Involves manipulating one variable to determine if these changes cause changes in another variable. This method relies on high levels of control to test a hypothesis
Research aim
An general statement about what the researcher intends to investigate; the purpose of the study
in psychology, independent variables can also change naturally
dependent - measured and should be caused by independent
operationalise
to be clearly defining your variables
operationalised:
number of words accurately recalled
reaction time in seconds
number of faces accurately recognised
not operationalised:
punishment given (define types of punishment)
intelligence level (iq level)
resources selected (define)
hypothesis
states what you believe is true. its precise and testable statement of the relationship between 2 variables. it's a statement not a question or prediction.directional or non-directional.
non directional hypothesis
states that there is a difference between two conditions or two groups of people in a precise and operationalised without stating what the difference will be
directional hypothesis
states the direction of predicted differences between two conditions or two groups of people in a precise and operationalised way.
this hypothesis can only be used when there has been previous research.
all experiments
experiments allow us to study cause and effect (causation). they all have an IV (independent variable) and a DV (dependent variable) and make some attempt to control all other potential extraneous variables (EVs)
there are 4 kinds of experiments:
lab
field
natural
quasi
experimental designs
experimental designs are only used for experimental methods - lab, field, natural, quasi
most simple experiments involve 2 conditions - these are 2 versions of the independent variable. eg, using words or pictures to learn a list of items
there are 3 different ways to carry out the experiment with participants. these are known as the experimental designs:
independent measures design
repeated measures design
matched pairs design
independent measures design
one group does condition A and a second group does condition B.
participants should be randomly allocated to experimental groups
independent measures design- evaluation
strengths:
no order effects. participants are only tested once so cant practice or become bored/tired. this controls an important CV
will not guess aim. participants are only tested once so are unlikely to guess the research aims. therefore behaviour may be more 'natural' (higher realism)
weaknesses:
participants variables. the participants in the two groups are different, acting as EV/CV. may reduce the validity of the study
less economical. need twice as many participants as repeated measures for same data. more time spent recruiting which is expensive
repeated measures design
same participants take part in all conditions of an experiment. the order of conditions should be counterbalanced to avoid order effects
matched pairs design
two groups of participants are used but they are also related to each other by being paired on participant variable(s) that matter for the experiment
sampling: population
a large group you are interested in studying. if it is quite a specific group of people eg, children with autism under 6 years, this is a target population
within the target population the researcher will take an even smaller group of people called the sample eg, 20 children under 6 with children
psychologists do this, hoping the sample will be representative of the target population so their results could be applied or generalised to them.
types of experiment
lab
field
natural
quasi
lab experiment
an experiment that takes place in a special environment whereby different variables can be carefully controlled
strengths:
high degree of control - experimenter controls all variables, the IV has been precisely replicated, leading to greater accuracy
replication - researcher can repeat experiment and check results
weakness:
experimenter's bias - this bias can affect results and participants may be influenced by these expectations
low ecological validity - high degree of control makes the situation artificial, unlike real life
natural experiment
occurs in participants natural setting that requires no manipulation by the researcher. researcher has little control over the conditions of experiment
strengths:
provides opportunities for research that would have otherwise been impossible due to practical/ethical reasons
high external validity - dealing with real life issues
limitations:
natural occurring events may be rare but this means experiments are not likely to be replicable hence hard to generalise findings
very difficult to randomise participants into groups so cofounding and extraneous variables become a problem
quasi experiment
an experiment whereby the IV has not been determined by the researcher instead it naturally exists eg, gender difference studies
strengths:
controlled conditions - replicable, likely to have high internal validity
limitations:
cannot randomly allocate participants to conditions so there may be cofounding variables presented. this makes it harder to conclude that the IV caused the DV
sampling techniques
target population
random sampling
opportunity sampling
stratified sampling
volunteer sampling
systematic sampling
target population
the entire population, or group, that a researcher is interested in researching and analysing.
strengths:
clear focus = well defined population help stay focused on research question
accurate representation = sample accuracy reflects population characteristics
if sample is representative and accurate then findings can be generalised to larger population
weaknesses:
bias sample = poor defined population lead to sample bias = groups under/overpresented = affects accuracy
finding not generalised to larger population
random sampling
every member of a population has the same chance of being selected for study.
strengths:
no researcher bias = researcher has no influence on who is picked - no bias / personal judgement
samples representative of population = findings are more generalisable
weaknesses:
time consuming = need list of members of population (sampling frame) and contacting them takes time
volunteer bias = participants can refuse to take part = end up with unrepresentative sample
opportunity sample
researcher selecting anyone who is available and willing to take part in the study.
strengths:
easy method of recruitment = saves time and less costly
allows access to participants who are ready and available to participate
weaknesses:
not representative of whole population = lacks generalisablilty
researcher bias = control who they want to select
stratified sampling
researchers divide subjects into subgroups called strata based on characteristics that they share
strengths:
no researcher bias = selection within each stratum is done randomly
produces representative data due to the proportional strata = increased generalisability
weaknesses:
time consuming = identify and contact each strata
identified strata cannot fully represent the target population due to inability to account for all differences among the wider population
volunteer sampling
an approach where participants willingly contribute their thoughts and experiences.
strengths:
quick access to willing participants = no time consuming
participants more likely to cooperate in the study
weaknesses:
bias = volunteers may not be representative to population = limits generalisability
money motivates more participants = not taking study seriously = influencing results
systematic sampling
a sampling technique that uses a predetermined system to select the participants from a target group.
strengths:
avoid researcher bias
fairly representative of population
weaknesses:
if population is not identical = may not produce representative sample = limits generalisability
if a pattern = biased sample
less random than random sampling = affect precision of estimates
what is a correlation?
this is a relationship between two variables. there is no IV or DV in these types of studies
correlation coefficients
this is a number, eg, +0.76 or -0.76
the maximum coefficient is 1.0 (1.0 = a perfect positive relationship and -1.0 is a perfect negative relationship
the coefficient tells us how closely related the variables are
strengths of correlations
shows the relationship between the two variables
as with experiments, procedures can be repeated which means findings can be confirmed and there is reliability
if the correlation is significant - further research can be done. if it is not significant then you can rule out a simple linear relationship
weaknesses of correlations
cannot remember cause and effect. it only shows a link between the variables
there may be a third variable
correlations can be misinterpreted. this can have wider implications if results are released to the public
ethics - developed by British Psychological Society
code of ethics
British Psychological Society (BPS)
1988 - after zimbardo and milgram
the BPS is the representative body for psychology and psychologists in the uk, and is responsible for the promotion of excellence and ethical practice
BPScode of ethics
psychologists in the uk are advised by BPS
USA = APS
the most recent code of ethics and conduct identifies 4 key principles:
respect
competence
responsibility
intergrity
ethical guidelines
Can Do Can't Do With Participants
Confidentiality (and privacy)
Deception
Consent (informed)
Debrief
Withdraw (right to)
Protection of participants
informed consent - researchers pov
means revealing the true aims of the study - or telling participants what will actually happen. however, revealing details might cause participants to guess the aims of the study. eg, is could change the way they behave. therefore, researcher may not always reveal the aims
informed consent - participants pov
should be told what they will be required to do so can make an informed decision about if they wish to participate. this is a basic human right, established during the Nuremberg war trials: in WW2, nazi doctors conducted various experiments on prisoners without their consent and the war trials afterwards decided that participants consent should be a right in every study
informed consent - participants pov (continued)
even if the researchers have consent, that doesnt guarantee participants understand what they have let themselves in. epstein and lasagna (1969) found that a third of participants really understood what they agreed to take part in.
another problem is the requirement for researcher to point any likely benefits or risks of participation. researchers are not always able to accurately predict risks or benefits of taking part
deception - researchers pov
can be necessary to deceive participants about true aims of the study so they dont alter their behaviour and prevent a meaningless study. however, a distinction should be make between withholding some of the details of aims (reasonably acceptable) and deliberately providing false information (less aceptable)