Author_Institution :
Dept. of Comput. Sci., Massachusetts Univ., Amherst, MA, USA
Abstract :
This article´s focus appears at first to be a narrow, prescriptive little corner of the methodological landscape. Data analysis is often dismissed as no more complicated than calculating some means and comparing them with t tests or the like. Consequently, experiments and analyses are inefficient, requiring more data than necessary to show an effect; they waste data, failing to show effects; and they sometimes induce hallucinations, suggesting effects that don´t exist. Bad analysis can spoil an entire research program, so it warrants attention. I will discuss three common and easily fixed problems: accepting the null hypothesis, a misuse of statistical machinery; inadequate attention to sources of variance, leading to insignificant results and failure to notice interactions among factors; and multiple pairwise comparisons, leading to nonexistent effects
Keywords :
data analysis; statistical analysis; data analysis; multiple pairwise comparisons; nonexistent effects; null hypothesis; sources of variance; Artificial intelligence; Bayesian methods; Computer science; Data analysis; Intelligent robots; Learning systems; Lesions; Machine learning; Shape; Strategic planning;