Publication | Open Access
A Distributed Neural Network Architecture for Robust Non-Linear Spatio-Temporal Prediction
10
Citations
8
References
2019
Year
Artificial IntelligenceGeometric LearningNeural Transition KernelsMachine LearningData ScienceEngineeringSpatiotemporal DatabasePredictive AnalyticsSpatio-temporal ModelTemporal Pattern RecognitionNeural Prediction KernelsComputer ScienceMesh NodesForecastingRobot LearningGraph Neural NetworkRecurrent Neural NetworkNonlinear Time Series
We introduce a distributed spatio-temporal artificial neural network architecture (DISTANA). It encodes mesh nodes using recurrent, neural prediction kernels (PKs), while neural transition kernels (TKs) transfer information between neighboring PKs, together modeling and predicting spatio-temporal time series dynamics. As a consequence, DISTANA assumes that generally applicable causes, which may be locally modified, generate the observed data. DISTANA learns in a parallel, spatially distributed manner, scales to large problem spaces, is capable of approximating complex dynamics, and is particularly robust to overfitting when compared to other competitive ANN models. Moreover, it is applicable to heterogeneously structured meshes.
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