Respuesta :
Answer:
(1) Null Hypothesis, [tex]H_0[/tex] : [tex]\mu_1 = \mu_2[/tex]
Alternate Hypothesis, [tex]H_1[/tex] : [tex]\mu_1\neq \mu_2[/tex]
(2) Test statistics = -1.48
(3) At the 0.05 significance level, Fair field conclude that the population means are same.
Step-by-step explanation:
Let [tex]\mu_1[/tex] = mean annual family income for 12 people making inquiries at the first development
[tex]\mu_2[/tex] = mean annual family income for 24 people making inquiries at the second development
[tex]s_1[/tex] = standard deviation of annual family income for 12 people making inquiries at the first development
[tex]s_2[/tex] = standard deviation of annual family income for 24 people making inquiries at the second development
[tex]n_1[/tex] = sample of people of first development i.e. 12
[tex]n_2[/tex] = sample of people of second development i.e. 24
(1) Null Hypothesis, [tex]H_0[/tex] : [tex]\mu_1 = \mu_2[/tex] {population means are same}
Alternate Hypothesis, [tex]H_1[/tex] : [tex]\mu_1\neq \mu_2[/tex] {population means are different}
DECISION RULE ;
- If the test statistics is less than the critical value of t from table at 5% significance level, then we will accept null hypothesis, [tex]H_0[/tex] .
- If the test statistics is more than the critical value of t from table at 5% significance level, then we will reject null hypothesis, [tex]H_0[/tex] .
(2) The test statistics is given by;
[tex]\frac{(X_1bar -X_2bar) - (\mu_1-\mu_2)}{s_p\sqrt{\frac{1}{n_1}+\frac{1}{n_2} } }[/tex] ~ [tex]t_n__1+n_2-2[/tex]
where, [tex]X_1bar[/tex] = Sample mean income of people at first development
= $153,000
[tex]X_2bar[/tex] = Sample mean income of people at second development = $171,000
[tex]s_1[/tex] = $42,000 and [tex]s_2[/tex] = $30,000
[tex]s_p= \sqrt{\frac{(n_1-1)s_1^{2}+(n_2-1)s_2^{2} }{n_1+n_2-2}}[/tex] = [tex]\sqrt{\frac{(12-1)42000^{2}+(24-1)30000^{2} }{12+24-2}}[/tex] = 34344.30
Test statistics = [tex]\frac{(153000 -171000) - 0}{34344.30\sqrt{\frac{1}{12}+\frac{1}{24} } }[/tex] ~ [tex]t_3_4[/tex]
= -1.48
(3) At 5% level of significance, t table gives critical value of 2.032 at 34 degree of freedom.Since our test statistics is less than the critical value of t so considering our decision rule, we will accept null hypothesis.
And conclude that population means are same.