×

normal probability distribution 예문

예문

    예문 더보기:   1  2
  1. First, for an ordinary normal probability distribution M ( X ) represents it.
  2. These arise as moments of normal probability distributions : The " n "-th moment of the normal distribution with expected value and variance 2 is
  3. My exercise involves normal probability distribution and chi-square test, but I hadn't read up on either of them when I submitted the idea.
  4. Since real-world quantities are often the balanced sum of many unobserved random events, the central limit theorem also provides a partial explanation for the prevalence of the normal probability distribution.
  5. Unlike multiplicative fluctuations, " additive " fluctuations do not lead to Benford's law : They lead instead to normal probability distributions ( again by the central limit theorem ), which do not satisfy Benford's law.
PC버전