DIGITAL CYBER FORENSICS CONTRIBUTION FOR EMAIL ANALYSIS
In the past two decades, the Internet has become as open, publicly and widely used as a source of data transmission and exchanging the messages between criminals, terrorists and those who have illegal motivations. Moreover, exchanging important data between various military and financial institutio...
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Format: | Article |
Language: | Arabic |
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Mustansiriyah University/College of Engineering
2020-07-01
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Series: | Journal of Engineering and Sustainable Development |
Subjects: | |
Online Access: | https://jeasd.uomustansiriyah.edu.iq/index.php/jeasd/article/view/112 |
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author | Sally Dakheel Hamdi Abdulkareem Merhej Radhi |
author_facet | Sally Dakheel Hamdi Abdulkareem Merhej Radhi |
author_sort | Sally Dakheel Hamdi |
collection | DOAJ |
description |
In the past two decades, the Internet has become as open, publicly and widely used as a source of data transmission and exchanging the messages between criminals, terrorists and those who have illegal motivations. Moreover, exchanging important data between various military and financial institutions, even ordinary citizens. From this view, there is one of the important means of exchanging information widely used on the Internet medium is e-mail. Email messages are digital evidence that has been become one of the important means to adopt by courts in many countries and societies as evidence relied upon in condemnation. This paper presents a distinct technique for classifying emails based on data processing and mining, trimming, refinement, and then adapts several algorithms to classify these emails and then using SWARM algorithm to obtain practical and accurate results also using hybrid English lexical dictionary SentiWordNet3.0 for email forensic analysis then deal with a machine learning algorithm. The proposed system is capable of learning in an environment with large and variable data. To test the proposed system, have to select available data which Enron Data set. A high accuracy rate (95%) was obtained, which is higher than the classification rates mentioned in previous research papers presented in section 2 in this paper.
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first_indexed | 2024-03-12T00:12:08Z |
format | Article |
id | doaj.art-80f826e59baf4fd49bc823cf8270fc92 |
institution | Directory Open Access Journal |
issn | 2520-0917 2520-0925 |
language | Arabic |
last_indexed | 2024-03-12T00:12:08Z |
publishDate | 2020-07-01 |
publisher | Mustansiriyah University/College of Engineering |
record_format | Article |
series | Journal of Engineering and Sustainable Development |
spelling | doaj.art-80f826e59baf4fd49bc823cf8270fc922023-09-15T22:01:16ZaraMustansiriyah University/College of EngineeringJournal of Engineering and Sustainable Development2520-09172520-09252020-07-01244DIGITAL CYBER FORENSICS CONTRIBUTION FOR EMAIL ANALYSISSally Dakheel Hamdi0Abdulkareem Merhej Radhi 1Information & Communication Engineering Department, Al- Nahrain University, Baghdad, IraqInformation & Communication Engineering Department, Al- Nahrain University, Baghdad, Iraq In the past two decades, the Internet has become as open, publicly and widely used as a source of data transmission and exchanging the messages between criminals, terrorists and those who have illegal motivations. Moreover, exchanging important data between various military and financial institutions, even ordinary citizens. From this view, there is one of the important means of exchanging information widely used on the Internet medium is e-mail. Email messages are digital evidence that has been become one of the important means to adopt by courts in many countries and societies as evidence relied upon in condemnation. This paper presents a distinct technique for classifying emails based on data processing and mining, trimming, refinement, and then adapts several algorithms to classify these emails and then using SWARM algorithm to obtain practical and accurate results also using hybrid English lexical dictionary SentiWordNet3.0 for email forensic analysis then deal with a machine learning algorithm. The proposed system is capable of learning in an environment with large and variable data. To test the proposed system, have to select available data which Enron Data set. A high accuracy rate (95%) was obtained, which is higher than the classification rates mentioned in previous research papers presented in section 2 in this paper. https://jeasd.uomustansiriyah.edu.iq/index.php/jeasd/article/view/112K-meansSWARMdigital forensicmining |
spellingShingle | Sally Dakheel Hamdi Abdulkareem Merhej Radhi DIGITAL CYBER FORENSICS CONTRIBUTION FOR EMAIL ANALYSIS Journal of Engineering and Sustainable Development K-means SWARM digital forensic mining |
title | DIGITAL CYBER FORENSICS CONTRIBUTION FOR EMAIL ANALYSIS |
title_full | DIGITAL CYBER FORENSICS CONTRIBUTION FOR EMAIL ANALYSIS |
title_fullStr | DIGITAL CYBER FORENSICS CONTRIBUTION FOR EMAIL ANALYSIS |
title_full_unstemmed | DIGITAL CYBER FORENSICS CONTRIBUTION FOR EMAIL ANALYSIS |
title_short | DIGITAL CYBER FORENSICS CONTRIBUTION FOR EMAIL ANALYSIS |
title_sort | digital cyber forensics contribution for email analysis |
topic | K-means SWARM digital forensic mining |
url | https://jeasd.uomustansiriyah.edu.iq/index.php/jeasd/article/view/112 |
work_keys_str_mv | AT sallydakheelhamdi digitalcyberforensicscontributionforemailanalysis AT abdulkareemmerhejradhi digitalcyberforensicscontributionforemailanalysis |