空间集成社会科学数据集的统计分析和可视化服务

Irfan Azeezullah, Friska Pambudi, Tung-Kai Shyy, Imran Azeezullah, Nigel Ward, J. Hunter, R. Stimson
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引用次数: 0

摘要

空间整合社会科学(SISS)领域认识到,社会科学家感兴趣的许多数据都有一个相关的地理位置。SISS系统将地理位置作为整合异构社会科学数据集的基础,并通过映射接口对整合结果进行可视化和分析。然而,寻找数据集、汇总在不同空间尺度上捕获的数据以及对数据实施统计分析技术是非常复杂和具有挑战性的步骤,超出了许多社会科学家的能力。昆士兰大学SISS电子研究设施(SISS- erf)的目的是通过提供一个网络界面,使研究人员能够快速访问相关的澳大利亚社会空间数据集(如人口普查数据、投票数据),在空间上进行汇总,对数据集进行统计建模,并将空间分布模式和统计结果可视化,从而消除社会科学家的负担。本文描述了SISS-eRF的技术体系结构和组件,并讨论了支持技术选择的原因。它描述了一些案例研究,说明如何应用ssis - erf来证明将特定投票模式与社会经济参数(例如,性别、年龄、住房、收入、教育、就业、宗教/文化)联系起来的假设。最后,我们概述了在澳大利亚社会科学界扩展和部署SISS-eRF的未来计划。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Statistical analysis and visualization services for Spatially Integrated Social Science datasets
The field of Spatially Integrated Social Science (SISS) recognizes that much data of interest to social scientists has an associated geographic location. SISS systems use geographic location as the basis for integrating heterogeneous social science data sets and for visualizing and analyzing the integrated results through mapping interfaces. However, sourcing data sets, aggregating data captured at different spatial scales, and implementing statistical analysis techniques over the data are highly complex and challenging steps, beyond the capabilities of many social scientists. The aim of the UQ SISS eResearch Facility (SISS-eRF) is to remove this burden from social scientists by providing a Web interface that allows researchers to quickly access relevant Australian socio-spatial datasets (e.g. census data, voting data), aggregate them spatially, conduct statistical modeling on the datasets and visualize spatial distribution patterns and statistical results. This paper describes the technical architecture and components of SISS-eRF and discusses the reasons that underpin the technological choices. It describes some case studies that demonstrate how SISS-eRF is being applied to prove hypotheses that relate particular voting patterns with socio-economic parameters (e.g., gender, age, housing, income, education, employment, religion/culture). Finally we outline our future plans for extending and deploying SISS-eRF across the Australian Social Science Community.
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