Generation-Based and Emotion-Reflected Memory Update: Creating the KEEM Dataset for Better Long-Term Conversation
About
In this work, we introduce the Keep Emotional and Essential Memory (KEEM) dataset, a novel generation-based dataset designed to enhance memory updates in long-term conversational systems. Unlike existing approaches that rely on simple accumulation or operation-based methods, which often result in information conflicts and difficulties in accurately tracking a user's current state, KEEM dynamically generates integrative memories. This process not only preserves essential factual information but also incorporates emotional context and causal relationships, enabling a more nuanced understanding of user interactions. By seamlessly updating a system's memory with both emotional and essential data, our approach promotes deeper empathy and enhances the system's ability to respond meaningfully in open-domain conversations.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Dialogue Response Generation | KEEM (KMSC memories) 1.0 (test) | -- | 14 | |
| Dialogue Response Generation | KEEM memories 1.0 (test) | -- | 7 | |
| Emotion and Cause Reflection | KMSC and KEEM 50 sessions original and updated (manual evaluation set) | E&C Ref Rate93 | 2 | |
| Memory Update | KEEM and CareCallmem Evaluation Set | Score1.86 | 2 |