Arama Sonuçları

Listeleniyor 1 - 3 / 3
  • Yayın
    Power control for fading cooperative multiple access channels
    (IEEE, 2007-08) Kaya, Onur; Ulukuş, Şennur
    For a fading Gaussian multiple access channel with user cooperation, we obtain the power allocation policies that maximize the average rates achievable by block Markov superposition coding, subject to average power constraints. The optimal policies result in a coding scheme that is simpler than the one for a general multiple access channel with generalized feedback. This simpler coding scheme also leads to the possibility of formulating an otherwise non-concave optimization problem as a concave one. Using the perfect channel state information available at the transmitters to adapt the powers, we demonstrate gains over the achievable rates for existing cooperative systems.
  • Yayın
    Pre-occupancy evaluation of wayfinding signage using immersive virtual reality
    (Elsevier Ltd, 2025-07) Karadağ, Derya
    This study explores how alternative wayfinding signage designs influence user experience within immersive virtual environments during early-stage architectural evaluation. A 3D model of a university building's ground floor was developed and experienced through head-mounted displays (HMDs) to simulate spatial conditions. Eighteen participants completed structured navigation tasks in two signage settings, followed by post-task surveys and semi-structured interviews. Quantitative data—task completion times and circulation paths—were analysed alongside thematic evaluations of user feedback. Findings reveal that signage design affects spatial perception, navigational efficiency, and user satisfaction. The study shows that early-stage VR testing supports user-informed design decisions, especially for evaluating signage-based spatial strategies and related user experience considerations. VR emerges as a practical tool for integrating user-centred feedback into the pre-occupancy phase of spatial planning.
  • Yayın
    Adaptive incident escalation in SOCs via AI-driven skill-aware assignment and tier optimization
    (Institute of Electrical and Electronics Engineers Inc., 2026-04-15) Abuaziz, Ahmed; Çeliktaş, Barış
    Modern Security Operations Centers (SOCs) face significant operational bottlenecks driven by escalating alert volumes, increasingly sophisticated cyberattack vectors, and chronic imbalances in analyst workloads. Conventional rule-based escalation models frequently fail to account for the multi-dimensional nature of incident characteristics, the nuances of analyst expertise, and fluctuating operational demands. This study proposes a comprehensive AI-driven framework for intelligent incident assignment and workload optimization. The framework introduces five primary contributions: 1) a multi-factor scoring model that integrates severity and complexity metrics with dynamic workload balancing; 2) two novel optimization algorithms, Quantile-Targeted Normality-Regularized Optimization (QT-NRO) and Joint Optimization of Weights and Thresholds (JOWT), to calibrate scoring coefficients against target analyst utilization; 3) a Large Language Model (LLM) engine leveraging Retrieval-Augmented Generation (RAG) for semantic alignment between incident requirements and analyst expertise; 4) an Adaptive Capacity Zoning mechanism for dynamic workload management; and 5) a novel RAG Relevance Score metric—a pre-resolution, semantic alignment indicator that quantifies analyst-incident assignment quality independently of resolution time, addressing a fundamental limitation of traditional temporal metrics such as Mean Time to Resolution (MTTR) and providing a reusable benchmark applicable to any skill-aware assignment system. In addition, the framework incorporates a feedback-based continuous learning mechanism that utilizes historical resolution data to inform future assignments. An experimental evaluation using 10,021 real-world incidents from Microsoft Defender demonstrates that the JOWT algorithm achieves a tier distribution alignment within 0.8% of targets. LLM-enhanced semantic matching yields improvements between 26.7% and 126.8% in skill alignment across both normal-load and high-load evaluations, while simulations indicate a 31.8% reduction in MTTR. These results substantiate the efficacy of AI-driven methodologies in enhancing SOC operational efficiency and response precision.