That's an interesting approach, but I'm not really sure it's what Luke's after. He seems to be talking about closer to Knightian uncertainty and out-of-sample error; given a specific model of AI risk over time, I suppose you could figure out how many bits you receive per time period and calculate such a number, but I think Luke is asking a question more like 'how much reliability do I have that this model is capturing anything meaningful about the real dynamics? are the results being driven by one particular assumption or some small unreliable set of datapoints? Is this set of predictions just overfitting?' One of his points:
There are differences in model uncertainty between the three cases. I know what model to use when predicting a coin flip. My method of predicting whether Matt will show up at a party is shakier, but I have some idea of what I’m doing. With the Strong AI case, I don’t really have any good idea of what I’m doing. Presumably model uncertainty is related to estimate stability, because the more model uncertainty we have, the more we can change our estimate by reducing our model uncertainty.
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 p...
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: