bayesian_setting_up_model
Differences
This shows you the differences between two versions of the page.
| bayesian_setting_up_model [2025/09/15 05:23] – created adminm | bayesian_setting_up_model [2025/12/29 05:47] (current) – removed adminm | ||
|---|---|---|---|
| Line 1: | Line 1: | ||
| - | In Bayesian methods for dynamic models, particularly when exploring causal relationships, | ||
| - | 1. **Model Specification**: | ||
| - | |||
| - | 2. **Prior Distributions**: | ||
| - | |||
| - | 3. **Data Collection**: | ||
| - | |||
| - | 4. **Likelihood Function**: A likelihood function is constructed based on the assumed model structure. This function describes how likely the observed data is given the parameters of the model. | ||
| - | |||
| - | 5. **Bayesian Inference**: | ||
| - | |||
| - | 6. **Model Comparison and Selection**: | ||
| - | |||
| - | 7. **Markov Chain Monte Carlo (MCMC)**: Often, MCMC methods are employed to sample from the posterior distributions, | ||
| - | |||
| - | 8. **Dynamic Modeling**: In dynamic models, the relationships may change over time. Techniques such as state-space models or dynamic Bayesian networks can be used to capture these temporal dynamics. The structure can be adapted as new data becomes available. | ||
| - | |||
| - | 9. **Sensitivity Analysis**: Finally, sensitivity analysis can be performed to assess how robust the discovered model structure is to changes in the prior distributions or the data. | ||
| - | |||
| - | By iterating through these steps, researchers can refine their understanding of the causal relationships in dynamic systems, leading to a more accurate and reliable model structure. | ||
bayesian_setting_up_model.1757913826.txt.gz · Last modified: by adminm
