The validity of standard confidence intervals constructed in survey sampling is based on the central limit theorem. For small sample sizes, the central limit theorem may give a poor approximation, resulting in confidence intervals that are misleading. We discuss this issue and propose methods for constructing confidence intervals for the population mean tailored to small sample sizes. We present a simple approach for constructing confidence intervals for the population mean based on tail bounds for the sample mean that are correct for all sample sizes. Bernstein\u27s inequality provides one such tail bound. The resulting confidence intervals have guaranteed coverage probability under much weaker assumptions than are required for standard m...
Confidence intervals for the mean of one sample and the difference in means of two independent sampl...
When conducting research on a given type of patients, it is impossible to examine all the existing s...
When conducting research on a given type of patients, it is impossible to examine all the existing s...
A confidence interval is a standard way of expressing our uncertainty about the value of a populatio...
Confidence intervals for densities built on the basis of standard nonparametric theory are doomed to...
Confidence intervals must be robust in having nominal and actual probability coverage in close agree...
In section 1, we develop a novel method of confidence interval construction for directly standardize...
Determining confidence intervals for a population µ estimate from a sample ¯x with a either a known ...
It is a challenge to design randomized trials when it is suspected that a treatment may benefit only...
Well-recommended methods of forming ‘confidence intervals’ for a binomial proportion give interval e...
Estimating the probability of the binomial distribution is a basic problem, which appears in almost ...
For any estimate of response, confidence intervals are important as they help quantify a plausible r...
[[abstract]]If a population contains many zero values and the sample size is not very large, the tra...
The likelihood ratio method is used to construct a confidence interval for a population mean when sa...
When outcome data in a clinical trial are clustered and binary, such as in a trial estimating the sp...
Confidence intervals for the mean of one sample and the difference in means of two independent sampl...
When conducting research on a given type of patients, it is impossible to examine all the existing s...
When conducting research on a given type of patients, it is impossible to examine all the existing s...
A confidence interval is a standard way of expressing our uncertainty about the value of a populatio...
Confidence intervals for densities built on the basis of standard nonparametric theory are doomed to...
Confidence intervals must be robust in having nominal and actual probability coverage in close agree...
In section 1, we develop a novel method of confidence interval construction for directly standardize...
Determining confidence intervals for a population µ estimate from a sample ¯x with a either a known ...
It is a challenge to design randomized trials when it is suspected that a treatment may benefit only...
Well-recommended methods of forming ‘confidence intervals’ for a binomial proportion give interval e...
Estimating the probability of the binomial distribution is a basic problem, which appears in almost ...
For any estimate of response, confidence intervals are important as they help quantify a plausible r...
[[abstract]]If a population contains many zero values and the sample size is not very large, the tra...
The likelihood ratio method is used to construct a confidence interval for a population mean when sa...
When outcome data in a clinical trial are clustered and binary, such as in a trial estimating the sp...
Confidence intervals for the mean of one sample and the difference in means of two independent sampl...
When conducting research on a given type of patients, it is impossible to examine all the existing s...
When conducting research on a given type of patients, it is impossible to examine all the existing s...