PGMem: Tightly Coupled Persona–Memory Graph for Lifelong Personalized Agents
Jun 1, 2026·
,,,·
0 min read
Wonjun Choi
Yerim Kim
Yukyung Lee†
Susik Yoon†
Abstract
Long-term personalized dialogue agents must track user preferences as their personas evolve. Existing memory systems organize past events well, but store personas as flat profiles detached from the events that justify them. This loose coupling leads to the memory–persona validity gap and the persona-aware retrieval gap. We propose PGMem, a heterogeneous persona-memory graph that connects event and persona nodes through typed provenance and evidence edges, keeping each persona signal traceable to the events that support or revise it. At retrieval time, PGMem expands from query-relevant seeds and ranks signals by evidential validity. Across three benchmarks with small language model backbones, PGMem consistently outperforms summary-based, persona-aware, graph-structured, and agentic memory baselines, and improves performance as the context grows.
Type
Publication
preprint