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Feature extraction for atmospheric pollution detection

机译:特征提取用于大气污染检测

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Atmospheric data sets are represented by an amount of heterogeneous and redundant data. As number of measurements grows, a strategy is needed to select and efficiently analyze the useful information from the whole data set. The aim of this work is to propose a feature extraction technique based on construction of clusters of similar features. The main objective of the proposed process is to attempt to reach a more accurate classification task and to achieve a more compact representation of the underlying structure of the data. The paper reports the results obtained using the above extraction and analysis procedure of a real data set on atmospheric pollution. It is shown that the proposed approach is able to detect underlying relationship between features and thus get to ameliorate classification accuracy rate.
机译:大气数据集由大量的异构数据和冗余数据表示。随着测量数量的增长,需要一种策略来从整个数据集中选择并有效地分析有用的信息。这项工作的目的是提出一种基于相似特征簇构建的特征提取技术。所提出的过程的主要目的是试图达到更准确的分类任务,并实现数据基础结构的更紧凑表示。本文报告了使用上述提取和分析程序得到的有关大气污染的真实数据所获得的结果。结果表明,该方法能够检测特征之间的潜在关系,从而提高分类准确率。

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