Graphical Models in Characterizing the Dependency Relationship in Wireless Networks and Social Networks
Semi-Markov processes have become increasingly important in probability and statistical modeling, which have found applications in traffic analysis, reliability and maintenance, survival analysis, performance evaluation, biology, DNA analysis, risk processes, insurance and finance, earthquake modeli...
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ndltd-LSU-oai-etd.lsu.edu-etd-07142014-1346282014-08-02T03:52:07Z Graphical Models in Characterizing the Dependency Relationship in Wireless Networks and Social Networks Vu, Phuoc Doan Huu Electrical & Computer Engineering Semi-Markov processes have become increasingly important in probability and statistical modeling, which have found applications in traffic analysis, reliability and maintenance, survival analysis, performance evaluation, biology, DNA analysis, risk processes, insurance and finance, earthquake modeling, etc. In the first part of this thesis, our focus is on applying semi-Markov processes to modeling the on-off duty cycles of different nodes in wireless networks. More specifically, we are interested in restoration of statistics of individual occupancy patterns of specific users based on wireless RF observation traces. In particular, we present a novel approach to finding the statistics of several operations, namely down-sampling, superposition and mislabelling, of a discrete time semi-Markov process in terms of the sojourn time distributions and states transition matrix of the resulting process. The resulting process, after those operations, is also a semi-Markov processes or a Markov renewal process. We show that the statistics of the original sequence before the superposition operation of two semi Markov processes can be generally recovered. However the statistics of the original sequence cannot be recovered under the down-sampling operation, namely the probability transition matrix and the sojourn time distribution properties are distorted after the down-sampling. Simulation and numerical results further demonstrate the validity of our theoretical findings. Our results thus provide a more profound understanding on the limitation of applying semi-Markov models in characterizing and learning the dynamics of nodes' activities in wireless networks. In the second portion of the thesis a review is provided about several graphical models that have been widely used in literature recently to characterize the relationships between different users in social networks, the influence of the neighboring nodes in the networks or the semantic similarity in different contexts. Wei, Shuangqing Vaidyanathan, Ramachandran Zhang, Jian LSU 2014-08-01 text application/pdf http://etd.lsu.edu/docs/available/etd-07142014-134628/ http://etd.lsu.edu/docs/available/etd-07142014-134628/ en unrestricted I hereby certify that, if appropriate, I have obtained and attached herein a written permission statement from the owner(s) of each third party copyrighted matter to be included in my thesis, dissertation, or project report, allowing distribution as specified below. I certify that the version I submitted is the same as that approved by my advisory committee. I hereby grant to LSU or its agents the non-exclusive license to archive and make accessible, under the conditions specified below and in appropriate University policies, my thesis, dissertation, or project report in whole or in part in all forms of media, now or hereafter known. I retain all other ownership rights to the copyright of the thesis, dissertation or project report. I also retain the right to use in future works (such as articles or books) all or part of this thesis, dissertation, or project report. |
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Electrical & Computer Engineering |
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Electrical & Computer Engineering Vu, Phuoc Doan Huu Graphical Models in Characterizing the Dependency Relationship in Wireless Networks and Social Networks |
description |
Semi-Markov processes have become increasingly important in probability and statistical modeling, which have found applications in traffic analysis, reliability and maintenance, survival analysis, performance evaluation, biology, DNA analysis, risk processes, insurance and finance, earthquake modeling, etc. In the first part of this thesis, our focus is on applying semi-Markov processes to modeling the on-off duty cycles of different nodes in wireless networks. More specifically, we are interested in restoration of statistics of individual occupancy patterns of specific users based on wireless RF observation traces. In particular, we present a novel approach to finding the statistics of several operations, namely down-sampling, superposition and mislabelling, of a discrete time semi-Markov process in terms of the sojourn time distributions and states transition matrix of the resulting process. The resulting process, after those operations, is also a semi-Markov processes or a Markov renewal process. We show that the statistics of the original sequence before the superposition operation of two semi Markov processes can be generally recovered. However the statistics of the original sequence cannot be recovered under the down-sampling operation, namely the probability transition matrix and the sojourn time distribution properties are distorted after the down-sampling. Simulation and numerical results further demonstrate the validity of our theoretical findings. Our results thus provide a more profound understanding on the limitation of applying semi-Markov models in characterizing and learning the dynamics of nodes' activities in wireless networks.
In the second portion of the thesis a review is provided about several graphical models that have been widely used in literature recently to characterize the relationships between different users in social networks, the influence of the neighboring nodes in the networks or the semantic similarity in different contexts. |
author2 |
Wei, Shuangqing |
author_facet |
Wei, Shuangqing Vu, Phuoc Doan Huu |
author |
Vu, Phuoc Doan Huu |
author_sort |
Vu, Phuoc Doan Huu |
title |
Graphical Models in Characterizing the Dependency Relationship in Wireless Networks and Social Networks |
title_short |
Graphical Models in Characterizing the Dependency Relationship in Wireless Networks and Social Networks |
title_full |
Graphical Models in Characterizing the Dependency Relationship in Wireless Networks and Social Networks |
title_fullStr |
Graphical Models in Characterizing the Dependency Relationship in Wireless Networks and Social Networks |
title_full_unstemmed |
Graphical Models in Characterizing the Dependency Relationship in Wireless Networks and Social Networks |
title_sort |
graphical models in characterizing the dependency relationship in wireless networks and social networks |
publisher |
LSU |
publishDate |
2014 |
url |
http://etd.lsu.edu/docs/available/etd-07142014-134628/ |
work_keys_str_mv |
AT vuphuocdoanhuu graphicalmodelsincharacterizingthedependencyrelationshipinwirelessnetworksandsocialnetworks |
_version_ |
1716710035445252096 |