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Edpsy 511 Exploratory Data Analysis Homework 1: Due 9/19
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Shapes of Distributions ► Normal distribution ► Positive Skew Or right skewed ► Negative Skew Or left skewed
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How is this variable distributed?
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Descriptive Statistics
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Statistics vs. Parameters ► A parameter is a characteristic of a population. It is a numerical or graphic way to summarize data obtained from the population ► A statistic is a characteristic of a sample. It is a numerical or graphic way to summarize data obtained from a sample
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Types of Numerical Data ► There are two fundamental types of numerical data: 1) Categorical data: obtained by determining the frequency of occurrences in each of several categories 2) Quantitative data: obtained by determining placement on a scale that indicates amount or degree
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Techniques for Summarizing Quantitative Data ► Frequency Distributions ► Histograms ► Stem and Leaf Plots ► Distribution curves ► Averages ► Variability
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Summary Measures Central Tendency Arithmetic Mean Median Mode Quartile Summary Measures Variation Variance Standard Deviation Range
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Measures of Central Tendency Central Tendency Average (Mean)MedianMode
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Mean (Arithmetic Mean) ► Mean (arithmetic mean) of data values Sample mean Population mean Sample Size Population Size
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Mean ► The most common measure of central tendency ► Affected by extreme values (outliers) 0 1 2 3 4 5 6 7 8 9 100 1 2 3 4 5 6 7 8 9 10 12 14 Mean = 5Mean = 6
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Mean of Grouped Frequency XffX 101 93 82 74 66 55 TotalN 21
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Weighted Mean A form of mean obtained from groups of data in which the different sizes of the groups are accounted for or weighted.
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GroupxbarNf(xbar) 13010 22515 34025
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Median ► Robust measure of central tendency ► Not affected by extreme values ► In an Ordered array, median is the “middle” number If n or N is odd, median is the middle number If n or N is even, median is the average of the two middle numbers 0 1 2 3 4 5 6 7 8 9 100 1 2 3 4 5 6 7 8 9 10 12 14 Median = 5
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Mode ► A measure of central tendency ► Value that occurs most often ► Not affected by extreme values ► Used for either numerical or categorical data ► There may may be no mode ► There may be several modes 0 1 2 3 4 5 6 7 8 9 10 11 12 13 14 Mode = 9 0 1 2 3 4 5 6 No Mode
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The Normal Curve
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Different Distributions Compared
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Variability ► Refers to the extent to which the scores on a quantitative variable in a distribution are spread out. ► The range represents the difference between the highest and lowest scores in a distribution. ► A five number summary reports the lowest, the first quartile, the median, the third quartile, and highest score. Five number summaries are often portrayed graphically by the use of box plots.
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Variance ► The Variance, s 2, represents the amount of variability of the data relative to their mean ► As shown below, the variance is the “average” of the squared deviations of the observations about their mean ► The Variance, s 2, is the sample variance, and is used to estimate the actual population variance, 2
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Standard Deviation ► Considered the most useful index of variability. ► It is a single number that represents the spread of a distribution. ► If a distribution is normal, then the mean plus or minus 3 SD will encompass about 99% of all scores in the distribution.
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Calculation of the Variance and Standard Deviation of a Distribution √ Raw ScoreMeanX – X(X – X) 2 855431961 805426676 705416256 6054636 555411 5054-416 4554-981 4054-14196 3054-24576 2554-29841 Variance (SD 2 ) = Σ(X – X) 2 N-1 = 3640 9 =404.44 Standard deviation (SD) = Σ(X – X) 2 N-1
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Comparing Standard Deviations Mean = 15.5 S = 3.338 11 12 13 14 15 16 17 18 19 20 21 Data B Data A Mean = 15.5 S =.9258 11 12 13 14 15 16 17 18 19 20 21 Mean = 15.5 S = 4.57 Data C
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Facts about the Normal Distribution ► 50% of all the observations fall on each side of the mean. ► 68% of scores fall within 1 SD of the mean in a normal distribution. ► 27% of the observations fall between 1 and 2 SD from the mean. ► 99.7% of all scores fall within 3 SD of the mean. ► This is often referred to as the 68-95-99.7 rule
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Fifty Percent of All Scores in a Normal Curve Fall on Each Side of the Mean
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Probabilities Under the Normal Curve
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Standard Scores ► Standard scores use a common scale to indicate how an individual compares to other individuals in a group. ► The simplest form of a standard score is a Z score. ► A Z score expresses how far a raw score is from the mean in standard deviation units. ► Standard scores provide a better basis for comparing performance on different measures than do raw scores. ► A Probability is a percent stated in decimal form and refers to the likelihood of an event occurring. ► T scores are z scores expressed in a different form (z score x 10 + 50).
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Probability Areas Between the Mean and Different Z Scores
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Examples of Standard Scores
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