I'm looking for the preferred approach to construct a finite sized confidence interval for the population mean, assuming:
- The distribution of the population is unknown
- The sample size is low
- The population standard deviation is unknown
The usual approaches do not work in this setting:
- Using the usual t-distribution to construct the confidence interval is not possible because we do not assume normality
- We can't use the central limit theorem because of the low sample size
- The standard deviation is unknown, so we can't use Chebyshev's inequality
I found out that if we assume the distribution is unimodal & symmetric, we can construct a confidence interval for the population mean from a single value. However, it is unclear to me how to generalize this to higher sample sizes (say, 10 or 15 observations), and I wonder if the unimodal & symmetric assumptions are necessary.