H2HMem:面向人人交互场景的智能体多模态记忆基准 / H2HMem: A Multimodal Memory Benchmark for Agents in Human-Human Interactions
1️⃣ 一句话总结
该论文提出了一个名为H2HMem的新型多模态记忆评估基准,专门用于测试AI智能体在人类与人类的复杂对话场景(如多人会议)中,记忆、推理和运用多模态信息的能力,发现现有智能体在这类任务上存在显著不足。
Large language model agents are increasingly deployed in human-human interaction settings, such as meeting assistants and clinical documentation systems, where they must observe conversations and retain information for downstream queries. Unlike traditional human-assistant settings, these environments are inherently multimodal, involve complex discourse phenomena such as anaphora and deixis, and contain asynchronous or conflicting information from multiple participants. However, existing memory benchmarks largely focus on single-user, text-only interactions, failing to capture these challenges. To address this gap, we introduce H2HMem, a Human-to-Human Multimodal Memory Benchmark for evaluating memory capabilities in complex human-human interactions. H2HMem includes both dyadic and multi-party conversations with multimodal information streams, and evaluates agents along three dimensions: memory recall, reasoning, and application. Experiments with advanced agents reveal substantial limitations in constructing, retaining, and utilizing memories across modalities, participants, and sessions, highlighting substantial room for improvement in next-generation LLM agents.
H2HMem:面向人人交互场景的智能体多模态记忆基准 / H2HMem: A Multimodal Memory Benchmark for Agents in Human-Human Interactions
该论文提出了一个名为H2HMem的新型多模态记忆评估基准,专门用于测试AI智能体在人类与人类的复杂对话场景(如多人会议)中,记忆、推理和运用多模态信息的能力,发现现有智能体在这类任务上存在显著不足。
源自 arXiv: 2606.09461