Title: DIRECTIONAL HYPOTHESIS
1DIRECTIONAL HYPOTHESIS
- The 1-tailed test
- Instead of dividing alpha by 2, you are looking
for unlikely outcomes on only 1 side of the
distribution - No critical area on 1 sidethe side depends upon
the direction of the hypothesis - In this case, anything greater than the critical
region is considered non-significant
-1.96 -1.65
0
2Non-Directional Directional Hypotheses
- Nondirectional
- Ho there is no effect
- (X µ)
- H1 there IS an effect
- (X ? µ)
- APPLY 2-TAILED TEST
- 2.5 chance of error in each tail
- Directional
- H1 sample mean is larger than population mean
- (X gt µ)
- Ho x µ
- APPLY 1-TAILED TEST
- 5 chance of error in one tail
-1.96 1.96
1.65
3Why we typically use 2-tailed tests
- Often times, theory or logic does allow us to
prediction direction why not use 1-tailed
tests? - Those with low self-control should be more likely
to engage in crime. - Rehabilitation programs should reduce likelihood
of future arrest. - What happens if we find the reverse?
- Theory is incorrect, or program has the
unintended consequence of making matters worse.
4STUDENTS t DISTRIBUTION
- We cant use Z distribution with smaller samples
(Nlt100) because of large standard errors - Instead, we use the t distribution
- Approximately normal beginning when sample size gt
30 - Probabilities under the t distribution are
different than from the Z distribution for small
samples - They become more like Z as sample size (N)
increases
5THE 1-SAMPLE CASE
- 2 Applications
- Single sample means (large Ns) (Z statistic)
- May substitute sample s for population standard
deviation, but then subtract 1 from n - s/vN-1 on bottom of z formula
- Smaller N distribution (t statistic), population
SD unknown
6STUDENTS t DISTRIBUTION
- Find the t (critical) values in App. B of Healey
- degrees of freedom
- of values in a distribution that are free to
vary - Here, df N-1
- When finding t(critical) always use lower df
associated with your N - Practice
- ALPHA TEST N t(Critical)
- .05 2-tailed 57
- .0 1 1-tailed 25
- .10 2-tailed 32
- .05 1-tailed 15
7Example Single sample means, smaller N and/or
unknown pop. S.D.
- A random sample of 26 sociology grads scored an
average of 458 on the GRE sociology test, with a
standard deviation of 20. Is this significantly
higher than the national average (µ 440)? - The same students studied an average of 19 hours
a week (s6.5). Is this significantly different
from the overall average (µ 15.5)? - USE ALPHA .05 for both
81-Sample Hypothesis Testing (Review of what has
been covered so far)
- If the null hypothesis is correct, the estimated
sample statistic (i.e., sample mean) is going to
be close to the population mean - 2. When we set the criteria for a decision, we
are deciding how far the sample statistic has to
fall from the population mean for us to decide to
reject H0 - Deciding on probability of getting a given sample
statistic if H0 is true - 3 common probabilities (alpha levels) used are
.10, .05 .01 - These correspond to Z score critical values of
1.65, 1.96 258
91-Sample Hypothesis Testing (Review of what has
been covered so far)
- 3. If test statistic we calculate is beyond the
critical value (in the critical region) then we
reject H0 - Probability of getting test stat (if null is
true) is small enough for us to reject the null - In other words There is a statistically
significant difference between population
sample means. - 4. If test statistic we calculate does not fall
in critical region, we fail to reject the H0 - There is NOT a statistically significant
difference
102-Sample Hypothesis Testing (intro)
- Apply when
- You have a hypothesis that the means (or
proportions) of a variable differ between 2
populations - Components
- 2 representative samples Dont get confused
here (usually both come from same sample) - One interval/ratio dependent variable
- Examples
- Do male and female differ in their aggression (
aggressive acts in past week)? - Is there a difference between MN WI in the
proportion who eat cheese every day? - Null Hypothesis (Ho)
- The 2 pops. are not different in terms of the
dependent variable
112-SAMPLE HYPOTHESIS TESTING
- Assumptions
- Random (probability) sampling
- Groups are independent
- Homogeneity of variance
- the amount of variability in the D.V. is about
equal in each of the 2 groups - The sampling distribution of the difference
between means is normal in shape
122-SAMPLE HYPOTHESIS TESTING
- We rarely know population S.D.s
- Therefore, for 2-sample t-testing, we must use 2
sample S.D.s, corrected for bias - Pooled Estimate
- Focus on the t statistic
- t (obtained) (X X)
- s x-x
- were finding the
- difference between the two means
- and standardizing this difference with the
pooled estimate -
132-SAMPLE HYPOTHESIS TESTING
2-Sample Sampling Distribution difference
between sample means (closer sample means will
have differences closer to 0)
- t-test for the difference between 2 sample means
- Addresses the question of whether the observed
difference between the sample means reflects a
real difference in the population means or is due
to sampling error
-2.042 0 2.042
ASSUMING THE NULL!
14Applying the 2-Sample t Formula
- Example
- Research Hypothesis (H1)
- Soc. majors at UMD drink more beers per month
than non-soc. majors - Random sample of 205 students
- Soc majors N 100, mean16, s1.0
- Non soc. majors N 105, mean15, s0.9
- Alpha .01
- FORMULA
- t(obtained) X1 X2
- pooled estimate
-
15Answers
- Null hypothesis
- There is no difference in mean number of fights
between inmates with tattoos and inmates without
tattoos. - Use a 1 or 2-tailed test?
- One-tailed test because the theory predicts that
inmates with tattoos will get into MORE fights.
16Answers
- Calculations
- Obtained value
- Reject the null?
- Yes because the t(obtained) (19.09) is greater
than the t(critical, one-tail, df398) (1.658) - This t value indicates there are 19.09 standard
error units that separate the two mean values - VERY unlikely we got this big a difference due to
sampling error - Research hypothesis restated as non-directional
- There is a difference in the mean number of
fights reported by inmates with tattoos and
inmates without tattoos. - Would you come to a different conclusion if you
used a 2-tailed test? - No, because 19.09 is still well beyond the
2-tailed critical value (1.980).
172-Sample Hypothesis Testing in SPSS
- Independent Samples t Test Output
- Testing the Ho that there is no difference in
number of adult arrests between a sample of
individuals who were abused/neglected as children
and a matched control group.
18Interpreting SPSS Output
- Difference in mean of adult arrests between
those who were abused as children control group
19Interpreting SPSS Output
- t statistic, with degrees of freedom
20Interpreting SPSS Output
- Sig. (2 tailed)
- gives the actual probability of making a Type I
(alpha) error - a.k.a. the p value p probability
21Sig. Probability
- Number under Sig. column is the exact
probability of obtaining that t-value (finding
that mean difference) if the null is true - When probability gt alpha, we do NOT reject H0
- When probability lt alpha, we DO reject H0
- As the test statistics (here, t) increase, they
indicate larger differences between our obtained
finding and what is expected under null - Therefore, as the test statistic increases, the
probability associated with it decreases
22Example 2 Education Ageat which First Child
is Born
H0 There is no relationship between whether an
individual has a college degree and his or her
age when their first child is born.
23Education Age at which First Child is Born
- What is the mean difference in age?
- What is the probability that this t statistic is
due to sampling error? - Do we reject H0 at the alpha .05 level?
- Do we reject H0 at the alpha .01 level?