Shaped-Charge Architecture for Neuro-Symbolic Systems

Boris Galitsky
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Abstract

In spite of the great progress of large language models (LLMs) in recent years, there is a popular belief that their limitations need to be addressed “from outside”, by building hybrid neurosymbolic systems which add robustness, explainability, perplexity and verification done at a symbolic level. We propose shape-charged learning in the form of Meta-learning/DNN - kNN that enables the above features by integrating LMM with explainable nearest neighbor learning (kNN) to form the object-level, having deductive reasoning-based metalevel control learning processes, performing validation and correction of predictions in a way that is more interpretable by humans.
神经符号系统的异形充电架构
尽管近年来大型语言模型(LLMs)取得了巨大进步,但人们普遍认为需要 "从外部 "解决其局限性,即通过构建混合神经符号系统,在符号层面增加鲁棒性、可解释性、复杂性和验证性。我们提出了元学习(Meta-learning)/近邻学习(DNN)- kNN(kNN)形式的形状充电学习,通过将 LMM 与可解释的近邻学习(kNN)整合形成对象级,让基于演绎推理的元级控制学习过程,以更易于人类解释的方式执行验证和修正预测,从而实现上述功能。
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