Towards Lifelong Dialogue Agents via Relation-aware Memory Construction and Timeline-augmented Response Generation
To achieve lifelong human-agent interaction, dialogue agents need to constantly memorize perceived information and properly retrieve it for response generation (RG). While prior work focuses on getting rid of outdated memories to improve retrieval quality, we argue that such memories provide rich, i...
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Zusammenfassung: | To achieve lifelong human-agent interaction, dialogue agents need to
constantly memorize perceived information and properly retrieve it for response
generation (RG). While prior work focuses on getting rid of outdated memories
to improve retrieval quality, we argue that such memories provide rich,
important contextual cues for RG (e.g., changes in user behaviors) in long-term
conversations. We present Theanine, a framework for LLM-based lifelong dialogue
agents. Theanine discards memory removal and manages large-scale memories by
linking them based on their temporal and cause-effect relation. Enabled by this
linking structure, Theanine augments RG with memory timelines - series of
memories representing the evolution or causality of relevant past events. Along
with Theanine, we introduce TeaFarm, a counterfactual-driven evaluation scheme,
addressing the limitation of G-Eval and human efforts in measuring
memory-augmented dialogue agents. A supplementary video for Theanine and data
for TeaFarm are at https://huggingface.co/spaces/ResearcherScholar/Theanine. |
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DOI: | 10.48550/arxiv.2406.10996 |