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235_lecture7_080225
235_lecture7_080225

Chapter 18
Chapter 18

Power point 2
Power point 2

10.2 PPT
10.2 PPT



Handout on Chapter 3
Handout on Chapter 3

Chapter 7: Probability and Samples: The Distribution of Sample Means
Chapter 7: Probability and Samples: The Distribution of Sample Means

Chapter 7: Probability and Samples: The Distribution of Sample Means
Chapter 7: Probability and Samples: The Distribution of Sample Means

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6 sampling distribut..

Traffic Modeling (2)
Traffic Modeling (2)

... be used to estimate the parameters defining the distribution completely. There are many methods used to estimate the parameters. We will use the maximum likelihood estimator (MLE) method. The method can be explained as follows : suppose we have decided that a certain discrete distribution is the clo ...
Populations and Samples Chapter 8
Populations and Samples Chapter 8

6. Statistics of Observations
6. Statistics of Observations

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Chapter 6 practice - faculty.piercecollege.edu

Practice Exam 1 - Dean of Students Office
Practice Exam 1 - Dean of Students Office

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Quiz 2

x - Yogesh Uppal
x - Yogesh Uppal

...  The absolute value of the difference between an unbiased point estimate and the corresponding population parameter is called the sampling error.  Sampling error is the result of using a subset of the population (the sample), and not the entire population.  Statistical methods can be used to make ...
1 PubH 6414 NAME: Practice Exam 2 1. Cervical cancer patients
1 PubH 6414 NAME: Practice Exam 2 1. Cervical cancer patients

Sampling Distributions Sampling
Sampling Distributions Sampling

STA 291-021 Summer 2007 - University of Kentucky
STA 291-021 Summer 2007 - University of Kentucky

CHAPTER THREE: Measures of Central Tendency
CHAPTER THREE: Measures of Central Tendency

Document
Document

Chapter 9 - McGraw Hill Higher Education
Chapter 9 - McGraw Hill Higher Education

Chapter 2 - Scott K. Hyde`s Web Page
Chapter 2 - Scott K. Hyde`s Web Page

Setting Assumptions and Notation The Sample Mean
Setting Assumptions and Notation The Sample Mean



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Gibbs sampling

In statistics and in statistical physics, Gibbs sampling or a Gibbs sampler is a Markov chain Monte Carlo (MCMC) algorithm for obtaining a sequence of observations which are approximated from a specified multivariate probability distribution (i.e. from the joint probability distribution of two or more random variables), when direct sampling is difficult. This sequence can be used to approximate the joint distribution (e.g., to generate a histogram of the distribution); to approximate the marginal distribution of one of the variables, or some subset of the variables (for example, the unknown parameters or latent variables); or to compute an integral (such as the expected value of one of the variables). Typically, some of the variables correspond to observations whose values are known, and hence do not need to be sampled.Gibbs sampling is commonly used as a means of statistical inference, especially Bayesian inference. It is a randomized algorithm (i.e. an algorithm that makes use of random numbers, and hence may produce different results each time it is run), and is an alternative to deterministic algorithms for statistical inference such as variational Bayes or the expectation-maximization algorithm (EM).As with other MCMC algorithms, Gibbs sampling generates a Markov chain of samples, each of which is correlated with nearby samples. As a result, care must be taken if independent samples are desired (typically by thinning the resulting chain of samples by only taking every nth value, e.g. every 100th value). In addition (again, as in other MCMC algorithms), samples from the beginning of the chain (the burn-in period) may not accurately represent the desired distribution.
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