Memory in Memory: A Predictive Neural Network for Learning Higher-Order Non-Stationarity From Spatiotemporal Dynamics
Tsinghua University · Beijing Institute of Big Data Research
Abstract
Natural spatiotemporal processes can be highly non-stationary in many ways, e.g. the low-level non-stationarity such as spatial correlations or temporal dependencies of local pixel values; and the high-level variations such as the accumulation, deformation or dissipation of radar echoes in precipitation forecasting. From Cramer's Decomposition, any non-stationary process can be decomposed into deterministic, time-variant polynomials, plus a zero-mean stochastic term. By applying differencing operations appropriately, we may turn time-variant polynomials into a constant, making the deterministic component predictable. However, most previous recurrent neural networks for spatiotemporal prediction do not use the…
Citation impact
- FWCI
- 17.85
- Percentile
- 100%
- References
- 74
Authors
6- YWYunbo WangCorresponding
Tsinghua University, Beijing Institute of Big Data Research
- JZJianjin Zhang
Beijing Institute of Big Data Research, Tsinghua University
- HZHongyu Zhu
Tsinghua University, Beijing Institute of Big Data Research
- MLMingsheng Long
Tsinghua University, Beijing Institute of Big Data Research
- JWJianmin Wang
Tsinghua University, Beijing Institute of Big Data Research
Topics & keywords
- Computer science
- Recurrent neural network
- Artificial neural network
- Algorithm
- Series (stratigraphy)
- Markov process
- Artificial intelligence
- Mathematics