采用支持向量机和k-means算法作为特征选择,建立了基于公式的果酱功效分类系统

M. N. Puspita, W. Kusuma, A. Kustiyo, R. Heryanto
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引用次数: 6

摘要

Jamu是一种印度尼西亚草药,由根、叶子、水果和动物等天然材料制成。本研究的目的是利用支持向量机(Support Vector Machine, SVM)开发一种基于植物成分的木参功效分类系统,并实现k-means聚类算法作为特征选择方法。将本文的研究结果与之前使用支持向量机方法进行特征选择的研究结果进行了比较。本研究使用方差来评价聚类的结果。3138种数据草本植物和465种植物被归为100类,方差为0.0094。管理组成功地将数据维数缩减为jamu样本的3047个和草本植物的236种作为特征。基于特征选择的SVM分类准确率为71.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A classification system for jamu efficacy based on formula using support vector machine and k-means algorithm as a feature selection
Jamu is an Indonesia herbal medicine made from natural materials such as roots, leaves, fruits, and animals. The purpose of this research is to develop a classification system for jamu efficacy based on the composition of plants using Support Vector Machine (SVM) and to implement the k-means clustering algorithm as a feature selection method. The result of this study was compared to the previous research that using SVM method without feature selection. This study used variances to evaluate the results of clustering. The total of 3138 data herbs and 465 plant species were grouped into 100 clusters with the variance of 0.0094. The managed group succesfully reduced the data dimension into 3047 of jamu sample and 236 species of herbs and plants as features. The result of SVM classification using feature selection yielded the accuracy of 71.5%.
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