Exact Inference

Exact inference aims to compute precise probabilities in complex probabilistic models, crucial for reliable decision-making in various applications. Current research focuses on improving efficiency and accuracy in large language models (LLMs) through techniques like regressive decoding and knowledge distillation, as well as developing methods for privacy-preserving collaborative inference and handling uncertainty in high-dimensional data. These advancements are significant for fields like machine learning, statistics, and AI safety, enabling more robust and trustworthy inferences from increasingly complex data.

Papers