The confidence interval can be expressed in terms of samples (or repeated samples): "Were this procedure to be repeated on multiple samples, the calculated confidence interval (which would differ for each sample) would encompass the true population parameter 90% of the time."[1] Note that this does not refer to repeated measurement of the same sample, but repeated sampling.
Aleah Avery
Answered question
2022-11-18
According to frequentists, why can't probabilistic statements be made about population paramemters? The confidence interval can be expressed in terms of samples (or repeated samples): "Were this procedure to be repeated on multiple samples, the calculated confidence interval (which would differ for each sample) would encompass the true population parameter 90% of the time."[1] Note that this does not refer to repeated measurement of the same sample, but repeated sampling. And: The confidence interval can be expressed in terms of a single sample: "There is a 90% probability that the calculated confidence interval from some future experiment encompasses the true value of the population parameter." Note this is a probability statement about the confidence interval, not the population parameter. And: A 95% confidence interval does not mean that for a given realised interval calculated from sample data there is a 95% probability the population parameter lies within the interval, nor that there is a 95% probability that the interval covers the population parameter.[11] Once an experiment is done and an interval calculated, this interval either covers the parameter value or it does not; it is no longer a matter of probability.
Answer & Explanation
Eva Cochran
Beginner2022-11-19Added 14 answers
Step 1 Suppose that you want to model the random behaviour of a certain population. Then you have to associate to the population a density function f (that is, you choose a "normal distribution", "exponential distribution", etc.), and a parametre (that is, if for example your density is a normal, then can be the population mean or the variance, etc.). Suppose that you have decided which f you want, that is, the distribution for your population. The goal now is to estimate . In frequentist statistics, is an unknown contant to be discovered. That is why we speak about confidence and not about probability. Example: imagine I want to model the height of the people in England. I associate to it the normal distribution, so f is the density function of a normal. Now I want to estimate . One takes a sample of heights and uses the fact that
One computes a and b so that
that is,
Step 2 Here it makes sense to speak about probability because is a random variable. Now, what you do is to substitute (random variable) by the sample mean (constant value), and your confidence interval is
The parametre is a constant, so either it belongs to I or not (you do not have probability here). But you have a lot of confidence that it will belong to I. Remark: opposite to frequentist statistics, one may use bayesian statistics, which assumes that the parametre is a random variable, with a probability distribution to be discovered. In this case one speaks about credible regions (probabilities) and not confidence intervals (confidence).