Fellow RGers:
A recent survey statistics and methodology journal had an article on the use of splines, and as one example they used data with which I am very familiar. In that case, however, I know that they combined categories of data for which results are also needed, and at the more aggregate level, those categories could be treated as strata. Then, each stratum, with its individual separate simple model, could contribute to perhaps the best overall results, rather than use a linear spline regression for the combined data set. Each category would appear to logically best be modeled by a simple WLS regression through the origin (which has worked well for these data). However, with data grouped together, a linear spline regression or a lowess model would seem logical, if one were unaware of the categories/strata that made up that combined data set.
But I would think that there would be much better uses for spline regressions. I'm curious to hear of some applications, especially - but not limited to - your own applications, with comments on why it was a beneficial approach, and why you chose it.
Thank you - Jim