During knowledge acquisition multiple alternative potential rules all appear equally credible. This paper addresses the dearth of formal analysis about how to select between such alternatives. It presents two hypotheses about the expected impact of selecting between classification rules of differing levels of generality in the absence of other evidence about their likely relative performance on unseen data. It is argued that the accuracy on unseen data of the more general rule will tend to be closer to that of a default rule for the class than will that of the more specific rule. It is also argued that in comparison to the more general rule, the accuracy of the more specific rule on unseen cases will tend to be closer to the accuracy obtain...
This paper defines the form of prior knowledge that is required for sound inferences by analogy and ...
While learning is often highly specific to the exact stimuli and tasks used during training, there a...
Recently, several authors have advocated the use of rule learning algorithms to model multi-label da...
Thesis (Ph. D.)--University of Rochester. Dept. of Computer Science, 1995. Simultaneously published ...
This paper considers whether information about the logical structure of a category affects how peopl...
One important component of learning is the ability to determine the correct conditions under which a...
Generalizing what is learned about one stimulus to other but perceptually related stimuli is a basic...
Generalising what is learned about one stimulus to other but perceptually related stimuli is a basic...
Generalisation in learning means that learning with one particular stimulus influences responding to...
Various algorithms are capable of learning a set of classification rules from a number of observatio...
Abstract. Numerous measures are used for performance evaluation in machine learning. In predictive k...
After discrimination learning between two stimuli that lie on a continuum, animals typically exhibit...
Previous experience with discrimination problems that can only be solved by learning about stimulus ...
In order to compare learning algorithms, experimental results reported in the machine learning liter...
After learning that one stimulus predicts an outcome (e.g., an aqua-colored rectangle leads to shock...
This paper defines the form of prior knowledge that is required for sound inferences by analogy and ...
While learning is often highly specific to the exact stimuli and tasks used during training, there a...
Recently, several authors have advocated the use of rule learning algorithms to model multi-label da...
Thesis (Ph. D.)--University of Rochester. Dept. of Computer Science, 1995. Simultaneously published ...
This paper considers whether information about the logical structure of a category affects how peopl...
One important component of learning is the ability to determine the correct conditions under which a...
Generalizing what is learned about one stimulus to other but perceptually related stimuli is a basic...
Generalising what is learned about one stimulus to other but perceptually related stimuli is a basic...
Generalisation in learning means that learning with one particular stimulus influences responding to...
Various algorithms are capable of learning a set of classification rules from a number of observatio...
Abstract. Numerous measures are used for performance evaluation in machine learning. In predictive k...
After discrimination learning between two stimuli that lie on a continuum, animals typically exhibit...
Previous experience with discrimination problems that can only be solved by learning about stimulus ...
In order to compare learning algorithms, experimental results reported in the machine learning liter...
After learning that one stimulus predicts an outcome (e.g., an aqua-colored rectangle leads to shock...
This paper defines the form of prior knowledge that is required for sound inferences by analogy and ...
While learning is often highly specific to the exact stimuli and tasks used during training, there a...
Recently, several authors have advocated the use of rule learning algorithms to model multi-label da...