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Basic Statistical Concepts
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So, you have collected your data …
Now what? We use statistical analysis to test our hypotheses make claims about the population This type of analyses are called inferential statistics
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But, first we must … Organize, simplify, and describe our body of data (distribution). These statistical techniques are called descriptive statistics
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Distributions Recall a variable is a characteristic that can take different values A distribution of a variable is a summary of all the different values of a variable Both type (each value) and token (each instance)
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Distribution How excited are you about learning statistical concepts?
Comatose Hyperventilating 1 2 2 3 4 4 5 6 7 7 Types: 1,2,3,4,5,6,7 9 Tokens: 1,2,2,3,4,4,5,6,7
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Distribution 2 1 1 2 3 4 5 6 7 N = 9
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Properties of a Distribution
Shape symmetric vs. skewed unimodal vs. multimodal Central Tendency where most of the data are mean, median, and mode Variability (spread) how similar the scores are range, variance, and standard deviation
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Representing a Distribution
Often it is helpful to visually represent distributions in various ways Graphs continuous variables (histogram, line graph) categorical variables (pie chart, bar chart) Tables frequency distribution table
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Distribution What if we collected 200 observations instead of only 9? …
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Distribution N = 200 50 40 30 20 10 1 2 3 4 5 6 7
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Continuous Variables
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Categorical Variables
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Frequency Distribution Table
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Shape of a Distribution
Symmetrical (normal) scores are evenly distributed about the central tendency (i.e., mean)
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Shape of a Distribution
Skewed extreme high or low scores can skew the distribution in either direction Negative skew Positive skew
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Shape of a Distribution
Unimodal Multimodal Minor Mode Major Mode
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Distribution So, ordering our data and understanding the shape of the distribution organizes our data Now, we must simplify and describe the distribution What value best represents our distribution? (central tendency)
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Central Tendency Mode: the most frequent score
good for nominal scales (eye color) a must for multimodal distributions Median: the middle score separates the bottom 50% and the top 50% of the distribution good for skewed distributions (net worth)
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Central Tendency Mean: the arithmetic average
add all of the scores and divide by total number of scores This the preferred measure of central tendency (takes all of the scores into account) population sample
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Computing a Mean 10 scores: 8, 4, 5, 2, 9, 13, 3, 7, 8, 5 ξΧ = 64
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Central Tendency Is the mean always the best measure of central tendency? No, skew pulls the mean in the direction of the skew
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Central Tendency and Skew
Mode Median Mean
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Central Tendency and Skew
Mode Median Mean
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Distribution So, central tendency simplifies and describes our distribution by providing a representative score What about the difference between the individual scores and the mean? (variability)
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Variability Range: maximum value – minimum value
only takes two scores from the distribution into account easily influenced by extreme high or low scores Standard Deviation/Variance the average deviation of scores from the mean of the distribution takes all scores into account less influenced by extreme values
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Standard Deviation most popular and important measure of variability
a measure of how far all of the individual scores in the distribution are from a standard (mean)
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Standard Deviation low variability small SD high variability large SD
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Computing a Standard Deviation
10 scores: 8, 4, 5, 2, 9, 13, 3, 7, 8, 5 ξΧ/n = 6.4 8 – 6.4 = 4 – 6.4 = 5 – 6.4 = 2 – 6.4 = 9 – 6.4 = 13 – 6.4 = 3 – 6.4 = 7 – 6.4 = 1.6 - 2.4 - 1.4 - 4.4 2.6 6.6 - 3.4 0.6 2.56 5.76 1.96 19.36 6.76 43.56 11.56 0.36 SS = 96.4 10.71 3.27
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Standard Deviation In a perfectly symmetrical (i.e. normal) distribution 2/3 of the scores will fall within +/- 1 standard deviation -1 +1 3.13 6.4 9.67
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Variance vs. SD So, SD simplifies and describes the distribution by providing a measure of the variability of scores If we only ever report SD, then why would variance be considered a separate measure of variability? Variance will be an important value in many calculations in inferential statistics
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Review Descriptive statistics organize, simplify, and describe the important aspects of a distribution This is the first step toward testing hypotheses with inferential statistics Distributions can be described in terms of shape, central tendency, and variability There are small differences in computation for populations vs. samples It is often useful to graphically represent a distribution
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