Description Usage Arguments Value Warning Author(s) Examples
Assume that x=(x_1, x_2, \cdots , x_n) is the observed value of a random sample from a fuzzy population. In classical and usual random sample, the degree of belonging x_i into the random sample is equal to 1, for 1 ≤q i ≤q n. But considering fuzzy population, we denote the degree of belonging x_i into the fuzzy population (or into the observed value of random sample) by μ_i which is a real-valued number from [0,1]. Therefore in such situations, it is more appropriate that we show the observed value of the random sample by notation \{ (x_1, μ_1), (x_2, μ_2), \cdots , (x_n, μ_n) \} which we called it real-valued fuzzy data. The goal of w.mean function is computing the mean (or, the weighted mean) value of x_1, \cdots , x_n based on real-valued fuzzy data \{ (x_1, μ_1), \cdots , (x_n, μ_n) \} by formula
\bar{x} = \frac{∑_{i=1}^{n} μ_i x_i}{∑_{i=1}^{n} μ_i}.
1 | w.mean(x, mu)
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x |
A vector-valued numeric data which you want to compute its weighted mean. |
mu |
A vector of weights. The length of this vector must be equal to the length of data and each element of it is belongs to interval [0,1]. |
The weighted mean of the vector x, by considering weights vector mu, is numeric or a vector of length one.
The length of x and mu must be equal. Also, each element of mu must be in interval [0,1].
Abbas Parchami
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