Andres LaCortadora
2012-Jul-30 10:44 UTC
[R] pairwise comparisons in accordance with regression fit
Hello, I have a unconventional question arising from my current master thesis on regression modeling. Suppose we have fitted a (linear) relationship between a dependent variable y and an independent variable x. Now we choose two points on the x-axis, i.e. according to percentiles x10 and x90. These two points are chosen to select the data points for two groups in order to perform pairwise comparisons. In the first run, we choose 20 data pairs around the x-values of x10 and x90 and run a statistical test in order to infere if their y-values differ significantly. In a subsequent step, we choose, say 30 data points around x90 and test against x10; in the next step 40 data points around x90 and test against x10 and so on. The intention for this is to determine the group size and consequently the corresponding lowest x-value where the comparison turns out to be significant. How would you approach this problem. I thought of a many-to-one procedure like the Dunnett test where multiple groups are tested against the same control (which could be x10 in our example) (package multcomp or others). However, these multiple groups would contain partly the same subjects. Or is some sort of adaptive design the right choice. Or something completely different? I'd be very happy for any kind of help since I'm completely stuck with this question and have no idea how to solve it Kind regards Andres -- View this message in context: http://r.789695.n4.nabble.com/pairwise-comparisons-in-accordance-with-regression-fit-tp4638328.html Sent from the R help mailing list archive at Nabble.com.