This question exists in the awkward space between "things undergrads google for homework" and "things on the cutting edge," so google isn't being super helpful.
I have a number I want a computer to estimate. Right now I have two regression models and an insider methodology. The former can be used to create two normal curves. The latter creates a point estimate only, but I can back into a confidence interval/normal curve with an acceptable amount of arbitrary hand-waving. If necessary, this could be conceived of as a prior.
How can I automatically weight the three curves into a single point estimate? I vaguely remember something from an econometrics class about weighting forecasts in a way that minimized total standard error, but I tried to work the math out myself and I didn’t know how to deal with the covariances of the forecasts. Can I simply assume the forecast covariances are zero?
This seems like a good place to use Bayes’ law, but I don't know how to formally set it up.
Edit to Add: Bayesian statistics is still new to me, so forgive me for being a bit dense. Here's my understanding of the methodology right now.
What exactly is D in this scenario?
I don't have an answer for this case, but I find that http://stats.stackexchange.com/ is usually a better place to get good answers for things like that.
Great link. Thanks.