Type:
Volume:
7(2)
Pages:
online
Year:
2008
Publisher:
Statistics Education Research Journal
URL:
http://www.stat.auckland.ac.nz/~iase/serj/SERJ7(2).pdf
Abstract:
This paper identifies key concepts and issues associated with the reasoning of<br>informal statistical inference. I focus on key ideas of inference that I think all students<br>should learn, including at secondary level as well as tertiary. I argue that a<br>fundamental component of inference is to go beyond the data at hand, and I propose<br>that statistical inference requires basing the inference on a probability model. I<br>present several examples using randomization tests for connecting the randomness<br>used in collecting data to the inference to be drawn. I also mention some related<br>points from psychology and indicate some points of contention among statisticians,<br>which I hope will clarify rather than obscure issues.
The CAUSE Research Group is supported in part by a member initiative grant from the American Statistical Association’s Section on Statistics and Data Science Education