WEEK 4 - L8.2 sampling Flashcards
elements/ sampling units types
- finite vs. infinite
- known vs. unknown
sampling frame
a list of all eligible members of the target population from which the sample will be selected
sample unit
those who are selected for the sample
sampling biases
- research bias
- response bias (participant artifact)
- self selection bias
- non response
self selection bias
those who are interested join
random selection
every unit in the pop has an equal probabilty of being chosen
probability sampling ex.
simple random sampling
- sampling w or w out replacement
- w conforms to srs standards ( if you dont replace they have a higher chance of being chosen)
systemic random sample
picking the 10th person every time for example
still same probabilty of being selected
for example if you say always 5th house, but the houses in the right are always more expensive this leads to bias
stratified random sampling
SRS within known subgorups
(specific ethnicities)
unless, there’s correction with reweignthing, it may be disproportionate
multistage cluster sampling
first divides the population into equivalent and internally heterogenous groups, and than starts sampling at the group level before sampling the final units of interest
- sampling in stages (first larger than smaller units)
- you only need info for the communities you select first
3 types of probability sampling
- simple random sampling + systematic random sample
- stratified random sampling
- multistage cluster sampling
non probability sampling 4
- convenience smapling: easily available ppl (students)
- purposive: researcher decides
e.g quota sampling (half of sample male/female) - snowball (chain/ referral/ network) sampling: known participants are asked to identify others
- theoretical sampling: during data collection and analysis (used in grounded theory)
low external validity
response rate types (4)
- contact rate (% of selected individuals contacted)
- cooperation rate (% of individuals participating)
- surveyed raate (% of respondents surveyed too often)
- response rate (completed interviews/ eligible sample)
types of weighting 2
- based on information available priori (correction for over and under sampling of known subgroups)
- post ad hoc corrections: reweighting of realized sample (e.g due to nonresponse) to correspond to known proportions- but no fix for sampling bias
when should weighting be used?
for inferences on the whole population - it’s highly reccomended
for testing patterns that support causal relationships - it’s optional