types of data

    Cards (13)

    • quantitative data
      This is data expressed numerically.
    • evaluations - quantitative data
      strength(s):
      -easier to produce than qualitative data.
      -data is objective, people cannot interpret it differently.

      weakness(es):
      -less detailed, it does not give a good explanation to why the finding are what they are.
    • qualitative data
      This is data expressed in words.
    • evaluations - qualitative data
      strength(s):
      -more detailed than quantitative data, provides a better explanation.

      weakness(es):
      -can take longer to produce than quantitative data - this can mean data might be subjective.
      -people will interpret the data differently.
    • meta-analysis
      A specific form of secondary data that combines the findings of multiple studies on a particular topic. This can make a joint conclusion and enable an effect size to be calculated.
    • evaluations - meta-analysis
      strength(s):
      -larger, more varied sample - findings can be generalised as the sample is more representative.

      weakness(es):
      -publication bias. Articles that find a significant difference in data are more likely to be published - file-drawer problem; lower validity.
    • primary data
      This is original data - it comes from the researcher themselves.
    • evaluations - primary data
      strength(s):
      -there is high validity as the research is collected purposefully for the study.

      weakness(es):
      -it takes a lot of time and money to get. Secondary data is easier to use.
    • secondary data
      This is data that someone else has collected but we use to support our research.
    • evaluations - secondary data
      strength(s):
      -anyone can access secondary data; it is easy to get hold of.

      weakness(es):
      -there is low validity. There could be researcher and publication bias as well as extraneous variables we are not aware of.
    • nominal data
      data is separated into categories.
    • ordinal data
      data is put in order.
    • interval data
      data is measured using units of equal intervals.