乌干达统一的口蹄疫数据集:评估机器学习在不同分布情况下的预测性能下降。

IF 3 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Frontiers in Artificial Intelligence Pub Date : 2024-07-31 eCollection Date: 2024-01-01 DOI:10.3389/frai.2024.1446368
Geofrey Kapalaga, Florence N Kivunike, Susan Kerfua, Daudi Jjingo, Savino Biryomumaisho, Justus Rutaisire, Paul Ssajjakambwe, Swidiq Mugerwa, Yusuf Kiwala
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引用次数: 0

摘要

在乌干达,缺乏统一的数据集来构建机器学习模型以预测口蹄疫的爆发,这阻碍了备灾工作的开展。虽然机器学习模型在静态条件下对口蹄疫疫情具有出色的预测性能,但在非静态环境下,这些模型的性能很容易下降。降雨和温度是影响口蹄疫爆发的关键因素,而气候变化导致的降雨和温度变化会对预测性能产生重大影响。本研究通过整合不同来源的数据,并使用均值估算、重复删除、可视化和合并技术对数据进行预处理,创建了一个统一的口蹄疫数据集。为了评估性能下降情况,对七个机器学习模型进行了训练,并使用准确率、接收者工作特征曲线下面积、召回率、精确度和 F1 分数等指标进行评估。数据集显示出严重的类不平衡,非疫情爆发多于疫情爆发,这就需要采用数据增强方法。降雨量和温度的变化影响了预测性能,造成了明显的下降。在静态环境中,带有边界 SMOTE 的随机森林是表现最好的模型,准确率达到 92%,接收者工作特征曲线下面积为 0.97,召回率为 0.94,精确度为 0.90,F1 分数为 0.92。然而,在不同的分布情况下,所有模型都表现出明显的性能下降,随机森林的准确率下降到 46%,接收器工作特征曲线下面积下降到 0.58,召回率下降到 0.03,精确度下降到 0.24,F1-分数下降到 0.06。这项研究强调了为乌干达创建统一口蹄疫数据集的重要性,并揭示了七个机器学习模型在不同分布条件下的显著性能下降。这些发现突出表明,需要采用新方法来解决分布变化对预测性能的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A unified Foot and Mouth Disease dataset for Uganda: evaluating machine learning predictive performance degradation under varying distributions.

In Uganda, the absence of a unified dataset for constructing machine learning models to predict Foot and Mouth Disease outbreaks hinders preparedness. Although machine learning models exhibit excellent predictive performance for Foot and Mouth Disease outbreaks under stationary conditions, they are susceptible to performance degradation in non-stationary environments. Rainfall and temperature are key factors influencing these outbreaks, and their variability due to climate change can significantly impact predictive performance. This study created a unified Foot and Mouth Disease dataset by integrating disparate sources and pre-processing data using mean imputation, duplicate removal, visualization, and merging techniques. To evaluate performance degradation, seven machine learning models were trained and assessed using metrics including accuracy, area under the receiver operating characteristic curve, recall, precision and F1-score. The dataset showed a significant class imbalance with more non-outbreaks than outbreaks, requiring data augmentation methods. Variability in rainfall and temperature impacted predictive performance, causing notable degradation. Random Forest with borderline SMOTE was the top-performing model in a stationary environment, achieving 92% accuracy, 0.97 area under the receiver operating characteristic curve, 0.94 recall, 0.90 precision, and 0.92 F1-score. However, under varying distributions, all models exhibited significant performance degradation, with random forest accuracy dropping to 46%, area under the receiver operating characteristic curve to 0.58, recall to 0.03, precision to 0.24, and F1-score to 0.06. This study underscores the creation of a unified Foot and Mouth Disease dataset for Uganda and reveals significant performance degradation in seven machine learning models under varying distributions. These findings highlight the need for new methods to address the impact of distribution variability on predictive performance.

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来源期刊
CiteScore
6.10
自引率
2.50%
发文量
272
审稿时长
13 weeks
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