(An idea I had while responding to this quotes thread)
"Correlation does not imply causation" is bandied around inexpertly and inappropriately all over the internet. Lots of us hate this.
But get this: the phrase, and the most obvious follow-up phrases like "what does imply causation?" are not high-competition search terms. Up until about an hour ago, the domain name correlationdoesnotimplycausation.com was not taken. I have just bought it.
There is a correlation-does-not-imply-causation shaped space on the internet, and it's ours for the taking. I would like to fill this space with a small collection of relevant educational resources explaining what is meant by the term, why it's important, why it's often used inappropriately, and the circumstances under which one may legitimately infer causation.
At the moment the Wikipedia page is trying to do this, but it's not really optimised for the task. It also doesn't carry the undercurrent of "no, seriously, lots of smart people get this wrong; let's make sure you're not one of them", and I think it should.
The purpose of this post is two-fold:
Firstly, it lets me say "hey dudes, I've just had this idea. Does anyone have any suggestions (pragmatic/technical, content-related, pointing out why it's a terrible idea, etc.), or alternatively, would anyone like to help?"
Secondly, it raises the question of what other corners of the internet are ripe for the planting of sanity waterline-raising resources. Are there any other similar concepts that people commonly get wrong, but don't have much of a guiding explanatory web presence to them? Could we put together a simple web platform for carrying out this task in lots of different places? The LW readership seems ideally placed to collectively do this sort of work.
Isn't the Faithfulness assumption the assumption that effect cancellation is rare enough to be ignored? If it happens frequently, that looks like a rather large problem for Pearl's methods.
I currently have a paper in the submission process about systems which actively perform effect cancellation, and the problems that causes, but I assume that isn't what you have in mind.
If you pick parameters of your causal model randomly, then almost surely the model will be faithful (formally, in Robins' phrasing: "in finite dimensional parametric families, the subset of unfaithful distributions typically has Lebesgue measure zero on the parameter space"). People interpret this to mean that faithfulness violations are rare enough to be ignored. It is not so, sadly.
First, Nature doesn't pick causal models randomly. In fact, cancellations are quite useful (homeostasis, and gene regulation are often "implemented" by ... (read more)