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Some definitions

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Title: Some definitions


1
Some definitions
  • In Statistics

2
A sample
  • Is a subset of the population

3
In statistics
  • One draws conclusions about the population based
    on data collected from a sample

4
Reasons
  • Cost

It is less costly to collect data from a sample
then the entire population
Accuracy
5
Accuracy
Data from a sample sometimes leads to more
accurate conclusions then data from the entire
population
Costs saved from using a sample can be directed
to obtaining more accurate observations on each
case in the population
6
Types of Samples
  • different types of samples are determined by how
    the sample is selected.

7
Convenience Samples
  • In a convenience sample the subjects that are
    most convenient to the researcher are selected as
    objects in the sample.
  • This is not a very good procedure for inferential
    Statistical Analysis but is useful for
    exploratory preliminary work.

8
Quota samples
  • In quota samples subjects are chosen conveniently
    until quotas are met for different subgroups of
    the population.
  • This also is useful for exploratory preliminary
    work.

9
Random Samples
  • Random samples of a given size are selected in
    such that all possible samples of that size have
    the same probability of being selected.

10
  • Convenience Samples and Quota samples are useful
    for preliminary studies. It is however difficult
    to assess the accuracy of estimates based on this
    type of sampling scheme.
  • Sometimes however one has to be satisfied with a
    convenience sample and assume that it is
    equivalent to a random sampling procedure

11
(No Transcript)
12
Some other definitions
13
A population statistic (parameter)
  • Any quantity computed from the values of
    variables for the entire population.

14
A sample statistic
  • Any quantity computed from the values of
    variables for the cases in the sample.

15
  • Since only cases from the sample are observed
  • only sample statistics are computed
  • These are used to make inferences about
    population statistics
  • It is important to be able to assess the accuracy
    of these inferences

16
To download lectures
  • Go to the stats 244 web site
  • Through PAWS or
  • by going to the website of the department of
    Mathematics and Statistics -gt people -gt faculty
    -gt W.H. Laverty -gt Stats 244-. Lectures.
  • Then
  • select the lecture
  • Right click and choose Save as

17
To print lectures
  1. Open the lecture using MS Powerpoint
  2. Select the menu item File -gt Print

18
  • The following dialogue box appear

19
  • In the Print what box, select handouts

20
  • Set Slides per page to 6 or 3.

21
6 slides per page will result in the least amount
of paper being printed
1
2
3
4
5
6
22
3 slides per page leaves room for notes.
1
2
3
23
Organizing and describing Data
24
Techniques for continuous variables
25
The Grouped frequency tableThe Histogram
26
To Construct
  • A Grouped frequency table
  • A Histogram

27
  • Find the maximum and minimum of the observations.
  • Choose non-overlapping intervals of equal width
    (The Class Intervals) that cover the range
    between the maximum and the minimum.
  • The endpoints of the intervals are called the
    class boundaries.
  • Count the number of observations in each interval
    (The cell frequency - f).
  • Calculate relative frequency
  • relative frequency f/N

28
  Data Set 3 The following table gives data on
Verbal IQ, Math IQ, Initial Reading Acheivement
Score, and Final Reading Acheivement Score for 23
students who have recently completed a reading
improvement program   Initial Final Verbal
Math Reading Reading Student IQ IQ Acheivement
Acheivement   1 86 94 1.1 1.7 2 104 103 1.5 1.7
3 86 92 1.5 1.9 4 105 100 2.0 2.0 5 118 115 1.9
3.5 6 96 102 1.4 2.4 7 90 87 1.5 1.8 8 95 100
1.4 2.0 9 105 96 1.7 1.7 10 84 80 1.6 1.7 11 94
87 1.6 1.7 12 119 116 1.7 3.1 13 82 91 1.2 1.8
14 80 93 1.0 1.7 15 109 124 1.8 2.5 16 111 119
1.4 3.0 17 89 94 1.6 1.8 18 99 117 1.6 2.6 19 9
4 93 1.4 1.4 20 99 110 1.4 2.0 21 95 97 1.5 1.3
22 102 104 1.7 3.1 23 102 93 1.6 1.9
29
In this example the upper endpoint is included in
the interval. The lower endpoint is not.
30
Histogram Verbal IQ
31
Histogram Math IQ
32
Example
  • In this example we are comparing (for two drugs A
    and B) the time to metabolize the drug.
  • 120 cases were given drug A.
  • 120 cases were given drug B.
  • Data on time to metabolize each drug is given on
    the next two slides

33
Drug A
34
Drug B
35
Grouped frequency tables
36
Histogram drug A(time to metabolize)
37
Histogram drug B(time to metabolize)
38
Some comments about histograms
  • The width of the class intervals should be chosen
    so that the number of intervals with a frequency
    less than 5 is small.
  • This means that the width of the class intervals
    can decrease as the sample size increases

39
  • If the width of the class intervals is too small.
    The frequency in each interval will be either 0
    or 1
  • The histogram will look like this

40
  • If the width of the class intervals is too large.
    One class interval will contain all of the
    observations.
  • The histogram will look like this

41
  • Ideally one wants the histogram to appear as seen
    below.
  • This will be achieved by making the width of the
    class intervals as small as possible and only
    allowing a few intervals to have a frequency less
    than 5.

42
  • As the sample size increases the histogram will
    approach a smooth curve.
  • This is the histogram of the population

43
N 25
44
N 100
45
N 500
46
N 2000
47
N 8
48
Comment the proportion of area under a histogram
between two points estimates the proportion of
cases in the sample (and the population) between
those two values.
49
Example The following histogram displays the
birth weight (in Kgs) of n 100 births
50
Find the proportion of births that have a
birthweight less than 0.34 kg.
51
Proportion (11310111917)/100 0.62
52
The Characteristics of a Histogram
  • Central Location (average)
  • Spread (Variability, Dispersion)
  • Shape

53
Central Location
54
Spread, Dispersion, Variability
55
Shape Bell Shaped (Normal)
56
Shape Positively skewed
57
Shape Negatively skewed
58
Shape Platykurtic
59
Shape Leptokurtic
60
Shape Bimodal
61
The Stem-Leaf Plot
  • An alternative to the histogram

62
  • Each number in a data set can be broken into two
    parts
  • A stem
  • A Leaf

63
  • Example
  • Verbal IQ 84
  • 84
  • Stem 10 digit 8
  • Leaf Unit digit 4

Leaf
Stem
64
  • Example
  • Verbal IQ 104
  • 104
  • Stem 10 digit 10
  • Leaf Unit digit 4

Leaf
Stem
65
To Construct a Stem- Leaf diagram
  • Make a vertical list of all stems
  • Then behind each stem make a horizontal list of
    each leaf

66
Example
  • The data on N 23 students
  • Variables
  • Verbal IQ
  • Math IQ
  • Initial Reading Achievement Score
  • Final Reading Achievement Score

67
  Data Set 3 The following table gives data on
Verbal IQ, Math IQ, Initial Reading Acheivement
Score, and Final Reading Acheivement Score for 23
students who have recently completed a reading
improvement program   Initial Final Verbal
Math Reading Reading Student IQ IQ Acheivement
Acheivement   1 86 94 1.1 1.7 2 104 103 1.5 1.7
3 86 92 1.5 1.9 4 105 100 2.0 2.0 5 118 115 1.9
3.5 6 96 102 1.4 2.4 7 90 87 1.5 1.8 8 95 100
1.4 2.0 9 105 96 1.7 1.7 10 84 80 1.6 1.7 11 94
87 1.6 1.7 12 119 116 1.7 3.1 13 82 91 1.2 1.8
14 80 93 1.0 1.7 15 109 124 1.8 2.5 16 111 119
1.4 3.0 17 89 94 1.6 1.8 18 99 117 1.6 2.6 19 9
4 93 1.4 1.4 20 99 110 1.4 2.0 21 95 97 1.5 1.3
22 102 104 1.7 3.1 23 102 93 1.6 1.9
68
  • We now construct
  • a stem-Leaf diagram
  • of Verbal IQ

69
  • A vertical list of the stems
  • 8
  • 9
  • 10
  • 11
  • 12

We now list the leafs behind stem
70
8
6
10
4
8
6
10
5
11
8
9
6
9
0
9
5
10
5
8
4
9
4
11
9
8
2
8
0
10
9
11
1
8
9
9
9
9
4
9
9
9
5
10
2
10
2
  • 8
  • 9
  • 10
  • 11
  • 12

71
8
6
10
4
8
6
10
5
11
8
9
6
9
0
9
5
10
5
8
4
9
4
11
9
8
2
8
0
10
9
11
1
8
9
9
9
9
4
9
9
9
5
10
2
10
2
  • 8
  • 9
  • 10
  • 11
  • 12

72
  • 8 6 6 4 2 0 9
  • 9 6 0 5 4 9 4 9 5
  • 10 4 5 5 9 2 2
  • 11 8 9 1
  • 12

73
The leafs may be arranged in order
  • 8 0 2 4 6 6 9
  • 9 0 4 4 5 5 6 9 9
  • 10 2 2 4 5 5 9
  • 11 1 8 9
  • 12

74
The stem-leaf diagram is equivalent to a histogram
  • 8 0 2 4 6 6 9
  • 9 0 4 4 5 5 6 9 9
  • 10 2 2 4 5 5 9
  • 11 1 8 9
  • 12

75
The stem-leaf diagram is equivalent to a histogram
  • 8 0 2 4 6 6 9
  • 9 0 4 4 5 5 6 9 9
  • 10 2 2 4 5 5 9
  • 11 1 8 9
  • 12

76
Rotating the stem-leaf diagram we have
80
90
100
110
120
77
The two part stem leaf diagram
  • Sometimes you want to break the stems into two
    parts
  • for leafs 0,1,2,3,4
  • for leafs 5,6,7,8,9

78
Stem-leaf diagram for Initial Reading Acheivement
  • 01234444455556666677789
  • 0
  • This diagram as it stands does not
  • give an accurate picture of the
  • distribution

79
  • We try breaking the stems into
  • two parts
  • 1. 012344444
  • 1. 55556666677789
  • 2. 0
  • 2.

80
The five-part stem-leaf diagram
  • If the two part stem-leaf diagram is not adequate
    you can break the stems into five parts
  • for leafs 0,1
  • t for leafs 2,3
  • f for leafs 4, 5
  • s for leafs 6,7
  • for leafs 8,9

81
  • We try breaking the stems into
  • five parts
  • 1. 01
  • 1.t 23
  • 1.f 444445555
  • 1.s 66666777
  • 1. 89
  • 2. 0

82
  • Stem leaf Diagrams
  • Verbal IQ, Math IQ, Initial RA, Final RA

83
Some Conclusions
  • Math IQ, Verbal IQ seem to have approximately the
    same distribution
  • bell shaped centered about 100
  • Final RA seems to be larger than initial RA and
    more spread out
  • Improvement in RA
  • Amount of improvement quite variable

84
Numerical Measures
  • Measures of Central Tendency (Location)
  • Measures of Non Central Location
  • Measure of Variability (Dispersion, Spread)
  • Measures of Shape

85
Measures of Central Tendency (Location)
  • Mean
  • Median
  • Mode

Central Location
86
Measures of Non-central Location
Non - Central Location
  • Quartiles, Mid-Hinges
  • Percentiles

87
Measure of Variability (Dispersion, Spread)
  • Variance, standard deviation
  • Range
  • Inter-Quartile Range

Variability
88
Measures of Shape
  • Skewness
  • Kurtosis

89
Measures of Central Location (Mean)
  • Summation Notation
  • Let x1, x2, x3, xn denote a set of n numbers.
  • Then the symbol
  • denotes the sum of these n numbers
  • x1 x2 x3 xn

90
  • Example
  • Let x1, x2, x3, x4, x5 denote a set of 5 denote
    the set of numbers in the following table.

91
  • Then the symbol
  • denotes the sum of these 5 numbers
  • x1 x2 x3 x4 x5
  • 10 15 21 7 13
  • 66

92
  • Meaning of parts of summation notation

Final value for i
each term of the sum
Quantity changing in each term of the sum
Starting value for i
93
  • Example
  • Again let x1, x2, x3, x4, x5 denote a set of 5
    denote the set of numbers in the following table.

94
  • Then the symbol
  • denotes the sum of these 3 numbers
  • 153 213 73
  • 3375 9261 343
  • 12979

95
Mean
  • Let x1, x2, x3, xn denote a set of n numbers.
  • Then the mean of the n numbers is defined as

96
  • Example
  • Again let x1, x2, x3, x4, x5 denote a set of 5
    denote the set of numbers in the following table.

97
  • Then the mean of the 5 numbers is

98
Interpretation of the Mean
  • Let x1, x2, x3, xn denote a set of n numbers.
  • Then the mean, , is the centre of gravity of
    those the n numbers.
  • That is if we drew a horizontal line and placed a
    weight of one at each value of xi , then the
    balancing point of that system of mass is at the
    point .

99
xn
x1
x2
x3
x4
100
In the Example
21
10
7
15
13
20
10
0
101
The mean, , is also approximately the center
of gravity of a histogram
102
The Median
  • Let x1, x2, x3, xn denote a set of n numbers.
  • Then the median of the n numbers is defined as
    the number that splits the numbers into two equal
    parts.
  • To evaluate the median we arrange the numbers in
    increasing order.

103
  • If the number of observations is odd there will
    be one observation in the middle.
  • This number is the median.
  • If the number of observations is even there will
    be two middle observations.
  • The median is the average of these two
    observations

104
  • Example
  • Again let x1, x2, x3, x3 , x4, x5 denote a set of
    5 denote the set of numbers in the following
    table.

105
  • The numbers arranged in order are
  • 7 10 13 15 21

Unique Middle observation the median
106
  • Example 2
  • Let x1, x2, x3 , x4, x5 , x6 denote the 6 denote
    numbers
  • 23 41 12 19 64 8
  • Arranged in increasing order these observations
    would be
  • 8 12 19 23 41 64

Two Middle observations
107
  • Median
  • average of two middle observations

108
Example
  • The data on N 23 students
  • Variables
  • Verbal IQ
  • Math IQ
  • Initial Reading Achievement Score
  • Final Reading Achievement Score

109
  Data Set 3 The following table gives data on
Verbal IQ, Math IQ, Initial Reading Acheivement
Score, and Final Reading Acheivement Score for 23
students who have recently completed a reading
improvement program   Initial Final Verbal
Math Reading Reading Student IQ IQ Acheivement
Acheivement   1 86 94 1.1 1.7 2 104 103 1.5 1.7
3 86 92 1.5 1.9 4 105 100 2.0 2.0 5 118 115 1.9
3.5 6 96 102 1.4 2.4 7 90 87 1.5 1.8 8 95 100
1.4 2.0 9 105 96 1.7 1.7 10 84 80 1.6 1.7 11 94
87 1.6 1.7 12 119 116 1.7 3.1 13 82 91 1.2 1.8
14 80 93 1.0 1.7 15 109 124 1.8 2.5 16 111 119
1.4 3.0 17 89 94 1.6 1.8 18 99 117 1.6 2.6 19 9
4 93 1.4 1.4 20 99 110 1.4 2.0 21 95 97 1.5 1.3
22 102 104 1.7 3.1 23 102 93 1.6 1.9
110
  • Computing the Median
  • Stem leaf Diagrams

Median middle observation 12th observation
111
Summary
112
Some Comments
  • The mean is the centre of gravity of a set of
    observations. The balancing point.
  • The median splits the obsevations equally in two
    parts of approximately 50

113
  • The median splits the area under a histogram in
    two parts of 50
  • The mean is the balancing point of a histogram

50
50
median
114
  • For symmetric distributions the mean and the
    median will be approximately the same value

50
50
Median
115
  • For Positively skewed distributions the mean
    exceeds the median
  • For Negatively skewed distributions the median
    exceeds the mean

50
50
median
116
  • An outlier is a wild observation in the data
  • Outliers occur because
  • of errors (typographical and computational)
  • Extreme cases in the population

117
  • The mean is altered to a significant degree by
    the presence of outliers
  • Outliers have little effect on the value of the
    median
  • This is a reason for using the median in place of
    the mean as a measure of central location
  • Alternatively the mean is the best measure of
    central location when the data is Normally
    distributed (Bell-shaped)
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