A combined weighting for the feature-based method on topological parameters in semantic taxonomy using social media

The textual analysis has become most important task due to the rapid increase of the number of texts that have been continuously generated in several forms such as posts and chats in social media, emails, articles, and news. The management of these texts requires efficient and effective methods, whi...

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Main Authors: Ali Muttaleb, Hasan, Noorhuzaimi@Karimah, Mohd Noor, Rassem, Taha H., Ahmed Muttaleb, Hasan, Hammood, Waleed A.
Format: Conference or Workshop Item
Language:English
English
Published: IOP Publishing 2020
Subjects:
Online Access:http://umpir.ump.edu.my/id/eprint/27714/1/55.%20A%20combined%20weighting%20for%20the%20feature-based.pdf
http://umpir.ump.edu.my/id/eprint/27714/2/55.1%20A%20combined%20weighting%20for%20the%20feature-based.pdf
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author Ali Muttaleb, Hasan
Noorhuzaimi@Karimah, Mohd Noor
Rassem, Taha H.
Ahmed Muttaleb, Hasan
Hammood, Waleed A.
author_facet Ali Muttaleb, Hasan
Noorhuzaimi@Karimah, Mohd Noor
Rassem, Taha H.
Ahmed Muttaleb, Hasan
Hammood, Waleed A.
author_sort Ali Muttaleb, Hasan
collection UMP
description The textual analysis has become most important task due to the rapid increase of the number of texts that have been continuously generated in several forms such as posts and chats in social media, emails, articles, and news. The management of these texts requires efficient and effective methods, which can handle the linguistic issues that come from the complexity of natural languages. In recent years, the exploitation of semantic features from the lexical sources has been widely investigated by researchers to deal with the issues of “synonymy and ambiguity” in the tasks involved in the Social Media like document clustering. The main challenges of exploiting the lexical knowledge sources such as 1WordNet 3.1 in these tasks are how to integrate the various types of semantic relations for capturing additional semantic evidence, and how to settle the high dimensionality of current semantic representing approaches. In this paper, the proposed weighting of features for a new semantic feature-based method as which combined four things as which is “Synonymy, Hypernym, non-taxonomy, and Glosses”. Therefore, this research proposes a new knowledge-based semantic representation approach for text mining, which can handle the linguistic issues as well as the high dimensionality issue. Thus, the proposed approach consists of two main components: a feature-based method for incorporating the relations in the lexical sources, and a topic-based reduction method to overcome the high dimensionality issue. The proposed method approach will evaluated using WordNet 3.1 in the text clustering and text classification.
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spelling UMPir277142020-09-18T03:31:22Z http://umpir.ump.edu.my/id/eprint/27714/ A combined weighting for the feature-based method on topological parameters in semantic taxonomy using social media Ali Muttaleb, Hasan Noorhuzaimi@Karimah, Mohd Noor Rassem, Taha H. Ahmed Muttaleb, Hasan Hammood, Waleed A. QA76 Computer software The textual analysis has become most important task due to the rapid increase of the number of texts that have been continuously generated in several forms such as posts and chats in social media, emails, articles, and news. The management of these texts requires efficient and effective methods, which can handle the linguistic issues that come from the complexity of natural languages. In recent years, the exploitation of semantic features from the lexical sources has been widely investigated by researchers to deal with the issues of “synonymy and ambiguity” in the tasks involved in the Social Media like document clustering. The main challenges of exploiting the lexical knowledge sources such as 1WordNet 3.1 in these tasks are how to integrate the various types of semantic relations for capturing additional semantic evidence, and how to settle the high dimensionality of current semantic representing approaches. In this paper, the proposed weighting of features for a new semantic feature-based method as which combined four things as which is “Synonymy, Hypernym, non-taxonomy, and Glosses”. Therefore, this research proposes a new knowledge-based semantic representation approach for text mining, which can handle the linguistic issues as well as the high dimensionality issue. Thus, the proposed approach consists of two main components: a feature-based method for incorporating the relations in the lexical sources, and a topic-based reduction method to overcome the high dimensionality issue. The proposed method approach will evaluated using WordNet 3.1 in the text clustering and text classification. IOP Publishing 2020-02 Conference or Workshop Item PeerReviewed pdf en http://umpir.ump.edu.my/id/eprint/27714/1/55.%20A%20combined%20weighting%20for%20the%20feature-based.pdf pdf en http://umpir.ump.edu.my/id/eprint/27714/2/55.1%20A%20combined%20weighting%20for%20the%20feature-based.pdf Ali Muttaleb, Hasan and Noorhuzaimi@Karimah, Mohd Noor and Rassem, Taha H. and Ahmed Muttaleb, Hasan and Hammood, Waleed A. (2020) A combined weighting for the feature-based method on topological parameters in semantic taxonomy using social media. In: 6th International Conference on Software Engineering & Computer Systems (ICSECS 2019) , 25-27 September 2019 , Kuantan, Pahang, Malaysia. pp. 1-11., 769. ISSN 1757-8981 (Print); 1757-899X (Online) https://doi.org/10.1088/1757-899X/769/1/012002
spellingShingle QA76 Computer software
Ali Muttaleb, Hasan
Noorhuzaimi@Karimah, Mohd Noor
Rassem, Taha H.
Ahmed Muttaleb, Hasan
Hammood, Waleed A.
A combined weighting for the feature-based method on topological parameters in semantic taxonomy using social media
title A combined weighting for the feature-based method on topological parameters in semantic taxonomy using social media
title_full A combined weighting for the feature-based method on topological parameters in semantic taxonomy using social media
title_fullStr A combined weighting for the feature-based method on topological parameters in semantic taxonomy using social media
title_full_unstemmed A combined weighting for the feature-based method on topological parameters in semantic taxonomy using social media
title_short A combined weighting for the feature-based method on topological parameters in semantic taxonomy using social media
title_sort combined weighting for the feature based method on topological parameters in semantic taxonomy using social media
topic QA76 Computer software
url http://umpir.ump.edu.my/id/eprint/27714/1/55.%20A%20combined%20weighting%20for%20the%20feature-based.pdf
http://umpir.ump.edu.my/id/eprint/27714/2/55.1%20A%20combined%20weighting%20for%20the%20feature-based.pdf
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