Sample Size
Sample Size is the number of observations or data points or objects in a sample. Sufficiency of sample size is a key element in hypothesis testing to be able to make inferences about the population. The right sample size is primarily dependent on the cost & time involved in data collection and the need for statistical significance. Statistically, sample size is affected by the following parameters
a. Significance Level (σ) or the maximum allowed probability of committing Type I error
b. Power of the test (1-β), where β is the maximum allowed probability of committing Type II error
c. Minimum difference (in the test statistic) to be detected.
An application-oriented question on the topic along with responses can be seen below. The best answer was provided by Prashanth Datta on 12th April 2019.
Applause for the respondents- Prashanth Datta
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