Ranking Buildings and Mining the Web for Popular Architectural Patterns

U. Gadiraju, S. Dietze, Ernesto Diaz-Aviles
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引用次数: 4

Abstract

Knowledge about the reception of architectural structures is crucial for architects and urban planners. Yet obtaining such information has been a challenging and costly activity. However, with the advent of the Web, a vast amount of structured and unstructured data describing architectural structures has become available publicly. This includes information about the perception and use of buildings (for instance, through social media), and structured information about the building's features and characteristics (for instance, through public Linked Data). Hence, first mining (i) the popularity of buildings from the social Web and (ii) then correlating such rankings with certain features of buildings, can provide an efficient method to identify successful architectural patterns. In this paper we propose an approach to rank buildings through the automated mining of Flickr metadata. By further correlating such rankings with building properties described in Linked Data we are able to identify popular patterns for particular building types (airports, bridges, churches, halls, and skyscrapers). Our approach combines crowdsourcing with Web mining techniques to establish influential factors, as well as ground truth to evaluate our rankings. Our extensive experimental results depict that methods tailored to specific structure types allow an accurate measurement of their public perception.
排名建筑物和挖掘网络流行的建筑模式
关于建筑结构接收的知识对建筑师和城市规划者来说是至关重要的。然而,获取此类信息一直是一项具有挑战性且代价高昂的活动。然而,随着Web的出现,大量描述体系结构的结构化和非结构化数据已经公开可用。这包括关于建筑物的感知和使用的信息(例如,通过社交媒体),以及关于建筑物特征和特征的结构化信息(例如,通过公共关联数据)。因此,首先挖掘(i)来自社交网络的建筑物的受欢迎程度,(ii)然后将这些排名与建筑物的某些特征相关联,可以提供一种有效的方法来识别成功的建筑模式。在本文中,我们提出了一种通过自动挖掘Flickr元数据来对建筑物进行排名的方法。通过进一步将这些排名与关联数据中描述的建筑属性相关联,我们能够识别特定建筑类型(机场、桥梁、教堂、大厅和摩天大楼)的流行模式。我们的方法结合了众包和网络挖掘技术来建立影响因素,以及评估我们排名的基础事实。我们广泛的实验结果表明,针对特定结构类型量身定制的方法可以准确测量其公众感知。
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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