Dark Web Illegal Activities Crawling and Classifying Using Data Mining Techniques
Dublin Core
Title
Dark Web Illegal Activities Crawling and Classifying Using Data Mining Techniques
Subject
Linear Support Vector Classifier, dark Web, Naïve Bayes
Description
Dark web is a canopy concept that denotes any kind of illicit activities carried out by anonymous persons or organizations, thereby making it difficult to trace. The illicit content on the dark web is constantly updated and changed. The collection and classification of such illegal activities are challenging tasks, as they are difficult and time-consuming. This problem has in recent times emerged as an issue that requires quick attention from both the industry and academia. To this end, efforts have been made in this article a crawler that is capable of collecting dark web pages, cleaning them, and saving them in a document database, is proposed. The crawler carries out an automatic classification of the gathered web pages into five classes. The classifiers used in classifying the pages include Linear Support Vector Classifier (SVC), Naïve Bayes (NB), and Document Frequency (TF-IDF). The experimental results revealed that an accuracy rate of 92% and 81% were achieved by SVC and NB, respectively.
Creator
Alaidi , Abdul Hadi M.
Al_airaji, Roa'a M.
Alrikabi, Haider Th.Salim
Aljazaery, Ibtisam A.
Abbood, Saif Hameed
Source
International Journal of Interactive Mobile Technologies (iJIM); Vol. 16 No. 10 (2022); pp. 122-139
1865-7923
Publisher
International Association of Online Engineering (IAOE), Vienna, Austria
Date
2022-05-24
Rights
Copyright (c) 2022 Haider Th.Salim Alrikabi, Abdul Hadi M. Alaidi , Roa'a M. Al_airaji, Ibtisam A. Aljazaery, Saif Hameed Abbood
https://creativecommons.org/licenses/by/4.0
Relation
Format
application/pdf
Language
eng
Type
info:eu-repo/semantics/article
info:eu-repo/semantics/publishedVersion
Peer-reviewed Article
Identifier
Citation
Alaidi , Abdul Hadi M. et al., Dark Web Illegal Activities Crawling and Classifying Using Data Mining Techniques, International Association of Online Engineering (IAOE), Vienna, Austria, 2022, accessed November 23, 2024, https://igi.indrastra.com/items/show/2275