Information weighted sampling for detecting rare items in finite populations with a focus on security
Frequently one has to search within a finite population for a single particular individual or item with a rare characteristic. Whether an item possesses the characteristic can only be determined by close inspection. The availability of additional information about the items in the population opens t...
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Zusammenfassung: | Frequently one has to search within a finite population for a single
particular individual or item with a rare characteristic. Whether an item
possesses the characteristic can only be determined by close inspection. The
availability of additional information about the items in the population opens
the way to a more effective search strategy than just random sampling or
complete inspection of the population. We will assume that the available
information allows for the assignment to all items within the population of a
prior probability on whether or not it possesses the rare characteristic. This
is consistent with the practice of using profiling to select high risk items
for inspection. The objective is to find the specific item with the minimum
number of inspections. We will determine the optimal search strategies for
several models according to the average number of inspections needed to find
the specific item. Using these respective optimal strategies we show that we
can order the numbers of inspections needed for the different models partially
with respect to the usual stochastic ordering. This entails also a partial
ordering of the averages of the number of inspections. Finally, the use, some
discussion, extensions, and examples of these results, and conclusions about
them are presented. |
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DOI: | 10.48550/arxiv.1310.5821 |