A Study on Graph-Structured Recurrent Neural Networks and Sparsification with Application to Epidemic Forecasting

02/13/2019
by   Zhijian Li, et al.
27

We study epidemic forecasting on real-world health data by a graph-structured recurrent neural network (GSRNN). We achieve state-of-the-art forecasting accuracy on the benchmark CDC dataset. To improve model efficiency, we sparsify the network weights via transformed-ℓ_1 penalty and maintain prediction accuracy at the same level with 70

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