利用混合特征选择方法和优化机器学习进行作物产量预测的拟议框架

Mahmoud Abdel-salam, Neeraj Kumar, Shubham Mahajan
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摘要

准确预测作物产量对于优化农业实践和确保粮食安全至关重要。然而,现有的方法往往难以捕捉到各种环境因素与作物生长之间复杂的相互作用,导致预测结果不理想。因此,在利用支持向量调节器(SVR)进行作物产量预测时,确定最重要的特征至关重要。此外,手动调整 SVR 超参数不一定总能提供高精度。在本文中,我们介绍了一种用于预测作物产量的新型框架,以应对这些挑战。我们的框架集成了一种新的混合特征选择方法和一个优化的 SVR 模型,以有效提高预测精度。所提出的框架包括三个阶段:预处理、混合特征选择和预测阶段。在预处理阶段,首先对数据进行归一化处理,然后结合基于相关性的过滤器(CFS)应用 K-means 聚类生成缩小的数据集。随后,在混合特征选择阶段,提出了一种新颖的 FMIG-RFE 混合特征选择方法。最后,预测阶段引入了一种名为 ICOA 的 Crayfish 优化算法(COA)改进变体,利用它来优化 SVR 模型的超参数,从而与新型混合特征选择方法一起实现更高的预测精度。为了评估所提出框架的性能,我们进行了多项实验。结果表明,与最先进的方法相比,所提出的框架具有更优越的性能。此外,有关 ICOA 优化算法的实验结果肯定了它在优化 SVR 模型超参数方面的功效,从而提高了预测精度和计算效率,超越了现有算法。
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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A proposed framework for crop yield prediction using hybrid feature selection approach and optimized machine learning

Accurately predicting crop yield is essential for optimizing agricultural practices and ensuring food security. However, existing approaches often struggle to capture the complex interactions between various environmental factors and crop growth, leading to suboptimal predictions. Consequently, identifying the most important feature is vital when leveraging Support Vector Regressor (SVR) for crop yield prediction. In addition, the manual tuning of SVR hyperparameters may not always offer high accuracy. In this paper, we introduce a novel framework for predicting crop yields that address these challenges. Our framework integrates a new hybrid feature selection approach with an optimized SVR model to enhance prediction accuracy efficiently. The proposed framework comprises three phases: preprocessing, hybrid feature selection, and prediction phases. In preprocessing phase, data normalization is conducted, followed by an application of K-means clustering in conjunction with the correlation-based filter (CFS) to generate a reduced dataset. Subsequently, in the hybrid feature selection phase, a novel hybrid FMIG-RFE feature selection approach is proposed. Finally, the prediction phase introduces an improved variant of Crayfish Optimization Algorithm (COA), named ICOA, which is utilized to optimize the hyperparameters of SVR model thereby achieving superior prediction accuracy along with the novel hybrid feature selection approach. Several experiments are conducted to assess and evaluate the performance of the proposed framework. The results demonstrated the superior performance of the proposed framework over state-of-art approaches. Furthermore, experimental findings regarding the ICOA optimization algorithm affirm its efficacy in optimizing the hyperparameters of SVR model, thereby enhancing both prediction accuracy and computational efficiency, surpassing existing algorithms.

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