地磁风暴模型特征排序的成对网络

Q3 Social Sciences
J. Beukes, Marelie Hattingh Davel, S. Lotz
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引用次数: 1

摘要

前馈神经网络为复杂回归模型提供了基础,该模型在各种应用中产生准确的预测。然而,就它们对模型精度的贡献而言,它们通常不明确地提供关于每个输入参数的效用的任何信息。考虑到这一点,我们开发了成对网络,这是对全连接前馈网络的一种适应,允许根据输入参数对模型输出的贡献对输入参数进行排序。该应用是在一个空间物理问题的背景下演示的。地磁风暴是一种多日事件,其特征是由太阳活动驱动的地球磁场发生重大扰动。先前的风暴预测工作通常使用太阳风测量值作为回归问题的输入参数,该回归问题的任务是预测扰动指数,例如1分钟节奏对称性-H(Sym-H)指数。我们重新访问了根据太阳风参数预测Sym-H的任务,有两个“转折”:(i)地磁风暴相位信息被纳入模型输入,并被证明可以提高预测性能。(ii)我们描述了成对网络结构和训练过程——首先验证合成数据的排序能力,然后使用网络分析Sym-H问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pairwise networks for feature ranking of a geomagnetic storm model
Feedforward neural networks provide the basis for complex regression models that produce accurate predictions in a variety of applications. However, they generally do not explicitly provide any information about the utility of each of the input parameters in terms of their contribution to model accuracy. With this in mind, we develop the pairwise network, an adaptation to the fully connected feedforward network that allows the ranking of input parameters according to their contribution to model output. The application is demonstrated in the context of a space physics problem. Geomagnetic storms are multi-day events characterised by significant perturbations to the magnetic field of the Earth, driven by solar activity. Previous storm forecasting efforts typically use solar wind measurements as input parameters to a regression problem tasked with predicting a perturbation index such as the 1-minute cadence symmetric-H (Sym-H) index. We re-visit the task of predicting Sym-H from solar wind parameters, with two ‘twists’: (i) Geomagnetic storm phase information is incorporated as model inputs and shown to increase prediction performance. (ii) We describe the pairwise network structure and training process – first validating ranking ability on synthetic data, before using the network to analyse the Sym-H problem.
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来源期刊
South African Computer Journal
South African Computer Journal Social Sciences-Education
CiteScore
1.30
自引率
0.00%
发文量
10
审稿时长
24 weeks
期刊介绍: The South African Computer Journal is specialist ICT academic journal, accredited by the South African Department of Higher Education and Training SACJ publishes research articles, viewpoints and communications in English in Computer Science and Information Systems.
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