A Bootstrap-Aggregating in Random Forest Model for Classification of Corn Plant Diseases and Pests

Q2 Pharmacology, Toxicology and Pharmaceutics Science and Technology Indonesia Pub Date : 2023-04-15 DOI:10.26554/sti.2023.8.2.288-297
Y. Resti, C. Irsan, Jeremy Firdaus Latif, I. Yani, Novi Rustiana Dewi
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引用次数: 1

Abstract

Control of diseases and pests of maize plants is a significant challenge to ensure global food security, self-sufficiency, and sustainable agriculture. Classification or early detection of diseases and pests of corn plants is intended to assist the control process. Random forest is a classification model in tree-based statistical learning in making decisions. This approach is an ensemble method that generates many decision trees and makes classification decisions based on the majority of trees selecting the same class. However, tree-based methods are often unstable when small changes or disturbances exist in the learning data. Such instability can produce significant variances and affect model performance. This study classifies diseases and pests of the corn plant using a random forest method based on bootstrap-aggregating. It fits multiple models of a single random forest, then combines the predictions from all models and determines the final result using majority voting. The results showed that the bootstrap aggregating could improve the classification of diseases and pests of maize using a random forest if the number of trees is optimal.
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一种用于玉米病虫害分类的Bootstrap聚集随机森林模型
控制玉米病虫害是确保全球粮食安全、自给自足和可持续农业的重大挑战。玉米病虫害的分类或早期检测旨在帮助控制过程。随机森林是一种基于树的统计学习决策分类模型。这种方法是一种集成方法,它生成许多决策树,并根据选择同一类的大多数树做出分类决策。然而,当学习数据中存在小的变化或干扰时,基于树的方法通常是不稳定的。这种不稳定性会产生显著的方差并影响模型性能。本研究采用基于bootstrap聚集的随机森林方法对玉米病虫害进行分类。它适用于单个随机森林的多个模型,然后结合所有模型的预测,并使用多数投票确定最终结果。结果表明,在树数最优的情况下,bootstrap聚集可以提高随机林玉米病虫害的分类。
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来源期刊
Science and Technology Indonesia
Science and Technology Indonesia Pharmacology, Toxicology and Pharmaceutics-Pharmacology, Toxicology and Pharmaceutics (miscellaneous)
CiteScore
1.80
自引率
0.00%
发文量
72
审稿时长
8 weeks
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