean funct...
We focus on developing improvements to algorithms that generate decision trees from training data. T...
Numerical attribute management is a usual pre-processing task in data mining. Most of the algorithms...
The training phase is the most crucial stage during the machine learning process. In the case of lab...
Summary. Association rules for objects with quantitative attributes require the discretization of th...
Abstract. In the context of large databases, data preparation takes a greater importance: instances ...
We present a numerical refinement operator based on multi-instance learning. In the approach, the ta...
Often in supervised learning numerical attributes require special treatment and do not fit the learn...
Numerical data poses a problem to symbolic learning methods, since numerical value ranges inherently...
Abstract. We consider multisplitting of numerical value ranges, a task that is encountered as a disc...
The efficiency of the otherwise expedient decision tree learning can be impaired in processing data-...
Abstract. The class of well-behaved evaluation functions simplifies and makes efficient the handling...
Dynamic programming has been studied extensively, e.g., in computational geometry and string matchin...
Data mining is the process of extracting informative patterns from data stored in a database or data...
Decision trees in which numeric attributes are split several ways are more comprehensible than the u...
Decision trees are a very general computation model. Here the problem is to identify a Boolean funct...
We focus on developing improvements to algorithms that generate decision trees from training data. T...
Numerical attribute management is a usual pre-processing task in data mining. Most of the algorithms...
The training phase is the most crucial stage during the machine learning process. In the case of lab...
Summary. Association rules for objects with quantitative attributes require the discretization of th...
Abstract. In the context of large databases, data preparation takes a greater importance: instances ...
We present a numerical refinement operator based on multi-instance learning. In the approach, the ta...