Hypothesis Testing Flashcards
1
Q
what does hypothesis testing ask? (3)
A
- how unusual it is to get our data is the null hypothesis is true
- is the data is unlikely under the null hypothesis, then we reject the null
- assumes sampling is random
2
Q
what are hypothesis about?
A
- populations, but are tested with data from samples
3
Q
null hypothesis (4)
A
- symbol: Ho
- specific statement about a population parameter made for the purposes of argument
- usually the simplest statement and is specific
- never “accept the null hypothesis”
4
Q
alternate hypothesis (3))
A
- represents all possible parameter values other than the one in the null hypothesis
- usually the statement of greatest interest and is not specific
- never reject this hypothesis even if it is not statistically significant
5
Q
test statistic
A
- number calculated to represent the match between a set of data and the null hypothesis
- can be compared to general distribution to infer probability
6
Q
P-value
A
- probability of getting the data, or something as or more unusual, if the null hypothesis were true
7
Q
null distribution for a test statistic (2)
A
- probability distribution of alternative outcomes when a random sample is taken from a hypothetical population in which the null hypothesis is true
- a value at the middle would be expected, but a value on the edges would be unlikely/unexpected
8
Q
significance level
A
- symbol (alpha)
- probability used as a criterion for rejecting the null hypothesis: if the P-value is less than or equal to alpha, then the null hypothesis is rejected
- often set as 0.05
9
Q
type I error (3)
A
- rejecting a true null hypothesis
- if the null hypothesis is true, the probability of Type I error is alpha (the significance level)
- does NOT depend on sample size because test takes size into account
10
Q
type II error (4)
A
- not rejecting a false null hypothesis (accepting a false null hypothesis)
- if the null hypothesis is false, probability of a type II error is beta
- the smaller the beta (how false the null hypothesis is), the more power a test has
- beta is lower with larger sample size
11
Q
power
A
- ability of a test to reject a false null hypothesis
- power = 1 - beta
12
Q
advantage of larger samples
A
- tend to give an estimate with a smaller confidence interval
- give more power to reject a false null hypothesis
13
Q
critical value
A
- value of a test statistic beyond where the null hypothesis can be rejected
14
Q
“statistically significant”
A
- P < beta
- we can “reject the null hypothesis”
15
Q
“two-tailed tests” (2)
A
- deviation in either direction would reject the null hypothesis
- alpha is divided into alpha/2 on one side and alpha/2 on the other