Cards (4)

    • Data Types
      Qualitative:
      • Descriptive
      • Difficult to statistic analyse and generalise
      • Detail (high valid)
      • Comes directly participant eco valid;
      • Can be made to quantitative data; thematic analysis
      Quantitative:
      • Numerical
      • Shows behaviour frequency
      • Reduces to numbers, less valid
      • Reliable
      • Replicable
      • Objective
      • Generalisable
      • Comparable
      • Type: nominal (categories), ordinal (ranking), interval (ranked, know gap size) and ratio (interval, true zero)
      Self Report:
      • Easy statistic analyse
      • Eco valid
      • Honest, articulate participant
      • Social desirable
      • Demand characteristic
    • Question Types

      Closed
      • Fixed response
      • Select applicable answer
      • Quantitative
      • Reliable
      • Replicable
      • Easy statistic analyse
      • Objective
      • Well-controlled
      • Low validity
      • Demand characteristic (social desirable)
      • Superficial
      • Fatigue (long questions)
      • Frustration (reductionist answer range, lower engagement)
      Open
      • No restriction
      • Qualitative
      • Allows explanation
      • May generate unexpected content, new inquiry lines
      • Detailed
      • More valid
      • Flexibility
      • Good if unknown answer range
      • Low reliability
      • Subjective
      • Difficult to analyse
      • Time-consuming
      • Less replicable
      • Generate less data
    • Primary or Secondary
      Primary Data:
      • Gathered by researcher themselves
      • Quantitative or qualitative
      • Specific sample (more representative) and procedure (more valid)
      • Smaller samples
      • Expensive
      • Ensure operationalisation, standardisation and control
      • Time-Consuming
      Secondary Data:
      • From other pre-published sources
      • Quantitative or qualitative
      • Meta-analysis
      • Larger database (more representative)
      • Cheaper
      • Unsure of control in studies, unreliable methods
      • Use studies not for this aim/purpose
      • May be out-of-state
      • Fast
    • Thematic Analysis
      • Identify patterns, trends + themes
      • Develop codes to label data, w/ ideas, attitudes + behaviour (themes)
      • Evidence may be direct quotes or inferences
      • E.g. PA for positive attitudes
      • Transcript run many pages, useful to see theme frequency
      • Deductive: Search through data for pre-existing themes
      • Inductive: Analyse data to make themes
      • Similar themes categorised together, patterns/trends
      • Themes change/emerge after more analysis, constant adjustment
      • Allows qualitative analysis, meaningful + detailed
      • Subjective
      • Researcher bias
      Grounded Theory
      • Way to analyse qualitative w/out existing theory
      • Similar to inductive thematic analysis
      • Aim to get useful theory from data
      • Researcher looks for common themes + ideas
      • Strengths
      • Allow qualitative data analysis
      • Makes useful theory, give future research ideas
      • Weaknesses
      • Unscientific/subjective
      • May lack generalisability