Author: paul, swarna kamal; Jana, Saikat; Bhaumik, Parama
                    Title: A multivariate spatiotemporal spread model of COVID-19 using ensemble of ConvLSTM networks  Cord-id: nng76upj  Document date: 2020_4_22
                    ID: nng76upj
                    
                    Snippet: The high R-naught factor of SARS-CoV-2 has created a race against time for mankind and it necessitates rapid containment actions to control the spread. In such scenario short term accurate spatiotemporal predictions can help understanding the dynamics of the spread in a geographic region and identify hotspots. We propose an ensemble of convolutional LSTM based spatiotemporal model to forecast spread of the epidemic with high resolution and accuracy in a large geographic region. A data preparatio
                    
                    
                    
                     
                    
                    
                    
                    
                        
                            
                                Document: The high R-naught factor of SARS-CoV-2 has created a race against time for mankind and it necessitates rapid containment actions to control the spread. In such scenario short term accurate spatiotemporal predictions can help understanding the dynamics of the spread in a geographic region and identify hotspots. We propose an ensemble of convolutional LSTM based spatiotemporal model to forecast spread of the epidemic with high resolution and accuracy in a large geographic region. A data preparation method is proposed to convert spatial causal features into set of 2D images with or without temporal component. The model has been trained with available data for USA and Italy. It achieved 5.57% and 0.3% mean absolute percent error for total number of predicted infection cases in a 5day prediction period for USA and Italy respectively.
 
  Search related documents: 
                                Co phrase  search for related documents- activation linear unit and loss function: 1, 2
  
 
                                Co phrase  search for related documents, hyperlinks ordered by date