68
Statistics 2

Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Embed Size (px)

Citation preview

Page 1: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Statistics 2

Page 2: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Variables

DiscreteContinuous 

Quantitative(Numerical)

(measurements and counts)

Qualitative(categorical)

(define groups)

Ordinal(fall in natural order)

Categorical(no idea of order)

We are only going to consider quantitative variables in this AS

Page 3: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Quantitative

Discrete• Many repeated

values• Age groups• Marks

Continuous• Few repeated

values• Height• Length• Weight

Page 4: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Qualitative

Categorical• Gender• Religious

denomination• Blood types• Sport’s numbers

(e.g. He wears the number ‘8’ jersey)

Ordinal• Grades• Places in a race

(e.g. 1st, 2nd, 3rd)

Page 5: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Collecting data

• Tally charts • Stem and leaf plots

How we collect the data usually depends on what question we wish to

answer.

Page 6: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Tally chart

• If we were asking people what they had for breakfast we might set up a table like this…

Page 7: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Tally chart

Breakfast Tally Frequency

Toast

Cereal

Eggs

Porridge

Rice

No breakfast

Page 8: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Tally Chart

• We use a tally chart when data fits easily into categories.

Page 9: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Stem and leaf plot

• A stem and leaf plot sorts data that has few values the same.

Page 10: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Example

• The number of punnets of strawberries picked by Carol over a 17-day period. (This example is in your text book)

• 65 73 86 90 99 106 45 92 94 102 107 107 99 83 101 91

Page 11: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Example

• Set up a ‘stem’ based on the fact that the numbers picked are between 40 and 110

Page 12: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Example

Stem

4

5

6

10

Page 13: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Example

• The first number is 65 and the next is 73.

• They are recorded like this

Page 14: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Example

Stem Leaf

4

5

6 5

7 3

Page 15: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Example

Stem Leaf

4 5

5

6 5

7 3

8 6 3

9 0 9 2 4 7 9 1

10 6 2 7 7 1

Page 16: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Sort the data in order

Stem Leaf

4 5

5

6 5

7 3

8 3 6

9 0 1 2 4 7 9 9

10 1 2 6 7 7

Page 17: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Lowest and highest values

Stem Leaf

4 5 = 45

5

6 5

7 3

8 3 6

9 0 1 2 4 7 9 9

10 1 2 6 7 7 = 107

Page 18: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Median and quartiles

Stem Leaf

4 5 = 45

5

6 5

7 3

8 3 6 = 84.5

9 0 1 2 4 7 9 9

10 1 2 6 7 7 = 107

Page 19: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Median and quartiles

Stem Leaf

4 5

5

6 5

7 3

8 3 6

9 0 1 2 4 7 9 9

10 1 2 6 7 7

Page 20: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

• 5- number summary• Lowest = 45• LQ = 84.5• Median = 94• UQ = 101.5• Highest = 107

Stem Leaf

4 5

5

6 5

7 3

8 3 6

9 0 1 2 4 7 9 9

10 1 2 6 7 7

Median and quartiles

Page 21: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Pictures that tell a story

• Drawing a picture of our data.

• Our data is discrete and hence a bar graph is an appropriate way of showing our ‘picture’.

Page 22: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

A bar graph

Page 23: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

A bar graph

• We use a bar graph (spaces between bars) because we are dealing with discrete data (counted data, many repeated values)

Page 24: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Bar graph

• A bar graph gives us a picture of the data and we can easily see many features of our data.

Page 25: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Bar graph

• Lowest = 3 letters• Highest = 8 letters• Mode = 5 letters• The graph is

approximately symmetrical and uni-modal (has only one mode)

Page 26: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Bar graph

• To find out how many were surveyed, you add the frequencies together.

Page 27: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Pie graph

• Each category makes up a certain percentage of the ‘pie’.

• A pie graph does not tell us how many were in the data set.

• You must be careful when comparing data from 2 pie graphs.

Page 28: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Pie graph

Letters Frequency Angle of pie

3 2 360÷35x2=21

4 5 360÷35 x 5=51

5 14 144

6 7 72

7 5 51

8 2 21

Page 29: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Pie graph

Page 30: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Pie Graph

• This also is an appropriate graph as it shows the relative numbers in each category.

• It does not give us a lot of specific information like how many were surveyed or how many had 8 letters in their name.

Page 31: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Box and Whisker plot

• The box and whisker plot is a picture of the 5-number summary and it shows us where the cut-off is for every quarter of the data.

• Again, the box and whisker plot does not tell us how many were in the sample just how the quarters were distributed.

Page 32: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Box and Whisker plot

Page 33: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Box and Whisker plot

• This gives us a lot of information.

• The lowest and highest values.

• The median, upper and lower quartiles.

• We also get a sense of how the data is distributed.

Page 34: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Box and Whisker Plot

• Box and whisker plots can also be used to compare two sets of data.

Page 35: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Back to strawberry picking!

• Who would you employ?

Page 36: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Strawberry picking

Page 37: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Comparing

Carol Dilip

Mean 90.4 90.1

Median 94 99

Mode 99 95

Page 38: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Comparing

Carol Dilip

Mean 90.4 90.1

Median 94 99

Mode 99 95

• Carol has the higher mean.

• Dilip has the higher median.

• Carol has the higher mode.

Page 39: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Central tendency

• Which central tendency is more useful in measuring the punnets picked overall?

Page 40: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Comparing

Carol Dilip

Range 62 108

Interquartile range

17 7.5

Lowest 45 0

Highest 107 108

Page 41: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Comparing

Carol Dilip

Range 62 108

Interquartile range

17 7.5

Lowest 45 0

Highest 107 108

• Carol has the lower range.

• Dilip has the lower interquartile range.

• Carol’s lowest value is higher than Dilip’s.

• Dilip’s highest value is higher than Carol’s.

Page 42: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Spread

• Which picker is more reliable?

Page 43: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Back to the data

Page 44: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Comparing using a picture

Page 45: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Box and whisker

Page 46: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Box and whisker

• Overall they both picked roughly the same number of punnets.

• Carol 1537• Dilip 1532

Page 47: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Box and whisker

• The long tails on the box and whisker plots suggest outliers (extreme values).

• 45 is a likely outlier for Carol and suggests she worked a half day.

• 0 suggests that Dilip did not work on one of the days which would have pulled his mean value down.

• 49 is also an outlier for Dilip suggesting he also worked half a day.

Page 48: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Box and whisker

• Dilip is more reliable as his spread as shown by the interquartile range is smaller.

• (This is presuming he doesn’t just take days off when he wants to.)

Page 49: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

What not to do!!!

Page 50: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

No! No! No!- this is not a good idea!

Page 51: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

No! No! No!- this is not a good idea!

• Axes need to be labelled.

• Colour distorts the graph.

• Lines also distort the graph- take a look at these.

Page 52: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Are the lines parallel?

Page 53: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Are these lines parallel?

Page 54: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Are these lines parallel?

Page 55: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Are the lines parallel?

Page 56: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall
Page 57: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

• This kind of graph gives us very little information.

Page 58: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Negatively skewed (unimodal)

Page 59: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Positively skewed

Page 60: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Symmetric

Page 61: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Uniform

Page 62: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Groupings (bimodal)

Page 63: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Outlier

Page 64: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Bi-variate data

• Looking for relationships between two variables.

Page 65: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Example

• Is there a relationship between the amount of study a person does and their test result?

Page 66: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Consider data on ‘hours of study’ vs ‘ test score’

Hours Score Hours Score Hours Score

18 59 14 54 17 59

16 67 17 72 16 76

22 74 14 63 14 59

27 90 19 72 29 89

15 62 20 58 30 93

28 89 10 47 30 96

18 71 28 85 23 82

19 60 25 75 26 35

22 84 18 63 22 78

30 98 19 61

Page 67: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall
Page 68: Statistics 2. Variables Discrete Continuous Quantitative (Numerical) (measurements and counts) Qualitative (categorical) (define groups) Ordinal (fall

Relationship

• There is a positive linear relationship between the amount of study and the test score. This means that as the hours of study increases, we expect an increase in test score.