Diagnosing New York city's noises with ubiquitous data

Yu Zheng, Tong Liu, Yilun Wang, Yanmin Zhu, Yanchi Liu, Eric Chang
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引用次数: 210

Abstract

Many cities suffer from noise pollution, which compromises people's working efficiency and even mental health. New York City (NYC) has opened a platform, entitled 311, to allow people to complain about the city's issues by using a mobile app or making a phone call; noise is the third largest category of complaints in the 311 data. As each complaint about noises is associated with a location, a time stamp, and a fine-grained noise category, such as "Loud Music" or "Construction", the data is actually a result of "human as a sensor" and "crowd sensing", containing rich human intelligence that can help diagnose urban noises. In this paper we infer the fine-grained noise situation (consisting of a noise pollution indicator and the composition of noises) of different times of day for each region of NYC, by using the 311 complaint data together with social media, road network data, and Points of Interests (POIs). We model the noise situation of NYC with a three dimension tensor, where the three dimensions stand for regions, noise categories, and time slots, respectively. Supplementing the missing entries of the tensor through a context-aware tensor decomposition approach, we recover the noise situation throughout NYC. The information can inform people and officials' decision making. We evaluate our method with four real datasets, verifying the advantages of our method beyond four baselines, such as the interpolation-based approach.
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用无处不在的数据诊断纽约市的噪音
许多城市饱受噪音污染之苦,这影响了人们的工作效率甚至心理健康。纽约市开通了一个名为311的平台,人们可以通过使用手机应用程序或打电话来投诉城市的问题;噪音是311数据中第三大投诉类别。由于每一个关于噪音的投诉都与一个地点、一个时间戳和一个细粒度的噪音类别(如“嘈杂的音乐”或“建筑”)相关联,这些数据实际上是“人类作为传感器”和“人群感知”的结果,包含丰富的人类智能,可以帮助诊断城市噪音。在本文中,我们通过使用311投诉数据以及社交媒体、道路网络数据和兴趣点(poi),推断纽约市每个地区每天不同时间的细粒度噪声情况(由噪声污染指标和噪声组成)。我们用一个三维张量来模拟纽约市的噪声情况,其中三个维度分别代表区域、噪声类别和时隙。通过上下文感知张量分解方法补充张量的缺失条目,我们恢复了整个纽约市的噪声情况。这些信息可以为人们和官员的决策提供信息。我们用四个真实数据集评估了我们的方法,验证了我们的方法在四个基线之外的优势,例如基于插值的方法。
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