Estimating with Uncertainty Flashcards
1
Q
estimation (2)
A
- process of inferring a population parameter from sample data
- value of estimate is almost never exactly true due to chance
2
Q
sampling distribution (2)
A
- probability distribution of all the values for an estimate that we might have obtained when we sampled a population
- increasing sample size reduces the spread/variance of sampling distribution of an estimate, increasing precision
3
Q
standard error (2)
A
- of an estimate, is the SD of the estimate’s sampling distribution
- reflects the precision of an estimate: estimates with smaller SE are more precise and there is less uncertainty about the target parameter in the pop.
4
Q
confidence interval
A
- range of values surrounding the sample estimate that is likely to contain the population parameter
5
Q
95% confidence interval
A
- provides the most plausible range for the parameter
- values lying within the interval are most plausible and those outside are unlikely based on the data
6
Q
what is the 2SE “quick approximation” of the 95% CI
A
Y bar - 2SE to Y bar + 2SE
7
Q
how to correctly talk about confidence intervals
A
- we are 95% confident that the population mean lies within the 95% confidence interval
8
Q
error bars
A
- lines on a graph extending outward from the sample estimate to illustrate uncertainty about the value of the parameter being estimated
9
Q
error bars
A
- lines on a graph extending outward from the sample estimate to illustrate uncertainty about the value of the parameter being estimated
10
Q
pseudoreplication
A
- error that occurs when individual measurements are not independent, but are treated as if they are