It's always a concern in Bayesian reasoning whether you're using a sensible prior. Theoretically you should always start with the Solomonoff prior and update from there but implementing it in practice is difficult, to say the least. However, if we wish to stay in the realm of mathematical formalism (I think Knightian uncertainty lies outside of it by definition?) then the parameter I suggested is sensible. In particular the relationship between model uncertainty and estimate stability is well-captured by this parameter. For example suppose you have three possible models of strong AI development M1, M2 and M3 and you have a meta-model which assigns them probabilities p1, p2 and p3. Then your probability distribution is the convex linear combination of the probability distributions assigned by M1, M2 and M3 with coefficients p1, p2 and p3. Now, if during time period t you expect to learn which of these models is the right one then my parameter will show the resulting "unstability".
Theoretically you should always start with the Solomonoff prior and update from there but implementing it in practice is difficult, to say the least.
Yes, but you can check your models in a variety of ways. You can test your inferred results from your dataset by doing bootstrapping or cross-validation, and see how often your result changed (coefficients or estimation accuracy etc). To step up a level, you can set parameters in your model to differing values based on hyperparameters, and see how each of the variants on the model performs on the data (and ...
I've been trying to get clear on something you might call "estimate stability." Steven Kaas recently posted my question to StackExchange, but we might as well post it here as well: