Uncertainty, standard errors and confidence intervals Flashcards
How could you infer what the population distribution could look like from a sample?
1. Collect a ____ sample
2. Measure the ____ in our sample on some ____
3. Calculate the ____ and ____ of the ____ and use to ____ what the population ____ could look like
- random
- individuals, variable
- mean, SD, sample, infer, distribution
What are two tools we use to quantify uncertainty around how close the sample mean is to the true population value?
Standard errors and confidence intervals
What is meant by an estimate?
Can be different things in different contexts
e.g difference in group means, measure of association
What three things can we describe every normal distribution using?
- Mean (central value)
- Standard Deviation (average difference from the mean)
- Proportions of scores at cut-off points (~68% scores within 1 SD of mean, 95% of scores within ± 1.96 CDs of mean)
What is the difference between standard deviation and standard error?
SD = the ____ difference between each ____ and the ____ mean
SE = the average ____ between each ____ mean and the ____ value
SD = average, score, sample
SE = difference, sample,
population
How do you calculate standard error?
Standard error = sample ____ ____ / √ the ____ ____
Standard error = sample standard deviation / √ the sample size
The t-distribution is defined by ____ of ____ - calculated as ________
Degrees of freedom - calculated as N-1
How do we interpret confidence levels?
____ that our sample is one of the ____ producing confidence intervals that contain the ____ value, then the ____ value for the ____ of interest falls somewhere between the ____ limit and the ____ limit of the ____ we’ve computed for our ____
ASSUMING
95%
population
population
estimate
lower
upper
interval
sample