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  <title>Implementation of Support Vector Machine Algorithm with Correlation-Based Feature Selection and Term Frequency Inverse Document Frequency for Sentiment Analysis Review Hotel</title>
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 <name type="Personal Name" authority="">
  <namePart>Ririanti Novia Puji</namePart>
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  </role>
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  <place>
   <placeTerm type="text">Semarang</placeTerm>
   <publisher>Universitas Negeri Semarang</publisher>
   <dateIssued>2021</dateIssued>
  </place>
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  <languageTerm type="code">e</languageTerm>
  <languageTerm type="text">English</languageTerm>
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  <form authority="gmd">Artikel Jurnal</form>
  <extent>hlm : 297-303</extent>
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  <title>Scientific Journal of Informatics</title>
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<note>&#13;
Abstract&#13;
&#13;
Purpose: The study aims to reduce the number of irrelevant features in sentiment analysis with large features. Methods/Study design/approach: The Support Vector Machine (SVM) algorithm is used to classify hotel review sentiment analysis because it has advantages in processing large datasets. Term Frequency-Inverse Document Frequency (TF-IDF) is used to give weight values to features in the dataset. Result/Findings: This study's results indicate that the accuracy of the SVM method with TF-IDF produces an accuracy of 93.14%, and the SVM method in the classification of hotel reviews by implementing TFIDF and CFS has increased by 1.18% from 93.14% to 94.32%. Novelty/Originality/Value: Use of Correlation-Based Feature Section (CFS) for the feature selection process, which reduces the number of irrelevant features by ranking the feature subset based on the strong correlation value in each feature&#13;
</note>
<note type="statement of responsibility"></note>
<subject authority="">
 <topic>Informatika</topic>
</subject>
<classification>SJI</classification>
<identifier type="isbn">24077658</identifier>
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 <physicalLocation>Perpustakaan Teknik UPI YAI </physicalLocation>
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   <numerationAndChronology type="1">SJI4a-015</numerationAndChronology>
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   <numerationAndChronology type="1">SJI4b-015</numerationAndChronology>
   <sublocation>Perpustakaan FT UPI YAI</sublocation>
   <shelfLocator>SJI V8N2 November 2021</shelfLocator>
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