Sustainable Development Goals Monitoring and Forecasting using Time Series Analysis

Yassir Alharbi, Daniel Arribas-Bel, F. Coenen
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引用次数: 1

Abstract

A framework for UN Sustainability for Development Goal (SDG) attainment prediction is presented, the SDG Track, Trace & Forecast (SDG-TTF) framework. Unlike previous SDG attainment frameworks, SDGTTF takes into account the potential for causal relationship between SDG indicators both with respect to the geographic entity under consideration (intra-entity), and neighbouring geographic entities to the current entity (inter-entity). The challenge is in the discovery of such causal relationships. Six alternatives mechanisms are considered. The identified relationships are used to build multivariate time series prediction models which feed into a bottom-up SDG prediction taxonomy, which in turn is used to make SDG attainment predictions. The framework is fully described and evaluated. The evaluation demonstrates that the SDG-TTF framework is able to produce better predictions than alternative models which do not take into consideration the potential for intra and intercausal relationships.
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使用时间序列分析的可持续发展目标监测和预测
提出了联合国可持续发展目标(SDG)实现预测的框架,即可持续发展目标跟踪、跟踪和预测(SDG- ttf)框架。与以往的可持续发展目标实现框架不同,可持续发展目标实现框架考虑了可持续发展目标指标与所考虑的地理实体(实体内)以及与当前实体(实体间)相邻的地理实体之间可能存在的因果关系。挑战在于发现这样的因果关系。考虑了六种备选机制。确定的关系用于构建多变量时间序列预测模型,该模型输入自下而上的可持续发展目标预测分类法,该分类法反过来用于实现可持续发展目标的预测。对框架进行了充分的描述和评估。评估表明,可持续发展目标- ttf框架能够产生比不考虑潜在的内部和相互因果关系的替代模型更好的预测。
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