ANDRE: An Attention-based Neuro-symbolic Differentiable Rule Extractor
The paper introduces ANDRE, an Attention-based Neuro-symbolic Differentiable Rule Extractor designed to enhance Inductive Logic Programming (ILP). It addresses the limitations of existing symbolic and neuro-symbolic methods in noisy and probabilistic environments by optimizing over a continuous rule space, thereby improving the learning of interpretable first-order logic programs. This approach aims to overcome challenges such as brittle rule search and issues with fuzzy operators in traditional ILP methods.