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Soybean Disease Detection with Feature Selection Using Stepwise Regression Algorithm: LVQ vs LVQ2

机译:使用逐步回归算法的特征选择大豆疾病检测:LVQ VS LVQ2

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ndonesia's soybean needs increase from year to year. But according to data from the Badan Pusat Statistik (BPS) the amount of national soybean productivity is still low, so the fulfillment of soybean needs is done by importing soybeans from several countries such as China, Ukraine, Canada, Malaysia, and the United States. Low soybean productivity is caused by several factors. One of the causes is disease. This study aims to create a soybean disease detection by applying Learning Vector Quantization 2 (LVQ2) neural network algorithm(ANN) and Stepwise Regression Algorithm attribute selection. The attribute variables used consisted of 35 symptoms of the disease in soybean crop data. The data used in this study is a soybean dataset taken from University of California Irvine Machine Learning Repository as much as 200 data. The distribution of training data and test data is done by the k-fold cross validation method with a value of k = 10. The result of the study shows that the best paramater use in lVQ2. The results showed that the best parameters in LVQ2 is learning rate (α) value of 0.3; epsilon 0.04; and maximum epoch 100. While the best attribute selection uses the parameter p to enter and p to remove of? 0.15 which produces 17 selected attributes such as date, plant stand, precipitation, leaves, leaf spot halo, leaf spot margins, leafspot size, leaf mildew, stem canker, stem fungi, external decay, fruit pods, fruit spots, seeds, mold growth, seed discolor, roots. The best results in this study resulted in an accuracy of 90.5%, 9.5% error rate, 90.5% sensitivity, and 98.94% specificity.
机译:Ndonesia的大豆需求从一年增加到。但根据来自巴丹·普斯特·统计数据(BPS)的数据,国家大豆生产力的数量仍然很低,因此通过从中国,乌克兰,加拿大,马来西亚等几个国家进口大豆来完成大豆需求的实现。低大豆生产率是由几个因素引起的。其中一种原因是疾病。本研究旨在通过应用学习矢量量化2(LVQ2)神经网络算法(ANN)和逐步回归算法属性选择来创造大豆疾病检测。使用的属性变量由大豆作物数据中的疾病的35个症状组成。本研究中使用的数据是从加州大学欧文机器学习存储库中获取的大豆数据集多达200个数据。培训数据和测试数据的分布由K-FAL次交叉验证方法完成,其中值为K = 10.该研究结果表明LVQ2中最好的参数使用。结果表明,LVQ2中的最佳参数是学习率(α)值为0.3; epsilon 0.04;和最大epoch 100.虽然最佳属性选择使用参数p进入和p删除? 0.15产生17个选定的属性,如日期,植物支架,降水,叶子,叶斑晕,叶子点边缘,叶子尺寸,叶片霉菌,茎溃疡,茎真菌,外部腐烂,水果荚,水果斑,种子,模具生长,种子褪色,根。本研究中的最佳结果导致精度为90.5%,误差率为9.5%,灵敏度90.5%和98.94%。

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