TRUSTMEM: Learning Trustworthy Memory Consolidation for LLM Agents with Long-Term Memory (opens in new tab)
Large language model (LLM) agents rely on long-term memory to support extended interactions and personalized assistance beyond finite context windows. Existing memory agents actively update external memory through generated write, revise, and delete operations, but these updates may omit important information, corrupt existing memory, or introduce unsupported hallucinated content. Once stored, such errors become persistent system-state failures ...
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