- #1
vky
- 6
- 0
hi, just wondering if there different ways to calculate the standard error for large and small sample size and if its so wats the formula we use? please give me a hand, hope this question makes sense.
cheers
cheers
Standard error is a measure of the variability or uncertainty in a sample statistic, such as the mean or proportion. It represents the difference between the observed value and the true value of the population. It is important in sample size calculations because it helps determine the required sample size to achieve a desired level of precision and confidence in the results.
Standard error is calculated by dividing the standard deviation of the population by the square root of the sample size. Alternatively, it can be estimated using the sample standard deviation and sample size.
The standard error and sample size are affected by the variability of the population, the desired level of precision and confidence, and the type of statistic being calculated. A higher variability or desired level of precision will result in a larger standard error and a larger required sample size.
The standard error and sample size have an inverse relationship. As the sample size increases, the standard error decreases. This means that larger sample sizes result in more precise estimates with less variability.
To determine the appropriate sample size for your study, you can use a sample size calculator that takes into account the desired level of precision and confidence, as well as the variability of the population. By plugging in these values, the calculator will estimate the required sample size to achieve your desired level of accuracy.