AI RESEARCH
Selective QA over Conflicting Multi-Source Personal Memory: A Diagnostic Testbed and Method Comparison
arXiv CS.AI
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ArXi:2605.30087v1 Announce Type: new Emerging personal AI agents are moving toward persistent, multi-source memory. This creates an evaluation problem: systems must decide how to use conflicting or incomplete evidence; they cannot just retrieve facts from one clean history. Existing benchmarks rarely show whether an error came from the evidence given to a method or from the method's conflict-resolution step. We study this as selective QA over conflicting multi-source personal memory: systems answer based on conflicting, sometimes incomplete sources, or abstain when evidence is insufficient.