Towards Learning in Grey Spatiotemporal Systems: A Prophet to Non-consecutive Spatiotemporal Dynamics
Zhengyang Zhou, Yang Kuo, Wei Sun, Binwu Wang, Min Zhou, Yunan Zong,, Yang Wang

TL;DR
This paper introduces a novel framework for non-consecutive spatiotemporal forecasting in grey systems, addressing missing observations and uncertainty quantification for more reliable predictions in smart city applications.
Contribution
It proposes a hierarchical factor-decoupled learning framework with semantic-neighboring sampling and disentangled uncertainty estimation for grey spatiotemporal systems with missing data.
Findings
Effective handling of missing observations through semantic-neighboring sequence sampling
Decoupling of exogenous factors improves prediction accuracy
Disentangled uncertainty quantification enhances model reliability
Abstract
Spatiotemporal forecasting is an imperative topic in data science due to its diverse and critical applications in smart cities. Existing works mostly perform consecutive predictions of following steps with observations completely and continuously obtained, where nearest observations can be exploited as key knowledge for instantaneous status estimation. However, the practical issues of early activity planning and sensor failures elicit a brand-new task, i.e., non-consecutive forecasting. In this paper, we define spatiotemporal learning systems with missing observation as Grey Spatiotemporal Systems (G2S) and propose a Factor-Decoupled learning framework for G2S (FDG2S), where the core idea is to hierarchically decouple multi-level factors and enable both flexible aggregations and disentangled uncertainty estimations. Firstly, to compensate for missing observations, a generic…
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Taxonomy
TopicsAir Quality Monitoring and Forecasting · Energy Load and Power Forecasting
