(no title)
ckdot2
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2 years ago
Of course we can expect errors, I don't doubt that. That's what I mean with "wrong". But still, how should the author consider that if he doesn't know about the precision nor quantity of errors?
I just don't think that's the topic of the article. The article is about correlations in the dataset, no matter, if the dataset may contain errors.
555watch|2 years ago
Confidence bounds for every correlation coefficient would add value and _might_ change some of the interpretations.
E.g.: "its average correlation with the other measurements is only 0.03, which is not just small, it is substantially smaller than the next smallest, which is ear breadth, with an average correlation of 0.13."
If the former is 0.03 +- 0.02 and the latter is 0.13 +- 0.07, we could claim that both are equal to 0 (or just equal).
crackedbassoon|2 years ago
pessimizer|2 years ago
> Significance arithmetic is a set of rules (sometimes called significant figure rules) for approximating the propagation of uncertainty in scientific or statistical calculations. These rules can be used to find the appropriate number of significant figures to use to represent the result of a calculation. If a calculation is done without analysis of the uncertainty involved, a result that is written with too many significant figures can be taken to imply a higher precision than is known, and a result that is written with too few significant figures results in an avoidable loss of precision. Understanding these rules requires a good understanding of the concept of significant and insignificant figures.