Salvato in:
Dettagli Bibliografici
Autori principali: Cheng, Zihao, Wang, Weixin, Zhao, Yu, Ren, Ziyang, Chen, Jiaxuan, Xu, Ruiyang, Huang, Shuai, Chen, Yang, Li, Guowei, Wang, Mengshi, Xie, Yi, Zhu, Ren, Jiang, Zeren, Lu, Keda, Li, Yihong, Wang, Xiaoliang, Liu, Liwei, Nguyen, Cam-Tu
Natura: Preprint
Pubblicazione: 2026
Soggetti:
Accesso online:https://arxiv.org/abs/2603.03781
Tags: Aggiungi Tag
Nessun Tag, puoi essere il primo ad aggiungerne!!
_version_ 1866910040333484032
author Cheng, Zihao
Wang, Weixin
Zhao, Yu
Ren, Ziyang
Chen, Jiaxuan
Xu, Ruiyang
Huang, Shuai
Chen, Yang
Li, Guowei
Wang, Mengshi
Xie, Yi
Zhu, Ren
Jiang, Zeren
Lu, Keda
Li, Yihong
Wang, Xiaoliang
Liu, Liwei
Nguyen, Cam-Tu
author_facet Cheng, Zihao
Wang, Weixin
Zhao, Yu
Ren, Ziyang
Chen, Jiaxuan
Xu, Ruiyang
Huang, Shuai
Chen, Yang
Li, Guowei
Wang, Mengshi
Xie, Yi
Zhu, Ren
Jiang, Zeren
Lu, Keda
Li, Yihong
Wang, Xiaoliang
Liu, Liwei
Nguyen, Cam-Tu
contents Long-term memory is fundamental for personalized agents capable of accumulating knowledge, reasoning over user experiences, and adapting across time. However, existing memory benchmarks primarily target declarative memory, specifically semantic and episodic types, where all information is explicitly presented in dialogues. In contrast, real-world actions are also governed by non-declarative memory, including habitual and procedural types, and need to be inferred from diverse digital traces. To bridge this gap, we introduce Lifebench, which features densely connected, long-horizon event simulation. It pushes AI agents beyond simple recall, requiring the integration of declarative and non-declarative memory reasoning across diverse and temporally extended contexts. Building such a benchmark presents two key challenges: ensuring data quality and scalability. We maintain data quality by employing real-world priors, including anonymized social surveys, map APIs, and holiday-integrated calendars, thus enforcing fidelity, diversity and behavioral rationality within the dataset. Towards scalability, we draw inspiration from cognitive science and structure events according to their partonomic hierarchy; enabling efficient parallel generation while maintaining global coherence. Performance results show that top-tier, state-of-the-art memory systems reach just 55.2\% accuracy, highlighting the inherent difficulty of long-horizon retrieval and multi-source integration within our proposed benchmark. The dataset and data synthesis code are available at https://github.com/1754955896/LifeBench.
format Preprint
id arxiv_https___arxiv_org_abs_2603_03781
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle LifeBench: A Benchmark for Long-Horizon Multi-Source Memory
Cheng, Zihao
Wang, Weixin
Zhao, Yu
Ren, Ziyang
Chen, Jiaxuan
Xu, Ruiyang
Huang, Shuai
Chen, Yang
Li, Guowei
Wang, Mengshi
Xie, Yi
Zhu, Ren
Jiang, Zeren
Lu, Keda
Li, Yihong
Wang, Xiaoliang
Liu, Liwei
Nguyen, Cam-Tu
Artificial Intelligence
Long-term memory is fundamental for personalized agents capable of accumulating knowledge, reasoning over user experiences, and adapting across time. However, existing memory benchmarks primarily target declarative memory, specifically semantic and episodic types, where all information is explicitly presented in dialogues. In contrast, real-world actions are also governed by non-declarative memory, including habitual and procedural types, and need to be inferred from diverse digital traces. To bridge this gap, we introduce Lifebench, which features densely connected, long-horizon event simulation. It pushes AI agents beyond simple recall, requiring the integration of declarative and non-declarative memory reasoning across diverse and temporally extended contexts. Building such a benchmark presents two key challenges: ensuring data quality and scalability. We maintain data quality by employing real-world priors, including anonymized social surveys, map APIs, and holiday-integrated calendars, thus enforcing fidelity, diversity and behavioral rationality within the dataset. Towards scalability, we draw inspiration from cognitive science and structure events according to their partonomic hierarchy; enabling efficient parallel generation while maintaining global coherence. Performance results show that top-tier, state-of-the-art memory systems reach just 55.2\% accuracy, highlighting the inherent difficulty of long-horizon retrieval and multi-source integration within our proposed benchmark. The dataset and data synthesis code are available at https://github.com/1754955896/LifeBench.
title LifeBench: A Benchmark for Long-Horizon Multi-Source Memory
topic Artificial Intelligence
url https://arxiv.org/abs/2603.03781