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Is the natural discrepancy, or the amount of error, between a sample statistic and its corresponding population parameter. |
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Distribution of sample means |
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Is the collection of sample means for all the possible random samples of a particular size (n) that can be obtained from a population. |
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Is a distribution of statistics obtained by selecting all possible samples of a specific size from a population. |
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Is the mean of the distribution of sample means & is equal to the the mean of the population of scores (μ). |
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The standard error of M(σm) |
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Is the standard deviation of the distribution of sample means. This provides a measure of how much distance is expected on average between a sample mean (M) & the population mean (μ). |
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Is the symbol for standard deviation of a sample. |
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Is the symbol for standard deviation of a population. |
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Is the symbol for alternative hypothesis. |
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Is the statement that there is an effect. It is an inequality, saying that p is different from the number mentioned in H0. (H1 could specify <, >, or just ≠.) |
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Is the symbol for the null hypothesis. |
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Is the statement that there is no effect. It is an equation, saying that p, the proportion in the population (which you don’t know), equals some number. |
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Is the symbol for Probability value |
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Tells you how likely it is to get the sample you got (or a more extreme sample) if the null hypothesis is true (H0). |
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Is the symbol for population size. (Normally used for sample size) |
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Is the symbol for frequency. |
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The sizes of categories that can be shown as raw counts. |
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Is the symbol for z-score. |
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Is a data point, that shows how many standard deviations it lies above or below the mean. |
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States that the larger the sample size (n), the more probable it is that the sample mean will be close to the population mean. |
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States that for any population with a mean (μ) and standard deviation (σ), the distribution os sample means for a sample size (n) will have a mean of μ and standard deviation σ/ square root of n & will approach a normal distribution as n approaches infinity. |
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Cohen's d = mean difference (M-μ)
standard deviation (σ)
&
μ treatment - μ no treatment
σ |
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Is not influenced at all by the sample size. |
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Is the probability that the test will correctly reject a false null hypothesis. (Is The probability that the test will identify a treatment effect if one really exists.) |
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Is intended to provide a measurement of the absolute magnitude of a treatment effect, independent of the size of the sample (s) being used. |
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Is the measurement of the distance between two means and is typically reported as a positive number even when the formula produces a negative vale. |
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Directional hypothesis test (one tailed test) |
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Is the statistical hypotheses (Ho & H1) specify either an increase or a decrease in the population mean. (It makes a statement about the direction of the effect.) |
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Statistically significant |
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The result is sufficient to reject the null hypothesis. Thus, a treatment has a significant effect if the decision from the hypothesis test to reject Ho. (it is very unlikely to occur when the null hypothesis is true.) |
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Occurs when a researcher fails to reject a null hypothesis that is really false. (Occurs when the sample mean is not in the critical region.) |
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Is used to define the concept of very unlikely in hypothesis test. Determines the probability of obtaining sample data in the critical region even though the null hypothesis is true. (for a hypothesis test it is the probability that the test will lead to a type 1 error.) |
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Occurs when a researcher rejects a null hypothesis that is actually true. (The conclusion that a treatment does have an effect when in fact it has no effect.) |
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Is composed of the extreme sample values that are very unlikely (defined by Alpha level) to be obtained if the null hypothesis is true. |
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Is a statistical method that uses sample data to evaluate a hypothesis about a population. |
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Indicates that the sample data are converted into a single, specific statistic that is used to test the hypotheses (T or Z scores). |
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Is power; the probability of rejecting the null hypothesis when it is false. |
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Is affected by
Sample size – larger sample, more power.
Alpha level – larger alpha level, more power.
One-tailed vs two-tailed tests – one-tailed test more powerful.
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Z score for samples formula |
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Mean difference (M-μ)
Sample standard deviation (σ) |
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Estimated standard error formula |
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