Research methods

    Cards (174)

    • Lab Experiment

      An experiment conducted in a controlled environment where the IV is manipulated
    • Quasi Experiment

      An experiment conducted in a controlled environment where the IV is pre-existing
    • Field Experiment

      An experiment conducted in the participants' natural environment where the IV is manipulated
    • Natural Experiment

      An experiment conducted in the participants' natural environment where the IV is pre-existing
    • Lab Experiment: Strengths
      - Cause + Effect can be established
      - Reliable
      - High in internal validity
    • Lab Experiment: Weaknesses

      - Low in ecological validity
      - High chance of demand characteristics leading to invalid data
    • Quasi Experiment: Strengths

      - High in internal validity
    • Quasi Experiment: Weaknesses
      - Cause + Effect cannot be established
      - High chance of demand characteristics leading to invalid data
      - Low in ecological validity
    • Field Experiment: Strengths
      - High in ecological validity
      - Cause + effect can be established
      - Low chance of demand characteristics leading to valid data
    • Field Experiment: Weaknesses
      - Low in internal validity
      - Unreliable
    • Natural experiment: Strengths

      - High in ecological validity
      - Low chance of demand characteristics leading to valid data
    • Natural Experiment: Weaknesses
      - Cause + Effect cannot be established
      - Unreliable
      - Low in internal validity
    • Reliability
      The extent to which an experiment can be repeated under the same conditions with the same participants
    • Internal validity

      The extent to which an experiment measures what it sets out to measure as a result of the levels of control
    • Ecological validity

      When the experiment location is new to the participants' leading to the results not reflecting the participants' true behaviour
    • Generalisation
      When you take a sample from a target population, study their behaviour, and use the results to explain the behaviour of the whole target population
    • Directional hypothesis

      A hypothesis where only one outcome is predicted

      E.g. An adult with no children will have more hours spent socialising compared to an adult who has children
    • Non-directional hypothesis

      A hypothesis where two or more outcomes are predicted

      E.g. There will be a difference in hours spent socialising between an adult with children and an adult with no children
    • Null hypothesis

      A hypothesis predicting no difference

      E.g. There will be no significant difference in hours spent socialising between an adult who has children and an adult who has no children
    • Operationalisation
      The process of specifically defining a variable before measuring it

      E.g. Aggressive behaviour - kicking, pushing, punching hitting

      The purpose is to be objective and to allow for replication
    • Extraneous variable

      Variables other than the IV that, unless controlled, could affect the DV

      - Can only be controlled in a lab setting
    • Situational variable

      - A type of EV

      Light, noise levels, temperature
    • Participant variables

      - A type of EV

      IQ, age
    • Order effects
      - A type of EV

      When participants begin to feel tired/ bored, affecting the validity of data
    • Demand characteristics
      - A type of EV

      When participants figure out the aims of the experiment, leading to invalid data
    • Investigator effect
      - A type of EV

      When the researcher consciously/unconsciously influences the participants' responses, leading to invalid data
    • Standardisation
      The process of ensuring all situational variables are the same for all participants
    • Counter-balancing
      The process of changing the order of tasks between groups to prevent order effects from taking place
    • Single blind technique
      When participants' don't know the true aim of the experiment
    • Double blind technique
      When neither the researcher or participants know the true aim of the experiment
    • Independent groups design

      When participants take part in one condition
    • Repeated measures design

      When participants take part in two or more conditions
    • Matched pairs design

      When participants take part in one condition but are also matched based on participant variables
    • Independent groups design: Strengths + Weaknesses
      + Order effects won't take place, improving the validity of data

      - Expensive - more participants needed
    • Repeated measures design: Strengths + Weaknesses
      + Cost-effective - less participants needed
    • Matched pairs design: Strengths + Weaknesses
      + Order effects will not take place

      - Matching people on certain characteristics is time consuming
    • Target population
      The group of individuals the researcher is interested in e.g. all UK teenagers
    • Sampling frame
      A list containing all the names of the target population
    • Sample
      A small group of people who represent the target population
    • Random Sampling

      Everyone in the target population has an equal chance of being chosen