Posts tagged model averaging
Model Averaging
- 16 August 2024
When confronted with more than one model we have several options. One of them is to perform model selection as exemplified by the PyMC examples Model comparison and the GLM: Model Selection, usually is a good idea to also include posterior predictive checks in order to decide which model to keep. Discarding all models except one is equivalent to affirm that, among the evaluated models, one is correct (under some criteria) with probability 1 and the rest are incorrect. In most cases this will be an overstatment that ignores the uncertainty we have in our models. This is somewhat similar to computing the full posterior and then just keeping a point-estimate like the posterior mean; we may become overconfident of what we really know. You can also browse the blog/tag/model-comparison tag to find related posts.