Abstract

Sentiment analysis is an important research topic and is currently being developed. Sentiment analysis is carried out to see the opinion or tendency of a person's opinion on a problem or object, whether it tends to have a negative or positive view. The main purpose of this research is to find out public sentiment towards the Full Day school policy comments from the Facebook Page of the Ministry of Education and Culture of the Republic of Indonesia and to determine the performance of the Na-ïve Bayes Classifier Algorithm. The results of this study indicate that the public's negative sentiment towards the Full Day School policy is higher than positive or neutral sentiment. The highest accuracy value is the Naïve Bayes Classifier algorithm with the trigram feature selection of the 300 data training model with a value of 80%. This simulation has proven that the larger the training data and the selection of features used in the NBC Algorithm affect the accuracy of the results. Meanwhile, the simulation results from 10 test data with 5 different NBC and Lexicon algorithms also show that the Full Day School Policy proposed by the Indonesian Minister of Education and Culture has a higher negative sentiment than positive or neutral by most Facebook users who express opinions through comments. The highest accuracy value is the Naïve Bayes Classifier algorithm with the trigram feature selection of the 300 data training model with a value of 80%. This simulation has proven that the larger the training data and the selection of features used in the NBC Algorithm affect the accuracy of the results. Meanwhile, the simulation results from 10 test data with 5 different NBC and Lexicon algorithms also show that the Full Day School Policy proposed by the Indonesian Minister of Education and Culture has a higher negative sentiment than positive or neutral by most users. Facebook that expresses opinions through comments. The highest accuracy value is the Naïve Bayes Classifier algorithm with the tri-gram feature selection of the 300 data training model with a value of 80%. This simulation has proven that the larger the training data and the selection of features used in the NBC Algorithm affect the accuracy results.

Highlights

  • Penulis menggunakan algoritma Naïve Bayes Classifier dengan pemilihan fitur karakter trigram dan quadgram dengan dua model data latih yang berbeda dan pelabelan data latih menggunakan metode Lexicon Based dalam klasifikasi sentimen masyarakat terhadap kebijakan Full day school.

  • Dalam penelitian ini penulis menggunakan Algoritma Naïve Bayes Classifer dengan pemilihan dua fitur yaitu karakter Trigram dan Quadgram dengan klasifikasi sentimen data latih menggunakan metode Lexicon Based.

  • Karena pengklasifikasian menggunakan algoritma NBC dengan pemilihan dua fitur yang berbeda dan dua model data latih, serta menggunakan metode Lexicon Based untuk mengetahui sentimen aktual dari 10 data pengujian, maka dalam penelitian ini terdapat lima keluaran klasifikasi sentimen yang digambarkan pada Tabel 2.

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Summary

Introduction

Penulis menggunakan algoritma Naïve Bayes Classifier dengan pemilihan fitur karakter trigram dan quadgram dengan dua model data latih yang berbeda dan pelabelan data latih menggunakan metode Lexicon Based dalam klasifikasi sentimen masyarakat terhadap kebijakan Full day school.

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