Proposed Method for Note Detection and Automatic Identification of the Melody Models (Gusheh) in Iranian Traditional Music with Micro Approach

One of the most common problems with computer networks is the amount of information in these networks. Meanwhile searching and getting inform about content of textual document, as the most widespread forms of information on such networks, is difficult and sometimes impossible. The goal of multi-docu...

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Main Authors: Amir Vafaeian, Keivan Borna, Hamed Sajedi, Dariush Alimohammadi, Pouya Sarai
Format: Article
Language:fas
Published: University of Qom 2020-09-01
Series:مدیریت مهندسی و رایانش نرم
Online Access:https://jemsc.qom.ac.ir/article_1268_9ef849dfdbd07c11a6361504799c29e2.pdf
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author Amir Vafaeian
Keivan Borna
Hamed Sajedi
Dariush Alimohammadi
Pouya Sarai
author_facet Amir Vafaeian
Keivan Borna
Hamed Sajedi
Dariush Alimohammadi
Pouya Sarai
author_sort Amir Vafaeian
collection DOAJ
description One of the most common problems with computer networks is the amount of information in these networks. Meanwhile searching and getting inform about content of textual document, as the most widespread forms of information on such networks, is difficult and sometimes impossible. The goal of multi-document textual summarization is to produce a pre-defined length summary from input textual documents while maximizing documents’ content coverage. This paper presents a new approach for textual document summarization based on paraphrasing and textual entailment relations and formulating the problem as an optimization problem. In this approach the sentences of input documents are clustered according to paraphrasing relation and then the entailment score and final score of a fraction of the header sentences of clusters which have the best score according to the user query is calculated. Finally, the optimization problem is solved via greedy and dynamic programming approaches and while selecting the best sentences, the final summary is generated. The results of implementing the proposed system on standard datasets and evaluation via ROUGE system show that the proposed system outperforms the state-of-the-art systems at least by 2.5% in average.
format Article
id doaj-art-88871403f449447e9c7bb5dfe81ebd06
institution Kabale University
issn 2538-6239
2538-2675
language fas
publishDate 2020-09-01
publisher University of Qom
record_format Article
series مدیریت مهندسی و رایانش نرم
spelling doaj-art-88871403f449447e9c7bb5dfe81ebd062025-01-30T20:17:43ZfasUniversity of Qomمدیریت مهندسی و رایانش نرم2538-62392538-26752020-09-016211313810.22091/jemsc.2018.12681268Proposed Method for Note Detection and Automatic Identification of the Melody Models (Gusheh) in Iranian Traditional Music with Micro ApproachAmir Vafaeian0Keivan Borna1Hamed Sajedi2Dariush Alimohammadi3Pouya Sarai4Knowledge and Information Studies, Kharazmi University, Tehran, IranAssistant Prof., Computer Sciences, Faculty of Mathematical Sciences and Computer, Kharazmi University, Tehran, IranAssistant Prof., Electronic Engineering, Faculty of Engineering, Shahed University, Tehran, IranAssistant Prof., Knowledge and Information Studies, Faculty of Psychology and Education, Kharazmi University, Tehran, Iran5. Assistant Prof., Music Department, Faculty of Art, Islamic Azad University Central Tehran Branch, Tehran, IranOne of the most common problems with computer networks is the amount of information in these networks. Meanwhile searching and getting inform about content of textual document, as the most widespread forms of information on such networks, is difficult and sometimes impossible. The goal of multi-document textual summarization is to produce a pre-defined length summary from input textual documents while maximizing documents’ content coverage. This paper presents a new approach for textual document summarization based on paraphrasing and textual entailment relations and formulating the problem as an optimization problem. In this approach the sentences of input documents are clustered according to paraphrasing relation and then the entailment score and final score of a fraction of the header sentences of clusters which have the best score according to the user query is calculated. Finally, the optimization problem is solved via greedy and dynamic programming approaches and while selecting the best sentences, the final summary is generated. The results of implementing the proposed system on standard datasets and evaluation via ROUGE system show that the proposed system outperforms the state-of-the-art systems at least by 2.5% in average.https://jemsc.qom.ac.ir/article_1268_9ef849dfdbd07c11a6361504799c29e2.pdf
spellingShingle Amir Vafaeian
Keivan Borna
Hamed Sajedi
Dariush Alimohammadi
Pouya Sarai
Proposed Method for Note Detection and Automatic Identification of the Melody Models (Gusheh) in Iranian Traditional Music with Micro Approach
مدیریت مهندسی و رایانش نرم
title Proposed Method for Note Detection and Automatic Identification of the Melody Models (Gusheh) in Iranian Traditional Music with Micro Approach
title_full Proposed Method for Note Detection and Automatic Identification of the Melody Models (Gusheh) in Iranian Traditional Music with Micro Approach
title_fullStr Proposed Method for Note Detection and Automatic Identification of the Melody Models (Gusheh) in Iranian Traditional Music with Micro Approach
title_full_unstemmed Proposed Method for Note Detection and Automatic Identification of the Melody Models (Gusheh) in Iranian Traditional Music with Micro Approach
title_short Proposed Method for Note Detection and Automatic Identification of the Melody Models (Gusheh) in Iranian Traditional Music with Micro Approach
title_sort proposed method for note detection and automatic identification of the melody models gusheh in iranian traditional music with micro approach
url https://jemsc.qom.ac.ir/article_1268_9ef849dfdbd07c11a6361504799c29e2.pdf
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