The point is to test them! Do not make the assumption that all correlations are false because some are not true. In science most testable hypotheses begin with an observed correlation that is then proven correct or incorrect by experimentation or further observation.
The link you provided discusses how ice core measurements are not exactly comparable to direct measurements. This is not surprising but can be compensated for, something the author doesn't do.
The graphs I linked do not involve ice cores, btw. Most are direct measurements from Mauna Loa.
Put aside the specifics, the issue I have is with data treatment.
You posted a chart of two line. One squiggly ane smooth. One seemingly exponential, the other seemingly a stochastic trend of some sort.
You implied they were powerful evidence that the two processes underlying the data were phyisically linked in a causal relationship.
I questioned whether they did that at all, given that they are just to lines and that a more thorough statistical treatment (test properly for corellation at a minimum) is needed before we can say they are anything other than two lines.
You then said "With data like that absolutes do just fine. Corellations have been done elsewhere"
Then I said. absolutes aren't just fine, we need to see evidence of proper non-spurious corellation.
Now YOU are telling me that the point is to test them for corellation.
See? I said, you need to test them for correlation and you said no you don't. Now you are telling me the whole point is to test them. You can see how I am confused.
And the ice core issue is not what I was talking about. The salient point was that long run CO2 series are composites of different data series and types of measurement, which on closer inspection may not in fact be compatible with each other (i.e. they can't be spliced together to form one series). I don't know if that is the case with your chart, but when I searched for the source data it only gave Mauna Loa data which starts in 1959 and the chart starts around 1880ish.


