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AAAI 1987

Learning and Representation Change

Conference Paper Machine Learning and Knowledge Acquisition Artificial Intelligence

Abstract

To remain effective without human interaction, intelligent systems must be able to adapt to their environment. One useful form of adaptation is to incrementally form concepts from examples for the purposes of inference and problem-solving. A number of systems have been constructed for this task, yet their capability is limited by the language used to represent concepts. This paper presents an extension to the concept acquisition system STAGGER that allows it to utilize continuously valued attributes. The combination of methods employed is able to dynamically acquire appropriate representations, thereby minimizing the impact of initial representational bias decisions. Of additional interest is the distinction between the computational flavor of the learning methods, for one is similar to connectionist approaches while the other two are of a more symbolic nature.

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Context

Venue
AAAI Conference on Artificial Intelligence
Archive span
1980-2026
Indexed papers
28718
Paper id
291671801860022622