Perbandingan Algoritma SVM dan SVM Berbasis Particle Swarm Optimization Pada Klasifikasi Beras Mekongga

Emilia Ayu Wijayanti, T. Rahmadanti, Ultach Enri
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引用次数: 2

Abstract

Rice is the most important staple food in Indonesia. There are various types of varieties available, one of them is Inpari Mekongga variety. In Karawang, Mekongga rice type is the most popular and superior compared to others. However, this type of rice is often mixed with the other types because there are too many varieties and various other problems. Classifying varieties of rice types can be done to identify the types of rice. The classification of rice varieties in this research is divided into 2 classes, Mekongga and not Mekongga. The method that used in this reserach is Support Vector Machine (SVM) and Particle Swarm Optimatizon (PSO). SVM method was chosen because it basically handles the classification of two classes. Meanwhile, PSO method used to optimize the accuracy level of the SVM method. Combination from the two methods is very well used in classification data because it can increase the level of accuracy better. The purpose of this reserach is compare the accuracy of the 2 methods that used. The results from research is mekongga rice classification with Support Vector Machine has accuracy value 46.67% and  AUC value 0.475. Meanwhile, using Support Vector Machine based on Particle Swarm Optimization (PSO) can help improve the classification of this mekongga rice with accuracy value 70.83% and AUC value 0.671.
大米是印尼最重要的主食。有各种类型的品种可供选择,其中之一是Inpari Mekongga品种。在卡拉旺,米孔加大米是最受欢迎的,也是最优越的。然而,由于品种太多和其他各种问题,这类大米经常与其他类型的大米混在一起。通过对水稻品种进行分类,可以确定水稻的种类。本研究的水稻品种分为梅空加和非梅空加2类。本研究采用了支持向量机(SVM)和粒子群优化(PSO)相结合的方法。选择支持向量机方法是因为它基本上处理两个类的分类。同时,采用粒子群算法对支持向量机方法的精度水平进行优化。两种方法的结合在分类数据中得到了很好的应用,因为它可以更好地提高准确率水平。本研究的目的是比较所使用的两种方法的准确性。研究结果表明,支持向量机分类的准确率为46.67%,AUC值为0.475。同时,利用基于粒子群优化(PSO)的支持向量机(Support Vector Machine)对该米孔伽米进行分类,准确率为70.83%,AUC值为0.671。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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