在甜菜生产率分析中使用高斯库普拉斯和生成式对抗网络生成合成数据

IF 1.8 3区 农林科学 Q2 AGRONOMY
Denize Palmito dos Santos, Julio Cezar Souza Vasconcelos
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引用次数: 0

摘要

在科学研究中,实地实验是在实际条件下验证理论的必要条件。然而,由于样本稀缺,这些调查往往面临局限性,这可能会损害结果的稳健性和可解释性。合成数据生成为扩展数据集提供了有效的解决方案,即使在实际数据有限的情况下也可以进行更全面的分析。虽然合成数据不是真实的,但它可以保持真实数据的数学和统计特性,使其成为提高分析准确性的有价值的工具。本研究旨在使用两种合成器:高斯copula和生成对抗神经网络(GANs)生成合成数据。使用的数据集是指评价不同水平氮肥对甜菜根系干物质生产的影响。试验5个氮肥水平:0、35、70、105和140 kg/ha,采用随机区组设计,每个区组包含3个区组,每个区组5块。本研究的重点是增加样本量,以考虑不同的统计和机器学习模型。合成数据与实际数据的比较表明,高斯copula合成器优于CTGAN合成器。图形表示的接近性和模型与实际数据的性能比较证明了这种优越性。此外,使用高斯copula生成的合成数据训练的随机森林模型的性能指标优于CTGAN合成器,表明合成数据可以为农艺试验分析提供有价值的支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Using Gaussian Copulas and Generative Adversarial Networks for Generating Synthetic Data in Beet Productivity Analysis

Using Gaussian Copulas and Generative Adversarial Networks for Generating Synthetic Data in Beet Productivity Analysis

In scientific research, field experiments are essential to validate theories in real conditions. However, these investigations often face limitations due to sample scarcity, which can compromise the robustness and interpretability of results. Synthetic data generation offers an effective solution for expanding datasets, enabling more comprehensive analyses even when real data are limited. Although synthetic data are not real, it can maintain the mathematical and statistical properties of real data, making it a valuable tool for improving analytical accuracy. This study aims to generate synthetic data using two synthesizers: Gaussian Copulas and Generative Adversarial Neural Networks (GANs). The dataset used refers to the evaluation of the effects of different levels of nitrogen fertilizers (N) on the dry matter production of sugar beet roots. Five nitrogen fertilizers levels were tested: 0, 35, 70, 105, and 140 kg/ha, with a randomized block design containing three blocks and five plots per block. The focus of this research is to increase the sample size to consider different statistical and machine learning models. The comparison between synthetic and real data revealed that the Gaussian Copulas synthesizer outperformed the CTGAN synthesizer. This superiority was evidenced by the proximity of the graphical representations and the performance of the models compared to real data. Furthermore, the random forest model trained with synthetic data generated by Gaussian Copulas presented better performance metrics than the CTGAN synthesizer, indicating that synthetic data can be a valuable support in the analysis of agronomic experiments.

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来源期刊
Sugar Tech
Sugar Tech AGRONOMY-
CiteScore
3.90
自引率
21.10%
发文量
145
期刊介绍: The journal Sugar Tech is planned with every aim and objectives to provide a high-profile and updated research publications, comments and reviews on the most innovative, original and rigorous development in agriculture technologies for better crop improvement and production of sugar crops (sugarcane, sugar beet, sweet sorghum, Stevia, palm sugar, etc), sugar processing, bioethanol production, bioenergy, value addition and by-products. Inter-disciplinary studies of fundamental problems on the subjects are also given high priority. Thus, in addition to its full length and short papers on original research, the journal also covers regular feature articles, reviews, comments, scientific correspondence, etc.
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