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Chi Squared Hypothesis 2 Tailed Test

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Jay
Jay el 27 de Jul. de 2015
Comentada: Brendan Hamm el 27 de Jul. de 2015
I have reviewed the previous questions and answers regard the Chi Squared test and can not find the answer to the following:
Test Statistic = (v1-v2)*((v_hat)/v)
C.I. = ((v1-v2), alpha/2) < Test Statistic < ((v1_v2), 1-(alpha/2))
Where, v1 = integer variable 1 v2 = integer variable 2
(v1 - v2 = degrees of freedom)
v_hat = variable 3 v = variable 4 alpha = Significance Level
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Jay
Jay el 27 de Jul. de 2015
Editada: Jay el 27 de Jul. de 2015
I am using this:
[h_1] = vartest(aposteriori*4,1,'Tail','both','Alpha',0.01)
Will this do a 2 tail test testing both the upper and lower tails, ie 0.01/2 and 1 - 0.01/2 (99% Confidence Level)?

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Brendan Hamm
Brendan Hamm el 27 de Jul. de 2015
Yes, the syntax you are using is testing both the upper and lower tails using the values you specified (0.01/2 and 1-0.01/2). So you are testing the null hypothesis that aposteriori*4 comes from a normal distribution with variance equal to 1, and supplying the alternative hypothesis that the data is from a normal distribution with a different variance. I should note there is no need to specify the 'Tail' property as 'both' is the default value.
Also your definition of the Chi-squared variance test is wrong. It is actually
(n-1)(sHat/sTest)^2,
where n is your sample size, sHat the sample estimate of the standard deviation and sTest is the hypothesized standard deviation.
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Jay
Jay el 27 de Jul. de 2015
Editada: Jay el 27 de Jul. de 2015
Thanks Brendan,
I am using the test statistic y = (n-u)*sHat/s_assumed ~ Chi^2,(n-u)
Where sHat is the estimated variance, s_assumed is the assumed variance (AKA expected), n is the number of observations and u is the number of unknowns.
Brendan Hamm
Brendan Hamm el 27 de Jul. de 2015
Great, It was not clear from your original post that this is what you meant, so I figured I would clarify. I should point out in the case of a test for the variance, u = 1.

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