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Published byHugh Reed Modified over 9 years ago
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statistics
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Key statistics and their purposes Chi squared test: determines if a data set is random or accounted for by an unwanted variable Standard deviation: indicates how much variation there is from the average, or expected data value – Represented by sigma (σ) Standard error: shows quality of data, or precision – Indicated on a histogram (bar graph) by error bars
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Don’t forget Hardy-Weinberg: to look at allele frequencies in a gene pool and individual frequencies in population, assuming the population is in equilibrium
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Chi Squared test Null hypothesis: there is no significant difference between observed and expected – Purpose of chi squared test is to accept/reject null hypothesis Degrees of freedom: number of outcomes-1 Critical value: number in a table which, if exceeded, the data is considered unreliable
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Chi squared test: Critical value table (we accept a 95% certainty)
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Chi squared test Mission: Are dice rigged to favor a particular number? Do we have grounds to reject the null hypothesis that it is random? Practice problems Two practice problems
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Standard deviation: of normal distribution: shows how much dispersion from the average there is In statistics, the 68–95–99.7 rule — or three- sigma rule, or empirical rule — states that for a normal distribution, nearly all values lie within 3 standard deviations of the mean.statisticsnormal distributionstandard deviationsmean
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Standard deviation Try an analysis: Here are the scores on a recent test, what is the deviation? – 80, 74, 62, 91, 45, 88, 90
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Standard error: Expresses the quality of data SE x ̄ = Standard Error of Mean s = Standard Deviation of Mean n = Number of Observations of Sample
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Standard error data set 1data set 2 1110 910.1 9.7 10.2 9.5 10.4 10.1 11.1 8.9 mean st dev st error
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