Introduction- Lesson 1
§ Introduction §
Hypothesis testing is the second method of statistical inference. Confidence interval calculation was the first. When using confidence intervals, there is an attempt to quantify the value of the unknown population parameter (m in our case) over a range of possible values based on a point estimate (xbar). Hypothesis testing is designed to estimate the probability of the sample result (xbar) occurring by chance, if the hypothesized value of the population parameter (the null hypothesis, Ho) is in fact correct. If the statistical distance between xbar and m is large, we will reject the Ho. The alternative hypothesis, (Ha) which is the opposite of the Ho is then supported. If the statistical distance between xbar and m is small, we will support the Ho.
§ Hypothesis § Null Hypothesis § Alternative Hypothesis §
§ Mistakes § Correct Decisions § Decision Table §
§ Five-Step Procedure § Confidence Intervals §
§ One-Tailed Test § p-Values §
1. Hypothesis-
An hypothesis is a claim, speculation, well educated guess, or testable hypothesis. When a testable hypothesis is evaluated with data, one can not prove that it is correct (or true). The researcher can find evidence to reject the hypothesis or to support (not prove) the hypothesis. One can "rule out" (reject) a hypothesis, but one can not prove that it is correct. (click me)
An hypothesis test is like a blood test to establish paternity, it can rule
out but it can not rule in. True
False
(click one)
2. Null Hypothesis ( Ho )-
A statement concerning a population parameter, or other non-mathematical statement. The researcher wishes to reject Ho. (click me)
The null hypothesis is assumed to be true unless shown to be otherwise. True
False
(click one)
3. Alternative Hypothesis ( Ha )-
The opposite of the null hypothesis. The hypothesis is supported if the null hypothesis is rejected. The researcher wishes to support Ha (also called the research hypothesis). (click me)
The alternative hypothesis has the same mathematical sign as null hypothesis.
True
False
(click one)
4. Mistakes: Type I and Type II Errors- since the total population is not used, there is always a chance that we have drawn the wrong conclusion based on the sample.
(A) a = the probability of rejecting Ho when Ho is true = Type I Error (click me)
(B) b = the probability of Failing To Reject ( support ) Ho when Ho is false = Type II Error (click me)
The Type I error = a
can be reduced to zero. True
False
(click one)
5. Correct Decisions
(A) Reject Ho when Ho is false; correct decision
(B) FTR ( support ) Ho when Ho is true; correct decision (FTR = Fail To Reject) (click me)
The researcher wishes to do which of the above? A
B
(click one)
6. Decision Table
|
Statistical |
Decision |
Actual Situation |
Reject Ho |
FTR(support) Ho |
Ho True |
Type I Error (a) |
correct |
Ho False |
correct |
Type II Error (b) |
The actual situation is always know. True
False
(click one)
7. The Five-Step Procedure for Hypothesis Testing- For a two-tail test
(A) Set up the Null Hypothesis, Ho, and Alternative Hypothesis, Ha.
Ho: µ = µo
Ha: µ ¹ µo (click me)
[1] The number to the right of the equal sign is always the claimed parameter value (never xbar ). This is true for both Ho and Ha. (click me)
[2] The signs used in Ho and Ha are always the mathematical opposites of each other. Some form of an "equal sign" ( = ) is always associated with the Ho (never Ha). (click me)
[3] Question: Is our statistic, xbar "close enough" to the claimed parameter value, µo, to FTR (support) Ho?
[a] We do not expect our estimate, xbar, to be exactly equal to the claimed parameter value, µ o. (click me)
[b] Is xbar "statistically close enough" to m o to believe the Ho? Use the standard error, sxbar or s xbar, and Z or t score to measure the statistical distance between them.
The sample mean, xbar, is placed in the middle of the distribution to start
a hypothesis test. True
False
(click
one)
(B) Define the test statistic. Use Z or t?
[1] Source of Standard Deviation- population or sample?
[2] Degrees of Freedom (n - 1)- Large or Small? (click me)
|
Population s |
Sample s |
|
Sample Size |
Small df £ 30 |
Z |
t |
Sample Size |
Large df > 30 |
Z |
Z or t |
[3] Use z or t to calculate the size of the difference between xbar and µ o.
The decision matrix presented here is the same as that used with confidence
intervals. True
False
(click one)
(C) Define a region(s) of rejection based on a.
[2] Use a = 0.05 when in doubt. (click me)
[3] For a two - tail test, each tail will have a / 2 in it.
[a] a/2 = 0.025
[b] 0.5 - a/2 = 0.5 - 0.025 = 0.4750 (look up in Z table)
[4] table value of test statistic ± Z0.025 = ± 1.96 ( critical value) (click me)
[a] The table value is always associated with a (never with xbar), is found in a Z (or t ) table with subscript a or a/2, and defines the region(s) of rejection.
The alpha used with confidence intervals and the alpha use in hypothesis test
are different alphas. True
False
(click one)
(D) Calculate the value of the test statistic and carry out the test
[1] The calculated (or computed ) value of the test statistic is always associated with xbar (never a), has a "star" next to it ( Z* or t*), and is calculated by you (not found in a table).
[2] Z* = [xbar - mo ] / [s /Ö n] or
t* = [xbar - mo ] / [s /Ö n] (click me)
[3] and carry out the test:
Large-Sample Two-Tailed Tests on the Population Mean
Ho: µ = µo
Ha: µ ¹ µo
Reject Ho if |Z*| > Z a /2
FTR (support) Ho if |Z*| £ Z a /2
Taking the absolue value of the computed value of the test statistic (Z*
or t*) forces two-tail tests into the left end of the distribution. True
False
(click one)
(E) Give a conclusion in terms of the original problem or question. (click me)
8. Confidence Intervals and Hypothesis Testing
(A) A confidence interval can be used to do hypothesis testing for two -tailed tests (only). (click me)
(B) a is split into two parts (a / 2) for both CIs and two-tailed hypothesis test.
(C) Rules:
(1) If the claimed µo lies within the CI, then (FTR) support H o.
(2) If the claimed µ o lies outside the CI, then reject H o
The use of confidence intervals to do hypothesis tests applies to one-tail test
in addition to two-tail test. True
False
(click one)
9. One-Tailed Test for the Mean of a Population (both Z and t)
(A) The major difference of two-tailed and one-tailed hypothesis tests is:
(1) two-tailed, split to give a / 2 in each tail.
(2) one-tailed, do not split. Put entire a into left tail or right tail.
(a) Put in the left tail when Ha has an "less than" sign (<) (click me)
(b) Put in the right tail when Ha has an "greater than" sign (>) (click me)
(B) Rules:
Large-Sample One-Tailed (left) Tests on the Population Mean
Ho: µ ³ µo
Ha: µ < µ o
Reject H o if Z* < - Za
FTR(Support) H o if Z* ³ - Za
Large-Sample One-Tailed (right) Tests on the Population Mean
Ho: µ £ µo
Ha: µ > µ o
Reject H o if Z* > Za
FTR(Support) H o if Z* £ Za
On which end of the distribution would xbar fall in order to find extreme statistical
evidence against a Ho:
µ ³
µo? Right
Left
(click one)
10. Reporting Testing Results Using a p-Values
(A) The p-value is the probability associated with the calculated ( computed ) Z* (or t*).
(1) It is the area in the tail of the distribution beyond Z* or t*.
(2) Procedure for Finding the p-value:
(a) For Ha: m ¹ m o, p-value = ( 2 )(area outside Z* or t*) (click me)
(b) For Ha: m > m o, p-value = area to right of Z* or t* (click me)
(c) For Ha: m < m o, p-value = area to left of Z* or t* (click me)
(3) The p-value is the value of a at which the hypothesis test procedure changes conclusions based on a given set of data. (click me)
(4) It is the largest value of a for which you will FTR ( support ) Ho. (click me)
A p-value is a probability found under the curve of a distribution just like
any other probability. True
False
(click one)
(B) Rules when a is given:
(1) Reject H o if p-value < a
(2) FTR ( support ) H o if p-value ³ a
P-values and alphas are both probabilities. True
False
(click one)
(C) If a is not known, use the General Rules of Thumb:
(1) Reject Ho if p-value is small (p-value < 0.01) (click me)
(a) Most levels of significance (a) chosen are > 0.01; therefore, when p-value < 0.01, reject Ho, since p-value would be < a.
(2) FTR ( support ) Ho if p-value is large (p-value > 0.10) (click me)
(a) Most levels of significance (a) chosen are £ 0.10; therefore, when p-value > 0.10, FTR( support ) Ho, since p-value would be > a.
(3) Test inconclusive if: (0.01 £ p-value £ 0.10 )
(a) Most levels of significance (a) chosen are between 0.01 and 0.10; therefore, the test is inconclusive, since the p-value could be on either side of a. (click me)
A small p-value indicates that the computed value of the test statistic (Z*
or t*) would most likely not fall in the tail created by the table (critical)
value of the test statistic (if provided). True
False
(click one)
(D) Finding p-value using t (click me)
(1) go to t table
(2) find df row in problem: df = n - 1
(3) locate the value of t* on that row
(4) Note: probabilities are given by the subscript in t a at top of columns
A p-value calculated using a t table many times results in a range of values
instead of a single value. True
False
(click one)
Go on to Hypothesis
Test: Examples
or
Go back to Hypothesis
Testing: Activities and Assignments
Please reference "BA501 (your last name) Assignment name and number" in the subject line of either below.
E-mail Dr. James V. Pinto at
BA501@mail.cba.nau.edu
or call (928) 523-7356. Use WebMail for attachments.
Copyright 2002 Northern Arizona University
ALL RIGHTS RESERVED