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Statistical hypothesis testing

One may be faced with the problem of making a definite decision with respect to an uncertain hypothesis which is known only through its observable consequences. A statistical hypothesis test, or more briefly, hypothesis test, is an algorithm to state the alternative (for or against the hypothesis) which minimizes certain risks.

This article describes the frequentist treatment of hypothesis testing. From the Bayesian point of view, it is appropriate to treat hypothesis testing as a special case of normative decision theory.

There are several preparations we make before we observe the data.

  1. The hypothesis must be stated in mathematical/statistical terms that make it possible to calculate the probability of possible samples assuming the hypothesis is correct. For example: The mean response to treatment being tested is equal to the mean response to the placebo in the control group. Both responses have the normal distribution with this unknown mean and the same known standard deviation ... (value).
  2. A test statistic must be chosen that will summarize the information in the sample that is relevant to the hypothesis. In the example given above, it might be the numerical difference between the two sample means, m1-m2.
  3. The distribution of the test statistic is used to calculate the probability sets of possible values (usually an interval or union of intervals). In this example, the difference between sample means would have a normal distribution with a standard deviation equal to the common standard deviation times the factor sqrt(1/n1 + 1/n2) where n1 and n2 are the sample sizes.
  4. Among all the sets of possible values, we must choose one that we think represents the most extreme evidence against the hypothesis. That is called the critical region of the test statistic. The probability of the test statistic falling in the critical region when the hypothesis is correct is called the alpha value (or size) of the test.

After the data is available, the test statistic is calculated and we determine whether it is inside the critical region.

If the test statistic is inside the critical region, then our conclusion is either

  1. The hypothesis is incorrect or
  2. An event of probability less than or equal to alpha has occurred.

The researcher has to choose between these logical alternatives.

In the example we would say: the observed response to treatment is statistically significant.

If the test statistic is outside the critical region, the only conclusion is that

  • There is not enough evidence to reject the hypothesis.
This is not the same as evidence for the hypothesis. That we cannot obtain. Statistical research progresses by eliminating error, not by finding the truth.

Note: Statistics cannot "find the truth", but it can approximate it. The argument for the maximum likelihood principle illustrates this -- TedDunning

See also:

back to statistical theory -- applied statistics -- null hypothesis

Referenced By

Frequency distribution | Hypotheses | Hypothesis | List of mathematical topics (S-U) | List of statistical topics | List of tests | ProbabilityApplications | Probability Applications | StatisticalTheory | Statistical Theory | Statistics/Theory

 

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Statistical hypothesis testing
capricorn739@hotmail.com - November 2nd, 2004
hypothesis Male and female uses Internet for education, communication and entertainment Information Seeking Patterns Gender Edu Comm Entertainment Total Males 40 41 33 114 Females 16 23 42 81 Total 56 64 75 195
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This article is licensed under the GNU Free Documentation License. It uses material from the Wikipedia article "Statistical hypothesis testing".

 

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