A two level learning model for authorship authentication

Nowadays, forensic authorship authentication plays a vital role in identifying the number of unknown authors as a result of the world’s rapidly rising internet use. This paper presents two-level learning techniques for authorship authentication. The learning technique is supplied with linguistic kno...

Full description

Bibliographic Details
Main Authors: Ahmed Taha, Heba M. Khalil, Tarek El-shishtawy
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2021-01-01
Series:PLoS ONE
Online Access:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8341647/?tool=EBI
id doaj-b97e36d3593a465683b5febab36c892e
record_format Article
spelling doaj-b97e36d3593a465683b5febab36c892e2021-08-08T04:31:08ZengPublic Library of Science (PLoS)PLoS ONE1932-62032021-01-01168A two level learning model for authorship authenticationAhmed TahaHeba M. KhalilTarek El-shishtawyNowadays, forensic authorship authentication plays a vital role in identifying the number of unknown authors as a result of the world’s rapidly rising internet use. This paper presents two-level learning techniques for authorship authentication. The learning technique is supplied with linguistic knowledge, statistical features, and vocabulary features to enhance its efficiency instead of learning only. The linguistic knowledge is represented through lexical analysis features such as part of speech. In this study, a two-level classifier has been presented to capture the best predictive performance for identifying authorship. The first classifier is based on vocabulary features that detect the frequency with which each author uses certain words. This classifier’s results are fed to the second one which is based on a learning technique. It depends on lexical, statistical and linguistic features. All of the three sets of features describe the author’s writing styles in numerical forms. Through this work, many new features are proposed for identifying the author’s writing style. Although, the proposed new methodology is tested for Arabic writings, it is general and can be applied to any language. According to the used machine learning models, the experiment carried out shows that the trained two-level classifier achieves an accuracy ranging from 94% to 96.16%.https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8341647/?tool=EBI
collection DOAJ
language English
format Article
sources DOAJ
author Ahmed Taha
Heba M. Khalil
Tarek El-shishtawy
spellingShingle Ahmed Taha
Heba M. Khalil
Tarek El-shishtawy
A two level learning model for authorship authentication
PLoS ONE
author_facet Ahmed Taha
Heba M. Khalil
Tarek El-shishtawy
author_sort Ahmed Taha
title A two level learning model for authorship authentication
title_short A two level learning model for authorship authentication
title_full A two level learning model for authorship authentication
title_fullStr A two level learning model for authorship authentication
title_full_unstemmed A two level learning model for authorship authentication
title_sort two level learning model for authorship authentication
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2021-01-01
description Nowadays, forensic authorship authentication plays a vital role in identifying the number of unknown authors as a result of the world’s rapidly rising internet use. This paper presents two-level learning techniques for authorship authentication. The learning technique is supplied with linguistic knowledge, statistical features, and vocabulary features to enhance its efficiency instead of learning only. The linguistic knowledge is represented through lexical analysis features such as part of speech. In this study, a two-level classifier has been presented to capture the best predictive performance for identifying authorship. The first classifier is based on vocabulary features that detect the frequency with which each author uses certain words. This classifier’s results are fed to the second one which is based on a learning technique. It depends on lexical, statistical and linguistic features. All of the three sets of features describe the author’s writing styles in numerical forms. Through this work, many new features are proposed for identifying the author’s writing style. Although, the proposed new methodology is tested for Arabic writings, it is general and can be applied to any language. According to the used machine learning models, the experiment carried out shows that the trained two-level classifier achieves an accuracy ranging from 94% to 96.16%.
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8341647/?tool=EBI
work_keys_str_mv AT ahmedtaha atwolevellearningmodelforauthorshipauthentication
AT hebamkhalil atwolevellearningmodelforauthorshipauthentication
AT tarekelshishtawy atwolevellearningmodelforauthorshipauthentication
AT ahmedtaha twolevellearningmodelforauthorshipauthentication
AT hebamkhalil twolevellearningmodelforauthorshipauthentication
AT tarekelshishtawy twolevellearningmodelforauthorshipauthentication
_version_ 1721216626346426368