Usually we have more than enough historical data to answer questions like To what extent do badges influence behavior? and Does the bounty system work? So there's usually no need to run experiments such as the ones you mentioned. Often the public data available to anybody (either via the Stack Exchange Data Explorer or the data dump) is sufficient. Occasionally, we use an internal version of that data that includes deleted content. This is necessary in order to remove survivor bias and related effects.
1. Generated posts, either questions or answers,
If you include manually authoring questions, then yes. The background here might be interesting for you. We've been batting around ideas of how to increase the participation1 on smaller sites (such as Parenting) and an obvious way to do that is to encourage more people to ask more questions. But what happens if our top users are spread too thin?2 If the number of questions were increased by 50%, would the activity per question decrease? If so, by how much? There's no clean way to test that with historical data since increases in participation usually go hand in hand with increases in user population.
Several members of the Community Manager team spent a good deal of time collectively and individually planning how to test the hypothesis that increasing questions will not decrease the quantity or perceived quality of answers. We considered several methods, including creating anonymous accounts. In the end, we decided to simply start asking questions that we would like to have answered on the Parenting site.
Of note: we did not announce the experiment on meta. The primary reason was we did not want to bias users one way or another. On the other hand, there was no reason for us to do so. Many of us routinely ask and answer questions on Stack Exchange sites because it's good to eat your own dog food. So while we hoped to learn something about how people on our sites operate, we also hoped to learn something about parenting. (And I, for one, certainly did.)
A few years ago, we tried a similar experiment with hot topics. One of the conclusions:
Creating high-quality content ... is a challenge.
It's doubly hard when you want to conduct an experiment that doesn't harm the community you are asking on. And yet, that's what we've aimed to do. Whatever we're trying to learn, it isn't worth the cost of losing your trust. which brings me to:
2. Generated up/down votes for said posts,
Occasionally we get emails from researchers asking us to do just this. We've politely declined because:
Quite simply, we won't mess with this sort of experiment.
3. Populated data whether posts that may be of acceptable quality get undue bad attention and subsequently put on hold, deleted, etc.
I'm not 100% sure I understand what you mean. We do think that our current algorithm for showing questions on the Stack Overflow home page highlights bad questions. (We are tackling that problem with a variety of new and tweaked features. We are also looking into controlling the meta effect. Doing these things in a sensible way requires collecting a lot of data.
We also do A/B tests and test advertising campaigns. As far as I know, we don't purposely test worse experiences for our users. Instead, we either test potential improvements ("what happens if we make that button a little bigger?" sort of thing) or similar alternatives ("does the blue background get more clickthroughs than the orange?").
As a rule, our interests are aligned with the success of our communities. As a company we try very hard to make our decisions in public. That means we share what we are up to on meta—usually before we do it.
1. Since you asked here and not Meta Stack Exchange, I should emphasize that Stack Overflow has never had a problem with low levels of participation. Most of it's life has been a struggle to manage large volumes of content.
2. Again, this may very well be an issue on Stack Overflow and a handful of other sites.