Poster abstract: Understanding city dynamics by manifold learning correlation analysis

Wenzhu Zhang, Lin Zhang
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Abstract

Cities have long been considered as complex entities with nonlinear and dynamic properties. Pervasive urban sensing and crowd sourcing have become prevailing technologies that enhance the interplay between the cyber space and the physical world. In this paper, a spectral graph based manifold learning method is proposed to alleviate the impact of noisy, sparse and high-dimensional dataset. Correlation analysis of two physical processes is enhenced by semi-supervised machine learning. Preliminary evaluations on the correlation of traffic density and air quality reveal great potential of our method in future intelligent evironment study.
海报摘要:通过流形学习相关分析了解城市动态
城市一直被认为是具有非线性和动态特性的复杂实体。无处不在的城市感知和众包已经成为增强网络空间和物理世界之间相互作用的主流技术。本文提出了一种基于谱图的流形学习方法,以减轻噪声、稀疏和高维数据集的影响。半监督机器学习增强了两个物理过程的相关性分析。对交通密度与空气质量相关性的初步评价显示了该方法在未来智能环境研究中的巨大潜力。
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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