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The number of observations in the data set The mean or average value for the data set The summation – calculate X-mean for every value in the data set then sum Degrees of freedom The graph on the right has a bigger standard deviation. More of the values that comprise the data set on the right are farther away from the mean than in the data set on the left. The standard deviation The number of observations in the data set (data points) The standard error formula is a modification of the standard deviation formula. To get the standard error, take the standard deviation formula and divide it by the square root of the sample size in the data set. This indicates that if two data sets have the same standard deviation, but a different number of observations, they will have different standard errors. Another way to think of these two measures is as follows: The standard deviation measures the variability for a set of data from the mean The standard error is a measure of how far the sample mean of the data is from the true population mean. In 1.043 .737 .466 The standard error is just the standard deviation divided by the square root of the sample size. Larger numbers have larger square roots, thus the standard error decreases when sample size increases. You can see this in b. above when the sample size increases from 10 to 50. Mean = 516/6 = 86 75, 78, 88, 90, 92, 93 Median = 90+88/2 = 89 S = (88-86)2 + (93-86)2 + (90-86)2 + (92-86)2 + (75-86)2 + (78-86)2 / 5 = 58 = √58 = 7.62 SE = 7.62/√6 = 3.11 The median (middle value of a data set) is less affected by outliers and reflects the central tendency of a data set. The mean also reflects a central tendency, but can be influenced by outliers and is best suited when distributions of data are normal and do not contain outliers. Your graph should have one bar with a mean of 86 and whisker plots that extend 6 units above and below this mean to reflect ± 2 SEM. The means of the two classes for Teacher 1 are definitely significantly different (no overlap between error bars). The means of the two classes of Teacher 2 appear to be definitely not significantly different (the error bars for Teacher 2’s classes overlap).