5. Types of Data

    Cards (10)

      1. Types of Data - Qualitative Data
      Qualitative Data - written description.
      • rich/detailed.
      • real-life settings.
      • high validity.
      • attitudes/opinions.
      • observed, not measured.
      • subjective (low reliability).
    • 1a. Types of Data - Qualitative Data
      Qualitative Data - Strengths:
      • depth/detail = meaningful insight.
      • high external validity.
      Qualitative Data - Limitations:
      • complex, hard analyse.
      • can’t be summarised statistically; patterns within/between data hard to identify.
      • subjective = open to bias if researcher has (unconscious) expectations of what to find.
    • 2. Types of Data - Quantitative Data
      Quantitative Data - numerical data.
      • scientific/objective.
      • statistically measured.
      • high reliability.
      • artificial setting.
      • measures of psychological variables.
      • averages/differences.
    • 2a. Types of Data - Quantitative Data
      Quantitative Data - Strengths:
      • easy analysis = comparisons easily drawn.
      • objective, less open bias (high validity).
      • quick, cheap, easy obtain.
      Quantitative Data - Limitations:
      • oversimplifies reality (low external validity).
    • 3. Types of Data - Primary Data
      Primary Data - collected first-hand.
      • gathered through experiment, questionaries, interview, observations.
      • qualitative/quantitive data.
    • 3a. Types of Data - Primary Data
      Primary Data - Strengths:
      • authentic data.
      • researcher control, specifically target required info through things like questionnaires (higher internal validity).
      Primary Data - Limitations:
      • time-consuming, expensive.
    • 4. Types of Data - Secondary Data
      Secondary Data - already existing data.
      • already had statistical testing, significance known.
      • journal articles, books, websites, gov. statistics, health report, etc.
    • 4a. Types of Data - Secondary Data
      Secondary Data - Strengths:
      • quick, cheap, easily obtained.
      Secondary Data - Limitations:
      • may not fit exact needs of research (outdated/incomplete) = lower internal v.
    • 5. Types of Data - Meta-Analysis
      Meta-Analysis - examine results of several previous studies.
      • gain confidence + identify possible trends.
      • produce overall statistical conclusion based on range of studies.
    • 5a. Types of Data - Meta-Analysis
      Meta-Analysis - Strengths:
      • larger, more varied sample = generalised to other populations.
      Meta-Analysis - Limitations:
      • publication bias = may leave out negative results so conclusions biased bc only represents some relevant data.