2003/04/23 Chapter 3 1頁1頁 3.6 Expected Value of Random Variables.

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Presentation transcript:

2003/04/23 Chapter 3 1頁1頁 3.6 Expected Value of Random Variables

2003/04/23 Chapter 3 2頁2頁

2003/04/23 Chapter 3 3頁3頁

2003/04/23 Chapter 3 4頁4頁

2003/04/23 Chapter 3 5頁5頁

2003/04/23 Chapter 3 6頁6頁

2003/04/23 Chapter 3 7頁7頁

2003/04/23 Chapter 3 8頁8頁

2003/04/23 Chapter 3 9頁9頁

2003/04/23 Chapter 3 10 頁

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2003/04/23 Chapter 3 13 頁

2003/04/23 Chapter 3 14 頁

2003/04/23 Chapter 3 15 頁

2003/04/23 Chapter 3 16 頁

2003/04/23 Chapter 3 17 頁 Variance of X

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2003/04/23 Chapter 3 23 頁 3.7 The Markov and Chebyshev Inequalities

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2003/04/23 Chapter 3 27 頁 3.9 Transform Methods

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2003/04/23 Chapter 3 34 頁 Proof:

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2003/04/23 Chapter 3 40 頁 3.12 Entropy

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