空气质量预报的条件变分图自编码器

Esther Rodrigo Bonet, T. Do, Xuening Qin, J. Hofman, V. Manna, Wilfried Philips, Nikos Deligiannis
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引用次数: 1

摘要

为了控制空气污染并减轻其对健康的负面影响,拥有准确的实时预测模型至关重要。现有的基于深度学习的空气质量预测模型通常采用时间和空间模块。然而,数据稀缺性在该领域成为一个真正的问题,这个问题可以通过捕获数据分布来解决。在这项工作中,我们通过提出一种新的条件变分图自编码器来解决数据稀缺问题。我们的模型能够通过有效地编码已知数据的时空相关性来预测空气污染。此外,我们利用动态上下文数据,如天气或卫星图像来调节模型的行为。我们将问题表述为上下文感知的基于图形的矩阵完成任务,并利用来自移动站点的街道级数据。在真实世界空气质量数据集上的实验表明,相对于最先进的方法,我们的模型的性能得到了改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Conditional Variational Graph Autoencoder for Air Quality Forecasting
To control air pollution and mitigate its negative effect on health, it is of the utmost importance to have accurate real-time forecasting models. Existing deep-learning-based air quality forecasting models typically deploy temporal and-less often-spatial modules. Yet, data scarcity emerges as a real issue in this domain, a problem that can be solved by capturing the data distribution. In this work, we address data scarcity by proposing a novel conditional variational graph autoencoder. Our model is able to forecast air pollution by efficiently encoding the spatio-temporal correlations of the known data. Additionally, we leverage dynamic context data such as weather or satellite images to condition the model's behaviour. We formulate the problem as a context-aware graph-based matrix completion task and utilize street-level data from mobile stations. Experiments on real-world air quality datasets show the improved performance of our model with respect to state-of-the-art approaches.
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