Suppose that your current estimate for possibility of an AI takeoff coming in the next 10 years is some probability x. As technology is constantly becoming more sophisticated, presumably your probability estimate 10 years from now will be some y > x. And 10 years after that, it will be z > y. My question is, does there come a point in the future where, assuming that an AI takeoff has not yet happened in spite of much advanced technology, you begin to revise your estimate downward with each passing year? If so, how many decades (centuries) from now would you expect the inflection point in your estimate?
I'd like to suggest a way to organize our thinking about this, but it doesn't quite directly bear on your question. Your question is: how should our confidence in the singularity ever occurring change as time goes on? A related and easier question is: if we grant that a singularity is 100% likely to occur eventually, how much danger should we feel at different times in the future? I'm ready to drop some jargon about this easier question: I think we should be considering the relative probability
(1) P(still alive at time t + 1 | still alive at time t)
which is the ratio P(still alive at time t+1) / P(still alive at time t) by Bayes theorem. By taking the logarithm and considering a small unit of time, this is approximately
(2) exp(- pdf(t) / (1 - cdf(t)))
where pdf and cdf are the probability density function and cumulative density function of "when a singularity will occur." I have seen this expression (2) called the "failure rate" or "hazard rate" of the distribution. Anyway and in particular you can compute the distribution from the hazard rate.
For instance, you might think (1) is constant, meaning something like "an attack could come at any time, but we have no reason to expect one time over another." In that case you are dealing with an exponential distribution. Or you might think that (1) is low now but will asymptotically approach some constant as time goes on, in which case you might be dealing with a gamma distribution. These gamma distributions are interesting in that they have a peak or mode) in the future, which is what I at first thought you might be getting at by "inflection point."