Types of data

Cards (12)

  • What is primary data?
    data that a researcher has gathered themselves in their own study. it's collected for the purpose of their study
  • Strengths of primary data
    • have more control over the collection of data so usually more accurate/valid
    • more up-to-date data as collected directly from participants
  • Weaknesses of primary data
    • very time consuming + expensive
    • can be quite sensitive information so may make participants feel uncomfortable
    • may lead to researcher bias as the researcher is collecting it directly
  • What is secondary data?
    data that a researcher has obtained from elsewhere or another piece of research to use to inform them in their own research; collected not for the purpose of this study
  • Strengths of secondary data
    • time + cost effective as we can make use of data that has already been collected (so more practical)
    • less personal so don't have to ask/test participant directly
    • can often give a large sample of data
  • Weaknesses of secondary data
    • may be inaccurate/outdated data (don't know how old it is)
    • may be misinterpreted
  • How is the majority of qualitative data collected?
    case studies, interviews, questionnaires (open questions) and unstructured observations
  • Strengths of qualitative data
    • can generate information about the reasons behind behaviour in detail = increased internal validity as we are able to find out why behaviour happened
    • not limited like numbers people are free to elaborate = increased internal validity as we are able to find out why a behaviour happened
  • Weaknesses of qualitative data
    • subjective as it's description is more open to bias = decreases validity as interpretations of data are open to interpretation
  • How is quantitative data usually gathered from
    experiments, closed questions, structured observations with behavioural categories and correlations
  • Strengths of quantitative data
    • easy to make comparisons + check consistency of data = high external reliability
    • easy to analyse and make comparisons between different groups or conditions = can see whether any significant differences in findings
    • objective as it's purely numerical so less open to bias = increases validity as we are able to draw objective inferences w/o interpretation
  • Weaknesses of quantitative data
    • cannot show insight into reasons behind behaviour = reduced internal validity as we don't know why behaviour occured