Live
Black Hat USADark ReadingBlack Hat AsiaAI Business2 New Orleans city attorneys resign after ChatGPT was used to help prepare federal court filing - WWLTV.comGoogle News: ChatGPTI Brute-Forced 2 Million Hashes to Get a Shiny Legendary Cat in My Terminal. It Has Max SNARK and a Propeller Hat.DEV CommunityHave to do enough for my talk, "Is AI Getting Reports Wrong? Try Google LookML, Your Data Dictionary!" at Google NEXT 2026DEV CommunityOpenAI Foundation: $1 Billion Investment To Scale AI-Driven Philanthropy Across Health, Jobs, And Safety - Pulse 2.0GNews AI AGITaming the Ingredient Sourcing Nightmare with AI AutomationDEV Community# 🚀 How to Build a High-Performance Landing Page with Next.js 15 and Tailwind v4DEV CommunityPrediction: Nvidia's Vera Rubin Platform Will Create at Least 2 New Artificial Intelligence (AI) Millionaire-Maker Stocks by the End of 2026 - The Motley FoolGoogle News: AIClaude Code Architecture Explained: Agent Loop, Tool System, and Permission Model (Rust Rewrite Analysis)DEV CommunityMarietta high school student designs AI software to streamline employee scheduling - CBS NewsGoogle News: AIThe Data Structure That's Okay With Being WrongDEV CommunityHow to Auto-Index Your URLs with Google Search Console APIDEV CommunityThe Indestructible FutureLessWrong AIBlack Hat USADark ReadingBlack Hat AsiaAI Business2 New Orleans city attorneys resign after ChatGPT was used to help prepare federal court filing - WWLTV.comGoogle News: ChatGPTI Brute-Forced 2 Million Hashes to Get a Shiny Legendary Cat in My Terminal. It Has Max SNARK and a Propeller Hat.DEV CommunityHave to do enough for my talk, "Is AI Getting Reports Wrong? Try Google LookML, Your Data Dictionary!" at Google NEXT 2026DEV CommunityOpenAI Foundation: $1 Billion Investment To Scale AI-Driven Philanthropy Across Health, Jobs, And Safety - Pulse 2.0GNews AI AGITaming the Ingredient Sourcing Nightmare with AI AutomationDEV Community# 🚀 How to Build a High-Performance Landing Page with Next.js 15 and Tailwind v4DEV CommunityPrediction: Nvidia's Vera Rubin Platform Will Create at Least 2 New Artificial Intelligence (AI) Millionaire-Maker Stocks by the End of 2026 - The Motley FoolGoogle News: AIClaude Code Architecture Explained: Agent Loop, Tool System, and Permission Model (Rust Rewrite Analysis)DEV CommunityMarietta high school student designs AI software to streamline employee scheduling - CBS NewsGoogle News: AIThe Data Structure That's Okay With Being WrongDEV CommunityHow to Auto-Index Your URLs with Google Search Console APIDEV CommunityThe Indestructible FutureLessWrong AI

Spatiotemporal Robustness of Temporal Logic Tasks using Multi-Objective Reasoning

ArXiv CS.AIby Oliver Sch\"on, Lars LindemannApril 1, 20262 min read0 views
Source Quiz

arXiv:2603.29868v1 Announce Type: new Abstract: The reliability of autonomous systems depends on their robustness, i.e., their ability to meet their objectives under uncertainty. In this paper, we study spatiotemporal robustness of temporal logic specifications evaluated over discrete-time signals. Existing work has proposed robust semantics that capture not only Boolean satisfiability, but also the geometric distance from unsatisfiability, corresponding to admissible spatial perturbations of a given signal. In contrast, we propose spatiotemporal robustness (STR), which captures admissible spatial and temporal perturbations jointly. This notion is particularly informative for interacting systems, such as multi-agent robotics, smart cities, and air traffic control. We define STR as a multi-

View PDF HTML (experimental)

Abstract:The reliability of autonomous systems depends on their robustness, i.e., their ability to meet their objectives under uncertainty. In this paper, we study spatiotemporal robustness of temporal logic specifications evaluated over discrete-time signals. Existing work has proposed robust semantics that capture not only Boolean satisfiability, but also the geometric distance from unsatisfiability, corresponding to admissible spatial perturbations of a given signal. In contrast, we propose spatiotemporal robustness (STR), which captures admissible spatial and temporal perturbations jointly. This notion is particularly informative for interacting systems, such as multi-agent robotics, smart cities, and air traffic control. We define STR as a multi-objective reasoning problem, formalized via a partial order over spatial and temporal perturbations. This perspective has two key advantages: (1) STR can be interpreted as a Pareto-optimal set that characterizes all admissible spatiotemporal perturbations, and (2) STR can be computed using tools from multi-objective optimization. To navigate computational challenges, we propose robust semantics for STR that are sound in the sense of suitably under-approximating STR while being computationally tractable. Finally, we present monitoring algorithms for STR using these robust semantics. To the best of our knowledge, this is the first work to deal with robustness across multiple dimensions via multi-objective reasoning.

Comments: 27 pages, 6 figures

Subjects:

Artificial Intelligence (cs.AI); Logic in Computer Science (cs.LO)

Cite as: arXiv:2603.29868 [cs.AI]

(or arXiv:2603.29868v1 [cs.AI] for this version)

https://doi.org/10.48550/arXiv.2603.29868

arXiv-issued DOI via DataCite (pending registration)

Submission history

From: Oliver Schön [view email] [v1] Wed, 28 Jan 2026 17:44:59 UTC (806 KB)

Was this article helpful?

Sign in to highlight and annotate this article

AI
Ask AI about this article
Powered by AI News Hub · full article context loaded
Ready

Conversation starters

Ask anything about this article…

Daily AI Digest

Get the top 5 AI stories delivered to your inbox every morning.

More about

announceperspectivestudy

Knowledge Map

Knowledge Map
TopicsEntitiesSource
Spatiotempo…announceperspectivestudyreasoningautonomousagentArXiv CS.AI

Connected Articles — Knowledge Graph

This article is connected to other articles through shared AI topics and tags.

Knowledge Graph100 articles · 220 connections
Scroll to zoom · drag to pan · click to open

Discussion

Sign in to join the discussion

No comments yet — be the first to share your thoughts!

More in Research Papers

오라클, 전 세계 최대 3만 명 감원…기업 지원·제품 로드맵 차질 우려
Research PapersFresh

오라클, 전 세계 최대 3만 명 감원…기업 지원·제품 로드맵 차질 우려

오라클이 대규모 감원에 착수했다. 이번 구조조정은 오라클 역사상 최대 규모의 인력 감축이 될 가능성이 있다. 미국, 인도, 캐나다, 멕시코, 우루과이의 직원들은 현지 시간 기준 31일 오전 6시경 ‘오라클 리더십(Oracle Leadership)’ 명의의 해고 통보 이메일을 받았으며, 인사부나 직속 상사로부터 사전 안내는 없었다. 슬랙, 줌, VPN, 출입 배지 등 기업 시스템 접근 권한도 거의 동시에 차단됐다. 오라클은 영향을 받은 직원들에게 조직 개편과 운영 효율화를 위한 조치라고 설명했다. 컨설팅 기업 그레이하운드 리서치(Greyhound Research)의 수석 애널리스트 산치트 비르 고지아는 오라클 ERP, 오라클 클라우드 인프라(OCI), 넷스위트(NetSuite)를 운영하는 CIO들에게 가장 시급한 우려로 운영 안정성 저하를 지목했다. 그는 “조용히 누적되는 불균형, 지연되는 에스컬레이션 대응, 축소된 백엔드 전문성, 증가하는 팀 간 인수인계, 표준 운영 절차를 벗어난 사고 발생 시 신뢰 저하가 나타날 수 있다”고 분석했다. 이어 “기업 고객은 단순히 코드 개발 속도만을 구매하는 것이 아니라 지원의 연속성, 릴리스 규율, 품질 보증, 통합 안정성, 문제 발생 시 책임성을 함께 고려한다”고 설명했다. 또한 CIO들에게 오라클 계정 팀을 상대로 전담 지원 인력의 지속적인 제공 여부, 최근 60~90일 동안 변경된 제품 조직에 대한 명확성, 향후 두 분기 동안의 릴리스 이행 여부를 확인할 것을 권고했다. 그는 “답변이 모호하다면 그 자체가 하나의 신호”라고 언급했다. 감원 규모와 대상 조직 온라인 직장