Proposal to Supplement the Missing Values of Air Pollution Levels in Meteorological Dataset

Dong-Chol Jo, H. Hahn
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Abstract

Recently, various air pollution factors have been measured and analyzed to reduce damages caused by it. In this process, many missing values occur due to various causes. To compensate for this, basically a vast amount of training data is required. This paper proposes a statistical techniques that effectively compensates for missing values generated in the process of measuring ozone, carbon dioxide, and ultra-fine dust using a small amount of learning data. The proposed algorithm first extracts a group of meteorological data that is expected to have positive effects on the correction of missing values through statistical information analysis such as the correlation between meteorological data and air pollution level factors, p-value, etc. It is a technique that efficiently and effectively compensates for missing values by analyzing them. In order to confirm the performance of the proposed algorithm, we analyze its characteristics through various experiments and compare the performance of the well-known representative algorithms with ours.
关于补充气象数据集中空气污染水平缺失值的建议
近年来,人们对各种空气污染因素进行了测量和分析,以减少其造成的损害。在此过程中,由于各种原因,会出现许多缺失值。为了弥补这一点,基本上需要大量的训练数据。本文提出了一种利用少量学习数据有效补偿臭氧、二氧化碳和超细粉尘测量过程中产生的缺失值的统计技术。该算法首先通过气象数据与大气污染水平因子的相关性、p值等统计信息分析,提取出一组预计对缺失值校正有积极作用的气象数据。这是一种通过分析值来有效补偿缺失值的技术。为了验证所提算法的性能,我们通过各种实验分析了所提算法的特点,并与已有的知名代表性算法的性能进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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