Enables AI systems to detect confusion, search for alternative conceptual framings, and achieve insight-like problem solving through a metacognitive architecture.
The Reflective Agent Architecture (RAA) is a research prototype that integrates modern associative memory, metacognitive monitoring, and dynamic goal reframing to empower AI systems with insight-like problem-solving capabilities. It synthesizes Modern Hopfield Networks for exponential-capacity knowledge storage, entropy-based mechanisms for detecting model uncertainty, and dynamic attention to adapt to varying levels of confusion, allowing the system to refactor its goals and discover novel solutions.