A Thorough Formalization of Conceptual Spaces
June 20, 2017 Β· Declared Dead Β· π Deutsche Jahrestagung fΓΌr KΓΌnstliche Intelligenz
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Authors
Lucas Bechberger, Kai-Uwe KΓΌhnberger
arXiv ID
1706.06366
Category
cs.AI: Artificial Intelligence
Citations
24
Venue
Deutsche Jahrestagung fΓΌr KΓΌnstliche Intelligenz
Last Checked
4 months ago
Abstract
The highly influential framework of conceptual spaces provides a geometric way of representing knowledge. Instances are represented by points in a high-dimensional space and concepts are represented by convex regions in this space. After pointing out a problem with the convexity requirement, we propose a formalization of conceptual spaces based on fuzzy star-shaped sets. Our formalization uses a parametric definition of concepts and extends the original framework by adding means to represent correlations between different domains in a geometric way. Moreover, we define computationally efficient operations on concepts (intersection, union, and projection onto a subspace) and show that these operations can support both learning and reasoning processes.
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