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Course topics : (0.8 ECTS-eight hours) 2 Generating Hypothesis (lecture 2…) Null Hypothesis (H0) Experimental = Control or Science is all about Experimental – Control = 0 Falsification and not confirmation e.g. Alternative Hypothesis (HA) Coffee Experimental != Control smoking or Pancreatic cancer Experimental – Control != 0 3 Errors in hypothesis testing (Lecture 2…) Observed conclusion Accept H0 Reject H0 No observed difference Observed difference H0 (true) Correct Type I error h No difference decision t (True Negative) (False Positive) u r t H0 (false) Type II error Correct n Difference decision w o (False Negative) (True Positive) n k n U Probability of making Type I error Probability of making Type II error Level of Significance (1-B) is the power of the test 4 p-value • The p-value is defined as the probability of obtaining a result equal to or "more extreme" than what was actually observed, when the null hypothesis is true. Sir Ronald A Fisher – (https://en.wikipedia.org/wiki/P-value) introduced P values in the 1920s The greatest biologist since Darwin • The p-value, or calculated probability, is the probability of finding the observed, or more extreme, results when the null hypothesis (H ) of a study question is true – the definition of 'extreme' depends 0 on how the hypothesis is being tested. – www.statsdirect.co.uk • The p-value is the probability of obtaining the value of the test statistics (or one more extreme) just by chance alone when Null hypothesis is true. – Prof. Marie Diener-West http://www.jhsph.edu/ 5 Test Statistics (sample statistics – hypothesized value) Test statistics = Standard error of the sample statistics e.g. In case of Difference between Independent sample means (two sample) Sample statistics = observed difference between sample means Standard error of the sample statistics = standard error of difference between the means hypothesized value = 0 i.e. No difference between means
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