Robust Confidence Intervals for the Bernoulli Parameter |
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Authors: | Wheyming Tina Song Chia-Jung Chang Sin-Long Liu |
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Affiliation: | 1. Department of Industrial Engineering and Engineering Management , National Tsing Hua University , Taiwan, Republic of China wheyming_song@yahoo.com;3. Department of Industrial Engineering and Engineering Management , National Tsing Hua University , Taiwan, Republic of China |
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Abstract: | Despite the simplicity of the Bernoulli process, developing good confidence interval procedures for its parameter—the probability of success p—is deceptively difficult. The binary data yield a discrete number of successes from a discrete number of trials, n. This discreteness results in actual coverage probabilities that oscillate with the n for fixed values of p (and with p for fixed n). Moreover, this oscillation necessitates a large sample size to guarantee a good coverage probability when p is close to 0 or 1. It is well known that the Wilson procedure is superior to many existing procedures because it is less sensitive to p than any other procedures, therefore it is less costly. The procedures proposed in this article work as well as the Wilson procedure when 0.1 ≤p ≤ 0.9, and are even less sensitive (i.e., more robust) than the Wilson procedure when p is close to 0 or 1. Specifically, when the nominal coverage probability is 0.95, the Wilson procedure requires a sample size 1, 021 to guarantee that the coverage probabilities stay above 0.92 for any 0.001 ≤ min {p, 1 ?p} <0.01. By contrast, our procedures guarantee the same coverage probabilities but only need a sample size 177 without increasing either the expected interval width or the standard deviation of the interval width. |
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Keywords: | Bernoulli parameter Coverage probability Expected interval width |
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