Erlang distribution
(noun)
The distribution of the sum of several independent exponentially distributed variables.
Examples of Erlang distribution in the following topics:
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The Exponential Distribution
- The exponential distribution is a family of continuous probability distributions that describe the time between events in a Poisson process.
- The exponential distribution is a family of continuous probability distributions.
- Another important property of the exponential distribution is that it is memoryless.
- The length of a process that can be thought of as a sequence of several independent tasks is better modeled by a variable following the Erlang distribution (which is the distribution of the sum of several independent exponentially distributed variables).
- Reliability engineering also makes extensive use of the exponential distribution.
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t Distribution Table
- T distribution table for 31-100, 150, 200, 300, 400, 500, and infinity.
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Student Learning Outcomes
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The Normal Distribution
- Normal distributions are a family of distributions all having the same general shape.
- The normal distribution is a continuous probability distribution, defined by the formula:
- If $\mu = 0$ and $\sigma = 1$, the distribution is called the standard normal distribution or the unit normal distribution, and a random variable with that distribution is a standard normal deviate.
- The simplest case of normal distribution, known as the Standard Normal Distribution, has expected value zero and variance one.
- Many sampling distributions based on a large $N$ can be approximated by the normal distribution even though the population distribution itself is not normal.
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Chi Square Distribution
- Define the Chi Square distribution in terms of squared normal deviates
- The Chi Square distribution is the distribution of the sum of squared standard normal deviates.
- The area of a Chi Square distribution below 4 is the same as the area of a standard normal distribution below 2, since 4 is 22.
- As the degrees of freedom increases, the Chi Square distribution approaches a normal distribution.
- The Chi Square distribution is very important because many test statistics are approximately distributed as Chi Square.
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The t-Distribution
- Student's $t$-distribution (or simply the $t$-distribution) is a family of continuous probability distributions that arises when estimating the mean of a normally distributed population in situations where the sample size is small and population standard deviation is unknown.
- The $t$-distribution with $n − 1$ degrees of freedom is the sampling distribution of the $t$-value when the samples consist of independent identically distributed observations from a normally distributed population.
- The $t$-distribution was first derived as a posterior distribution in 1876 by Helmert and Lüroth.
- Fisher, who called the distribution "Student's distribution" and referred to the value as $t$.
- Note that the $t$-distribution becomes closer to the normal distribution as $\nu$ increases.
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Common Discrete Probability Distribution Functions
- Your instructor will let you know if he or she wishes to cover these distributions.
- A probability distribution function is a pattern.
- These distributions are tools to make solving probability problems easier.
- Each distribution has its own special characteristics.
- Learning the characteristics enables you to distinguish among the different distributions.
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The Standard Normal Distribution
- The standard normal distribution is a normal distribution of standardized values called z-scores.
- For example, if the mean of a normal distribution is 5 and the standard deviation is 2, the value 11 is 3 standard deviations above (or to the right of) the mean.
- The mean for the standard normal distribution is 0 and the standard deviation is 1.
- The transformation z = (x − µ)/σ produces the distribution Z ∼ N ( 0,1 ) .
- The value x comes from a normal distribution with mean µ and standard deviation σ.
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Shapes of Sampling Distributions
- The "shape of a distribution" refers to the shape of a probability distribution.
- The shape of a distribution will fall somewhere in a continuum where a flat distribution might be considered central; and where types of departure from this include:
- A normal distribution is usually regarded as having short tails, while a Pareto distribution has long tails.
- Even in the relatively simple case of a mounded distribution, the distribution may be skewed to the left or skewed to the right (with symmetric corresponding to no skew).
- Sample distributions, when the sampling statistic is the mean, are generally expected to display a normal distribution.
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Sampling Distributions and the Central Limit Theorem
- The distribution of the sum (or average) of the rolled numbers will be well approximated by a normal distribution.
- The normal distribution has the same mean as the original distribution and a variance that equals the original variance divided by $n$, the sample size.
- For large enough $n$, the distribution of $S_n$ is close to the normal distribution with mean $\mu$ and variance
- The upshot is that the sampling distribution of the mean approaches a normal distribution as $n$, the sample size, increases.
- The usefulness of the theorem is that the sampling distribution approaches normality regardless of the shape of the population distribution.