The goal of sampling is simple:
Samples and their populations
collect a sample that represents the population
2 main types of sample:
Samples and their populations
Pros of random sampling:
Samples and their populations
Cons of random sampling:
Samples and their populations
Convenience sampling - easier to grab samples from a more local portion of the population, but this comes with a significant downside:
Samples and their populations
Affects generalizability: refers to researcher’s ability to apply findings from one sample or in one context to other samples or contexts; AKA external validity
While external validity is affected, how can we improve the internal validity of convenience sampling?
Samples and their populations
Replication: the duplication of scientific results, ideally in a different context or with a sample that has different characteristics (sometimes called reproducibility); AKA just doing the study again and again
When must we be even more cautious than using convenience samples?
Using self-selected/volunteer samples
Why are volunteer samples becoming more popular?
Mturk - what is it and its downsides?
Random assignment = a distinctive signature of a scientific study; WHY?
It evens the levels of the playing field when every participant has an equal chance of being assigned to any level of the IV
Why is probability central to inferential stats?
Because our conclusions about a population are based on data collected from a sample rather than on anecdotes and testimonials
Two personal biases get intertwined in our day to day thinking:
When we discuss probability in everyday conversation, we tend to think of what statisticians call…
Statisticians are concerned with a different type of probability
Probability: the likelihood that a particular outcome - out of all possible outcomes - will occur
In stats, we’re interested in a more specific definition of probability…
Expected relative-frequency probability: the likelihood of an event occurring, based on the actual outcome of many, many tries
In reference to probability - trial, outcome, success
Probability, proportion, percentage
One of the central characteristics of expected relative-frequency probability
IT ONLY WORKS IN THE LONG RUN (REFERRED TO AS THE “LAW OF LARGE NUMBERS”)
To avoid bias, statistical probability requires that…
Independence and probability
…the individual trials be independent - as in that the outcome of each trial must not depend/rely in any way on the outcome of previous trials
3 steps to developing hypothesis:
When we calculate inferential stats, we’re actually comparing two hypotheses:
Null hypothesis
Research Hypothesis
How to we compare the null vs. research hypothesis to determine probability?