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The dose matters too...

Just a follow-up from my previous post on mixed-mode surveys. I think that one of the things that gets overlooked in discussions of mixed-mode designs is the dosage of each mode that is applied. For example, how many contact attempts under each mode? It's pretty clear that this matters. In general, more effort leads to higher response rates and less effort leads to lower response rates.

But, it seems that sometimes when we talk about mixed-mode studies, we forget about the dose. We wrote about this idea in Chapter 4 of our new book on adaptive survey design. I think it would be useful to keep this in mind when describing mixed-mode studies. It might be these other features, i.e. not the mode itself, that account for differences between mixed-mode studies. At least in part.

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