Answer:
Explanation:
Given that:
The null hypothesis:
![H_0: p = 0.50](https://img.qammunity.org/2021/formulas/mathematics/college/cvbitu3c08eu2s1n7cgt3v1kzf54rb5q0d.png)
The alternative hypothesis:
![H_a : p> 0.50](https://img.qammunity.org/2021/formulas/mathematics/college/xb40u9kxekep0xkhf5yi33qdwjz6lkn0o6.png)
Suppose the number of samples n from the population is 16
The observed value x of the test statistics for testing the hypothesis for this study is x = 14
However, if the null hypothesis is true, then the distribution of the test statistics follows a binomial distribution which is expressed as:
bin(n=16, p = 0.5) distribution
The p-value for this test statistics can be computed as:
p-value = P(X ≥ 14)
p-value = 1 - P (X ≤ 13)
p-value =
![1- \sum _(x=0^(x-1)) (n^C \ _x)p^x(q)^((n-x))](https://img.qammunity.org/2021/formulas/mathematics/college/fv9tnf3mcn09bfctn6cv3aqk5squ3bijun.png)
p-value =
![1- \sum _(x=0^(x-1)) (n!)/(r!(n-r)! ) p^x(q)^((n-x))](https://img.qammunity.org/2021/formulas/mathematics/college/j5lgr6suk5k0vmyf7ngb51i3plgatbhw3w.png)
p-value = 0.00209