Exact interval estimation for three parameters subject to false positive misclassification
Shuiyun Lu,
Weizhen Wang,
Tianfa Xie
Abstract:SummaryBinary data subject to one type of misclassification exist in various fields. It is collected in a double‐sampling scheme that includes a gold standard test and a fallible test. The main parameter of interest for this type of data is the positive probability of the gold standard test. Existing intervals are unreliable because the given nominal level is not achieved. In this paper, we construct an exact interval by inverting the E+M score tests and improve it by the general ‐function method. We find th… Show more
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