Generating Javanese Stopwords List using K-means Clustering Algorithm

Stopword removal necessary in Information Retrieval. It can remove frequently appeared and general words to reduce memory storage. The algorithm eliminates each word that is precisely the same as the word in the stopword list. However, generating the list could be time-consuming. The words in a spec...

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Main Authors: Aji Prasetya Wibawa, Hidayah Kariima Fithri, Ilham Ari Elbaith Zaeni, Andrew Nafalski
Format: Article
Language:English
Published: Universitas Negeri Malang 2020-12-01
Series:Knowledge Engineering and Data Science
Online Access:http://journal2.um.ac.id/index.php/keds/article/view/20891
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spelling doaj-58dbbd0e2a5b42dab482303db02a81242021-10-09T04:07:27ZengUniversitas Negeri MalangKnowledge Engineering and Data Science2597-46022597-46372020-12-013210611110.17977/um018v3i22020p106-1117197Generating Javanese Stopwords List using K-means Clustering AlgorithmAji Prasetya Wibawa0Hidayah Kariima Fithri1Ilham Ari Elbaith Zaeni2Andrew Nafalski3Electrical Engineering Department, Universitas Negeri Malang Jl Semarang 5, Malang, East Java 65145, IndonesiaElectrical Engineering Department, Universitas Negeri Malang Jl Semarang 5, Malang, East Java 65145, IndonesiaElectrical Engineering Department, Universitas Negeri Malang Jl Semarang 5, Malang, East Java 65145, IndonesiaUniSA Education Futures, School of Engineering, University of South Australia SCT2-39 Mawson Lakes Campus, Adelaide, South Australia 5095, AustraliaStopword removal necessary in Information Retrieval. It can remove frequently appeared and general words to reduce memory storage. The algorithm eliminates each word that is precisely the same as the word in the stopword list. However, generating the list could be time-consuming. The words in a specific language and domain must be collected and validated by specialists. This research aims to develop a new way to generate a stop word list using the K-means Clustering method. The proposed approach groups words based on their frequency. The confusion matrix calculates the difference between the findings with a valid stopword list created by a Javanese linguist. The accuracy of the proposed method is 78.28% (K=7). The result shows that the generation of Javanese stopword lists using a clustering method is reliable.http://journal2.um.ac.id/index.php/keds/article/view/20891
collection DOAJ
language English
format Article
sources DOAJ
author Aji Prasetya Wibawa
Hidayah Kariima Fithri
Ilham Ari Elbaith Zaeni
Andrew Nafalski
spellingShingle Aji Prasetya Wibawa
Hidayah Kariima Fithri
Ilham Ari Elbaith Zaeni
Andrew Nafalski
Generating Javanese Stopwords List using K-means Clustering Algorithm
Knowledge Engineering and Data Science
author_facet Aji Prasetya Wibawa
Hidayah Kariima Fithri
Ilham Ari Elbaith Zaeni
Andrew Nafalski
author_sort Aji Prasetya Wibawa
title Generating Javanese Stopwords List using K-means Clustering Algorithm
title_short Generating Javanese Stopwords List using K-means Clustering Algorithm
title_full Generating Javanese Stopwords List using K-means Clustering Algorithm
title_fullStr Generating Javanese Stopwords List using K-means Clustering Algorithm
title_full_unstemmed Generating Javanese Stopwords List using K-means Clustering Algorithm
title_sort generating javanese stopwords list using k-means clustering algorithm
publisher Universitas Negeri Malang
series Knowledge Engineering and Data Science
issn 2597-4602
2597-4637
publishDate 2020-12-01
description Stopword removal necessary in Information Retrieval. It can remove frequently appeared and general words to reduce memory storage. The algorithm eliminates each word that is precisely the same as the word in the stopword list. However, generating the list could be time-consuming. The words in a specific language and domain must be collected and validated by specialists. This research aims to develop a new way to generate a stop word list using the K-means Clustering method. The proposed approach groups words based on their frequency. The confusion matrix calculates the difference between the findings with a valid stopword list created by a Javanese linguist. The accuracy of the proposed method is 78.28% (K=7). The result shows that the generation of Javanese stopword lists using a clustering method is reliable.
url http://journal2.um.ac.id/index.php/keds/article/view/20891
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AT hidayahkariimafithri generatingjavanesestopwordslistusingkmeansclusteringalgorithm
AT ilhamarielbaithzaeni generatingjavanesestopwordslistusingkmeansclusteringalgorithm
AT andrewnafalski generatingjavanesestopwordslistusingkmeansclusteringalgorithm
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