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Comparing Groups

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Title: Comparing Groups


1
Comparing Groups
  • Parametric Non-Parametric Inference

Nadeem Shafique Butt Dept. of Social Preventive
Paediatirics King Edward Medical University,
Lahore
2
Parametric Non-Parametric Inference
Normality Un-Equal Variances
Normality Equal Variances
Normality Un-Equal Variances
Normality Equal Variances
3
Comparing One Group
  • Kinds of Research Questions
  • For the one-sample situation, the prime concern
    in research is examining a measure of central
    tendency (location) for the population of
    interest. The best-known measures of location are
    the mean and median. For a one-sample situation,
    we might want to know if the average waiting time
    in a doctor's office is greater than one hour, or
    if the average growth of roses is 4 inches or
    more with a certain fertilizer, or is annual
    return is 10.2 for the banks that exercised
    comprehensive planning.

4
Comparing Two Groups
  • Kinds of Research Questions
  • One of the most common tasks in research is to
    compare two populations (groups). We might want
    to compare the income level of two regions, the
    nitrogen content of two lakes, or the
    effectiveness of two drugs.
  • The first question that arises is what aspects
    (parameters) of the populations shall we compare.
    We might consider comparing the averages, the
    medians, the standard deviations, the
    distributional shapes (histogram), or maximum
    values. We base the comparison parameter on our
    particular problem.
  • Perhaps the simplest comparison that we can make
    is between the means of the two populations.

5
Comparing more than two Groups
  • Kinds of Research Questions
  • One of the most common tasks in research is to
    compare several populations (groups). We might
    want to compare the income level of three
    regions, the nitrogen content of four lakes, or
    the effectiveness of four drugs.
  • The first question that arises concerns which
    aspects (parameters) of the populations we should
    compare. We might consider comparing the means,
    medians, standard deviations, distributional
    shapes (histograms), or maximum values. We base
    the comparison of parameter on our particular
    problem.
  • Perhaps the simplest comparison that we can make
    is to compare means of several populations.

6
One Sample t-test
  • One Sample t-test is used to compare one group to
    a given standard on the basis of Arithmetic
    Average (Mean).

7
The assumptions of the One-sample t-test
  • The data are continuous.
  • The data follow the Normal distribution.
  • The sample is a simple random sample from the
    population.

8
Hypotheses and Formulas
With
9
Example
  • A manufacturer of high-performance automobiles
    produces disc brakes that must measure 322
    millimeters in diameter. Quality control manager
    randomly selects 128 discs and measures their
    diameters.
  • We can use One Sample T Test to determine
    whether or not the mean diameters of the brakes
    in sample significantly differ from 322
    millimeters.

10
SPSS Analytic Procedure
11
The Sign Test
  • The sign test is perhaps the oldest of all the
    nonparametric procedures. This nonparametric test
    is based on the binomial distribution. It assumes
    two mutually exclusive outcomes, constant or
    stable probability of success or failure, and n
    independent trials
  • The terminology, sign test, reinforces the point
    that the data are converted to a series of plus
    and minus signs. The test is based on the number
    of plus signs that occur. Zero differences are
    thrown out, and the sample size is reduced
    accordingly.

12
The Assumptionsof the Sign Test
  • The data are continuous
  • The distribution of these data is symmetric.
  • The measurement scale is at least interval.

13
Hypotheses and Formulas
14
Example
  • A health scientist believes that median survival
    time after breast cancer is 50 months. To confirm
    this hypothesis he selects a random sample of
    1207 breast cancer patients from different cancer
    hospitals.
  • We can use Sign Test to determine whether or not
    the median survival time of the patients is
    significantly different from 50 months.

15
SPSS Analytic Procedure
16
Paired Samples t-test
  • Kinds of Research Questions
  • In the paired case, we take two measurements on
    same individual at different times, or we have
    one measurement on each individual of a pair.
  • Examples of the first case are two
    insurance-claim adjusters assessing the damage
    for the same 15 cases. Evaluation of the
    improvement in aerobic fitness for 15 subjects
    where measurements are made at the beginning of
    the fitness program and at the end of it.
  • An example of the second paired situation is the
    testing of the effectiveness of two drugs, A and
    B, on 20 pairs of patients who have been matched
    on physiological and psychological variables. One
    patient in the pair receives drug A, and the
    other patient gets drug B.

17
The assumptions of the paired-sample t-test
  • The data are continuous.
  • The data, i.e., the differences for the
    matched-pairs, follow a Normal distribution.
  • The sample of pairs is a simple random sample
    from its population.

18
Hypotheses and Formulas
With
19
Example
  • A researcher in behavioral medicine believes
    that stress often makes asthma symptoms worse for
    people who suffer from this respiratory disorder.
    Therefore, the researcher decides to study the
    effect of relaxation training on the severity of
    their symptoms.
  • A sample of 5 patients is selected. During the
    week before treatment, the investigator records
    the severity of their symptoms by measuring how
    many doses of medication are needed for asthma
    attacks. Then the patients receive relaxation
    training. For the week following the training the
    researcher once again records the number of doses
    used by each patient.
  • Data from Gravetter and Wallnau (4th Ed.) p.
    319.

20
SPSS Analytic Procedure
21
Wilcoxon Signed Rank test
  • Wilcoxon Signed Rank test is used to test the
    median difference of zero in case of non normal
    populations.

22
The assumptions of the two-sample t-test
  • The differences are continuous.
  • The distribution of these differences is
    symmetric.
  • The differences are mutually independent.
  • The differences all have the same median.
  • The measurement scale is at least interval.

23
Hypotheses and Formulas
24
Example
  • An educationist to wants see the effectiveness
    of new teaching method. For this She selected 600
    students and record their scores in a test of 150
    marks. The scores are recorded before and after
    the new teaching method.
  • The Wilcoxon Signed Rank test can be used to
    test the effectiveness of new teaching method.

25
SPSS Analytic Procedure
26
Independent Samples t-testEqual Variances
  • Independent sample t test is used to compare
    two groups on the basis of their averages.

27
The assumptions of the two-sample t-test
  • The data are continuous
  • The data follow the Normal distribution.
  • The variances of the two populations are equal
  • The two samples are independent
  • Both samples are simple random samples from their
    respective populations.

28
Hypotheses and Formulas
With
29
Example
  • An analyst at a department store wants to
    evaluate a recent credit card promotion. To this
    end, 500 cardholders were randomly selected. Half
    received an ad promoting a reduced interest rate
    on purchases made over the next three months, and
    half received a standard seasonal ad.
  • We can use Independent-Samples T Test to compare
    the spending of the two groups.

30
SPSS Analytic Procedure
31
Independent Samples t-testUnequal Variances
  • Independent Samples t-test is use to compare two
    independent groups on the basis of average. This
    test does not require homogeneity of the
    variances.

32
Hypotheses and Formulas
With
33
Example
  • A researcher wishes to compare the expenditure
    behavior of the students, one of the research
    question is to see the difference in expenditures
    by gender.

34
SPSS Analytic Procedure
35
Mann-Whitney Test
  • Mann-Whitney Test is used to compare the two
    independent groups on the basis of medians. This
    test does not require the assumption of normality.

36
Mann-Whitney U Test Assumptions
  • The variable of interest is continuous. The
    measurement scale is at least ordinal.
  • The probability distributions of the two
    populations are identical, except for location.
  • The two samples are independent.
  • Both samples are simple random samples from their
    respective populations.

37
Hypotheses and Formulas
W is the sum of ranks of the smaller sample
38
Example
  • Data on birth weight of infants born to mothers
    with different levels of prenatal care. Two
    independent samples data for univariate analysis.
    Test data for Mann-Whitney U-Test, obtained from
    Howell, David D. Fundamental Statistics for the
    Behavioral Sciences 3rd Edition, p385.

39
SPSS Analytic Procedure
40
One-Way Analysis of VarianceEqual Variances
  • One Way Analysis of Variance is used to compare
    more than two groups on the basis of their
    averages.

41
One-Way Analysis of Variance Assumptions
  • The data are continuous.
  • The data follow the Normal distribution, each
    group is normally distributed.
  • The variances of the populations are equal.
  • The groups are independent.
  • Each group is a simple random sample from its
    population.

42
Hypotheses and Formulas
MSG is the Mean Square of Group and MSE is the
Mean Square Error
43
Example
  • This is a hypothetical data file that concerns
    the popularity of a TV channel. Using a
    prototype, the marketing team has collected focus
    group data. One of the question of interest is to
    see the difference in popularity of the TV
    channel in different age groups.
  • This hypothesis can be tested using One Way
    ANOVA.

44
SPSS Analytic Procedure
45
One-Way Analysis of VarianceUnequal Variances
  • Welch ANOVA is used to compare more than two
    groups on the basis of averages. This test doest
    not require the homogeneity of variances.

46
Welch Analysis of Variance Assumptions
  • The data are continuous
  • The data follow the Normal distribution, each
    group is normally distributed.
  • The groups are independent.
  • Each group is a simple random sample from its
    population.

47
Hypotheses and Formulas
With
48
Example
  • A sales manager evaluates two new training
    courses.
  • Sixty employees, divided into three groups, all
    receive standard training. In addition, group 2
    receives technical training, and group 3 receives
    a hands-on tutorial. Each employee was tested at
    the end of the training course and their score
    recorded.

49
SPSS Analytic Procedure
50
Kruskal-Wallis Test
  • Kruskal-Wallis H-test is used to compare more
    than two groups on the basis of their medians.

51
Kruskal-Wallis Test Assumptions
  • The variable of interest is continuous, the
    measurement scale is at least ordinal.
  • The probability distributions of the populations
    are identical, except for location.
  • The groups are independent.
  • All groups are simple random samples from their
    respective populations.

52
Hypotheses and Formulas
53
Example
  • A health scientist wishes to compare the
    survival experiences after breast cancer with
    different Pathological Tumor Size (Categories).
  • We can use Kruskal-Wallis H-Test to determine
    whether or not the median survival time of the
    patients is significantly differ in different
    pathological tumor size.

54
SPSS Analytic Procedure
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