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Data Analysis Descriptive

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Title: Data Analysis Descriptive


1
Data AnalysisDescriptive Inferential Statistics
  • N295
  • March 22, 2005

2
Data Analysis
  • Goal provide answers to the research questions
  • Gives organization and meaning to the data
  • Descriptive
  • Inferential
  • Consumers of research need to understand its
    meaning, use, and limitations

3
Using Statistics to Describe
  • Descriptive statistics are also referred to as
    summary statistics.
  • In any study in which the data are numerical,
    data analysis begins with descriptive statistics.

4
Describing the Sample
  • Purpose to obtain as complete a picture of the
    sample as possible
  • Determine frequencies of variables related to
    sample
  • Age
  • Education
  • Health status
  • Gender
  • Ethnicity

5
Descriptive Analysis
  • Describes data for a particular sample
  • Makes data more manageable by summarizing them
    and describing various characteristics
  • Includes
  • Measures of central tendency
  • Mode, median, mean
  • Measures of variability
  • Range,
  • standard deviation (SD)
  • percentile

6
Descriptive Analysis
  • Measures of central tendency describe the
    average member of the sample
  • Measures of variability describe how much
    dispersion there is in the sample
  • Example ages of students in a class

7
Levels of Measurement
  • Determine which statistics should be used
  • Nominal classification
  • Ordinal relative rankings
  • Interval rank ordering with equal intervals
  • Ratio rank ordering w/absolute zero

8
Descriptive Analysis
Content analysis
9
Measures of Central Tendency What is a typical
score?
  • Mode
  • The numerical value or score that occurs with
    greatest frequency
  • Median
  • Value in the exact center of ungrouped frequency
    distribution
  • Obtained by rank ordering the values
  • Mean
  • The sum of values divided by the number of values
    being summed
  • Example
  • 11113333334444444455555555555555777777778888889999
  • 264/50 5.28

10
Frequency Distribution
  • Presents data in tabular or graphic form and
    allows for the calculation or observations of
    characteristics of the distribution of the data

11
Normal Distribution
  • A theoretical frequency distribution of all
    possible values in a population
  • No real distribution exactly fits the normal
    curve.
  • Levels of significance and probability are based
    on the logic of the normal curve.

12
Normal Distribution
  • Normal curve
  • Symmetrical around the mean and unimodal
  • Fixed percentage of scores fall within a given
    distance of the mean

13
Measures of Variability
  • Concerned with the spread of data
  • Is the sample similar or different?
  • Range difference between highest lowest
    scores
  • Semiquartile range range of the middle 50
  • Percentile of cases a score exceeds
  • Median 50th percentile

14
Measures of Variability
  • Standard deviation (SD)
  • Most frequently used measure of variability
  • Based on the concept of the normal curve
  • Always reported with the mean
  • The square root of the variance
  • Just as the mean is the average value, the
    standard deviation is the average difference
    score.

15
Correlations
  • Used to answer what is the relationship?
    questions
  • Scatterplots
  • Show strength/magnitude of relationship between 2
    variables
  • Strength of the correlation is demonstrated by
    how closely the data points approximate a
    straight line

16
Correlations
17
Critiquing Descriptive Stats
  • Are descriptive statistics appropriate for level
    of measurement reported?
  • Appropriate summary statistics for each major
    variable?
  • Enough information presented to judge the
    results?
  • Results clearly and completely stated?
  • Tables/graphs agree with text and extend it or
    merely repeat it?

18
Inferential Analysis
  • Provides statistical support for the population
    from your sample data
  • Requires interval level measurement
  • Allow us to
  • Test hypotheses about a population using
    probability samples
  • Estimate the probability that statistics found in
    the sample accurately reflect the population

19
Inferential Analysis Difference Questions
20
Inferential Analysis Relationship Questions
21
Probability
  • Deductive
  • Used to explain
  • Extent of a relationship
  • Probability of an event occurring
  • Probability that an event can be accurately
    predicted
  • Expressed as lower case p with values expressed
    as percents
  • If probability is 0.23, then p 0.23.
  • There is a 23 probability that a particular
    event will occur.

22
Hypothesis Testing
  • Allows researchers to answer questions like
  • How much of this effect is a result of chance?
  • How strongly are these variables associated with
    each other?
  • Research hypothesis
  • Null hypothesis
  • Can actually be tested by statistical methods

23
Null Hypothesis
  • Claims no difference between the variables and
    that any observed difference is merely a function
    of chance
  • All hypothesis testing is a process of disproof
    or rejection
  • To reject the null hypothesis shows support for
    the research hypothesis and is the desired
    outcome of most studies using inferential stats

24
Type I and Type II Errors
  • Type I error occurs when the researcher rejects
    the null hypothesis when it is true (the results
    indicate that there is a significant difference,
    when in reality, there is not).
  • Type II error occurs when the researcher regards
    the null hypothesis as true, but it is false (the
    results indicate there is no significant
    difference, when in reality, there is a
    difference).

25
Type I and Type II Errors
  • Decision to reject or accept null hypothesis
    based on how probable it is that observed
    differences are a result of chance alone
  • Nonsignificant results (negative results)
  • Could be a Type II error

26
Occurrence of Type I and Type II Errors
  • Data Analysis In reality the In reality the
  • indicates null hypothesis null hypothesis
  • is true is false
  • Results
  • significant null Type I error Correct decision
  • Results not
  • significant null Correct decision Type II error
  • not rejected

27
Level of Significance
  • Probability of making a Type I error
  • Alpha level
  • Point at which the results of statistical
    analysis are judged to indicate a statistically
    significant difference between groups
  • For most nursing studies, level of significance
    is 0.05.
  • Sometimes written as a 0.05

28
Tests of Statistical Significance
  • Parametric
  • Estimation of at least one parameter
  • Measurement of interval level or above
  • Involve assumptions about variables being studied
  • Nonparametric
  • Often used on nominal or ordinal level
    measurement
  • Not based on estimation of parameters
  • Less restrictive assumptions about distribution

29
Tests of Differences Between Means
30
Tests of Association
31
t - Test
  • Requires interval level measures
  • Tests for significant differences between two
    samples
  • Most commonly used test of differences

32
Confidence Interval
  • How well does your sample statistic predict the
    population parameter?
  • Confidence interval gives a range of values
    within which the true value of the population
    parameter is estimated to fall
  • Can be obtained from the t test provided that
    data is interval level and data is normally
    distributed

33
Judging Statistical Suitability
  • Factors that must be considered
  • Study purpose
  • Hypotheses, questions, or objectives
  • Design
  • Level of measurement
  • Judge whether the procedure was performed
    appropriately and the results interpreted
    correctly.
  • Judgments required
  • Whether the data for analysis were treated as
    nominal, ordinal, or interval
  • The number of groups in the study
  • Whether the groups were dependent or independent

34
Clinical Significance
  • Findings can have statistical significance but
    not clinical significance.
  • Related to practical importance of the findings
  • No common agreement in nursing about how to judge
    clinical significance
  • Effect size?
  • Difference sufficiently important to warrant
    changing the patients care?

35
Steps in Sorting Through Stats in Research
Articles
  • Identify the research question
  • What is the difference?
  • How can I predict?
  • What is the relationship?
  • Identify the outcome (dependent) variable(s)

36
Steps in Sorting Through Stats in Research
Articles
  • Identify the level at which the outcome variable
    is measured.
  • Match statistics to
  • The research question
  • The level at which outcome variable is measured

37
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