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Preserving Dynamic Attention for Long-Term Spatial-Temporal Prediction

About

Effective long-term predictions have been increasingly demanded in urban-wise data mining systems. Many practical applications, such as accident prevention and resource pre-allocation, require an extended period for preparation. However, challenges come as long-term prediction is highly error-sensitive, which becomes more critical when predicting urban-wise phenomena with complicated and dynamic spatial-temporal correlation. Specifically, since the amount of valuable correlation is limited, enormous irrelevant features introduce noises that trigger increased prediction errors. Besides, after each time step, the errors can traverse through the correlations and reach the spatial-temporal positions in every future prediction, leading to significant error propagation. To address these issues, we propose a Dynamic Switch-Attention Network (DSAN) with a novel Multi-Space Attention (MSA) mechanism that measures the correlations between inputs and outputs explicitly. To filter out irrelevant noises and alleviate the error propagation, DSAN dynamically extracts valuable information by applying self-attention over the noisy input and bridges each output directly to the purified inputs via implementing a switch-attention mechanism. Through extensive experiments on two spatial-temporal prediction tasks, we demonstrate the superior advantage of DSAN in both short-term and long-term predictions.

Haoxing Lin, Rufan Bai, Weijia Jia, Xinyu Yang, Yongjian You• 2020

Related benchmarks

TaskDatasetResultRank
Grid-based Spatio-Temporal ForecastingTraffic-SH long-term (24 -> 24avg) (test)
MAE1.21
19
Grid-based Spatio-Temporal ForecastingTraffic-SH (Short-term)
MAE1.11
19
Grid-based Traffic Flow PredictionNYCTaxi inflow
MAE14.287
16
Grid-based Traffic Flow PredictionT-Drive inflow
MAE19.384
16
Grid-based Traffic Flow PredictionT-Drive outflow
MAE19.29
16
Grid-based Traffic Flow PredictionNYCTaxi outflow
MAE12.462
16
Grid-based Traffic Flow PredictionCHIBike inflow
MAE4.612
16
Grid-based Traffic Flow PredictionCHIBike outflow
MAE4.495
16
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