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    2015-10-16 08:51:10에 수정된 2번째 판
    • Class
    • Statistics
    • CentralLimitTheorem

    Central Limit Theorem

    • Asymptotic analysis

    • Central Limit Theorem (CLT):
      • sample size가 크다면 distribution of averages of iid variables (properly normalized) = a standard normal distribution
      • Normalization: ( X - μ ) / ( σ / sqrt(n) ) = Z ~ N( 0, 1 )

        • When population SD σ is unknown, the standard error of the sample mean (SEM) = SD of those sample means over all possible samples

        • SEM = SD / sqrt(n)
        • σ / sqrt ( n ) = the standard error of the sample mean

    • Suppose X_1, X_2, ... X_n are independent, identically distributed random variables from an infinite population with mean μ and variance σ2.

      • if n is large, the mean of the X's, call it X', is approximately normal with mean μ and variance σ2 / n.

      • 則, X'~ N( μ, σ2 / n ).

    • 예시1: 동전 던지기, 앞면 확률 P(h)= p 라면, E(h) = p, variance = p ( 1 - p )

      • 동전 던지기를 n 번씩 했을 때, 그 결과의 평균값이 μ이라면,

      • normalization: ( μ - p ) / SD = ( μ - p ) / sqrt ( p ( 1 - p ) / n )

    추가 자료

    • http://dermabae.tistory.com/146

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