Paper List
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The Effective Reproduction Number in the Kermack-McKendrick model with age of infection and reinfection
This paper addresses the challenge of accurately estimating the time-varying effective reproduction number ℛ(t) in epidemics by incorporating two crit...
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Covering Relations in the Poset of Combinatorial Neural Codes
This work addresses the core challenge of navigating the complex poset structure of neural codes to systematically test the conjecture linking convex ...
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Collective adsorption of pheromones at the water-air interface
This paper addresses the core challenge of understanding how amphiphilic pheromones, previously assumed to be transported in the gas phase, can be sta...
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pHapCompass: Probabilistic Assembly and Uncertainty Quantification of Polyploid Haplotype Phase
This paper addresses the core challenge of accurately assembling polyploid haplotypes from sequencing data, where read assignment ambiguity and an exp...
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Setting up for failure: automatic discovery of the neural mechanisms of cognitive errors
This paper addresses the core challenge of automating the discovery of biologically plausible recurrent neural network (RNN) dynamics that can replica...
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Influence of Object Affordance on Action Language Understanding: Evidence from Dynamic Causal Modeling Analysis
This study addresses the core challenge of moving beyond correlational evidence to establish the *causal direction* and *temporal dynamics* of how obj...
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Revealing stimulus-dependent dynamics through statistical complexity
This paper addresses the core challenge of detecting stimulus-specific patterns in neural population dynamics that remain hidden to traditional variab...
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Exactly Solvable Population Model with Square-Root Growth Noise and Cell-Size Regulation
This paper addresses the fundamental gap in understanding how microscopic growth fluctuations, specifically those with size-dependent (square-root) no...
Bayesian Inference in Epidemic Modelling: A Beginner’s Guide Illustrated with the SIR Model
PhD Mathematics
30秒速读
IN SHORT: This guide addresses the core challenge of estimating uncertain epidemiological parameters (like transmission and recovery rates) from noisy, real-world outbreak data by providing a clear, applied pathway using Bayesian inference and MCMC.
核心创新
- Methodology Presents an integrated, pedagogical pipeline from the SIR ODE model through Bayesian likelihood formulation to practical MCMC implementation, demystifying the process for beginners.
- Methodology Explicitly connects the Gaussian noise assumption in the likelihood to the common least-squares fitting approach, framing Bayesian inference as its natural probabilistic extension with uncertainty quantification.
- Theory Emphasizes the interpretative power of the full posterior distribution and credible intervals over single point estimates, highlighting this as the key advantage for decision-making under uncertainty.
主要结论
- In a synthetic example with true parameters β=0.3, γ=0.1 (R0=3.0), MCMC recovered posterior means of β=0.300 (std 0.002) and γ=0.102 (std 0.001), demonstrating accurate and precise inference.
- The posterior distribution for R0 was estimated as 2.95 with a standard deviation of 0.03, showing the method successfully quantifies uncertainty in this critical epidemiological metric.
- The framework successfully separates the roles of individual parameters β and γ, showing that different pairs can yield the same R0 but produce distinct epidemic curve shapes (e.g., peak sharpness), which point estimates alone would miss.
摘要: This guide provides a beginner-friendly introduction to Bayesian inference in the context of epidemic modeling, using the classic Susceptible-Infected-Recovered (SIR) model as a working example. It covers the mathematical setup of the SIR ordinary differential equations, the formulation of the Bayesian inference problem (likelihood and prior specification), and the implementation of Markov Chain Monte Carlo (MCMC) via the Metropolis-Hastings algorithm to estimate transmission (β) and recovery (γ) rates from noisy outbreak data. The tutorial emphasizes the conceptual advantages of the Bayesian framework—which provides full posterior distributions quantifying parameter uncertainty—over frequentist point estimates, and walks through a complete synthetic example with results and interpretation.