August 2024: Epidemiological Models
Epidemiological models, in the field of applied probability, serve as indispensable tools for understanding, predicting, and managing the spread of diseases within populations. Research in this field is crucial for several reasons. First, it helps develop and refine models that simulate disease transmission dynamics. These models incorporate various factors such as population demographics, contact patterns, and disease characteristics, enabling researchers to assess the potential impact of interventions and make informed policy recommendations. In addition, research in epidemiological models helps evaluate the effectiveness of public health measures. Through probabilistic methods, researchers can simulate different scenarios, providing valuable insights into the potential outcomes of specific interventions, vaccination strategies, or behavioral changes within communities. Ongoing research also highlights uncertainties and limitations within models. Probability plays a pivotal role in quantifying uncertainties, acknowledging data variability, and assessing the reliability of predictions. This continuous refinement is crucial for enhancing the accuracy and robustness of epidemiological forecasts and ensuring their practical applicability. Finally, research in epidemiological models contributes significantly to public health decision-making. Evidence-based policies rely on the outputs generated by these models to guide interventions, allocate resources efficiently, and minimize the impact of infectious diseases on society.
In summary, research in epidemiological models within applied probability is essential for gaining valuable insights, improving prediction accuracy, and guiding effective public health strategies to mitigate the spread and impact of diseases within populations.
Collection created by Sophie Hautphenne (University of Melbourne)
Original Article
SIR model with social gatherings
- Part of:
-
- Journal:
- Journal of Applied Probability / Volume 61 / Issue 2 / June 2024
- Published online by Cambridge University Press:
- 15 January 2024, pp. 667-684
-
- Article
-
- You have access
- HTML
- Export citation
Dynamics of information networks
- Part of:
-
- Journal:
- Journal of Applied Probability / Volume 61 / Issue 3 / 2024
- Published online by Cambridge University Press:
- 30 November 2023, pp. 1029-1039
-
- Article
-
- You have access
- HTML
- Export citation
The size of a Markovian SIR epidemic given only removal data
- Part of:
-
- Journal:
- Advances in Applied Probability / Volume 55 / Issue 3 / 2023
- Published online by Cambridge University Press:
- 21 March 2023, pp. 895-926
-
- Article
-
- You have access
- HTML
- Export citation
A model for an epidemic with contact tracing and cluster isolation, and a detection paradox
- Part of:
-
- Journal:
- Journal of Applied Probability / Volume 60 / Issue 3 / September 2023
- Published online by Cambridge University Press:
- 03 March 2023, pp. 1079-1095
-
- Article
-
- You have access
- HTML
- Export citation
An ephemerally self-exciting point process
- Part of:
-
- Journal:
- Advances in Applied Probability / Volume 54 / Issue 2 / 2022
- Published online by Cambridge University Press:
- 14 March 2022, pp. 340-403
-
- Article
- Export citation
Who is the infector? General multi-type epidemics and real-time susceptibility processes
- Part of:
-
- Journal:
- Advances in Applied Probability / Volume 51 / Issue 2 / June 2019
- Published online by Cambridge University Press:
- 07 August 2019, pp. 606-631
-
- Article
- Export citation
Research Papers
Epidemic risk and insurance coverage
- Part of:
-
- Journal:
- Journal of Applied Probability / Volume 54 / Issue 1 / 2017
- Published online by Cambridge University Press:
- 04 April 2017, pp. 286-303
-
- Article
-
- You have access
- Export citation
The deterministic Kermack‒McKendrick model bounds the general stochastic epidemic
- Part of:
-
- Journal:
- Journal of Applied Probability / Volume 53 / Issue 4 / 2016
- Published online by Cambridge University Press:
- 09 December 2016, pp. 1031-1040
-
- Article
- Export citation
Part 3. Biological applications
Couplings for locally branching epidemic processes
- Part of:
-
- Journal:
- Journal of Applied Probability / Volume 51 / Issue A / December 2014
- Published online by Cambridge University Press:
- 30 March 2016, pp. 43-56
-
- Article
-
- You have access
- Export citation
General Applied Probability
How Clustering Affects Epidemics in Random Networks
- Part of:
-
- Journal:
- Advances in Applied Probability / Volume 46 / Issue 4 / 2014
- Published online by Cambridge University Press:
- 22 February 2016, pp. 985-1008
-
- Article
-
- You have access
- Export citation