Fakult at F Ur Informatik Der Technischen Universitt at M Unchen Lehrstuhl Viii Forschungsgruppe Automated Reasoning Feature-based Learning of Search-guiding Heuristics for Theorem Proving Feature-based Learning of Search-guiding Heuristics for Theorem Proving
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چکیده
b b b b b b b b b b b b b b b b b b b Abstract Automated reasoning or theorem proving essentially amounts to solving search problems. Despite signiicant progress in recent years theorem provers still have many shortcomings. The use of machine-learning techniques is acknowledged as promising, but diicult to apply in the area of theorem proving. We propose here to learn search-guiding heuristics by employing features in a simple, yet eeective manner. Features are used to adapt a heuristic to a solved source problem. The adapted heuristic can then be utilized prootably for solving related target problems. Experiments have demonstrated that the approach allows a theorem prover to prove hard problems that were out of reach before.
منابع مشابه
Fakult at F Ur Informatik Der Technischen Universitt at M Unchen Lehrstuhl Viii Forschungsgruppe Automated Reasoning Learning from Previous Proof Experience: a Survey Jj Org Denzinger Fachbereich Informatik Universitt at Kaiserslautern Germany Learning from Previous Proof Experience: a Survey
b b b b b b b b b b b b b b b b b b b Abstract We present an overview of various learning techniques used in automated theorem provers. We characterize the main problems arising in this context and classify the solutions to these problems from published approaches. We analyze the suitability of several combinations of solutions for diierent approaches to theorem proving and place these combinat...
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متن کاملFeature-Based Learning of Search-Guiding Heuristics for Theorem Proving
b b b b b b b b b b b b b b b b b b b Abstract Automated reasoning or theorem proving essentially amounts to solving search problems. Despite signiicant progress in recent years theorem provers still have many shortcomings. The use of machine-learning techniques is acknowledged as promising, but diicult to apply in the area of theorem proving. We propose here to learn search-guiding heuristics ...
متن کاملA Feature-Based Learning Method for Theorem Proving
Automated reasoning or theorem proving essentially amounts to solving search problems. Despite significant progress in recent years theorem provers still have many shortcomings. The use of machine-learning techniques is acknowledged as promising, but difficult to apply in the area of theorem proving. We propose here to learn search-guiding heuristics by employing features in a simple, yet effec...
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تاریخ انتشار 2007