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AAAI 1992

Learning Engineering Models with the Minimum Description Length Principle

Conference Paper Representation and Reasoning: Qualitative Model Construction Artificial Intelligence

Abstract

This paper discusses discovery of mathematical models from engineering data sets. KEDS, a Knowledge-based Equation Discovery System, identifies several potentially overlapping regions in the problem space, each associated with an equation of different complexity and accuracy. The minimum description length principle, together with the KEDS algorithm, is used to guide the partitioning of the problem space. The KEDS-MDL algorithm has been tested on discovering models for predicting the performance efficiencies of an internal combustion engine.

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Context

Venue
AAAI Conference on Artificial Intelligence
Archive span
1980-2026
Indexed papers
28718
Paper id
247603609555789641