cs.AI updates on arXiv.org 10月07日
精准逻辑模型:高效学习与优化
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本文提出一种新的逻辑模型学习框架SPECTRUM,通过精准逻辑规则和规则效用,有效降低神经符号AI开发成本,提高预测能力。

arXiv:2409.16238v3 Announce Type: replace Abstract: Probabilistic logical models are a core component of neurosymbolic AI and are important in their own right for tasks that require high explainability. Unlike neural networks, logical theories that underlie the model are often handcrafted using domain expertise, making their development costly and prone to errors. While there are algorithms that learn logical theories from data, they are generally prohibitively expensive, limiting their applicability in real-world settings. Here, we introduce precision and recall for logical rules and define their composition as rule utility - a cost-effective measure of the predictive power of logical theories. We also introduce SPECTRUM, a scalable framework for learning logical theories from relational data. Its scalability derives from a linear-time algorithm for mining recurrent subgraphs in the data graph along with a second algorithm that, using a utility measure that can be computed in linear time, efficiently ranks rules derived from these subgraphs. Finally, we prove theoretical guarantees on the utility of the learnt logical theory. As a result, we demonstrate across various tasks that SPECTRUM scales to larger datasets, often learning more accurate logical theories on CPUs in < 1% the runtime of SOTA neural network approaches on GPUs.

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逻辑模型 神经符号AI SPECTRUM框架 规则效用
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