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Using Mixed Methods Research to Analyze Surveys

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Title: Using Mixed Methods Research to Analyze Surveys


1
Using Mixed Methods Research to Analyze Surveys
  • Keith Wurtz
  • Senior Research Analyst
  • Chaffey College
  • Keith.Wurtz_at_chaffey.edu
  • www.chaffey.edu/research

2
What is Mixed Methods Research?
  • Difficult to define
  • Examples of Definitions
  • The use of qualitative and quantitative
    techniques in both the collection and analysis of
    data
  • Mixed Methods research is given a priority in the
    research and the integration of both the
    quantitative and qualitative results occurs at
    some point in the research process
  • Research that includes both quantitative and
    qualitative data in a single research study, and
    either the QUAN or QUAL data provides data that
    would not otherwise be obtainable when using only
    the primary method

3
Why is Mixed Methods Research Valuable?
  • Answers questions that other modalities cannot
  • Provides a deeper understanding of the examined
    behavior or a better idea of the meaning behind
    what is occurring
  • The inferences made with mixed methods research
    can be stronger
  • Mixed methods research allows for more divergent
    findings
  • MM research can include culture in the design by
    giving a voice to everyone involved in the
    behavior being examined

4
Collaborative MM Research
  • Seeks to include stakeholders in the design and
    the research process
  • Can be very beneficial when many of the
    stakeholders are more likely to be critics
  • Includes less powerful groups and helps to ensure
    that they have an equitable impact on the
    research
  • Collaboration has the ability to stimulate ways
    of thinking that might not occur when working
    individually on a project

5
Setting-Up a Mixed Methods Research Study
  • The key to any study is the research question(s)
    because this dictates the selection of the
    research methods
  • In designing a study the underlying purpose is
    the reason for doing it, and is a necessary
    component
  • Why are we doing the study?
  • The quality of the study and the meaningfulness
    of the results are enhanced if we are clear about
    the purpose

6
Six Categories of MM Research Designs
  • Sequential Explanatory Design
  • Sequential Exploratory Design
  • Sequential Transformative Design
  • Concurrent Triangulation Design
  • Concurrent Nested Design
  • Concurrent Transformative Design

7
Sequential Explanatory Design
  • Collection and analysis of QUAN data followed by
    the collection and analysis of QUAL data
  • Priority is usually given to QUAN data
  • Integration of QUAN and QUAL data usually occurs
    in the interpretation phase of the study
  • The purpose is usually to use the QUAL results to
    help explain the QUAN results

8
Sequential Exploratory Design
  • Conducted in two phases
  • Priority is given to the first phase of QUAL data
    collection
  • The second phase involves QUAN data collection
  • Overall priority is given to QUAL data collection
    and analysis
  • The findings are integrated in the interpretation
    phase
  • Most basic purpose is to use QUAN data to help
    interpret the results of the QUAL phase

9
Sequential Transformative Design
  • Has two distinct data collection phases
  • A theoretical perspective is used to guide the
    study
  • Purpose is to use methods that will best serve
    the theoretical perspective of the researcher

10
Concurrent Triangulation Design
  • This is probably the most familiar MM design
  • The QUAL and QUAN data collection are concurrent,
    and happen during one data collection phase
  • Priority could be given to either QUAL or QUAN
    methods, but ideally the priority between the two
    methods would be equal
  • Two methods are integrated in the interpretation
    phase
  • The integration focuses on how the results from
    both methods are similar or different, with the
    primary purpose being to support each other

11
Concurrent Nested Design
  • Gathers both QUAL and QUAN data during the same
    phase
  • Either QUAL or QUAN dominates the design
  • The analysis phase mixes both the QUAL and QUAN
    data
  • The QUAL data is used to help explain or better
    understand the QUAN data

12
Concurrent Transformative Design
  • Guided by a specific theoretical perspective
  • The QUAN and QUAL data are collected during the
    same phase
  • The integration of data occurs during the
    analysis phase
  • The integration of data could occur in the
    interpretation phase
  • Again, the purpose is to use methods that will
    best serve the theoretical perspective of the
    researcher

13
Process of Integrating QUAL and QUAN data
  • The process of integrating QUAL and QUAN research
    needs to be well thought out prior to the study
  • QUAL portion needs to be constructed in a way so
    that more novel information can be discovered
  • Need to decide if QUAL portion is exploratory or
    confirmatory
  • If exploratory, the purpose is to identify other
    dimensions that the QUAN portion is missing
  • If confirmatory, the purpose is to support the
    QUAN relationship
  • QUAL results can also be used to explain why
    there wasnt a statistically significantly
    difference

14
Guidelines for Integrating QUAL and QUAN results
  • Selection of research methods need to be made
    after the research questions are asked
  • Some methods work well in some domains and not in
    others
  • There is no model of integration that is better
    than another
  • When there are results that support each other,
    it is possible that both the QUAN and QUAL
    results are biased and both are not valid
  • The main function of integration is to provide
    additional information where information obtained
    from one method only was is insufficient
  • If the results lead to divergent results, then
    more than one explanation is possible

15
Integrating QUAL and QUAN data
  • One process of incorporating QUAL data with QUAN
    data is known as quantitizing, or quantifying the
    open-ended responses
  • Dummy Coding (i.e. binarizing) refers to giving
    a code of 1 when a concept is present and a code
    of 0 if it is not present

16
Presenting MM Research Findings
  • As with any research findings, if they cannot be
    communicated to the people who can use the
    information than the findings are worthless
  • Presenting MM research can be more challenging
    because we are trying to communicate two types of
    information to readers
  • For instance, writing-up QUAN research is very
    well defined, and QUAL research is more often
    about discovery

17
Insuring that MM Findings are Relevant
  • Include stakeholders in the planning of the
    research
  • Using MM research design may help a wider range
    of audiences connect to the material
  • Make sure to define the language used in the
    report
  • It is important to decide how the MM research
    findings are going to be written combined or
    separately

18
MM Research Study Example
  • The IR Office at Chaffey was asked to examine the
    satisfaction of K-12 Districts with Chaffey
    College students who were working at a K-12
    school in Chaffeys District as paid tutors
  • 29 tutors were evaluated

19
MM Research Study Example
  • The form was not developed by IR
  • Evaluated paid tutors on five job qualification
    areas
  • Job skills
  • Job knowledge
  • Work habits
  • Communication skills
  • Attitude
  • Three point rubric was used to evaluate paid
    tutors
  • Did not meet the requirement
  • Met the requirement
  • Exceeded requirements
  • Evaluators were also asked to provide comments

20
MM Research Study Example
  • How did I combine the qualification ratings
    (QUAN) with the evaluator comments (QUAL)?
  • Found an example of how to do this from
    Sandelowski (2003)
  • Sandelowski provided an example where the QUAN
    responses were categorized and themes for each
    category were generated from the open-ended
    comments

21
MM Research Study Example
  • First step is to create the categories from the
    QUAN data
  • This step involves being very familiar with your
    data, and also some creativity
  • With the paid tutor evaluation it was fairly easy
    to develop the categories
  • Paid tutors who received a perfect rating in
    every category (n 13)
  • Paid tutors who had an average ranking equal to
    or above the mean (n 5)
  • Paid tutors who had an average below the mean (n
    11)

22
MM Research Study Example
  • Mixing both the QUAL and QUAN data in the
    analysis phase
  • After I created the three categories I printed
    out the comments associated with the paid tutors
    for each category and identified a theme for each
    one

23
MM Research Study Example
  • Evaluator comments about tutors with a lower than
    average (i.e. 2.51) rating
  • Themes identified included the following lack of
    initiative, low attendance, and poor behavior
    management skills
  • Sample of Evaluator Comments
  • NAME had plenty of subject smatter knowledge
    just needs support in behavior management.
    Perhaps that could be included in prep program at
    Chaffey.
  • She was late several times and therefore
    couldn't complete the task assigned. She was
    positive and caring with children. The students
    really liked her and were motivated, but she had
    some difficult to handle students who
    occasionally got out of control.

24
MM Research Study Example
  • Evaluator comments about tutors with an average
    or above average rating (2.57-2.99)
  • Themes were very positive, but paid tutors were
    rated low in one or two areas
  • Sample of Evaluator Comments
  • NAME worked very well with my students. She
    had a lot of patience with them.
  • NAME is an excellent role model for my
    students. His attendance is his weakness we
    depend on him and it impacts our program when he
    doesn't come and work.

25
MM Research Study Example
  • Evaluator comments about tutors were rated as
    exceeding job expectations in all areas
  • Received very positive comments
  • Sample of Evaluator Comments
  • NAME's enthusiastic attitude, ability to
    relate to students, and knowledge of content
    assisted him in helping our students become
    successful.
  • NAME was reliable, hard working, and a
    wonderful communicator to the student. NAME
    always offered to do more no matter what the
    task. Thorough tutor!

26
Creating QUAN Categories for a Second MM Research
Study
  • Students in Fall 2007 and Spring 2008 rated SI
    Leaders in nine areas on a four point agreement
    scale
  • A much smaller percentage of students provided
    comments about their SI Leader
  • An overall average was computed for those who
    commented by summing student scores and dividing
    by 9

27
Creating QUAN Categories for a Second MM Research
Study
  • The categories in the SI study were a little more
    difficult to develop
  • Students who rated SI Leaders below the average
    of 3.45 (n 7)
  • Students who rated SI Leaders average or above to
    1 standard deviation above the mean (SD .35,
    3.45 3.64, n 8)
  • Students who scored 1 SD above the mean (3.65
    4.00, n 8)

28
Limitations
  • Proportion of open-ended responses to
    quantitative responses
  • The amount of time required to do any MM Research
    Study (How do you choose?)
  • Activity

29
Stakeholder Comment
  • Based on survey results from the annual Student
    Satisfaction Survey, I have made several
    decisions regarding tutor training,
    center-related curriculum, and staffing.  While
    the majority of students were satisfied with
    their center experience and thought the tutors
    were friendly and helpful (3.62 rating out of
    4.0), students gave a lower rating to some other
    aspects of tutoring and center-related activities
    (see Table 19D in Spring 2008 Survey results).
     As a result, I asked my tutors this year to
    complete a self-assessment in order to cause them
    to think more about their tutoring and how they
    can improve their tutoring approach.

30
Stakeholder Comment
  • Even when presenting data in a variety of way
    (i.e. charts, graphs, and other visuals),
    quantitative research seems difficult to absorb
    for many campus stakeholders. For those lacking
    a broader statistical context for understanding
    the information, even significant results can
    lose their impact. By combining quantitative
    data with narrative responses from open-ended
    questions, the 2008 Student Satisfaction Survey
    provided a more accessible tool to communicate
    program efficacy to the various constituent
    groups that support and rely on the Chaffey
    College Success Centers. When showcasing results
    in this manner to department faculty and
    administrators, individuals had a much clearer
    understanding of the information and had less
    difficulty relating that information directly to
    student success.

31
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