Statistical L-Moment and L-Moment Ratio Estimation and their Applicability in Network Analysis

Abstract

This research centers on finding the statistical moments, network measures, and statistical tests that are most sensitive to various node degradations for the Barabx13;asi-Albert, Erdos-Rx13;enyi, and Watts-Strogratz network models. Thirty-five different graph structures were simulated for each of the random graph generation algorithms, and sensitivity analysis was undertaken on three different network measures: degree, betweenness, and closeness. In an effort to find the statistical moments that are the most sensitive to degradation within each network, four traditional moments: mean, variance, skewness, and kurtosis as well as three non-traditional moments: L-variance, L-skewness, and L-kurtosis were examined. Each of these moments were examined across 18 degrade settings to highlight which moments were able to detect node degradation the quickest. Closeness and the mean were the most sensitive measures to node degradation across all scenarios. The results showed L-moments and L-moment ratios were less sensitive than traditional moments. Subsequently sample size guidance and confidence interval estimation for univariate and joint L-moments were derived across many common statistical distributions for future research with L-moments.

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Document Details

Document Type
Technical Report
Publication Date
Aug 23, 2019
Accession Number
AD1084932

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  • Timothy S. Anderson

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  • Air Force Institute of Technology

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  • Air Force
  • Algorithms
  • Change Detection
  • Computational Science
  • Data Mining
  • Data Science
  • Information Science
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  • Machine Learning
  • Network Science
  • Probabilistic Models
  • Statistical Algorithms
  • Statistical Analysis
  • Statistical Distributions
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  • Supervised Machine Learning
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