Answer:
There is not enough statistical evidence to state that the mean score on one-tailed hypothesis test questions is higher than the mean score on two-tailed hypothesis test questions.
Explanation:
To solve this problem, we run a hypothesis test about the difference of population means.
![$$Sample mean $\bar X: \bar X=7.79$\\Sample mean $\bar Y: \bar Y=7.64$\\Population variance $S^2_X: S^2_X=1.06^2$\\Population variance $S^2_Y: S^2_Y=1.31^2$\\Sample size $n_X=80$\\Sample size $n_Y=80$\\Significance level $\alpha=0.05$\\Z criticals values (for a 0.05 significance)\\(Left tail test) Z_(1-\alpha)=Z_(0.95)=-1.64485\\($Right tail test) Z_(\alpha)=Z_(0.05)=1.64485\\($Two-tailed test) $Z_(1-\alpha/2)=Z_(0.975)=-1.95996$ and $ Z_(\alpha/2)=Z_(0.025)=1.95996\\\\](https://img.qammunity.org/2020/formulas/mathematics/college/lyyqi607fq0cb7epnyr9z7bh1cioy46a1m.png)
The appropriate hypothesis system for this situation is:
![H_0:\mu_X-\mu_Y=0\\H_a:\mu_X-\mu_Y > 0\\\\$Difference of means in the null hypothesis is:\\\mu_X-\mu_Y=M_0=0\\\\$The test statistic is $Z=\frac{[( \bar X-\bar Y)-M_0]}{\sqrt{(\sigma^2_X)/(n_X)+(\sigma^2_Y)/(n_Y)}}\\](https://img.qammunity.org/2020/formulas/mathematics/college/ivofqodqop4ingi2pthdwe24329m0fef25.png)
![$$The calculated statistic is Z_c=\frac{[(7.79-7.64)-0]}{\sqrt{(1.06^2)/(80)+(1.31^2)/(80)}}=0.79616\\\\p-value = P(Z \geq Z_c)=0.42594\\\\](https://img.qammunity.org/2020/formulas/mathematics/college/q12vfyvqcyj99lty0nu4rzlms9jmvvep0i.png)
Since, the calculated statistic
is less than critical
, the null hypothesis do not should be rejected. There is not enough statistical evidence to state that the mean score on one-tailed hypothesis test questions is higher than the mean score on two-tailed hypothesis test questions.