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Simple Versus Composed Temporal Lag Regression with Feature Selection, with an Application to Air Quality Modeling

机译:具有特征选择的简单对时滞回归与在空气质量建模中的应用

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Anthropogenic environmental pollution is a known and indisputable issue, and the need of ever more precise and reliable land use regression models is undeniable. In this paper we consider two years of hourly data taken in Wrocław (Poland), that contain the concentrations of NO2 and NOx in the atmosphere, and, along these, traffic flow, air pressure, humidity, solar duration, temperature, and wind speed. In the quest for an explanation model for the pollution concentrations, we improve and generalize the simple temporal lag regression model, and introduce a composed temporal regression model that entails a transformation of the data to improve the effectiveness of classical learning algorithms. We show that using the latter we obtain more accurate and better interpretable explanation models than using the former, and also than using the original, non-transformed data.
机译:人为的环境污染是一个已知且无可争辩的问题,不可否认的是,人们需要更加精确和可靠的土地利用回归模型。在本文中,我们考虑在弗罗茨瓦夫(波兰)进行的两年每小时数据采集,其中包含NO的浓度 2 和不 x 在大气中,以及交通流量,气压,湿度,太阳持续时间,温度和风速。在寻求污染浓度的解释模型的过程中,我们改进并推广了简单的时间滞后回归模型,并引入了组成的时间回归模型,该模型需要对数据进行转换以提高经典学习算法的有效性。我们表明,使用后者,与使用前者以及使用原始的非转换数据相比,我们可以获得更准确和更好的解释模型。

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