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Figure \@ref(fig:sampling-schematic) shows how these key concepts are related to each other. The variable of interest (e.g., vote outcome in each district) has some distribution in the population, with a population mean and a population standard deviation. A sample will consist of a set of specific observations. The number of the individual observations in the sample is called the *sample size.* From the sample we can calculate a sample mean and a sample standard deviation, and these will generally differ from the population mean and standard deviation. Finally, we can define a *sampling distribution,* which is the distribution of estimates we would obtain if we repeated the sampling process many times. The width of the sampling distribution is called the *standard error,* and it tells us how precise our estimates are. In other words, the standard error provides a measure of the uncertainty associated with our parameter estimate. As a generaly rule, the larger the sample size, the smaller the standard error and thus the less uncertain the estimate.
"generaly" -> "general"
I assign the copyright of this contribution to Claus O. Wilke
P.S. GREAT book!
The text was updated successfully, but these errors were encountered:
dataviz/docs/visualizing_uncertainty.md
Line 55 in 153c1bb
"generaly" -> "general"
I assign the copyright of this contribution to Claus O. Wilke
P.S. GREAT book!
The text was updated successfully, but these errors were encountered: