cs.AI updates on arXiv.org 08月12日
Neural Logic Networks for Interpretable Classification
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本文提出了一种神经逻辑网络,通过结合逻辑运算和概率模型,实现了对输入输出关系的可解释学习,并在医疗领域等场景中展现出强大的分类性能。

arXiv:2508.08172v1 Announce Type: cross Abstract: Traditional neural networks have an impressive classification performance, but what they learn cannot be inspected, verified or extracted. Neural Logic Networks on the other hand have an interpretable structure that enables them to learn a logical mechanism relating the inputs and outputs with AND and OR operations. We generalize these networks with NOT operations and biases that take into account unobserved data and develop a rigorous logical and probabilistic modeling in terms of concept combinations to motivate their use. We also propose a novel factorized IF-THEN rule structure for the model as well as a modified learning algorithm. Our method improves the state-of-the-art in Boolean networks discovery and is able to learn relevant, interpretable rules in tabular classification, notably on an example from the medical field where interpretability has tangible value.

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神经逻辑网络 可解释学习 布尔规则 医疗分类
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