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Fundamentals of Data Analysis

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Statistical analysis technique to study the relationships among and between variables ... Both median and mode can be used for ordinal scale ... – PowerPoint PPT presentation

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Title: Fundamentals of Data Analysis


1
  • Fundamentals of Data Analysis
  • Structure, Coding
  • Frequency Distributions, Cross Tabulation

2
Data Analysis
  • A set of methods and techniques used to obtain
    information and insights from data
  • Helps avoid erroneous judgements and conclusions
  • Can constructively influence the research
    objectives and the research design

3
Preparing the Data for Analysis
  • Data Editing
  • Identifies omissions, ambiguities, and errors in
    responses
  • Conducted in the field by interviewer and field
    supervisor and by the analyst prior to data
    analysis

4
Preparing the Data for Analysis
  • Problems Identified With Data Editing
  • Interviewer Error
  • Omissions
  • Ambiguity
  • Inconsistencies
  • Lack of Cooperation
  • Ineligible Respondent

5
Preparing the Data for Analysis
  • Statistically Adjusting the Data Variable
    Re-specification
  • Existing data is modified to create new variables
  • Large number of variables collapsed into fewer
    variables
  • Creates variables that are consistent with study
    objectives
  • Dummy variables are used (binary, dichotomous,
    instrumental, quantitative variables)

6
Preparing the Data for Analysis
  • Scale transformation
  • Scale values are manipulated to ensure
    comparability with other scales
  • Standardization allows the researcher to compare
    variables that have been measured using different
    types of scales
  • Variables are forced to have a mean of zero and a
    standard deviation of one
  • Can be done only on interval or ratio scaled data

7
Simple Tabulation
  • Consists of counting the number of cases that
    fall into various categories
  • Determine empirical distribution (frequency
    distribution) of the variable in question
  • Calculate summary statistics, particularly the
    mean or percentages
  • Aid in "data cleaning" aspects

8
Frequency Distribution
  • Reports the number of responses that each
    question received
  • Organizes data into classes or groups of values
  • Shows number of observations that fall into each
    class
  • Can be illustrated simply as a number or as a
    percentage or histogram
  • Response categories may be combined for many
    questions
  • Should result in categories with worthwhile
    number of respondents

9
Descriptive Statistics
  • Statistics normally associated with a frequency
    distribution to help summarize information in the
    frequency table
  • Measures of central tendency mean, median and
    mode
  • Measures of dispersion (range, standard
    deviation, and coefficient of variation)
  • Measures of shape (skewness and kurtosis)

10
Analysis for Various Population Subgroups
  • Differences between means or percentages of two
    subgroup responses can provide insights
  • Difference between means is concerned with the
    association between two questions
  • Question upon which means are based are
    intervally scaled

11
Cross Tabulations
  • Statistical analysis technique to study the
    relationships among and between variables
  • Sample is divided to learn how the dependent
    variable varies from subgroup to subgroup
  • Frequency distribution for each subgroup is
    compared to the frequency distribution for the
    total sample
  • The two variables that are analyzed must be
    nominally scaled

12
Factors Influencing the Choice of Statistical
Technique
  • Type of Data
  • nominal, ordinal, interval and ratio scales of
    measurement
  • Nominal scaling is restricted to the mode as the
    only measure of central tendency
  • Both median and mode can be used for ordinal
    scale
  • Non-parametric tests can only be run on ordinal
    data
  • Mean, median and mode can all be used to measure
    central tendency for interval and ratio scaled
    data

13
Overview of Statistical Techniques Univariate
techniques
  • Appropriate when there is a single measurement of
    each of the 'n' sample objects or there are
    several measurements of each of the n'
    observations but each variable is analyzed in
    isolation
  • Non-metric - measured on nominal or ordinal scale
  • Metric-measured on interval or ratio scale
  • Determine whether single or multiple samples are
    involved
  • For multiple samples, choice of statistical test
    depends on whether the samples are independent or
    dependent

14
Overview of Statistical TechniquesBi-variate
techniques
  • Two interval variables
  • Correlation, regression, t-test
  • Two nominal variables
  • Contingency coefficient, Chi-square test
  • Two ordinal variables
  • Rank correlation, MW U-test, KS test

15
Overview of Statistical TechniquesMultivariate
techniques
  • Dependence Techniques
  • One or more variables can be identified as
    dependent others are independent
  • Interdependence Techniques
  • Examines a set of interdependent relationships

16
Why use Multivariate Analysis?
  • To group variables or people or objects
  • To improve the ability to predict variables (such
    as usage)
  • To understand relationships between variables
    (such as advertising and sales)

17
Summary
  • Understand the purpose of data analysis
  • Preparing date involves editing correcting
    numerous problems
  • variable re-specification, scale transformation
  • Analysis process moves from simple tabultions to
    descriptive statistics, to cross-tabulations and
    analysis of sub-groups
  • Choice of analysis technique is made from
    univariate, bi-variate, or multi-variate
    techniques

18
Notes on the SPSS assignment 2
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