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Transcript of Dr. G. Johnson, Descriptive Data Analysis: Analyzing Survey Data Research Methods for Public...
Dr. G. Johnson, www.ResearchDemystified.org
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Descriptive Data Analysis:Analyzing Survey Data
Research Methods for Public Administrators
Dr. Gail Johnson
Dr. G. Johnson, www.ResearchDemystified.org
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At Long Last: Analyzing Surveys
Surveys: Using Percent Distributions
Key Topics: Handling “Exits” Analyzing 5-point scales
Extreme analysis Handling the middle categories
Dr. G. Johnson, www.ResearchDemystified.org
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Guidelines for “Exits”
Exit options on scales: “don’t know” “not applicable” “no opinion”
Handling “Exits”: no firm rules
Dr. G. Johnson, www.ResearchDemystified.org
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Guidelines for “Exits”
Key decision: leave in or exclude from analysis? If the number of people taking an exit is very
small, there will be little difference in the percent distribution so the researchers only need to inform the reader whether they are included or excluded
Dr. G. Johnson, www.ResearchDemystified.org
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Handling “Exits”
If there is a high percent of exits, does it make sense? If it does, exclude from the analysis For example, if you ask people how satisfied or
dissatisfied they are with the zoning office, a high percent might say “not applicable.”
That might make sense because probably only a small proportion of citizens contact the zoning office in any given year.
The “not applicable” responses could be excluded, and the analysis should focus on the percent distribution who actually answered in the satisfied—dissatisfied scale.
Dr. G. Johnson, www.ResearchDemystified.org
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Handling “Exits”
If, on the other hand, there is a high proportion of people taking the exits for reasons that are not clear, the researchers might want to spend some time to figure that out.It could be a sign that there was a problem
with the question.My best advice—as a general rule—would
be to exclude the exits from the analysis, and focus on only those who answered within the scale.
Dr. G. Johnson, www.ResearchDemystified.org
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Handling “Exits”
Make sure the analysis is anchored in terms of the number of people who answered within the scale.
“Of the 300 people who indicated their level of satisfaction, 65% reported being very or somewhat satisfied.”
Dr. G. Johnson, www.ResearchDemystified.org
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Analyzing Survey Scales
Decision rules for 5-point scales Very Satisfied Somewhat satisfied Neither Somewhat dissatisfied Very dissatisfied
Dr. G. Johnson, www.ResearchDemystified.org
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Analyzing Survey Scales
Decision rules for 5-point scales. I first look at where a majority (50% or more) answered
either on the positive or the negative side of the scales. Very satisfied and somewhat satisfied. Very dissatisfied and somewhat dissatisfied.
It allows me summarize the set of questions: “Of the 5 questions about the city services, a majority reported
being very satisfied or somewhat satisfied with library services, recreation department and the fire department.”
Dr. G. Johnson, www.ResearchDemystified.org
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Analyzing Survey Scales: “Extreme Analysis”
If a majority answered positively or negatively on many questions, I then do an “extreme analysis”—that is, I look for questions where a majority answered “very satisfied” or “very dissatisfied.”
It is unusual to get a majority at the extreme end of scale, so that information shows the greatest intensity of feeling about the issue.
Dr. G. Johnson, www.ResearchDemystified.org
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Exercise: What’s The Story About Faculty Performance?
In general, how satisfied or dissatisfied are you with various aspects of faculty performance?
VerySatisfied
GenerallySatisfied
As Satisfiedas Dissatisfied
or Neither
GenerallyDissatisfied
VeryDissatisfied
a) Level of faculty knowledge
54% 40% 5% 1% 0%
b) Ability of faculty to relate concepts to real world settings
37 51 12 1 0
C Willingness of faculty to meet student needs
24 39 12 14 10
d) Availability of faculty outside of class
22 38 14 16 10
Dr. G. Johnson, www.ResearchDemystified.org
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Exercise: What’s The Story? What are students most satisfied with? What are students least satisfied with? What’s the story the data tells?
Dr. G. Johnson, www.ResearchDemystified.org
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Analyzing Survey Scales
A majority was very satisfied or generally satisfied with all four aspects of faculty performance. However, a majority (54%) were very satisfied with
faculty knowledge. Part of analyzing the data requires identifying the
key elements of the story. I would highlight faculty knowledge as being a
strong aspect of faculty performance according to those completing the survey.
Dr. G. Johnson, www.ResearchDemystified.org
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Handling the Middle Category
As you know, I like uneven scales (scales with 5 or 7 choices). For example, Likert scales have a neutral
middle. Neither agree or disagree.
Combining the “neither” category with the agree side or the disagree side clearly does not make any sense.
Dr. G. Johnson, www.ResearchDemystified.org
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5-point Scale Without a Neutral Middle (one-way scales)1. ___ Almost Never/Never
2. ___ Seldom
3. ___ Occasionally
4. ___ Usually
5. ___ Almost Always/Always
Note: a graduated one-way scale with soft-ends
Dr. G. Johnson, www.ResearchDemystified.org
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Handling the Middle Category
Another common one-way scale Very great extent Great extent Moderate extent Some extent Little of no extent
Dr. G. Johnson, www.ResearchDemystified.org
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Handling the Middle Category in One-way Scales It is possible to combine categories when using a
scale without a neutral middle, It could be honestly reported that 90 percent of the
respondents rated the city services as helpful to at least some extent.
However, the researcher is rolling 4 of the 5 possible categories together—and raises a question of whether the researcher is trying to hide the detail. Maybe very few respondents provide favorable ratings.
Dr. G. Johnson, www.ResearchDemystified.org
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Handling the Middle Category in One-way Scales My advice: the middle category stands alone, even
though it is not neutral. It is too easy to distort the data by combining the
middle category with either side of the scale to make it say what the researcher wants.
Dr. G. Johnson, www.ResearchDemystified.org
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Handling the Middle Category in Goldilocks Scales Does the program offer too many, too few are just
about the right number of electives: Much too many Somewhat too many Just about right Somewhat too few Much too few
Dr. G. Johnson, www.ResearchDemystified.org
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Handling the Middle Category in Goldilocks Scales The middle category is not neutral: it
contains important information. In fact, the program director would be
hoping that most people say “just about right”
It too stands alone!
Dr. G. Johnson, www.ResearchDemystified.org
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Handling the Middle Category
My rule: the middle always stands alone. Let me repeat: the middle stands alone.
Dr. G. Johnson, www.ResearchDemystified.org
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Why Not Have Yes or No Scales? Or even scales? I prefer 5-point scales because it gives me the
option of looking at the extreme ends of the scales. If I only ask people whether they are satisfied or
dissatisfied, I do not know how many are really very satisfied as compared to somewhat satisfied.
The difference in intensity might be important.
Dr. G. Johnson, www.ResearchDemystified.org
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Why Not Have Yes or No Scales? I still have the option of collapsing the 2 positive
together and 2 negative sides of the scale together to simply reporting.
The middle category gives a place for people to go if they really do not have an opinion one way or the other. Some people do not like to say they “don’t know”, so
they find a middle category.
Dr. G. Johnson, www.ResearchDemystified.org
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Key Questions About Survey Results Make sure you know the decision rules: did the
researchers exclude the people answering “don’t know”?
Did they do an extreme analysis? How many categories did they roll together to get
their results? Did they maintain the neutral middle?
Dr. G. Johnson, www.ResearchDemystified.org
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Final Words on Analyzing Survey Data Be mindful of words like “most people”—do they
mean the majority (50%+) or do they mean a plurality (the greatest proportion but less than a majority).
When working with survey data, round percentages to the nearest whole number (.5 and up, round up, less than .5, round down). Decimal points can give a false sense of precision and
make it harder for people to remember the numbers.
Dr. G. Johnson, www.ResearchDemystified.org
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