模拟过度分散的种子发芽数据:xgboost的性能

G. Ser, C. T. Bati̇
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摘要

根据发芽计数数据的变化程度,会出现过度分散的问题。这个问题在估计中引起了严重的问题。在本研究中,梯度增强算法被用作支持精准农业应用的新方法,用于估计过度分散的发芽数。利用具有化感效应的白甘蓝幼苗,建立了杂草(Amaranthus retroflexus L.和Chenopodium album L.)和栽培植物(Beta vulgaris L.和Zea mays L.)萌发计数数据数据库。因此,首先开发了梯度增强(GB)和极端梯度增强(Xgboost)算法,用于默认值估计每个植物的发芽计数;然后,创建不同的超参数组合来优化模型的性能。以均方根误差(RMSE)、平均泊松偏差(MPD)和决定系数(r2)作为评价上述算法性能的统计标准。实验结果表明,Xgboost算法在默认值组合和超参数组合下对逆转录花、金曲花、白花花和金曲花的发芽计数均优于GB算法(RMSE: 0.725 ~ 2.506, r_2: 0.97 ~ 0.99)。我们的结果表明,Xgboost成功地预测了在实验条件下获得的发芽数。基于这些结果,我们建议在精准农业中使用Xgboost最优模型来处理较大数量的数据。
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MODELLING OVERDISPERSED SEED GERMINATION DATA: XGBOOST'S PERFORMANCE
Depending on the extent of variability in germination count data, the problem of overdispersion arises. This problem causes significant problems in estimation. In this study, gradient boosting algorithms are used as a new approach to support precision agriculture applications in estimating overdispersed germination counts. The database consisting of germination count data of weed ( Amaranthus retroflexus L. and Chenopodium album L) and cultural plants ( Beta vulgaris L. and Zea mays L.) with white cabbage seedlings, known for their allelochemical effects, was created. Accordingly, gradient boosting (GB) and extreme gradient boosting (Xgboost) algorithms were first developed for default values to estimate the germination counts of each plant; then, different combinations of hyperparameters were created to optimize the performance of the models. Root mean square error (RMSE), mean poisson deviation (MPD) and coefficient of determination (R 2 ), were used as the statistical criteria for evaluating the performance of the above algorithms. According to the experimental results, the Xgboost algorithm showed superior performance compared to GB in both the default and hyperparameter combinations in the germination counts of A. retroflexus , C. album , B. vulgaris and Z. mays (RMSE: 0.725-2.506 and R 2 : 0.97-0.99). Our results indicate that the Xgboost made successful predictions of germination counts obtained under experimental conditions. Based on these results, we suggest the use of Xgboost optimal models for larger count data in precision agriculture.
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