Temporal Statistical Analysis of Degree Distributions in an Undirected Landline Phone Call Network Graph Series

This article aims to provide new results about the intraday degree sequence distribution considering phone call network graph evolution in time. More specifically, it tackles the following problem. Given a large amount of landline phone call data records, what is the best way to summarize the distin...

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Main Author: Orgeta Gjermëni
Format: Article
Language:English
Published: MDPI AG 2017-10-01
Series:Data
Subjects:
Online Access:https://www.mdpi.com/2306-5729/2/4/33
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spelling doaj-2ed1cffebe1a4ba786c801559b84d1462020-11-25T01:29:27ZengMDPI AGData2306-57292017-10-01243310.3390/data2040033data2040033Temporal Statistical Analysis of Degree Distributions in an Undirected Landline Phone Call Network Graph SeriesOrgeta Gjermëni0Department of Mathematics, University Ismail Qemali, Str. Kosova, 9400 Vlore, AlbaniaThis article aims to provide new results about the intraday degree sequence distribution considering phone call network graph evolution in time. More specifically, it tackles the following problem. Given a large amount of landline phone call data records, what is the best way to summarize the distinct number of calling partners per client per day? In order to answer this question, a series of undirected phone call network graphs is constructed based on data from a local telecommunication source in Albania. All network graphs of the series are simplified. Further, a longitudinal temporal study is made on this network graphs series related to the degree distributions. Power law and log-normal distribution fittings on the degree sequence are compared on each of the network graphs of the series. The maximum likelihood method is used to estimate the parameters of the distributions, and a Kolmogorov–Smirnov test associated with a p-value is used to define the plausible models. A direct distribution comparison is made through a Vuong test in the case that both distributions are plausible. Another goal was to describe the parameters’ distributions’ shape. A Shapiro-Wilk test is used to test the normality of the data, and measures of shape are used to define the distributions’ shape. Study findings suggested that log-normal distribution models better the intraday degree sequence data of the network graphs. It is not possible to say that the distributions of log-normal parameters are normal.https://www.mdpi.com/2306-5729/2/4/33longitudinaldegree distributionnetwork graphphone call datapower lawlog-normal
collection DOAJ
language English
format Article
sources DOAJ
author Orgeta Gjermëni
spellingShingle Orgeta Gjermëni
Temporal Statistical Analysis of Degree Distributions in an Undirected Landline Phone Call Network Graph Series
Data
longitudinal
degree distribution
network graph
phone call data
power law
log-normal
author_facet Orgeta Gjermëni
author_sort Orgeta Gjermëni
title Temporal Statistical Analysis of Degree Distributions in an Undirected Landline Phone Call Network Graph Series
title_short Temporal Statistical Analysis of Degree Distributions in an Undirected Landline Phone Call Network Graph Series
title_full Temporal Statistical Analysis of Degree Distributions in an Undirected Landline Phone Call Network Graph Series
title_fullStr Temporal Statistical Analysis of Degree Distributions in an Undirected Landline Phone Call Network Graph Series
title_full_unstemmed Temporal Statistical Analysis of Degree Distributions in an Undirected Landline Phone Call Network Graph Series
title_sort temporal statistical analysis of degree distributions in an undirected landline phone call network graph series
publisher MDPI AG
series Data
issn 2306-5729
publishDate 2017-10-01
description This article aims to provide new results about the intraday degree sequence distribution considering phone call network graph evolution in time. More specifically, it tackles the following problem. Given a large amount of landline phone call data records, what is the best way to summarize the distinct number of calling partners per client per day? In order to answer this question, a series of undirected phone call network graphs is constructed based on data from a local telecommunication source in Albania. All network graphs of the series are simplified. Further, a longitudinal temporal study is made on this network graphs series related to the degree distributions. Power law and log-normal distribution fittings on the degree sequence are compared on each of the network graphs of the series. The maximum likelihood method is used to estimate the parameters of the distributions, and a Kolmogorov–Smirnov test associated with a p-value is used to define the plausible models. A direct distribution comparison is made through a Vuong test in the case that both distributions are plausible. Another goal was to describe the parameters’ distributions’ shape. A Shapiro-Wilk test is used to test the normality of the data, and measures of shape are used to define the distributions’ shape. Study findings suggested that log-normal distribution models better the intraday degree sequence data of the network graphs. It is not possible to say that the distributions of log-normal parameters are normal.
topic longitudinal
degree distribution
network graph
phone call data
power law
log-normal
url https://www.mdpi.com/2306-5729/2/4/33
work_keys_str_mv AT orgetagjermeni temporalstatisticalanalysisofdegreedistributionsinanundirectedlandlinephonecallnetworkgraphseries
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