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Descriptive and Inferential
Basic Statistics Descriptive and Inferential
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Why do we need it? Demystify data Organize data in a systematic way
“Number crunching” Make inference about an event Find trends in massive amounts of data, find a pattern produced by independent variable.
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General Types Descriptive:
Equations are used to organize the data in terms of three measures of central tendency. Mean, Median, and the Mode Can not make clear inferences from these numbers.
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Inferential: Equations are used to predict a trend in the data.
Allows for research to say “Effect is not due to chance”. Looks for “significance” to be found or what is the probability of the trend.
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Measurement Scales In order for an analysis of the data to occur it must be in a numeric form. The type of number conversion chosen will determine what statistic can be used. Four measurement scales exist: Nominal : to name or categorize Ordinal : numbers show serial position
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Interval : equal spacing between numbers.
Ratio scale : like interval but true zero point.
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Techniques to Organize
Frequency distribution Graphs: pie chart, bar graph, frequency polygon, line graph Normal Curve (also called Bell Curve) Physiological data is “normally distributed” ie: height, weight, shoe size, hat size Skewedness: Positive and Negative
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Correlations Co – relation between two or more variables.
NEVER cause and effect Range = +1.0 to – 1.0 = perfect = strong = moderate (most psy research)
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Scatter Plots
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Types of scatter plot patterns. Click here.
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Scatter Plot statistics:
For scatter plots, the following statistics are calculated: Mean X and Y: the average of all the data points in the series. Maximum X and Y: the maximum value in the series. Minimum X and Y the minimum value in the series. Sample Size the number of values in the series. X Range and Y Range the maximum value minus the minimum value. Standard Deviations for X and Y values Indicates how widely data is spread around the mean. Line of Best Fit - Slope The slope of the line which fits the data most closely (generally using the least squares method). Line of Best Fit - Y Intercept The point at which the line of best fit crosses the Y axis.
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