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Autonomous Concept Formation (1999) [7 citations — 2 self]

by Edwin D. De Jong
In Proceedings of the Sixteenth International Joint Conference on Artificial Intelligence IJCAI'99
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Abstract:

A model for the formation of situation concepts is described. A characteristic of this form of concept formation is that it does not require instructive feedback. This renders it suitable for concept formation by autonomous agents. It is experimentally demonstrated that situation concepts constructed independently by several agents can convey useful information between agents through a learned system of communication. A relation was found between the development of the learned system of communication and the duration of the situations. 1 Introduction The ability to communicate with others is a manifestation of our intelligence. An understanding of communication therefore contributes to the goals of artificial intelligence. A requirement for higher forms of communication, such as human language, is the development of concepts that are to be communicated. In this paper, a model is proposed that describes the formation of a particular type of concepts. A situation concept is a part of ...

Citations

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