Title: Descriptive and Inferential Statistics
1Descriptive and Inferential Statistics
- Descriptive statistics Mathematical methods
(such as mean, median, standard deviation) that
summarize and interpret some of the properties of
a set of data (sample) but do not infer the
properties of the population from which the
sample was drawn. - Mathematical methods (such as hypothesis
development) that employ probability theory for
deducing (inferring) the properties of a
population from the analysis of the properties of
a set of data (sample) drawn from it.
2Did it happen by chance?
- How do you know if something caused or correlates
with something else? - The appropriate Statistic will tell you
- If there is a difference from some expected value
-
- If the difference is statistically significant or
merely due to random chance
3Descriptive Statistics
- Types of descriptive statistics
- Calculation for interval data
4Types of descriptive statistics
- Statistic is a quantitative index that describes
performance of a sample or samples - Parameter is a quantitative index describing the
performance of a population - Measures of central tendency are used to
determine the typical or average value among a
group of values -
- Measures of variability indicate how spread out
the values are
5Graphing data
- Provides a quick view of the what your data is
telling you. - There are various types of graphs which are used
in statistics including bar graphs, histograms,
scatter plots, pie charts, frequency polygons etc.
6Example group of test scores
7Frequency Polygon and Pie Chart
8Sample Bar Graph
9Sample Histogram
10Sample Scatter Plot
11Frequency Distributions
Frequency distributions are like frequency
polygons however, instead of straight lines, a
frequency distribution uses a smooth curve to
connect the points and, similar to a graph, is
plotted on two axes.
12J Shaped Curve
13Bimodal Curve with Two Peaks
14Positively Skewed Bell Curve
15Negatively Skewed Bell Curve
16Symmetric Bell Curve/Normal Distribution
17What is the Normal Distribution ?
- Where did it come from and why is it so special?
- As shown by Galton (19th century guy), just
about anything you measure turns out to be
normally distributed, at least approximately so. - That is, usually most of the observations cluster
around the mean, with progressively fewer
observations out towards the extremes
18Sample Histogram
19Just about any histogram can be converted into a
line graph
20Which can be used to plot a normal distribution
21But how do we get from the normal to the standard
normal?
22Measures of central tendency
- Mean arithmetic average of a set of values and
most frequently used measure of central tendency - Median- midpoint of values if they are ordered
from high to low - Mode value that occurs most frequently
23Mean, Median and Mode
- Sample Numbers
- 7 26 54 82 32 26 51
- Find the mean, median and mode
24Mean
- Finding the Mean X
- Total up the numbers
- Divide the total by the n (number of values)
25Mean
- Finding the Mean X
- Total up the numbers (287)
- Divide the total by n (number of values) (287 /
7 39.71)
26Median
- Finding the Median
- Swerve the car to the left till you hit something
in the middle of the road - The median is the middle value when numbers are
arranged in order - Arrange numbers from highest to lowest
- Find the middle number (odd number of values)
- 7 26 26 32 51 54 82
27Median
- Median trick question
- Find the median now!
- 7 26 54 82 32 26 51 36
28Mean, Median and Mode
Split the Difference Between the Two
middle numbers
Median is 34
29Mode
- The mode is the value that occurs most frequently
- Arranging the numbers in order helps here
- 7 26 26 32 51 54 82
30Mode
- What is this called?
- 7 26 26 32 51 51 54 82
31Answer
Bimodal!
32Measures of variability
- Range Difference between the highest and lowest
values (high value -low value range) - Variance S2
- Standard Deviation S
- variation of values about the mean
33Measures of variation range
- Range highest value-lowest value
- Bank waiting time values
- Values of 4, 7, 7 the range is 7-4 or 3
- With values of 1, 3, 14, the range is 14-1 or 13
34Other key measures of variation
- S2 Variance
- S Standard Deviation
(Triloa, Elementary Statistics, 9th Ed, 2004)
35Measures of variation standard deviation
x
6 6 6
36Measures of variation variance
x
6 6 6
37The Z statistic will allow you to standardize a
normal distribution
38Lets compare some of the great running backs of
NFL history
39Lets compute z-scores..
40To derive the Stardard Normal Curve
41Bringing us back to the concept of Six Sigma