- Uncomfortable science
Uncomfortable science is the term coined by
statistician John Tukey for cases in which there is a need to draw an inference from a limited sample ofdata , where further samples influenced by the samecause system will not be available. More specifically, it involves the analysis of a finite natural phenomenon for which it is difficult to overcome the problem of using a common sample ofdata for bothexploratory data analysis andconfirmatory data analysis . This leads to the danger ofsystematic bias throughtesting hypotheses suggested by the data .A typical example is Bode's law, which provides a simple numerical rule for the distances of the planets in the
solar system from theSun . Once the rule has been derived, through thetrial and error matching of various rules with the observeddata (exploratory data analysis ), there are not enough planets remaining for a rigorous and independent test of thehypothesis (confirmatory data analysis ). We have exhausted the natural phenomena. The agreement between data and the numerical rule should be no surprise, as we have deliberately chosen the rule to match the data. If we are concerned about what Bode's law tells us about the cause system of planetary distribution then we demand confirmation which is not available, until and unless information about other planetary systems becomes available.ee also
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Cosmic variance for an extreme example of this phenomenon
*Data mining
*Anomalous phenomenon Bibliography
*Diaconis, P. (1985) "Theories of data analysis: from magical thinking through classical statistics", in cite book | author=Hoaglin, D.C "et al." (eds) | title=Exploring Data Tables Trends and Shapes | publisher=Wiley | id=ISBN 0-471-09776-4
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