[ECML-PKDD2022] EpiGNN: Exploring Spatial Transmission with Graph Neural Network for Regional Epidemic Forecasting
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Updated
Oct 25, 2022 - Python
[ECML-PKDD2022] EpiGNN: Exploring Spatial Transmission with Graph Neural Network for Regional Epidemic Forecasting
The "Analysis of Information Networks" repository contains six exercises that explore key concepts in network analysis. From random network generation to link prediction and recommender systems, each exercise provides hands-on experience with metrics, visualizations, and real-world applications.
Spatial MultiAgent RL for Epidemic Control with Heterogeneous Risk Preferences
MSc & BSc theses (CMC MSU): credit-portfolio management and epidemic compartment-network modeling.
Code and data for "Faster Uptake, Slower Let-Down" (Risk Analysis, 2026) asymmetric community behavioral response to pandemic risk.
Notebooks used or made in development of prediksicovidjatim
SIR epidemic model with formal property verification, exhaustive parameter tuning, and prediction on Influenza data (USA & Netherlands, 2009-2011). Computational Modelling
An uncertainty-driven probabilistic framework for modeling worm propagation in large-scale networks. It uses stochastic infection rates to capture bursty behavior, adaptive slowdowns, and defense mechanisms, improving prediction accuracy over traditional models while remaining safe, reproducible, and suitable for cybersecurity research.
A numerical simulation of the SVEIR epidemic model (Susceptible-Vaccinated-Exposed-Infected-Recovered) incorporating spatial diffusion. Solves the system of differential equations to analyze influenza spread and vaccination impact.
Agent-based model (R) simulating epidemic spread through a demographically structured population households, schools, workplaces & neighborhoods with stochastic disease-state transitions.
A bi-virus epidemic model for networks with duty-cycled wireless sensors
Teaching-oriented ODE epidemic mini-lab with SI, SIR, and SEIR models, parameter sweeps, and interpretable metrics.
Bayesian discrete-time SIR/SEIR modelling, noisy epidemic observations, posterior predictive checks, and interpretable equation discovery.
Agent-based simulation of epidemic spread in R — stochastic disease-state agents interacting over a social network, with support for policy interventions like stay-at-home orders.
Epidemic spread simulation using cellular automata with intervention strategies and real-time visualisation in Python.
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