(愿景文件)空间因果态势感知、预测和规划愿景

IF 1.2 Q4 REMOTE SENSING
Fahim Tasneema Azad, K. Candan, Ahmet Kapkic, Mao-Lin Li, Huan Liu, Pratanu Mandal, Paras Sheth, Bilgehan Arslan, Gerardo Chowell-Puente, John Sabo, R. Muenich, Javier Redondo Anton, M. Sapino
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引用次数: 0

摘要

要成功应对公共卫生和可持续性等社会经济关键领域的许多紧迫挑战,就必须深入了解各种时空分布实体之间的因果关系和相互作用。在这些应用中,利用时空数据获得基于因果关系的态势感知并进行知情预测以提供不同规模的复原力的能力至关重要。虽然以因果关系为基础的方法在应对这些挑战方面大有可为,但实现这些目标所需的核心数据技术仍处于早期阶段,缺乏有助于实现其潜力的框架。在本文中,我们认为迫切需要一种新的时空因果研究范式,这种范式建立在以下方面的计算进步之上:时空数据和模型整合、因果学习和发现、大规模数据和模型驱动的模拟、仿真和预测、时空数据驱动和以模型为中心的操作建议,以及有效的因果驱动可视化和解释。因此,我们为时空因果态势感知、预测和规划提供了愿景和路线图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
(Vision Paper) A Vision for Spatio-Causal Situation Awareness, Forecasting, and Planning
Successfully tackling many urgent challenges in socio-economically critical domains, such as public health and sustainability, requires a deeper understanding of causal relationships and interactions among a diverse spectrum of spatio-temporally distributed entities. In these applications, the ability to leverage spatio-temporal data to obtain causally-based situational awareness and to develop informed forecasts to provide resilience at different scales is critical. While the promise of a causally-grounded approach to these challenges is apparent, the core data technologies needed to achieve these are in the early stages and lack a framework to help realize their potential. In this paper, we argue that there is an urgent need for a novel paradigm of spatio-causal research built on computational advances in, spatio-temporal data and model integration, causal learning and discovery, large scale data- and model-driven simulations, emulations, and forecasting, spatio-temporal data-driven and model centric operational recommendations, and effective causally-driven visualization and explanation. We, thus, provide a vision, and a road-map, for spatio-causal situation awareness, forecasting, and planning.
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来源期刊
CiteScore
4.40
自引率
5.30%
发文量
43
期刊介绍: ACM Transactions on Spatial Algorithms and Systems (TSAS) is a scholarly journal that publishes the highest quality papers on all aspects of spatial algorithms and systems and closely related disciplines. It has a multi-disciplinary perspective in that it spans a large number of areas where spatial data is manipulated or visualized (regardless of how it is specified - i.e., geometrically or textually) such as geography, geographic information systems (GIS), geospatial and spatiotemporal databases, spatial and metric indexing, location-based services, web-based spatial applications, geographic information retrieval (GIR), spatial reasoning and mining, security and privacy, as well as the related visual computing areas of computer graphics, computer vision, geometric modeling, and visualization where the spatial, geospatial, and spatiotemporal data is central.
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