DIRECTIONAL HYPOTHESIS - PowerPoint PPT Presentation

About This Presentation
Title:

DIRECTIONAL HYPOTHESIS

Description:

DIRECTIONAL HYPOTHESIS The 1-tailed test: Instead of dividing alpha by 2, you are looking for unlikely outcomes on only 1 side of the distribution – PowerPoint PPT presentation

Number of Views:63
Avg rating:3.0/5.0
Slides: 24
Provided by: dUmnEduj4
Learn more at: https://www.d.umn.edu
Category:

less

Transcript and Presenter's Notes

Title: DIRECTIONAL HYPOTHESIS


1
DIRECTIONAL 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
2
Non-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
3
Why 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.

4
STUDENTS 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

5
THE 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

6
STUDENTS 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

7
Example 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

8
1-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

9
1-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

10
2-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

11
2-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

12
2-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

13
2-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!
14
Applying 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

15
Answers
  • 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.

16
Answers
  • 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).

17
2-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.

18
Interpreting SPSS Output
  • Difference in mean of adult arrests between
    those who were abused as children control group

19
Interpreting SPSS Output
  • t statistic, with degrees of freedom

20
Interpreting SPSS Output
  • Sig. (2 tailed)
  • gives the actual probability of making a Type I
    (alpha) error
  • a.k.a. the p value p probability

21
Sig. 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

22
Example 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.
23
Education Age at which First Child is Born
  1. What is the mean difference in age?
  2. What is the probability that this t statistic is
    due to sampling error?
  3. Do we reject H0 at the alpha .05 level?
  4. Do we reject H0 at the alpha .01 level?
Write a Comment
User Comments (0)
About PowerShow.com