network operator
Constructive Approximation of Random Process via Stochastic Interpolation Neural Network Operators
In this paper, we construct a class of stochastic interpolation neural network operators (SINNOs) with random coefficients activated by sigmoidal functions. We establish their boundedness, interpolation accuracy, and approximation capabilities in the mean square sense, in probability, as well as path-wise within the space of second-order stochastic (random) processes \( L^2(Ω, \mathcal{F},\mathbb{P}) \). Additionally, we provide quantitative error estimates using the modulus of continuity of the processes. These results highlight the effectiveness of SINNOs for approximating stochastic processes with potential applications in COVID-19 case prediction.
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- Asia > China (0.05)
- South America > Brazil (0.05)
- Asia > India > Uttarakhand > Roorkee (0.04)
Games Are Not Equal: Classifying Cloud Gaming Contexts for Effective User Experience Measurement
Wang, Yifan, Lyu, Minzhao, Sivaraman, Vijay
To tap into the growing market of cloud gaming, whereby game graphics is rendered in the cloud and streamed back to the user as a video feed, network operators are creating monetizable assurance services that dynamically provision network resources. However, without accurately measuring cloud gaming user experience, they cannot assess the effectiveness of their provisioning methods. Basic measures such as bandwidth and frame rate by themselves do not suffice, and can only be interpreted in the context of the game played and the player activity within the game. This paper equips the network operator with a method to obtain a real-time measure of cloud gaming experience by analyzing network traffic, including contextual factors such as the game title and player activity stage. Our method is able to classify the game title within the first five seconds of game launch, and continuously assess the player activity stage as being active, passive, or idle. We deploy it in an ISP hosting NVIDIA cloud gaming servers for the region. We provide insights from hundreds of thousands of cloud game streaming sessions over a three-month period into the dependence of bandwidth consumption and experience level on the gameplay contexts.
- Oceania > Australia > New South Wales > Sydney (0.50)
- Asia > Japan > Honshū > Kantō > Tokyo Metropolis Prefecture > Tokyo (0.14)
- Europe > France > Provence-Alpes-Côte d'Azur > Alpes-Maritimes > Nice (0.04)
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- Telecommunications > Networks (1.00)
- Leisure & Entertainment > Games > Computer Games (1.00)
- Information Technology > Networks (1.00)
Convergence Analysis of Max-Min Exponential Neural Network Operators in Orlicz Space
Pradhan, Satyaranjan, Soren, Madan Mohan
In this current work, we propose a Max-Min approach for approximating functions using exponential neural network operators. We extend this framework to develop the Max-Min Kantorovich-type exponential neural network operators and investigate their approximation properties. We study both pointwise and uniform convergence for univariate functions. To analyze the order of convergence, we use the logarithmic modulus of continuity and estimate the corresponding rate of convergence. Furthermore, we examine the convergence behavior of the Max-Min Kantorovich-type exponential neural network operators within the Orlicz space setting. We provide some graphical representations to illustrate the approximation error of the function through suitable kernel and sigmoidal activation functions.
- North America > United States > New York (0.04)
- Asia > Singapore (0.04)
- Asia > India > Odisha (0.04)
- Telecommunications > Networks (1.00)
- Information Technology > Networks (1.00)
Theory of Mixture-of-Experts for Mobile Edge Computing
In mobile edge computing (MEC) networks, mobile users generate diverse machine learning tasks dynamically over time. These tasks are typically offloaded to the nearest available edge server, by considering communication and computational efficiency. However, its operation does not ensure that each server specializes in a specific type of tasks and leads to severe overfitting or catastrophic forgetting of previous tasks. To improve the continual learning (CL) performance of online tasks, we are the first to introduce mixture-of-experts (MoE) theory in MEC networks and save MEC operation from the increasing generalization error over time. Our MoE theory treats each MEC server as an expert and dynamically adapts to changes in server availability by considering data transfer and computation time. Unlike existing MoE models designed for offline tasks, ours is tailored for handling continuous streams of tasks in the MEC environment. We introduce an adaptive gating network in MEC to adaptively identify and route newly arrived tasks of unknown data distributions to available experts, enabling each expert to specialize in a specific type of tasks upon convergence. We derived the minimum number of experts required to match each task with a specialized, available expert. Our MoE approach consistently reduces the overall generalization error over time, unlike the traditional MEC approach. Interestingly, when the number of experts is sufficient to ensure convergence, adding more experts delays the convergence time and worsens the generalization error. Finally, we perform extensive experiments on real datasets in deep neural networks (DNNs) to verify our theoretical results.
- Education (0.93)
- Information Technology > Networks (0.49)
- Telecommunications > Networks (0.47)
Consistency Model is an Effective Posterior Sample Approximation for Diffusion Inverse Solvers
Xu, Tongda, Zhu, Ziran, Li, Jian, He, Dailan, Wang, Yuanyuan, Sun, Ming, Li, Ling, Qin, Hongwei, Wang, Yan, Liu, Jingjing, Zhang, Ya-Qin
Diffusion Inverse Solvers (DIS) are designed to sample from the conditional distribution $p_{\theta}(X_0|y)$, with a predefined diffusion model $p_{\theta}(X_0)$, an operator $f(\cdot)$, and a measurement $y=f(x'_0)$ derived from an unknown image $x'_0$. Existing DIS estimate the conditional score function by evaluating $f(\cdot)$ with an approximated posterior sample drawn from $p_{\theta}(X_0|X_t)$. However, most prior approximations rely on the posterior means, which may not lie in the support of the image distribution, thereby potentially diverge from the appearance of genuine images. Such out-of-support samples may significantly degrade the performance of the operator $f(\cdot)$, particularly when it is a neural network. In this paper, we introduces a novel approach for posterior approximation that guarantees to generate valid samples within the support of the image distribution, and also enhances the compatibility with neural network-based operators $f(\cdot)$. We first demonstrate that the solution of the Probability Flow Ordinary Differential Equation (PF-ODE) with an initial value $x_t$ yields an effective posterior sample $p_{\theta}(X_0|X_t=x_t)$. Based on this observation, we adopt the Consistency Model (CM), which is distilled from PF-ODE, for posterior sampling. Furthermore, we design a novel family of DIS using only CM. Through extensive experiments, we show that our proposed method for posterior sample approximation substantially enhance the effectiveness of DIS for neural network operators $f(\cdot)$ (e.g., in semantic segmentation). Additionally, our experiments demonstrate the effectiveness of the new CM-based inversion techniques. The source code is provided in the supplementary material.
- Europe > United Kingdom > North Sea > Southern North Sea (0.04)
- Europe > United Kingdom > England > Cambridgeshire > Cambridge (0.04)
Predictive Handover Strategy in 6G and Beyond: A Deep and Transfer Learning Approach
Panitsas, Ioannis, Mudvari, Akrit, Maatouk, Ali, Tassiulas, Leandros
Next-generation cellular networks will evolve into more complex and virtualized systems, employing machine learning for enhanced optimization and leveraging higher frequency bands and denser deployments to meet varied service demands. This evolution, while bringing numerous advantages, will also pose challenges, especially in mobility management, as it will increase the overall number of handovers due to smaller coverage areas and the higher signal attenuation. To address these challenges, we propose a deep learning based algorithm for predicting the future serving cell utilizing sequential user equipment measurements to minimize the handover failures and interruption time. Our algorithm enables network operators to dynamically adjust handover triggering events or incorporate UAV base stations for enhanced coverage and capacity, optimizing network objectives like load balancing and energy efficiency through transfer learning techniques. Our framework complies with the O-RAN specifications and can be deployed in a Near-Real-Time RAN Intelligent Controller as an xApp leveraging the E2SM-KPM service model. The evaluation results demonstrate that our algorithm achieves a 92% accuracy in predicting future serving cells with high probability. Finally, by utilizing transfer learning, our algorithm significantly reduces the retraining time by 91% and 77% when new handover trigger decisions or UAV base stations are introduced to the network dynamically.
- North America > United States > Connecticut > New Haven County > New Haven (0.04)
- North America > United States > California > Los Angeles County > Pasadena (0.04)
- Europe > Spain > Galicia > Madrid (0.04)
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- Information Technology > Networks (0.67)
- Telecommunications > Networks (0.49)
The power of collaboration: power grid control with multi-agent reinforcement learning
In our rapidly evolving world, effectively managing power grids has become increasingly challenging, primarily due to rising penetration of renewable energy sources and the growing energy demand. While renewable sources like wind and solar power are crucial on our path towards a 100% clean energy future, they introduce considerable uncertainty in power systems, thereby challenging conventional control strategies. Transmission line congestions are often mitigated using redispatch actions, which entail adjusting the power output of various controllable generators in the network. However, these actions are costly and may not fully resolve all issues. Adaptively changing the network using topological actions, such as line switching and bus switching, is an under-utilized yet very cost-effective strategy for network operators facing rapidly shifting energy patterns and contingencies. To navigate the complex and large combinatorial space of all topological actions, we propose a Hierarchical Multi-Agent Reinforcement Learning (MARL) framework in our paper "Multi-Agent Reinforcement Learning for Power Grid Topology Optimization" [1] (a preprint submitted to PSCC 2024).
Enhancing Network Management Using Code Generated by Large Language Models
Mani, Sathiya Kumaran, Zhou, Yajie, Hsieh, Kevin, Segarra, Santiago, Chandra, Ranveer, Kandula, Srikanth
Analyzing network topologies and communication graphs plays a crucial role in contemporary network management. However, the absence of a cohesive approach leads to a challenging learning curve, heightened errors, and inefficiencies. In this paper, we introduce a novel approach to facilitate a natural-language-based network management experience, utilizing large language models (LLMs) to generate task-specific code from natural language queries. This method tackles the challenges of explainability, scalability, and privacy by allowing network operators to inspect the generated code, eliminating the need to share network data with LLMs, and concentrating on application-specific requests combined with general program synthesis techniques. We design and evaluate a prototype system using benchmark applications, showcasing high accuracy, cost-effectiveness, and the potential for further enhancements using complementary program synthesis techniques.
- Telecommunications > Networks (0.89)
- Information Technology > Networks (0.89)
- Information Technology > Security & Privacy (0.68)
Self-Supervised Transformer Architecture for Change Detection in Radio Access Networks
Kozlov, Igor, Rivkin, Dmitriy, Chang, Wei-Di, Wu, Di, Liu, Xue, Dudek, Gregory
Radio Access Networks (RANs) for telecommunications represent large agglomerations of interconnected hardware consisting of hundreds of thousands of transmitting devices (cells). Such networks undergo frequent and often heterogeneous changes caused by network operators, who are seeking to tune their system parameters for optimal performance. The effects of such changes are challenging to predict and will become even more so with the adoption of 5G/6G networks. Therefore, RAN monitoring is vital for network operators. We propose a self-supervised learning framework that leverages self-attention and self-distillation for this task. It works by detecting changes in Performance Measurement data, a collection of time-varying metrics which reflect a set of diverse measurements of the network performance at the cell level. Experimental results show that our approach outperforms the state of the art by 4% on a real-world based dataset consisting of about hundred thousands timeseries. It also has the merits of being scalable and generalizable. This allows it to provide deep insight into the specifics of mode of operation changes while relying minimally on expert knowledge.
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- North America > United States > Louisiana > Orleans Parish > New Orleans (0.04)
- North America > Trinidad and Tobago > Trinidad > Arima > Arima (0.04)
- Telecommunications > Networks (0.69)
- Information Technology > Networks (0.69)
- Information Technology > Communications > Networks (1.00)
- Information Technology > Artificial Intelligence > Natural Language (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Statistical Learning (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks > Deep Learning (1.00)
Top 10 Dark Web Analytics Tools for Network Operators
The phenomena of the internet is constantly evolving and these developing circumstances need constant monitoring. We are all familiar with the concept of the dark web and the terrifying practices that are conducted through these platforms. Pretty much everything we do on basic internet platforms is visible, traceable, and is being monitored by government officials and other companies. However, the dark web is beyond our reach. The deep web consists of various areas that carry out malicious activities including hacking major organizations, illicit drug trades, terrorist operations, and others.
- Law Enforcement & Public Safety (0.94)
- Information Technology > Security & Privacy (0.54)
- Telecommunications > Networks (0.42)
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