Hypotheses:
Null Hypothesis à H0: There is no difference among gasoline types.
Alternate Hypothesis à H1: There is a difference among gasoline types.
Significance Level = 0.05
Critical Value of F (df=3,6 & α=0.05) = 4.76
The F ratio computed using Anova is 2.41.
Since the F statistic is lesser than the critical value, the null hypothesis is accepted. Hence it can be concluded that there is no difference among the gasoline types.
Hypotheses:
Null Hypothesis à H0: There is no difference among the cars.
Alternate Hypothesis à H1: There is a difference among the cars.
Significance Level = 0.05
Critical Value of F (df=2,6 & α=0.05) = 5.14
The F ratio computed using Anova is 1.39.
Since the F statistic is lesser than the critical value, the null hypothesis is accepted. Hence it can be concluded that there is no difference among the cars.
Hypotheses:
Null Hypothesis à H0: There is no positive association between the two variables.
Alternate Hypothesis à H1: There is a positive association between the two variables.
Significance Level = 0.05
n = 25
r = 0.94
Critical Value (df=23 & α=0.05) = 2.069
Test Statistic:
Since the t statistic is greater than the critical value, the null hypothesis is rejected. Hence it can be concluded that there is a positive association between the two variables.
Use a statistical software package to answer the following questions.
From the scatter plot, it is evident that the breakfast revenue increases with the increase in the number of occupied rooms.
Pearson’s Coefficient of Correlation R for the given data is computed as 0.437.
This indicates a weak positive correlation between the breakfast revenue and the number of occupied rooms.
Hypotheses:
Null Hypothesis à H0: r = 0There is no positive association between the two variables.
Alternate Hypothesis à H1: r ≠ 0There is a positive association between the two variables.
Significance Level = 0.10
Correlation Coefficient R = 0.437
Critical Value (df=23 & α=0.10) = +1.714
Test Statistic:
As the t-statistic is outside the range of the critical value, the null hypothesis is dropped. Hence it can be concluded that there is a positive association between the two variables.
Coefficient of Determination R2 = (0.437)^2
= 0.1910
Hence 19.10% of the movement of the revenue from breakfast can be explained by the number of rooms occupied.
Y=total sales last year (in $ thousands).
X^1=number of competitors in the region.
X^2=population of the region (in millions).
X^3=advertising expense (in $ thousands).
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