The arithmetic mean of a set of $n$ numbers
$$
\textbf{x} = \{ x_1 , ... , x_n \}
$$
is given as
$$
\frac{1}{n} \sum_{1}^{n} x_n
$$
The mean is denoted with a bar, that is $\bar{\mathbf{x}}$.
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