SENTIMENT ANALYSIS REVIEW ON TWITTER ABOUT THE SUPREME COURT REPUBLIC OF INDONESIA USING SUPPORT VECTOR MACHINE ALGORITHM BASED PARTICLE SWARM OPTIMIZATION AS FEATURE SELECTION METHODS

research
  • 26 Apr
  • 2019

SENTIMENT ANALYSIS REVIEW ON TWITTER ABOUT THE SUPREME COURT REPUBLIC OF INDONESIA USING SUPPORT VECTOR MACHINE ALGORITHM BASED PARTICLE SWARM OPTIMIZATION AS FEATURE SELECTION METHODS

The Supreme Court of the Republic of Indonesia has sought to develop a positive image of the judiciary
through various programs. Sentiment analysis constituted a popular research area even in sentiment
analysis of text content on twitter. The Support Vector Machine (SVM) classification algorithm was
proposed by many researchers to be used in the review sentiment analysis. SVM is able to identify the
separated hyperplane that maximizes the margin between two different classes. However, SVM has a
weakness for parameter selection or suitable feature. Feature selection can be used to reduce the less
relevant attributes on the dataset. The feature selection algorithm used is Particle Swarm Optimization
(PSO) to solve the optimization problem in order to increase the classifications accuracy Support Vector
Machine. This research generate text classification in the positive or negative of The Supreme Court of the
Republic of Indonesia review on twitter. The evaluation was done by using 10-Fold Cross Validation and
the measurement accuracy is measured by Confusion Matrix and ROC curve. The result showed an
increasing in accuracy SVM of 91.05% to 91.72%.

Unduhan

  • JATIT_Sentiment Analysis Review on Twitter...-5-16.pdf

    SENTIMENT ANALYSIS REVIEW ON TWITTER ABOUT THE SUPREME COURT REPUBLIC OF INDONESIA USING SUPPORT VECTOR MACHINE ALGORITHM BASED PARTICLE SWARM OPTIMIZATION AS FEATURE SELECTION METHODS

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  • Sentiment Analysis Review On Twitter.pdf

    Peer Review - SENTIMENT ANALYSIS REVIEW ON TWITTER ABOUT THE SUPREME COURT REPUBLIC OF INDONESIA USING SUPPORT VECTOR MACHINE ALGORITHM BASED PARTICLE SWARM OPTIMIZATION AS FEATURE SELECTION METHODS

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