Smarter Features, Simpler Learning?

Sarah Winkler
(University of Verona)
Georg Moser
(University of Innsbruck)

Earlier work on machine learning for automated reasoning mostly relied on simple, syntactic features combined with sophisticated learning techniques. Using ideas adopted in the software verification community, we propose the investigation of more complex, structural features to learn from. These may be exploited to either learn beneficial strategies for tools, or build a portfolio solver that chooses the most suitable tool for a given problem. We present some ideas for features of term rewrite systems and theorem proving problems.

In Martin Suda and Sarah Winkler: Proceedings of the Second International Workshop on Automated Reasoning: Challenges, Applications, Directions, Exemplary Achievements (ARCADE 2019), Natal, Brazil, August 26, 2019, Electronic Proceedings in Theoretical Computer Science 311, pp. 25–31.
Published: 31st December 2019.

ArXived at: https://dx.doi.org/10.4204/EPTCS.311.4 bibtex PDF
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