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... The generation of random variates from multivariate binary distributions has not gained as much interest in the literature as, e.g., multivariate normal or Poisson distributions (Bratley et al., 1987; Dagpunar, 1988; Devroye, 1986). Binary distributions are a special case of discrete distributions, ...
... The generation of random variates from multivariate binary distributions has not gained as much interest in the literature as, e.g., multivariate normal or Poisson distributions (Bratley et al., 1987; Dagpunar, 1988; Devroye, 1986). Binary distributions are a special case of discrete distributions, ...
Unit 22: Sampling Distributions
... c. The endpoints of the acceptance interval can be written as 0.500 ± 0.001, which is equivalent to 0.005 ± 2(0.0005). Hence, 95% of the samples will have means within this interval. The production process will be stopped 5% of the time (or a proportion of 0.05). ...
... c. The endpoints of the acceptance interval can be written as 0.500 ± 0.001, which is equivalent to 0.005 ± 2(0.0005). Hence, 95% of the samples will have means within this interval. The production process will be stopped 5% of the time (or a proportion of 0.05). ...
SAMPLING DISTRIBUTIONS REVIEW 1. If we double the sample
... a) The sampling distribution is approximately normal when sampling from a normal population or the sample size is sufficiently large. b) The mean of the sampling distribution is the mean of the population. c) The standard deviation of the sampling distribution is the standard deviation of the popula ...
... a) The sampling distribution is approximately normal when sampling from a normal population or the sample size is sufficiently large. b) The mean of the sampling distribution is the mean of the population. c) The standard deviation of the sampling distribution is the standard deviation of the popula ...
JSS 18 (1) (1966) 2-15 - Institute and Faculty of Actuaries
... assumptions about the errors. For example, instead of each component error having only two possible values, each can have a probability distribution. Then if the variances of the probability distribution of each component error are finite and all equal and the number of component errors is large, th ...
... assumptions about the errors. For example, instead of each component error having only two possible values, each can have a probability distribution. Then if the variances of the probability distribution of each component error are finite and all equal and the number of component errors is large, th ...
Central limit theorem

In probability theory, the central limit theorem (CLT) states that, given certain conditions, the arithmetic mean of a sufficiently large number of iterates of independent random variables, each with a well-defined expected value and well-defined variance, will be approximately normally distributed, regardless of the underlying distribution. That is, suppose that a sample is obtained containing a large number of observations, each observation being randomly generated in a way that does not depend on the values of the other observations, and that the arithmetic average of the observed values is computed. If this procedure is performed many times, the central limit theorem says that the computed values of the average will be distributed according to the normal distribution (commonly known as a ""bell curve"").The central limit theorem has a number of variants. In its common form, the random variables must be identically distributed. In variants, convergence of the mean to the normal distribution also occurs for non-identical distributions or for non-independent observations, given that they comply with certain conditions.In more general probability theory, a central limit theorem is any of a set of weak-convergence theorems. They all express the fact that a sum of many independent and identically distributed (i.i.d.) random variables, or alternatively, random variables with specific types of dependence, will tend to be distributed according to one of a small set of attractor distributions. When the variance of the i.i.d. variables is finite, the attractor distribution is the normal distribution. In contrast, the sum of a number of i.i.d. random variables with power law tail distributions decreasing as |x|−α−1 where 0 < α < 2 (and therefore having infinite variance) will tend to an alpha-stable distribution with stability parameter (or index of stability) of α as the number of variables grows.