Predicting high-dimensional short-term time-series is a difficult task due to the lack of sufficient information and the curse of dimensionality. To overcome these problems, this study proposes a novel spatiotemporal transformer neural network (STNN) for efficient prediction of short-term time-series with three major features. Firstly, the STNN can accurately and robustly predict a high-dimensional short-term time-series in a multi-step-ahead manner by exploiting high-dimensional/spatial information based on the spatiotemporal information (STI) transformation equation. Secondly, the continuous attention mechanism makes the prediction results more accurate than those of previous studies. Thirdly, we developed continuous spatial self-attentio...
The rapid development of remote sensing technology has brought abundant data support for deep learni...
The problem of forecasting a time series with a neural network is well-defined when considering a si...
Predictive learning uses a known state to generate a future state over a period of time. It is a cha...
Multivariate time series forecasting has long been a research hotspot because of its wide range of a...
Modeling and forecasting multivariate time series not only facilitates the decision making of practi...
Recurrent neural networks (RNNs) used in time series prediction are still not perfect in their predi...
Neural forecasting of spatiotemporal time series drives both research and industrial innovation in s...
In this thesis, we develop a collection of deep learning models for time series forecasting. Primary...
Transformer Networks are a new type of Deep Learning architecture first introduced in 2017. By only ...
We propose a novel Transformer-based architecture for the task of generative modelling of 3D human m...
In this paper, we propose a method to forecast the future of time series data using Transformer. The...
International audienceWe introduce a dynamical spatio-temporal model formalized as a recurrent neura...
In this paper, we present a recurrent neural system named long short-term cognitive networks (LSTCNs...
In this paper, we present a recurrent neural system named Long Short-term Cognitive Networks (LSTCNs...
To learn spatiotemporal representations and anomaly predictions from geophysical data, we propose ST...
The rapid development of remote sensing technology has brought abundant data support for deep learni...
The problem of forecasting a time series with a neural network is well-defined when considering a si...
Predictive learning uses a known state to generate a future state over a period of time. It is a cha...
Multivariate time series forecasting has long been a research hotspot because of its wide range of a...
Modeling and forecasting multivariate time series not only facilitates the decision making of practi...
Recurrent neural networks (RNNs) used in time series prediction are still not perfect in their predi...
Neural forecasting of spatiotemporal time series drives both research and industrial innovation in s...
In this thesis, we develop a collection of deep learning models for time series forecasting. Primary...
Transformer Networks are a new type of Deep Learning architecture first introduced in 2017. By only ...
We propose a novel Transformer-based architecture for the task of generative modelling of 3D human m...
In this paper, we propose a method to forecast the future of time series data using Transformer. The...
International audienceWe introduce a dynamical spatio-temporal model formalized as a recurrent neura...
In this paper, we present a recurrent neural system named long short-term cognitive networks (LSTCNs...
In this paper, we present a recurrent neural system named Long Short-term Cognitive Networks (LSTCNs...
To learn spatiotemporal representations and anomaly predictions from geophysical data, we propose ST...
The rapid development of remote sensing technology has brought abundant data support for deep learni...
The problem of forecasting a time series with a neural network is well-defined when considering a si...
Predictive learning uses a known state to generate a future state over a period of time. It is a cha...