LLM Accuracy vs. Hallucination: Understanding the Trade-offs
The Core Tension in LLM Systems Every LLM deployment involves a fundamental tension between two desirable properties that pull in opposite directions. Accuracy — producing responses that are factually correct, well-calibrated, and reliably grounded in evidence — tends to improve when models are more cautious, more willing to express uncertainty, and more likely to decline … Read more