It sounds like what you’re describing is something that Iain Banks calls an “Out of Context Problem”—it doesn’t seem like a ‘leverage penalty’ is the proper way to conceptualize what you’re applying, as much as a ‘privilege penalty’.
In other words, when the sky suddenly opens up and blue fire pours out, the entire context for your previous set of priors needs to be re-evaluated—and the very question of “should I give this man $5” exists on a foundation of those now-devaluated priors.
Is there a formalized tree or mesh model for Bayesian probabilities? Because I think that might be fruitful.
It sounds like what you’re describing is something that Iain Banks calls an “Out of Context Problem”—it doesn’t seem like a ‘leverage penalty’ is the proper way to conceptualize what you’re applying, as much as a ‘privilege penalty’.
In other words, when the sky suddenly opens up and blue fire pours out, the entire context for your previous set of priors needs to be re-evaluated—and the very question of “should I give this man $5” exists on a foundation of those now-devaluated priors.
Is there a formalized tree or mesh model for Bayesian probabilities? Because I think that might be fruitful.