https://www.openphilanthropy.org/blog/how-feasible-long-range-forecasting (a)
The opening:
How accurate do long-range (≥10yr) forecasts tend to be, and how much should we rely on them?
As an initial exploration of this question, I sought to study the track record of long-range forecasting exercises from the past. Unfortunately, my key finding so far is that it is difficult to learn much of value from those exercises, for the following reasons:
1. Long-range forecasts are often stated too imprecisely to be judged for accuracy. [More]
2. Even if a forecast is stated precisely, it might be difficult to find the information needed to check the forecast for accuracy. [More]
3. Degrees of confidence for long-range forecasts are rarely quantified. [More]
4. In most cases, no comparison to a “baseline method” or “null model” is possible, which makes it difficult to assess how easy or difficult the original forecasts were. [More]
5. Incentives for forecaster accuracy are usually unclear or weak. [More]
6. Very few studies have been designed so as to allow confident inference about which factors contributed to forecasting accuracy. [More]
7. It’s difficult to know how comparable past forecasting exercises are to the forecasting we do for grantmaking purposes, e.g. because the forecasts we make are of a different type, and because the forecasting training and methods we use are different. [More]
When you have these long term predictions which you plan on keeping track of, it is helpful, if possible, to create multiple models to apply to each forecast so that in the retrospective one can determine which, if any of the models, was more successful than the others.
So perhaps you have a prediction about how many volunteers will be required for a particular initiative to save x lives 10 years out. If you keep three separate forecasting reports which are explicit about their reasoning, then the iterative improvement process can happen a bit more quickly.