2020
DOI: 10.33480/pilar.v16i1.702
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Ustadz Abdul Somad Lecture Sentiment Analysis Using Support Vector Machine Algorithm Comparison of Comparative Features Selection

Abstract: Religious lectures are activities that are identical to the religious presentation, delivered verbally by a person who has religious knowledge and then delivered to the community with the aim of the knowledge delivered can be understood. Ustadz Abdul Somad was one of the preachers who had been known to various levels of society, but his lectures were not all acceptable to the people who liked or disliked those who came from various positive and negative comments on social media. To solve these problems, Sentim… Show more

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“…The support vector machine finds a hyperplane such that the two types of points in the data set are exactly separated on both sides, that is, the samples with y value of 1 are on one side, and the samples with a value of -1 are on the other side. Since there are many such hyperplanes, in order to ensure the uniqueness of the solution, it is stipulated that the hyperplane must also have the largest geometric interval [7].…”
Section: Support Vector Machine Algorithmmentioning
confidence: 99%
“…The support vector machine finds a hyperplane such that the two types of points in the data set are exactly separated on both sides, that is, the samples with y value of 1 are on one side, and the samples with a value of -1 are on the other side. Since there are many such hyperplanes, in order to ensure the uniqueness of the solution, it is stipulated that the hyperplane must also have the largest geometric interval [7].…”
Section: Support Vector Machine Algorithmmentioning
confidence: 99%