Chronos: Temporal-Aware Conversational Agents with Structured Event Retrieval for Long-Term Memory
arXiv cs.CL / 3/18/2026
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Key Points
- Chronos introduces a temporal-aware memory framework that decomposes dialogue into subject-verb-object event tuples with resolved datetime ranges and entity aliases, indexing them in a structured events calendar alongside a turn calendar to preserve full conversational context.
- At query time, Chronos applies dynamic prompting to generate tailored retrieval guidance for each question, directing the agent on what to retrieve, how to filter across time ranges, and how to approach multi-hop reasoning through an iterative tool-calling loop over both calendars.
- The system achieves state-of-the-art performance on LongMemEvalS across eight LLMs, with Chronos Low at 92.60% and Chronos High at 95.60% accuracy, improving over the prior best by 7.67%.
- Ablation results show the events calendar contributes 58.9% of the gains, while other components yield 15.5%-22.3% improvements, and Chronos Low even outperforms prior approaches under the strongest model configurations.
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