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Published byStewart Townsend Modified over 8 years ago
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AUTOCORRELATED DATA
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CALCULATIONS ON VARIANCES: SOME BASICS Let X and Y be random variables COV=0 if X and Y are independent.
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WHAT IF COV(X i, X i+1 ) > 0? 1.We calculate an AVG by adding X’s 2.The VAR of the AVG is bigger by COV(X i, X i+1 ) 3.The formula for VAR assumes COV(X i, X i+1 ) =0 4.The formula underestimates VAR of the AVG 5.The formula for the width of the CI gives too small a width 6.The CI does not cover the true with the advertized probability 7.Our conclusion has oversold accuracy
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AUTOCORRELATED DATA Consider the formula, called the Auto- Regressive (Lag 1) Process
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NORMAL(0, 1) INDEPENDENT
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c=0.2
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C=0.5
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C=0.7
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C=0.9
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C=0.9, 200 sample
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C=0.99
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c=0.5
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c=0.7
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c=0.9
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c=.99
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The Test for Rank 1 Autocorrelation Ho: (1) = 0 Ha: (1) <> 0
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STATISTICALLY SIGNIFICANT AUTOCORRELATION Lag 1 autocorrelation (1) estimated by r(1) Normal Mean Variance
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So the quantity z below is N(0, 1), and can be compared to critical values, and p-values can be computed… Simplifies when we are testing (1) = 0 Remember that this is a classical “wrong-way” hypothesis test
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Sample Results crho(1)zp-value 0.2000.1141.6160.053 0.2703.8900.000 0.1592.2510.012 0.1492.1050.018 0.3224.6900.000 0.2854.1210.000
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