Combining two estimates applied in a survey of copyright volumes at higher educational institutions in Norway using the bootstrap

Publication details

  • Publishers: Department of Mathematics, University of Oslo
  • Series: Statistical research report (Universitetet i Oslo. Matematisk institut (9)
  • Year: 2001
  • Issue: 9
  • Number of pages: 18
  • International Standard Numbers:
    • Printed: 82-553-1322-2
  • Link:

This survey is intended for estimating several types of copyright
volume at different educational institutions in Norway. Using a
calibration factor being equal to the ratio of the true number of
machine pages taken from all machines at an institution to the
corresponding estimated number, will make the estimates less biased and
less variable. There are two reasonable estimates. In addition to
suggesting a bootstrap procedure for selecting one of them, we propose
to fit a weighted average of both. The weight is estimated through
bootstrapping by minimizing the mean square error or the variance
coefficient of the combined estimate summed over all possible types of
copyright material. We expect to assign more weight to the estimate
which has less mean square error or variance coefficient. It is,
however, not straightforward to analyze theoretically the bias and
variance of the estimates. Such an analysis will need a simultanous
model for the number of machine pages and the number of original pages
taken by each person. Analyzing the data by bootstraping gave
significantly better performance for the combined estimate compared to
using the best of the two estimates chosen by bootstrap selection.
However, setting the weights equal to 0.5 gave the overall best
performance.