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ATPBOOST: Learning Premise Selection in Binary Setting with ATP Feedback

机译:ATPBoost:使用ATP反馈中的二进制设置学习前提

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ATPBOOST is a system for solving sets of large-theory problems by interleaving ATP runs with state-of-the-art machine learning of premise selection from the proofs. Unlike many approaches that use multi-label setting, the learning is implemented as binary classification that estimates the pairwise-relevance of (theorem, premise) pairs. ATPBOOST uses for this the fast state-of-the-art XGBoost gradient boosting algorithm. Learning in the binary setting however requires negative examples, which is nontrivial due to many alternative proofs. We discuss and implement several solutions in the context of the ATP/ML feedback loop, and show significant improvement over the multi-label approach.
机译:AtpBoost是一种通过交织ATP运行来解决大学问题的系统,以便从证据中选择前提选择的前提。与使用多标签设置的多种方法不同,该学习实现为二进制分类,估计(定理,前提)对的成对相关性。 ATPBoost用于此快速最先进的XGBoost梯度升压算法。然而,在二进制设置中学习需要负面示例,这是由于许多替代证据而非激动。我们在ATP / ML反馈回路的上下文中讨论和实施多种解决方案,并显示出对多标签方法的显着改进。

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