首页> 外文会议>IFIP WG 5.11 international symposium on environmental software systems;ISESS >A New Feature Selection Methodology for Environmental Modelling Support: The Case of Thessaloniki Air Quality
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A New Feature Selection Methodology for Environmental Modelling Support: The Case of Thessaloniki Air Quality

机译:支持环境建模的新特征选择方法:塞萨洛尼基空气质量案例

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Environmental systems status is described via a (usually big) set of parameters. Therefore, relevant models employ a large feature space, thus making feature selection a necessity towards better modelling results. Many methods have been used in order to reduce the number of features, while safeguarding environmental model performance and resulting to low computational time. In this study, a new feature selection methodology is presented, making use of the Self Organizing Maps (SOM) method. SOM visualization values are used as a similarity measure between the parameter that is to be forecasted, and parameters of the feature space. The method leads to the smallest set of parameters that surpass a similarity threshold. Results obtained, for the case of Thessaloniki air quality forecasting, are comparable to what feature selection methods offer.
机译:通过一组(通常是很大的)参数来描述环境系统的状态。因此,相关模型使用了较大的特征空间,因此使特征选择成为获得更好建模结果的必要。为了减少特征数量,同时保护环境模型性能并减少计算时间,使用了许多方法。在这项研究中,提出了一种新的特征选择方法,该方法利用了自组织图(SOM)方法。 SOM可视化值用作要预测的参数与特征空间的参数之间的相似性度量。该方法导致超过相似性阈值的最小参数集。对于塞萨洛尼基空气质量预测而言,所获得的结果可与功能选择方法所提供的结果相媲美。

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