Large Language Models (LLMs) exhibit emotional amnesia due to their stateless interaction design, causing loss of continuity across conversations. This work introduces AURA-X Ω, a dual-memory emotional continuity layer composed of Temporal Memory (TM) and Bold Memory (BM). TM stores short-term conversational context while BM retains emotionally significant events with controlled decay dynamics. The interaction between these memory layers generates an emotional state through a bounded resonance function that stabilizes chatbot behavior over time. The framework introduces a mathematical formulation for emotional continuity, resonance dynamics, and bounded volatility in AI systems. A lightweight prototype implementation demonstrates the feasibility of integrating the architecture into conversational agents. AURA-X Ω aims to improve long-term emotional coherence, stability, and relational continuity in AI companions, therapeutic chatbots, and human-AI interaction systems.
Alim ul haq khan (Wed,) studied this question.
Synapse has enriched 5 closely related papers on similar clinical questions. Consider them for comparative context: