Chronos: Temporal-Aware Conversational Agents with Structured Event Retrieval for Long-Term Memory
AI 摘要
Chronos提出了一种时间感知的对话记忆框架,通过结构化事件检索增强LLM在长期对话中的性能。
主要贡献
- 提出Chronos框架,包含事件日历和会话日历。
- 动态提示指导检索,支持多跳时间敏感查询。
- 在LongMemEvalS基准测试上显著超越现有技术。
方法论
Chronos将对话分解为带有时间戳的事件元组,索引在结构化日历中。通过动态提示,引导LLM进行时间相关的检索和推理。
原文摘要
Recent advances in Large Language Models (LLMs) have enabled conversational AI agents to engage in extended multi-turn interactions spanning weeks or months. However, existing memory systems struggle to reason over temporally grounded facts and preferences that evolve across months of interaction and lack effective retrieval strategies for multi-hop, time-sensitive queries over long dialogue histories. We introduce Chronos, a novel temporal-aware memory framework that decomposes raw dialogue into subject-verb-object event tuples with resolved datetime ranges and entity aliases, indexing them in a structured event calendar alongside a turn calendar that preserves 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. We evaluate Chronos with 8 LLMs, both open-source and closed-source, on the LongMemEvalS benchmark comprising 500 questions spanning six categories of dialogue history tasks. Chronos Low achieves 92.60% and Chronos High scores 95.60% accuracy, setting a new state of the art with an improvement of 7.67% over the best prior system. Ablation results reveal the events calendar accounts for a 58.9% gain on the baseline while all other components yield improvements between 15.5% and 22.3%. Notably, Chronos Low alone surpasses prior approaches evaluated under their strongest model configurations.