We significantly improve the performance of the E automated theorem prover on the Isabelle Sledgehammer problems by combining learning and theorem proving in several ways. In particular, we develop targeted versions of the ENIGMA guidance for the Isabelle problems, targeted versions of neural premise selection, and targeted strategies for E. The methods are trained in several iterations over hundreds of thousands untyped and typed first-order problems extracted from Isabelle. Our final best single-strategy ENIGMA and premise selection system improves the best previous version of E by 25.3% in 15 seconds, outperforming also all other previous ATP and SMT systems.
翻译:我们通过将学习和理论相结合,大大改进E自动化理论对伊莎贝尔·斯利盖格锤问题进行检验的性能。特别是,我们开发了针对伊莎贝尔问题的ENIGMA指南的定向版本、针对神经前置选择的定向版本和针对E的定向战略。这些方法在从伊莎贝尔提取的数十万次未经类型和打字的第一阶问题中经过多次迭代培训。我们最后最好的单一战略ENIGMA和前置选择系统在15秒内改进了E的最好版本25.3%,也优于以往所有其他ATP和SMT系统。