QUESTION IMAGE
Question
how would taking more samples improve an estimate of the population mean?
Taking more samples relates to the concept of the law of large numbers and the standard error of the mean. The standard error of the mean is given by $\frac{\sigma}{\sqrt{n}}$, where $\sigma$ is the population standard deviation and $n$ is the sample size. As $n$ (the number of samples) increases, the standard error decreases. A smaller standard error means that the sample mean is more likely to be closer to the true population mean. Also, with more samples, the distribution of the sample means (by the central limit theorem) becomes more concentrated around the population mean, reducing the variability of the estimates and making the estimate more accurate and precise.
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Taking more samples improves the estimate of the population mean because it reduces the standard error of the mean (given by $\frac{\sigma}{\sqrt{n}}$, where $n$ is the sample size), making the sample mean more likely to be close to the true population mean. By the law of large numbers and central limit theorem, more samples lead to less variability in estimates, increasing accuracy and precision as the distribution of sample means becomes more concentrated around the population mean.