Statistical analysis of network data flows and predictions using statistical and machine learning regression models
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BRAC University
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Abstract
This paper presents a statistical analysis of measurements relating to network’s data
flows and predictions using statistical and machine learning regression models. The
study’s objective is to use statistical methods and machine learning regression models
to analyze and make predictions on a spatio-temporal traffic volume dataset
obtained by Dr. Liang Zhao (Emory University), from sensors along two major
highways in Northern Virginia and Washington, D.C. This work aims to answer
some fundamental questions related to the network such as: 1. What statistical
inferences and descriptive analysis can be made on the network’s data flow? 2. How
can one obtain the Routine Matrix of the Network from the Adjacency Matrix? 3.
How can one employ various techniques, such as Regularization and Singular Value
Decomposition (SVD), to solve the singularity or ill posed nature of the network
in the Traffic Matrix Estimation?, and 4. How can one apply Machine Learning
regression models, such as Support Vector Regressor (SVR) and XGBoost Regressor,
to make predictions on the Network’s flow volume? Concepts in this work or
paper can be practically applied on other real world networks to analyze and make
predictions on the network’s data flow.
LC Subject Headings
Description
This thesis is submitted in partial fulfilment of the requirements for the degree of Bachelor of Science in Mathematics, 2024.
Catalogued from the PDF version of thesis.
Includes bibliographical references (pages 47-48).
Catalogued from the PDF version of thesis.
Includes bibliographical references (pages 47-48).
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Thesis