惯性聚合 高效追踪和阅读你感兴趣的博客、新闻、科技资讯
阅读原文 在惯性聚合中打开

推荐订阅源

大猫的无限游戏
大猫的无限游戏
cs.AI updates on arXiv.org
cs.AI updates on arXiv.org
AWS News Blog
AWS News Blog
V
V2EX - 技术
Threat Intelligence Blog | Flashpoint
Threat Intelligence Blog | Flashpoint
Cloudbric
Cloudbric
S
Securelist
L
LINUX DO - 最新话题
Scott Helme
Scott Helme
T
Threat Research - Cisco Blogs
S
Schneier on Security
Simon Willison's Weblog
Simon Willison's Weblog
G
GRAHAM CLULEY
I
Intezer
C
Cybersecurity and Infrastructure Security Agency CISA
C
CERT Recently Published Vulnerability Notes
SecWiki News
SecWiki News
cs.CV updates on arXiv.org
cs.CV updates on arXiv.org
TaoSecurity Blog
TaoSecurity Blog
D
Darknet – Hacking Tools, Hacker News & Cyber Security
Attack and Defense Labs
Attack and Defense Labs
S
Security Affairs
D
Docker
The Cloudflare Blog
博客园 - 三生石上(FineUI控件)
爱范儿
爱范儿
美团技术团队
W
WeLiveSecurity
阮一峰的网络日志
阮一峰的网络日志
月光博客
月光博客
Recent Commits to openclaw:main
Recent Commits to openclaw:main
博客园_首页
G
Google Developers Blog
C
Cisco Blogs
T
Tor Project blog
B
Blog RSS Feed
Vercel News
Vercel News
宝玉的分享
宝玉的分享
Recorded Future
Recorded Future
Cisco Talos Blog
Cisco Talos Blog
P
Palo Alto Networks Blog
Application and Cybersecurity Blog
Application and Cybersecurity Blog
E
Exploit-DB.com RSS Feed
PCI Perspectives
PCI Perspectives
K
Kaspersky official blog
量子位
Google Online Security Blog
Google Online Security Blog
Jina AI
Jina AI
Hacker News - Newest:
Hacker News - Newest: "LLM"
aimingoo的专栏
aimingoo的专栏

cs.LG updates on arXiv.org

暂无文章

Adaptive Memory Crystallization for Autonomous AI Agent Learning in Dynamic Environments
Rajat Khanda, Mohammad Baqar Sambuddha Chakrabarti, Satyasaran C · 2026-04-03 · via cs.LG updates on arXiv.org

Autonomous AI agents operating in dynamic environments face a persistent challenge: acquiring new capabilities without erasing prior knowledge. We present Adaptive Memory Crystallization (AMC), a memory architecture for progressive experience consolidation in continual reinforcement learning. AMC is conceptually inspired by the qualitative structure of synaptic tagging and capture (STC) theory, the idea that memories transition through discrete stability phases, but makes no claim to model the underlying molecular or synaptic mechanisms. AMC models memory as a continuous crystallization process in which experiences migrate from plastic to stable states according to a multi-objective utility signal. The framework introduces a three-phase memory hierarchy (Liquid--Glass--Crystal) governed by an Itô stochastic differential equation (SDE) whose population-level behavior is captured by an explicit Fokker--Planck equation admitting a closed-form Beta stationary distribution. We provide proofs of: (i) well-posedness and global convergence of the crystallization SDE to a unique Beta stationary distribution; (ii) exponential convergence of individual crystallization states to their fixed points, with explicit rates and variance bounds; and (iii) end-to-end Q-learning error bounds and matching memory-capacity lower bounds that link SDE parameters directly to agent performance. Empirical evaluation on Meta-World MT50, Atari 20-game sequential learning, and MuJoCo continual locomotion consistently shows improvements in forward transfer (+34--43\% over the strongest baseline), reductions in catastrophic forgetting (67--80\%), and a 62\% decrease in memory footprint.