46
Probabilistic Consensus through Ensemble Validation: A Framework for LLM Reliability
arxiv.orgLarge Language Models (LLMs) have shown significant advances in text generation but often lack the reliability needed for autonomous deployment in high-stakes domains like healthcare, law, and finance. Existing approaches rely on external knowledge or human oversight, limiting scalability. We introduce a novel framework that repurposes ensemble methods for content validation through model consensus. In tests across 78 complex cases requiring factual accuracy and causal consistency, our framework improved precision from 73.1% to 93.9% with two models (95% CI: 83.5%-97.9%) and to 95.6% with three models (95% CI: 85.2%-98.8%). Statistical analysis indicates strong inter-model agreement ($κ$ > 0.76) while preserving sufficient independence to catch errors through disagreement. We outline a clear pathway to further enhance precision with additional validators and refinements. Although the current approach is constrained by multiple-choice format requirements and processing latency, it offers immediate value for enabling reliable autonomous AI systems in critical applications.
It’s also notable that human error tends to occur in predictable ways which can be prepared for and noticed much more easily, while machine errors tend to be entirely random and unpredictable. For example: When a human makes a judgment on a medical issue which poses a very significant risk to the patient, they will generally put more effort into ensuring an accurate result/pay more attention to what they’re doing.