Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Optimasi Parameter Support Vector Machine Berbasis Algoritma Firefly Pada Data Opini Film

View through CrossRef
The Support Vector Machine (SVM) method is a method that is widely used in the classification process. The success of the classification of the SVM method depends on the soft margin coefficient C, as well as the parameter  of the kernel function. The SVM parameters are usually obtained by trial and error, but this method takes a long time because they have to try every combination of SVM parameters, therefore the purpose of this study is to find the optimal SVM parameter value based on accuracy. This study uses the Firefly Algorithm (FA) as a method for optimizing SVM parameters. The data set used in this study is data on public opinion on several films. Class labels used in data classification are positive class labels and negative class labels. The amount of data used in this study is 2179 data, with the distribution of 436 data as test data and 1743 data as training data. Based on this data, an evaluation process was carried out on the Firefly Algorithm-Support Vector Machine (FA-SVM). The results of this study indicate that the Firefly Algorithm can obtain the optimal combination of SVM parameters based on accuracy, so there is no need for trial and error to get that value. This is evidenced by the results of the FA-SVM evaluation using a value range of C=1.0-3.0 and =0.1-1.0 resulting in the highest accuracy of 87.84%. The next evaluation using a range of values ​​C=1.0-3.0 and =1.0-2.0 resulted in the highest accuracy of 87.15%.
Title: Optimasi Parameter Support Vector Machine Berbasis Algoritma Firefly Pada Data Opini Film
Description:
The Support Vector Machine (SVM) method is a method that is widely used in the classification process.
The success of the classification of the SVM method depends on the soft margin coefficient C, as well as the parameter  of the kernel function.
The SVM parameters are usually obtained by trial and error, but this method takes a long time because they have to try every combination of SVM parameters, therefore the purpose of this study is to find the optimal SVM parameter value based on accuracy.
This study uses the Firefly Algorithm (FA) as a method for optimizing SVM parameters.
The data set used in this study is data on public opinion on several films.
Class labels used in data classification are positive class labels and negative class labels.
The amount of data used in this study is 2179 data, with the distribution of 436 data as test data and 1743 data as training data.
Based on this data, an evaluation process was carried out on the Firefly Algorithm-Support Vector Machine (FA-SVM).
The results of this study indicate that the Firefly Algorithm can obtain the optimal combination of SVM parameters based on accuracy, so there is no need for trial and error to get that value.
This is evidenced by the results of the FA-SVM evaluation using a value range of C=1.
0-3.
0 and =0.
1-1.
0 resulting in the highest accuracy of 87.
84%.
The next evaluation using a range of values ​​C=1.
0-3.
0 and =1.
0-2.
0 resulted in the highest accuracy of 87.
15%.

Related Results

Perbandingan Algoritma Boruvka Dan Algoritma Sollin Pada Optimasi Kebutuhan Kabel Fiber Optik Universitas Bengkulu
Perbandingan Algoritma Boruvka Dan Algoritma Sollin Pada Optimasi Kebutuhan Kabel Fiber Optik Universitas Bengkulu
Optimasi adalah hal penting dalam suatu algoritma. Ini dapat menghemat kebutuhan dalam suatu kegiatan. Pada Minimum Spanning Tree, yang ingin dicapai adalah bagaimana semua vertexs...
Reclaiming the Wasteland: Samson and Delilah and the Historical Perception and Construction of Indigenous Knowledges in Australian Cinema
Reclaiming the Wasteland: Samson and Delilah and the Historical Perception and Construction of Indigenous Knowledges in Australian Cinema
It was always based on a teenage love story between the two kids. One is a sniffer and one is not. It was designed for Central Australia because we do write these kids off there. N...
ARTIKEL ALGORITMA PEMROGRAMAN SERI MINTA UBA HASIBUAN
ARTIKEL ALGORITMA PEMROGRAMAN SERI MINTA UBA HASIBUAN
Algoritma merupakan akar dari sebuah sistem yang terbentuk dalam dunia pemrograman.Melalui serangkaian cara yang masuk akal dan teratur, sebuah algoritma dapat menyelesaikan suatu ...
Alternative Entrances: Phillip Noyce and Sydney’s Counterculture
Alternative Entrances: Phillip Noyce and Sydney’s Counterculture
Phillip Noyce is one of Australia’s most prominent film makers—a successful feature film director with both iconic Australian narratives and many a Hollywood blockbuster under his ...
Geometric morphometrics as a tool for three species identification of the firefly (Coleoptera: Lampyridae) in Thailand
Geometric morphometrics as a tool for three species identification of the firefly (Coleoptera: Lampyridae) in Thailand
Abstract. Chaiphongpachara T, Sumruayphol S. 2019. Geometric morphometrics as a tool for three species identification of the firefly (Coleoptera: Lampyridae) in Thailand. Biodivers...
IMPLEMENTASI PSO UNTUK OPTIMASI BOBOT ATRIBUT PADA ALGORITMA C4.5 DALAM PREDIKSI KELULUSAN MAHASISWA
IMPLEMENTASI PSO UNTUK OPTIMASI BOBOT ATRIBUT PADA ALGORITMA C4.5 DALAM PREDIKSI KELULUSAN MAHASISWA
Ketepatan penyelesaian masa studi mahasiswa merupakan salah satu faktor yang banyak disoroti oleh perguruan tinggi. Algoritma C4.5 merupakan salah satu metode yang dapat digunakan ...

Back to Top