Abstract. The class of well-behaved evaluation functions simplifies and makes efficient the handling of numerical attributes; for them it suffices to concentrate on the boundary points in searching for the optimal partition. This holds always for binary partitions and also for multisplits if only the function is cumulative in addition to being well-behaved. The class of well-behaved eval-uation functions is a proper superclass of convex evaluation functions. Thus, a large proportion of the most important attribute evaluation functions are well-behaved. This paper explores the extent and boundaries of well-behaved func-tions. In particular, we examine C4.5’s default attribute evaluation function gain ratio, which has been known to have probl...
A multiattribute utility function can be represented by a function of single-attribute utility funct...
Numerical data poses a problem to symbolic learning methods, since numerical value ranges inherently...
AbstractWe indicate how, using a classification technique adopted from Jonkers, a hierarchy of attri...
Often in supervised learning numerical attributes require special treatment and do not fit the learn...
Real life problems handled by machine learning deals with various forms of values in the data set at...
In order to better understand decision maker’s perceptions of the importance of attributes, Goldstei...
In order to better understand decision maker's perceptions of the importance of attributes, Goldstei...
The probabilistic concept formation general problem in dealing with mixed-data scale environments is...
The efficiency of the otherwise expedient decision tree learning can be impaired in processing data-...
Summary. Association rules for objects with quantitative attributes require the discretization of th...
In this article, a filter feature weighting technique for attribute selection in classification prob...
As a filter model, rough set-based methods are one of effective attribute reduction(also called feat...
The paper describes results of analytical and experimental analysis of seventeen functions used for ...
This paper introduces a new parameter for measuring deterministic preference tradeoffs between pairs...
Abstract. We consider multisplitting of numerical value ranges, a task that is encountered as a disc...
A multiattribute utility function can be represented by a function of single-attribute utility funct...
Numerical data poses a problem to symbolic learning methods, since numerical value ranges inherently...
AbstractWe indicate how, using a classification technique adopted from Jonkers, a hierarchy of attri...
Often in supervised learning numerical attributes require special treatment and do not fit the learn...
Real life problems handled by machine learning deals with various forms of values in the data set at...
In order to better understand decision maker’s perceptions of the importance of attributes, Goldstei...
In order to better understand decision maker's perceptions of the importance of attributes, Goldstei...
The probabilistic concept formation general problem in dealing with mixed-data scale environments is...
The efficiency of the otherwise expedient decision tree learning can be impaired in processing data-...
Summary. Association rules for objects with quantitative attributes require the discretization of th...
In this article, a filter feature weighting technique for attribute selection in classification prob...
As a filter model, rough set-based methods are one of effective attribute reduction(also called feat...
The paper describes results of analytical and experimental analysis of seventeen functions used for ...
This paper introduces a new parameter for measuring deterministic preference tradeoffs between pairs...
Abstract. We consider multisplitting of numerical value ranges, a task that is encountered as a disc...
A multiattribute utility function can be represented by a function of single-attribute utility funct...
Numerical data poses a problem to symbolic learning methods, since numerical value ranges inherently...
AbstractWe indicate how, using a classification technique adopted from Jonkers, a hierarchy of attri...