Infectious disease forecasting has been a key focus in the recent past owing to the COVID-19 pandemic and has proved to be an important tool in controlling the pandemic. With the advent of reliable spatiotemporal data, graph neural network models have been able to successfully model the inter-relation between the cross-region signals to produce quality forecasts, but like most deep-learning models they do not explicitly incorporate the underlying causal mechanisms. In this work, we employ a causal mechanistic model to guide the learning of the graph embeddings and propose a novel learning framework -- Causal-based Graph Neural Network (CausalGNN) that learns spatiotemporal embedding in a latent space where graph input features and epidemiol...
During 2020, the infection rate of COVID-19 has been investigated by many scholars from different re...
Accurately predicting traffic flow on roads is crucial to address urban traffic congestion and save ...
The COVID-19 pandemic has widely spread with an increasing infection rate through more than 200 coun...
With the spreading of COVID-19, various existing machine learning frameworks can be adopted to effec...
This paper presents a novel approach to regional forecasting of SARS-Cov-2 infections one week ahead...
With the recent COVID-19 outbreak, we have assisted to the development of new epidemic models or the...
We introduce EINNs, a framework crafted for epidemic forecasting that builds upon the theoretical gr...
Introduction: Multivariate time series prediction of infectious diseases is significant to public he...
Why can’t neural networks (NN) forecast better? In the major super-forecasting competitions, NN have...
Spatio-temporal modeling is an essential lens to understand many real-world phenomena from traffic [...
During 2020, the infection rate of COVID-19 has been investigated by many scholars from different re...
Abstract When an epidemic spreads into a population, it is often impractical or impos...
COVID-19 has caused millions of infections and deaths over the last 2 years. Machine learning models...
Abstract Prediction of complex epidemiological systems such as COVID-19 is challenging on many groun...
The Covid-19 pandemic is still spreading around the world and seriously imperils humankind's ...
During 2020, the infection rate of COVID-19 has been investigated by many scholars from different re...
Accurately predicting traffic flow on roads is crucial to address urban traffic congestion and save ...
The COVID-19 pandemic has widely spread with an increasing infection rate through more than 200 coun...
With the spreading of COVID-19, various existing machine learning frameworks can be adopted to effec...
This paper presents a novel approach to regional forecasting of SARS-Cov-2 infections one week ahead...
With the recent COVID-19 outbreak, we have assisted to the development of new epidemic models or the...
We introduce EINNs, a framework crafted for epidemic forecasting that builds upon the theoretical gr...
Introduction: Multivariate time series prediction of infectious diseases is significant to public he...
Why can’t neural networks (NN) forecast better? In the major super-forecasting competitions, NN have...
Spatio-temporal modeling is an essential lens to understand many real-world phenomena from traffic [...
During 2020, the infection rate of COVID-19 has been investigated by many scholars from different re...
Abstract When an epidemic spreads into a population, it is often impractical or impos...
COVID-19 has caused millions of infections and deaths over the last 2 years. Machine learning models...
Abstract Prediction of complex epidemiological systems such as COVID-19 is challenging on many groun...
The Covid-19 pandemic is still spreading around the world and seriously imperils humankind's ...
During 2020, the infection rate of COVID-19 has been investigated by many scholars from different re...
Accurately predicting traffic flow on roads is crucial to address urban traffic congestion and save ...
The COVID-19 pandemic has widely spread with an increasing infection rate through more than 200 coun...