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Student's t-distribution
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=====Derivation===== Suppose ''X''<sub>1</sub>, ..., ''X''<sub>''n''</sub> are [[statistical independence|independent]] realizations of the normally-distributed, random variable ''X'', which has an expected value ''ฮผ'' and [[variance]] ''ฯ''<sup>2</sup>. Let :<math>\overline{X}_n = \frac{1}{n}(X_1+\cdots+X_n)</math> be the sample mean, and :<math>s^2 = \frac{1}{n-1} \sum_{i=1}^n \left(X_i - \overline{X}_n\right)^2</math> be an unbiased estimate of the variance from the sample. It can be shown that the random variable : <math>V = (n-1)\frac{s^2}{\sigma^2} </math> has a chi-squared distribution with <math>\nu = n - 1</math> degrees of freedom (by [[Cochran's theorem]]).<ref>{{cite journal|authorlink1=William Gemmell Cochran | last1=Cochran |first1=W. G.|date=1934|title=The distribution of quadratic forms in a normal system, with applications to the analysis of covariance|journal=[[Mathematical Proceedings of the Cambridge Philosophical Society]]|volume=30|issue=2|pages=178โ191|bibcode=1934PCPS...30..178C|doi=10.1017/S0305004100016595|s2cid=122547084 }}</ref> It is readily shown that the quantity :<math>Z = \left(\overline{X}_n - \mu\right) \frac{\sqrt{n}}{\sigma}</math> is normally distributed with mean 0 and variance 1, since the sample mean <math>\overline{X}_n</math> is normally distributed with mean ''ฮผ'' and variance ''ฯ''<sup>2</sup>/''n''. Moreover, it is possible to show that these two random variables (the normally distributed one ''Z'' and the chi-squared-distributed one ''V'') are independent. Consequently{{clarify|date=November 2012}} the [[pivotal quantity]] :<math display="inline">T \equiv \frac{Z}{\sqrt{V/\nu}} = \left(\overline{X}_n - \mu\right) \frac{\sqrt{n}}{s},</math> which differs from ''Z'' in that the exact standard deviation ''ฯ'' is replaced by the sample standard error ''s'', has a Student's ''t''-distribution as defined above. Notice that the unknown population variance ''ฯ''<sup>2</sup> does not appear in ''T'', since it was in both the numerator and the denominator, so it canceled. Gosset intuitively obtained the probability density function stated above, with <math>\nu</math> equal to ''n'' โ 1, and Fisher proved it in 1925.<ref name="Fisher 1925 90โ104"/> The distribution of the test statistic ''T'' depends on <math>\nu</math>, but not ''ฮผ'' or ''ฯ''; the lack of dependence on ''ฮผ'' and ''ฯ'' is what makes the ''t''-distribution important in both theory and practice.
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