An Improved Framework for Content- and Link-Based Web-Spam Detection: A Combined Approach

In this modern era, people utilise the web to share information and to deliver services and products. The information seekers use different search engines (SEs) such as Google, Bing, and Yahoo as tools to search for products, services, and information. However, web spamming is one of the most signif...

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Main Authors: Asim Shahzad, Nazri Mohd Nawi, Muhammad Zubair Rehman, Abdullah Khan
Format: Article
Language:English
Published: Wiley 2021-01-01
Series:Complexity
Online Access:http://dx.doi.org/10.1155/2021/6625739
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author Asim Shahzad
Nazri Mohd Nawi
Muhammad Zubair Rehman
Abdullah Khan
author_facet Asim Shahzad
Nazri Mohd Nawi
Muhammad Zubair Rehman
Abdullah Khan
author_sort Asim Shahzad
collection DOAJ
description In this modern era, people utilise the web to share information and to deliver services and products. The information seekers use different search engines (SEs) such as Google, Bing, and Yahoo as tools to search for products, services, and information. However, web spamming is one of the most significant issues encountered by SEs because it dramatically affects the quality of SE results. Web spamming’s economic impact is enormous because web spammers index massive free advertising data on SEs to increase the volume of web traffic on a targeted website. Spammers trick an SE into ranking irrelevant web pages higher than relevant web pages in the search engine results pages (SERPs) using different web-spamming techniques. Consequently, these high-ranked unrelated web pages contain insufficient or inappropriate information for the user. To detect the spam web pages, several researchers from industry and academia are working. No efficient technique that is capable of catching all spam web pages on the World Wide Web (WWW) has been presented yet. This research is an attempt to propose an improved framework for content- and link-based web-spam identification. The framework uses stopwords, keywords’ frequency, part of speech (POS) ratio, spam keywords database, and copied-content algorithms for content-based web-spam detection. For link-based web-spam detection, we initially exposed the relationship network behind the link-based web spamming and then used the paid-link database, neighbour pages, spam signals, and link-farm algorithms. Finally, we combined all the content- and link-based spam identification algorithms to identify both types of spam. To conduct experiments and to obtain threshold values, WEBSPAM-UK2006 and WEBSPAM-UK2007 datasets were used. A promising F-measure of 79.6% with 81.2% precision shows the applicability and effectiveness of the proposed approach.
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spelling doaj-art-274c41712f3d4001b9f65cdbbcac9d182025-08-20T03:54:57ZengWileyComplexity1099-05262021-01-01202110.1155/2021/6625739An Improved Framework for Content- and Link-Based Web-Spam Detection: A Combined ApproachAsim Shahzad0Nazri Mohd Nawi1Muhammad Zubair Rehman2Abdullah Khan3Faculty of Computer ScienceSoft Computing & Data Mining Centre (SMC)Faculty of Computing and ITInstitute of Computer Sciences and Information TechnologyIn this modern era, people utilise the web to share information and to deliver services and products. The information seekers use different search engines (SEs) such as Google, Bing, and Yahoo as tools to search for products, services, and information. However, web spamming is one of the most significant issues encountered by SEs because it dramatically affects the quality of SE results. Web spamming’s economic impact is enormous because web spammers index massive free advertising data on SEs to increase the volume of web traffic on a targeted website. Spammers trick an SE into ranking irrelevant web pages higher than relevant web pages in the search engine results pages (SERPs) using different web-spamming techniques. Consequently, these high-ranked unrelated web pages contain insufficient or inappropriate information for the user. To detect the spam web pages, several researchers from industry and academia are working. No efficient technique that is capable of catching all spam web pages on the World Wide Web (WWW) has been presented yet. This research is an attempt to propose an improved framework for content- and link-based web-spam identification. The framework uses stopwords, keywords’ frequency, part of speech (POS) ratio, spam keywords database, and copied-content algorithms for content-based web-spam detection. For link-based web-spam detection, we initially exposed the relationship network behind the link-based web spamming and then used the paid-link database, neighbour pages, spam signals, and link-farm algorithms. Finally, we combined all the content- and link-based spam identification algorithms to identify both types of spam. To conduct experiments and to obtain threshold values, WEBSPAM-UK2006 and WEBSPAM-UK2007 datasets were used. A promising F-measure of 79.6% with 81.2% precision shows the applicability and effectiveness of the proposed approach.http://dx.doi.org/10.1155/2021/6625739
spellingShingle Asim Shahzad
Nazri Mohd Nawi
Muhammad Zubair Rehman
Abdullah Khan
An Improved Framework for Content- and Link-Based Web-Spam Detection: A Combined Approach
Complexity
title An Improved Framework for Content- and Link-Based Web-Spam Detection: A Combined Approach
title_full An Improved Framework for Content- and Link-Based Web-Spam Detection: A Combined Approach
title_fullStr An Improved Framework for Content- and Link-Based Web-Spam Detection: A Combined Approach
title_full_unstemmed An Improved Framework for Content- and Link-Based Web-Spam Detection: A Combined Approach
title_short An Improved Framework for Content- and Link-Based Web-Spam Detection: A Combined Approach
title_sort improved framework for content and link based web spam detection a combined approach
url http://dx.doi.org/10.1155/2021/6625739
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