it definitely doesn't work in that context where you don't have a reactive "window function" dealing with the problem, sure :-P
those APIs are horrible btw, even if you are doing it "properly" it is so messy, like >2000 lines of code just for a minimum viable example
nothing will ever beat MessageBox() for a horrible API though... so many different versions of that signature making it totally ungooglable, all with way too many magical numeric arguments, all of them with different values for those numbers, none of which make any sense at all
my favourite being VB6 which has vbOK, vbCancel and vbOKCancel where not only is it not a bitmask, but there are no overlapping values anywhere in the whole thing you literally just have to remember the names of shit
if you figure out the average variance over the whole set, then exclude each data point in turn and reduce anything which has a higher variance than the full set to max, that should produce the graph you describe (I think)
I don't think it's possible to smooth it without looking at the whole set, but this sort of thing is very much not my strong suit
certainly with 3 data points it's impossible though, you are trying to smooth the spike out realtive to the trend, 3 data points does not give you a trend, even I remember that from being taught scatter plots in school :-P
(3 data points == $current and "the ones either side")
you need the average variance of the whole set to know how it relates to rthe whole set
more than willing to be wrong on this tho, I am not good at this sort of thing
I feel like audio noise reduction algos might have something to offer you here? feels like they do something similar
my main gut feel is... if you only look at what s immediately around you, the error compounds as you move through the set so you will end up artificially creating a trend that isn't really there