Relations (1)
related 0.30 — supporting 3 facts
Large Language Models and symbolic reasoning are linked through research exploring their integration, as evidenced by the survey paper in [1] and the development of neurosymbolic AI architectures in [2]. Furthermore, [3] highlights their combined use as a strategy for mitigating AI hallucinations.
Facts (3)
Sources
Survey and analysis of hallucinations in large language models frontiersin.org 1 fact
perspectiveFuture research in AI hallucination mitigation should explore grounding techniques such as retrieval-augmented generation (RAG) and hybrid models that combine symbolic reasoning with large language models.
LLM-KG4QA: Large Language Models and Knowledge Graphs for ... github.com 1 fact
referenceThe paper titled 'A Survey on Enhancing Large Language Models with Symbolic Reasoning' was published on OpenReview in 2025.
How Neurosymbolic AI Finds Growth That Others Cannot See hbr.org 1 fact
claimNeurosymbolic AI integrates the statistical pattern recognition and adaptability of neural networks, such as large language models, with the logical, rule-based structure of symbolic reasoning.