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二部分随机块模型的精确恢复判别
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作者 赵涛 冯群强 《应用概率统计》 北大核心 2025年第1期136-151,共16页
社区检测是网络数据统计分析的核心问题之一.本文研究了在非对称稀疏二部分随机块模型中社区结构能否达成精确恢复的条件,主要表现为在极大似然方法下给出了一个仅与相对稠密社区内部连边概率和两社区间的连边概率有关的阈值.此外,我们... 社区检测是网络数据统计分析的核心问题之一.本文研究了在非对称稀疏二部分随机块模型中社区结构能否达成精确恢复的条件,主要表现为在极大似然方法下给出了一个仅与相对稠密社区内部连边概率和两社区间的连边概率有关的阈值.此外,我们通过谱聚类方法进行了一系列数据模拟试验,模拟结果很好地验证了本文的结论. 展开更多
关键词 统计网络模型 社区结构 社区检测 精确恢复
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Probabilistic Top-k Query:Model and Application on Web Traffic Analysis 被引量:1
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作者 Xiaolin Gui Jun Liu +2 位作者 Qiujian Lv Chao Dong Zhenming Lei 《China Communications》 SCIE CSCD 2016年第6期123-137,共15页
Top-k ranking of websites according to traffic volume is important for Internet Service Providers(ISPs) to understand network status and optimize network resources. However, the ranking result always has a big deviati... Top-k ranking of websites according to traffic volume is important for Internet Service Providers(ISPs) to understand network status and optimize network resources. However, the ranking result always has a big deviation with actual rank for the existence of unknown web traffic, which cannot be identified accurately under current techniques. In this paper, we introduce a novel method to approximate the actual rank. This method associates unknown web traffic with websites according to statistical probabilities. Then, we construct a probabilistic top-k query model to rank websites. We conduct several experiments by using real HTTP traffic traces collected from a commercial ISP covering an entire city in northern China. Experimental results show that the proposed techniques can reduce the deviation existing between the ground truth and the ranking results vastly. In addition, we find that the websites providing video service have higher ratio of unknown IP as well as higher ratio of unknown traffic than the websites providing text web page service. Specifically, we find that the top-3 video websites have more than 90% of unknown web traffic. All these findings are helpful for ISPs understanding network status and deploying Content Distributed Network(CDN). 展开更多
关键词 top-k query traffic model temporal bipartite graph uncertain data unknown traffic
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Application of artificial neural networks and multivariate statistics to estimate UCS using textural characteristics 被引量:15
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作者 Amin Manouchehrian Mostafa Sharifzadeh Rasoul Hamidzadeh Moghadam 《International Journal of Mining Science and Technology》 SCIE EI 2012年第2期229-236,共8页
Before any rock engineering project,mechanical parameters of rocks such as uniaxial compressive strength and young modulus of intact rock get measured using laboratory or in-situ tests,but in some situations preparing... Before any rock engineering project,mechanical parameters of rocks such as uniaxial compressive strength and young modulus of intact rock get measured using laboratory or in-situ tests,but in some situations preparing the required specimens is impossible.By this time,several models have been established to evaluate UCS and E from rock substantial properties.Artificial neural networks are powerful tools which are employed to establish predictive models and results have shown the priority of this technique compared to classic statistical techniques.In this paper,ANN and multivariate statistical models considering rock textural characteristics have been established to estimate UCS of rock and to validate the responses of the established models,they were compared with laboratory results.For this purpose a data set for 44 samples of sandstone was prepared and for each sample some textural characteristics such as void,mineral content and grain size as well as UCS were determined.To select the best predictors as inputs of the UCS models,this data set was subjected to statistical analyses comprising basic descriptive statistics,bivariate correlation,curve fitting and principal component analyses.Results of such analyses have shown that void,ferroan calcitic cement,argillaceous cement and mica percentage have the most effect on USC.Two predictive models for UCS were developed using these variables by ANN and linear multivariate regression.Results have shown that by using simple textural characteristics such as mineral content,cement type and void,strength of studied sandstone can be estimated with acceptable accuracy.ANN and multivariate statistical UCS models,revealed responses with 0.87 and 0.76 regressions,respectively which proves higher potential of ANN model for predicting UCS compared to classic statistical models. 展开更多
关键词 Textural characteristicsUniaxial compressive strengthPredictive modelsArtificial neural networksMultivariate statistics
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Trust Type Based Trust Bootstrapping Model of Computer Network Collaborative Defense 被引量:2
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作者 YU Yang XIA Chunhe +1 位作者 LI Shiying LI Zhong 《China Communications》 SCIE CSCD 2015年第12期133-146,共14页
In the system of Computer Network Collaborative Defense(CNCD),it is difficult to evaluate the trustworthiness of defense agents which are newly added to the system,since they lack historical interaction for trust eval... In the system of Computer Network Collaborative Defense(CNCD),it is difficult to evaluate the trustworthiness of defense agents which are newly added to the system,since they lack historical interaction for trust evaluation.This will lead that the newly added agents could not get reasonable initial trustworthiness,and affect the whole process of trust evaluation.To solve this problem in CNCD,a trust type based trust bootstrapping model was introduced in this research.First,the division of trust type,trust utility and defense cost were discussed.Then the constraints of defense tasks were analyzed based on game theory.According to the constraints obtained,the trust type of defense agents was identified and the initial trustworthiness was assigned to defense agents.The simulated experiment shows that the methods proposed have lower failure rate of defense tasks and better adaptability in the respect of defense task execution. 展开更多
关键词 trust defense constraints adaptability behave execution interactive reputation Collaborative utility
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