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Motivation of the subject
Accidental hints or intervention by the experimenter
Or other random factors. The statistical techniques used in sophisticated experiments
isolate these kinds of factors, and try to account for them separately in order to gain a good understanding of the effects of the experimental treatments. Fortunately over a large number of trials all of these factors tend to combine into a pattern of random variation within the normal distribution, as predicted by the
central limit theorem. The central limit theorem and further null- hypothesis testing techniques are beyond the scope of this course. A useful introductory text on experiment design is Robson's
Experiment, Design and Statistics in Psychology. A briefer summary of the most important principles is given in section 14.4 of Preece, Rogers and Sharp. A more serious concern in
this kind of research is the validity of the result. Is the effect being measured really produced in response to the treatment (
internal validity). Would the observed effect generalise to other situations besides the precise context of the experiment What exactly was the mechanism by which the effect occurred Is there some established
HCI work or psychological theory that
can explain it Could it be replicated if you repeated the experiment with slight variations (older users, for example, or a different model of computer In order to avoid these potential criticisms, HCI researchers often try to use experimental tasks
and context that have good external or
environmental validity - they areas close as possible to the situation in which the interface will really be used. Chapter 6 of the Cairns and Cox book gives very useful advice on statistical argument in
HCI, while chapter 9 (by Alan Dix) has an excellent discussion on validity and theory.
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