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picture1_Statistic Ppt 68940 | Eshep13prosper1


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File: Statistic Ppt 68940 | Eshep13prosper1
outline h lecture 1 hdescriptive statistics hprobability likelihood h lecture 2 hthe frequentist approach hthe bayesian approach h lecture 3 hanalysis example 2 descriptive statistics descriptive statistics 1 definition a ...

icon picture PPTX Filetype Power Point PPTX | Posted on 29 Aug 2022 | 3 years ago
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                             Outline
        h Lecture 1
           hDescriptive Statistics
           hProbability & Likelihood
        h Lecture 2
           hThe Frequentist Approach 
           hThe Bayesian Approach
        h Lecture 3
           hAnalysis Example
                                                                   2
      Descriptive Statistics
                Descriptive Statistics – 1
      Definition: A statistic is any function of the data X.
      Given a sample X = x , x , … x , it is often of interest 
                         1 2     N
      to compute statistics such as 
                                  1 N
      the sample average      x     x
                                  N      i
                                     i1
                                    1 N
      and the sample variance  S2    (x  x)2
                                    N       i
                                       i1
      In any analysis, it is good practice to study ensemble 
         averages, denoted by < … >, of relevant statistics
                                                               4
                                      Descriptive Statistics – 2
              Ensemble Average                                                 x
              Mean                                                              
              Error                                                              x 
              Bias                                                              bx
              Variance                                                                                                                2
                                                                               V =<(x−) >
                                                                               
              Mean Square Error                                                                                                      2
                                                                               MSE=<(x−μ) >
                                                                                                                                                         5
                Descriptive Statistics – 3
                      MSE(x )2                    Exercise 1:
                                       2               Show this
                             Vb
       The MSE is the most widely used measure of closeness of an
       ensemble of statistics {x} to the true value μ 
       The root mean square (RMS) is
                        RMS MSE
                                                                   6
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...Outline h lecture hdescriptive statistics hprobability likelihood hthe frequentist approach bayesian hanalysis example descriptive definition a statistic is any function of the data x given sample it often interest n to compute such as average i and variance s in analysis good practice study ensemble averages denoted by relevant mean error bias bx v square mse exercise show this vb most widely used measure closeness an true value root rms...

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