Demystifying Deep Learning in Predictive Spatio-Temporal Analytics: An Information-Theoretic Framework
Qi Tan, Yang Liu, Jiming Liu

TL;DR
This paper introduces an information-theoretic framework and a novel I$^2$DRNN model for deep learning in predictive spatio-temporal analytics, enabling better understanding and modeling of multi-scale dependencies.
Contribution
It proposes a new I$^2$DRNN model with an information-theoretic analysis to understand deep learning capacity in PSTA tasks, validated through experiments.
Findings
I$^2$DRNN outperforms existing models in PSTA tasks.
The model effectively captures multi-scale spatio-temporal dependencies.
Theoretical analysis confirms the model's learning capacity.
Abstract
Deep learning has achieved incredible success over the past years, especially in various challenging predictive spatio-temporal analytics (PSTA) tasks, such as disease prediction, climate forecast, and traffic prediction, where intrinsic dependency relationships among data exist and generally manifest at multiple spatio-temporal scales. However, given a specific PSTA task and the corresponding dataset, how to appropriately determine the desired configuration of a deep learning model, theoretically analyze the model's learning behavior, and quantitatively characterize the model's learning capacity remains a mystery. In order to demystify the power of deep learning for PSTA, in this paper, we provide a comprehensive framework for deep learning model design and information-theoretic analysis. First, we develop and demonstrate a novel interactively- and integratively-connected deep…
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