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Profiling the Spatial Structure of London: From Individual Tweets to Aggregated Functional Zones

机译:对伦敦的空间结构进行概要分析:从单个推文到聚合的功能区

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Knowledge discovery about people and cities from emerging location data has been an active research field but is still relatively unexplored. In recent years, a considerable amount of work has been developed around the use of social media data, most of which focusses on mining the content, with comparatively less attention given to the location information. Furthermore, what aggregated scale spatial patterns show still needs extensive discussion. This paper proposes a tweet-topic-function-structure framework to reveal spatial patterns from individual tweets at aggregated spatial levels, combining an unsupervised learning algorithm with spatial measures. Two-year geo-tweets collected in Greater London were analyzed as a demonstrator of the framework and as a case study. The results indicate, at a disaggregated level, that the distribution of topics possess a fair degree of spatial randomness related to tweeting behavior. When aggregating tweets by zones, the areas with the same topics form spatial clusters but of entangled urban functions. Furthermore, hierarchical clustering generates a clear spatial structure with orders of centers. Our work demonstrates that although uncertainties exist, geo-tweets should still be a useful resource for informing spatial planning, especially for the strategic planning of economic clusters.
机译:从新兴的位置数据中发现有关人和城市的知识一直是一个活跃的研究领域,但仍相对未开发。近年来,围绕社交媒体数据的使用已开展了大量工作,其中大部分专注于挖掘内容,而对位置信息的关注相对较少。此外,总体规模空间格局所显示的内容仍需要广泛讨论。本文提出了一种推特-主题功能结构框架,该算法在无监督学习算法与空间度量相结合的基础上,在聚合的空间水平上揭示单个推文的空间模式。分析了在大伦敦收集的两年地理推文,作为框架的演示者和案例研究。结果表明,从分类的角度来看,主题的分布具有与推文行为相关的相当程度的空间随机性。当按区域汇总推文时,具有相同主题的区域形成空间簇,但具有纠缠的城市功能。此外,分层聚类生成具有中心顺序的清晰空间结构。我们的工作表明,尽管存在不确定性,但地理推文仍应是有用的资源,可用于告知空间规划,尤其是用于经济集群的战略规划。

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