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Machine Learning-based Investigation of Feature Importance for High-latitude Ionospheric Scintillation Forecasting

机译:基于机器学习的高纬度电离层闪烁预测特征重要性研究

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This paper introduces a machine learning approach to investigate the feature importance for scintillation forecasting. Here, the features are historical measurements used as input for machine learning models. We propose to use gradient boosting as the machine learning algorithm to conduct a scintillation forecasting task at high latitudes. Once the gradient boosting model is trained, the rank of feature importance can be obtained. The preliminary results show that the top 10 most important features indeed are correlated with the future occurrence of scintillation. The feature importance ranking has the potential to guide feature selection for machine learning-based scintillation forecasting and improve forecasting performance. In addition, the feature importance list could also provide insights on the investigation of the complex coupling between solar wind and ionospheric disturbance.
机译:本文介绍了一种机器学习方法来研究闪烁预测的特征重要性。 这里,该特征是用作机器学习模型的输入的历史测量。 我们建议使用梯度提升作为机器学习算法,在高纬度地进行闪烁预测任务。 一旦训练梯度升压模型,就可以获得特征重要性的等级。 初步结果表明,十大最重要的特征确实与未来发生的闪烁相关。 该特征重要性排名有可能指导基于机器学习的闪烁预测的功能选择,提高预测性能。 此外,该特征重要性清单还可以提供有关对太阳风和电离层扰动之间复杂耦合的研究的见解。

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