采用贝叶斯优化集合决策树的预测分析模型,增强作物推荐效果

Behnaz Motamedi, Balázs Villányi
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引用次数: 0

摘要

研究人员一直致力于开发新的有效、可靠和环保的作物推荐系统。本研究通过将复杂的机器学习(ML)分类器与多类分类方法相结合,为预测作物推荐引入了一个全面的框架。本研究旨在:(1)全面评估各种作物类别中环境变化和土壤养分特征的重要性;(2)使用精细高斯支持向量机(FGSVM)和粗k-近邻(Coa-KNN)算法开发有效的预测分析模型;(3)通过主成分分析(PCA)降低特征向量维度并尽量减少训练时间(FGPCASVM-CRP)、(4) 探索和分析基于评估规范的用于作物推荐预测的贝叶斯优化集合决策树模型(BOEDT-CRP),以及 (5) 将所提出的方法与多种超参数优化的多重ML分类器进行比较、包括 FGSVM、粗高斯 SVM(Coa-GSVM)、宽神经网络(WNN)、三层神经网络(TNN)、精细 k 近邻(FKNN)、余弦 k 近邻(Cos-KNN)、袋装树集合(BTE)和子空间判别集合(SDE)。所提出的模型在整个训练和测试阶段都取得了出色的结果,准确率达到 99.5%,精确率分别为 99.49% 和 99.55%,召回率分别为 99.49% 和 98.59%,f1 分数分别为 99.5% 和 99.54%。这些研究结果支持这样的结论,即所提出的模型可以在智能作物管理和收割方面为农民提供重要支持,从而提高产量并减少对人力的依赖。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A predictive analytics model with Bayesian-Optimized Ensemble Decision Trees for enhanced crop recommendation

Researchers have been working on developing new effective, reliable, and environmentally friendly crop recommendation systems. This study introduces a thorough framework for predicting crop recommendations by combining sophisticated machine learning (ML) classifiers with a multi-class classification approach. The study is intended to (1) comprehensively assess the importance of environmental alterations and soil nutrient characteristics across a variety of crop classes, (2) develop effective predictive analytics models using the fine Gaussian support vector machine (FGSVM) and coarse k-nearest neighbors (Coa-KNN) algorithms, (3) reduce the dimension of feature vectors and minimize training time (FGPCASVM-CRP) approach through principal component analysis (PCA), (4) explore and analyze a Bayesian optimized ensemble decision tree for crop recommendation prediction (BOEDT-CRP) model based on assessment specifications, and (5) compare the proposed approach with multiple ML classifiers with various hyperparameter optimization, including FGSVM, coarse Gaussian SVM (Coa-GSVM), wide neural network (WNN), trilayered neural network (TNN), Fine k-nearest neighbors (FKNN), cosine k-nearest neighbors (Cos-KNN), bagged tree ensemble (BTE), and subspace discriminant ensemble (SDE). The proposed models throughout the training and testing stages reveal outstanding results, with comparable accuracy rates of 99.5%, precision rates of 99.49% and 99.55%, recall rates of 99.49% and 98.59%, and f1-scores of 99.5% and 99.54%. The findings support the conclusion that the proposed models can significantly support farmers in intelligent crop management and harvesting, leading to enhanced production and decreased reliance on human labor.

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