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Chebychev, Hoffding, Chernoff
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Histo 1 X = 2*Bin(300,1/2) – 300 E[X] = 0
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Histo 2 Y = 2*Bin(30,1/2) – 30 E[Y] = 0
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Histo 3 Z = 4*Bin(10,1/4) – 10 E[Z] = 0
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Histo 4 W = 0 E[W] = 0
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A natural question: Is there a good parameter that allow to distinguish between these distributions? Is there a way to measure the spread?
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Variance and Standard Deviation
The variance of X, denoted by Var(X) is the mean squared deviation of X from its expected value m = E(X): Var(X) = E[(X-m)2]. The standard deviation of X, denoted by SD(X) is the square root of the variance of X.
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Computational Formula for Variance
E[ (X-m)2] = E[X2 – 2m X + m2] E[ (X-m)2] = E[X2] – 2m E[X] + m2 E[ (X-m)2] = E[X2] – 2m2+ m2 E[ (X-m)2] = E[X2] – E[X]2
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Properties of Variance and SD
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Markov
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Chebyshev’s Inequality
Theorem: X is random variable on sample space S, and P(X=r) it’s probability distribution. Then for any positive real number r: (proof in book) In words: the probability of finding a value of X farther away from the mean than r is smaller than the variance divided by r^2. r
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Example:
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Proof
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Popular form (same) “k standard deviations”
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Example
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Hoffding (1963) Let be random variables that for
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, Chernoff
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Example
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