期刊文献+
共找到2篇文章
< 1 >
每页显示 20 50 100
Decentralized content sharing in mobile ad-hoc networks:A survey
1
作者 Shahriar Kaisar Joarder Kamruzzaman +1 位作者 Gour Karmakar Md Mamunur Rashid 《Digital Communications and Networks》 SCIE CSCD 2023年第6期1363-1398,共36页
The evolution of smart mobile devices has significantly impacted the way we generate and share contents and introduced a huge volume of Internet traffic.To address this issue and take advantage of the short-range comm... The evolution of smart mobile devices has significantly impacted the way we generate and share contents and introduced a huge volume of Internet traffic.To address this issue and take advantage of the short-range communication capabilities of smart mobile devices,the decentralized content sharing approach has emerged as a suitable and promising alternative.Decentralized content sharing uses a peer-to-peer network among colocated smart mobile device users to fulfil content requests.Several articles have been published to date to address its different aspects including group management,interest extraction,message forwarding,participation incentive,and content replication.This survey paper summarizes and critically analyzes recent advancements in decentralized content sharing and highlights potential research issues that need further consideration. 展开更多
关键词 Decentralized content sharing Mobile ad-hoc networks Delay-tolerant networks Flying ad hoc networks Message forwarding Content caching INCENTIVE Group formation Misbehavior detection
下载PDF
Dimension Reduction for Detecting a Difference in Two High-Dimensional Mean Vectors
2
作者 Whitney V. Worley Dean M. Young Phil D. Young 《Open Journal of Statistics》 2021年第1期243-257,共15页
We consider the efficacy of a proposed linear-dimension-reduction method to potentially increase the powers of five hypothesis tests for the difference of two high-dimensional multivariate-normal population-mean vecto... We consider the efficacy of a proposed linear-dimension-reduction method to potentially increase the powers of five hypothesis tests for the difference of two high-dimensional multivariate-normal population-mean vectors with the assumption of homoscedastic covariance matrices. We use Monte Carlo simulations to contrast the empirical powers of the five high-dimensional tests by using both the original data and dimension-reduced data. From the Monte Carlo simulations, we conclude that a test by Thulin [1], when performed with post-dimension-reduced data, yielded the best omnibus power for detecting a difference between two high-dimensional population-mean vectors. We also illustrate the utility of our dimension-reduction method real data consisting of genetic sequences of two groups of patients with Crohn’s disease and ulcerative colitis. 展开更多
关键词 Homoscedastic Covariance Matrices Test Power Monte Carlo Simulation Moore-Penrose Inverse Singular Value Decomposition
下载PDF
上一页 1 下一页 到第
使用帮助 返回顶部