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Inferring air pollution by sniffing social media

机译:通过嗅探社交媒体推断空气污染

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The first step to deal with the significant issue of air pollution in China and elsewhere in the world is to monitor it. While more physical monitoring stations are built, current coverage is limited to large cities with most other places undermonitored. In this paper we propose a complementary approach to monitor Air Quality Index (AQI): using machine learning models to estimate AQI from social media posts. We propose a series of progressively more sophisticated machine learning models, culminating in a Markov Random Field model that utilizes the text content in social media as well as the spatiotemporal correlation among cities and days. Our extensive experiments on Sina Weibo data from 108 cities during a one-month period demonstrate the accurate AQI prediction performance of our approach.
机译:解决中国和世界其他地区空气污染这一重大问题的第一步是对其进行监控。虽然建立了更多的物理监测站,但当前的覆盖范围仅限于大城市,而大多数其他地方的监测不足。在本文中,我们提出了一种补充方法来监测空气质量指数(AQI):使用机器学习模型从社交媒体帖子中估算AQI。我们提出了一系列逐渐完善的机器学习模型,最终以马尔可夫随机域模型为最终模型,该模型利用社交媒体中的文本内容以及城市和日期之间的时空相关性。我们在一个月的时间内对来自108个城市的新浪微博数据进行了广泛的实验,证明了我们方法的准确AQI预测性能。

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