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Statistics 11 Confidence Interval Suppose you have a sample from a population You know the sample mean is an unbiased estimate of population mean Question: What is the population mean? Answer: You will never really know
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Statistics 12 But... you can determine, with some degree of certainty, a range which contains the mean Range is called the Confidence Interval of the Mean
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Statistics 13 Definition A Confidence Interval is a statement concerning a range of values which is likely to include the population mean based upon a sample from the population.
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Statistics 14 Calculation: CI = M ± t s M And to use the CI CI = M - t s M < μ < M + t s M
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Statistics 15 Some Important Notes: For an interval estimate, you use a range of values as your estimate of an unknown quantity. When an interval estimate is accompanied by a specific level of confidence (or probability), it is called a confidence interval. The general goal of estimation is to determine how much effect a treatment has.
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Statistics 16 The general goal of estimation is to determine how much effect a treatment has. Whereas, the purpose of a confidence interval is to use a sample mean or mean difference to estimate the corresponding population mean or mean difference. Also, for independent-measures t-statistics, the values used for estimation is the difference between two population means.
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Statistics 17 DATA: 13, 10, 8, 13, 9, 14, 12, 10, 11, 10, 15, 13, 7, 6, 15, 10 SS ? Var? S M ? df? 90% CI ? 95% CI ?
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Statistics 18 Between Groups ANOVA Next step: Comparing three or more samples Nothing really new, just extending what is already learned
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Statistics 19
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10 For t-statistic: Single alternative hypothesis (H1) Nondirectional (two-tail) Directional (one-tail) For F-statistic: Many alternative hypotheses (H1's) Always nondirectional
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Statistics 111 Design: Between Groups ANOVA Partition the total variance of a sample into two separate sources (hence name of test)
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Statistics 112
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Statistics 113 Partition the total variance of a sample into two separate sources (hence name of test) Total variance –Variance associated with treatments and error
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Statistics 114 Total variance –Variance associated with treatments and error –Variance associated with just error
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Statistics 115 Calculations: Between Groups ANOVA
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Statistics 116 Treatment 1Treatment 2Treatment 3 483 582 491 6103 n= Σx= Σx ²= Treatment mean
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Statistics 117 Computational Formula for SS BG SS BG = (ΣX 1 ) ² n 1 + (ΣX 2 ) ² n 2 + (ΣX 3 ) ² n 3..+ (ΣX k ) ² n k [ (ΣX T ) ² n T ]
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Statistics 118 Computational Formula for SS W SS W = ΣX²ΣX² [ (ΣX 1 ) ² n 1 + (ΣX2)²n2(ΣX2)²n2 + (ΣX 3 ) ² n 3..+ (ΣX K ) ² n K ]
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Statistics 119 ANOVA Summary SourceSSdfMSF-Ratio Treaments SS BG Error SS W Total SS Total
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Statistics 120 Evaluating F-obtained: Between Groups ANOVA Evaluate F-obtained value using an F-table Similar to t-table except……… Determining F value requires two separate degrees of freedom entries –Degrees of freedom for MS Between to locate the correct column –Degrees of freedom for MS Within to locate the correct row
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Statistics 121 Body of table typically gives values for p <.05 and p <.01 Reject null hypothesis if: Obtained value exceeds tabled value
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Statistics 122 Formal Properties: Between Groups ANOVA Between groups F-statistic is appropriate when Independent measure is –Between subjects Quantitative Qualitative –Design includes three or more treatment groups Dependent measure is –Quantitative –Scale of measurement is interval or better
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Statistics 123 Between groups F-statistic assumes Treatment groups are –Normally distributed –Homogeneity of within group variance Subjects are: –Randomly and Independently selected from population Randomly assigned to treatment groups
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Statistics 124 Comparing Treatments: Between Groups ANOVA Problem with multiple t-tests to compare treatment effects Multiple t-tests would yield some significant decisions by chance Can correct by making comparisons with a statistic that accounts for, "corrects for" multiple comparisons
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Statistics 125 Number of different tests Fisher’s LSD Test (Least Significant Difference)
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Statistics 126 Tukey's HSD (Honest Significant Difference) Where: CD = Absolute critical difference q = Studentized range value obtain from table entered with –k groups signifying appropriate column –df for within treatments MS signifying row n = number of observations per group
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Statistics 127 Other Post –Hocs comparisions Scheffe Newman-Keuls Duncan Bonferroni
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