cs.AI updates on arXiv.org 09月04日
新型符号方法提升大规模规划问题学习
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本文提出一种新型符号方法,基于样本计划的泛化,确保结构终止和循环无解,适用于处理数百万状态和数百万特征的问题,并在多个基准测试中验证了其可扩展性。

arXiv:2509.02794v1 Announce Type: new Abstract: Combinatorial methods for learning general policies that solve large collections of planning problems have been recently developed. One of their strengths, in relation to deep learning approaches, is that the resulting policies can be understood and shown to be correct. A weakness is that the methods do not scale up and learn only from small training instances and feature pools that contain a few hundreds of states and features at most. In this work, we propose a new symbolic method for learning policies based on the generalization of sampled plans that ensures structural termination and hence acyclicity. The proposed learning approach is not based on SAT/ASP, as previous symbolic methods, but on a hitting set algorithm that can effectively handle problems with millions of states, and pools with hundreds of thousands of features. The formal properties of the approach are analyzed, and its scalability is tested on a number of benchmarks.

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符号方法 大规模规划问题 学习算法
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