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Advanced Coaching Analysis

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Title: Advanced Coaching Analysis


1
Qualitative Research Dr Ian Jones Centre for
Event and Sport Research Bournemouth University
2
  • Today NOT an outline of methods, but an outline
    of underlying considerations
  • 1. A few common myths/misconceptions
  • 2. Some challenges facing the qualitative
    researcher
  • 3. Some possible issues in fieldwork

3
  • 1. A few common myths/misconceptions

4
Qualitative research is soft, unscientific and
atheoretical
  • True
  • if done badly (as with all forms of research)

5
You cant have a hypothesis with qualitative
research
  • False
  • Can be a useful tool to guide you
  • e.g. Cresseys (1953) study of fraud
  • Hypothesis 1 people felt it was a technical
    offence. Rejected with initial data collection
  • Hypothesis 2 people undertook the behaviour
    when they felt other means unavailable - Rejected
    with further data collection
  • Hypothesis 3 people undertook the behaviour
    when they felt other means unavailable and
    problem non-shareable

6
You should have an audit trail
  • True
  • Explain through an "audit trail" (Maykut
    Morehouse 1994) aspects such as
  • theoretical decisions/choices
  • practical contingencies
  • rendering your research transparent
  • Allowing others to
  • Critique your research
  • Emulate your research

7
The researcher should be part of the research
process
  • True part of the audit trail
  • Explaining your position clarifies to others your
    choices, analyses, interpretations etc
  • Reflexivity a key element of any qualitative
    write up

8
You should be flexible with your choice of methods
  • True
  • Dont restrict yourself to one method
  • Bricoleur
  • Interviews
  • Observation
  • Autoethnography
  • Content analysis
  • Let your methods emerge!

9
Analysis should commence as soon as data
collection starts
  • True
  • Qualitative research should be emergent early
    analysis will allow refinement of research
    questions/hypotheses

10
You should use computer software to analyse your
data
  • False AND True
  • Each method has strengths and weaknesses
  • Depends on purpose
  • e.g. analysis software objective, good for
    large data sets, reliable
  • Manual analysis feel for data, easier to
    identify idiosyncrasies

11
  • Krane, et al. (1997 215) note with regard to
    computer versus manual analysis
  • none of these procedures directly affects the
    value of the study they are merely ways for the
    inquirers to work with their data... If
    individuals use NUDIST or Hyperqual computer
    programs, or 3 x 5 cards and paste them to the
    wall, they are really doing the same thing
    conceptually.

12
Numbers arent important
  • True
  • placing a frequency count after a category of
    experiences is tantamount to saying how important
    it is thus value is derived by number. In many
    cases, rare experiences are no less meaningful,
    useful, or important than common ones. In some
    cases, the rare experience may be the most
    enlightening one (Krane et al. 1997, p.214).

13
Your analysis should be a lone endeavour
  • False
  • e.g. Ask a fellow researcher to code the data,
    and compare findings. will identify problems in
    coding, and ensure a valid set of codes.
  • Check reliability through comparing your coding
    with others.
  • Miles Huberman (1994) suggest the following
  • Reliability number of agreements /(number of
    agreements disagreements).
  • you may begin with a low score (e.g. 60) but
    with continual discussion and clarification you
    should achieve a score of up to 90 (if not
    higher).
  • Use of devils advocate

14
Qualitative research must be generaliseable
  • False
  • many qualitative researchers don't even care
    about generalizing focus is often upon
    generating rich descriptions of the phenomena

15
  • 2. Some challenges facing the qualitative
    researcher

16
Challenges to the qualitative researcher
(Gummesson 1991)
  • Access to reality
  • Availability to the detailed rich data required
  • Characteristics of the researcher

17
  • 2. Pre-understanding and understanding
  • What is your understanding of the topic before
    data collection?
  • How does this influence your understanding
    developed during data collection?

18
  • 3. Ensuring quality?
  • Reliability
  • Validity
  • Plausibility/Authenticity
  • Credibility
  • Relevance
  • Transparency

19
  • Ask yourself a number of questions to assist the
    analysis
  • What type of behaviour is being demonstrated?
  • What is its structure?
  • How frequent is it?
  • What are its causes?
  • What are its processes?
  • What are its consequences?
  • What are people's strategies with dealing with
    the behaviour?
  • Frankfort-Nachimas and Nachimas (1996)

20
  • 3. Some possible issues in fieldwork

21
Potential Errors
  • Some errors are more accidental
  • Selection bias
  • Measurement bias
  • Confirmation bias
  • Hartman et al (2002) identified 64 sources of
    bias
  • Need to be aware of the range, e.g

22
Selection Bias
  • You can easily get the results you want by
    biasing your sample
  • Attitudes towards Low Cost airlines
  • If you want a positive response, ask those
    waiting for an EasyJet flight??
  • What about a negative response?

23
Measurement Bias
  • http//uk.youtube.com/watch?v2yhN1IDLQjo

24
Positivity Effect
  • Was tourism better in the past?
  • Were tour operators more knowledgeable?
  • As time progresses, our memories are distorted in
    a positive direction (positivity effect)
  • So we dont tend to remember the negatives
  • Impacts upon any question that requires recall

25
Lake Wobegon effect
  • How well do you get along with others?
  • Almost ALL respondents respond that they get
    along with others much better than average
  • A place where "all the women are strong, all the
    men are good-looking, and all the children are
    above average".
  • This is often how people perceive themselves!

26
  • You are
  • More sociable
  • More popular
  • More intelligent
  • Get on better with others
  • May relate to aspects of your research question

27
Researcher led bias
  • The researcher can also influence behaviour
    through their (often unconscious) actions

28
Clever Hans
  • A horse who could answer simple sums set by his
    owner, hence
  • Understanding language
  • Understanding mathematical concepts
  • Importance of non verbal influence
  • Interviews
  • Focus groups

29
Confirmation Bias
  • We can easily select data that supports our own
    point of view
  • We can also reject data that goes against our
    point of view
  • Egocentric thinking especially with sport
  • if I do it /think /act this way, then everyone
    else does as well

30
  • MANY other sources of bias. So
  • Think about all sources of potential bias before
    and during fieldwork and analysis

31
Finally What do examiners look for?
  1. How were the setting and the subjects selected?
  2. What was the researcher's perspective, and has
    this been taken into account?
  3. What methods did the researcher use for
    collecting dataand are these described in
    detail?
  4. Were the data appropriately and systematically
    analysed? Is there discussion as to how themes
    were derived?
  5. What conclusions were drawn, and are they
    justified by the results?
  6. Is context presented?
  7. Are the quotes representative or exemplary?
  8. Have alternative interpretations been considered?
  9. Is a clear distinction made between data and
    interpretation?
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