Q:

A student believes that no more than 20% (i.e., (less than or equal to) 20%) of the students who finish a statistics course get an A. A random sample of 100 students was taken. Twenty-four percent of the students in the sample received A's.a. State the null and alternative hypotheses.b. Using the critical value approach, test the hypotheses at the 1% level of significance.c. Using the p-value approach, test the hypotheses at the 1% level of significance.Below are the answers. I need help on how these are found with any and all proofs/formulas please!!a. H0: P (less than or equal to) 0.2Ha: P > 0.2b. Do not reject H0; test statistic Z = 1 < 2.33c. Do not reject H0; p-value = 0.1587 > 0.01

Accepted Solution

A:
Answer:Step-by-step explanation:Hello!Your study variable isX: Number of students that finished tha statistics course with an a, in a sample of 100 students.This variable has a binomial distribution X~Bi(n;ρ)The student believes that no more than 20% of the students pass the course with an A. This percentage is the population proportion symbolically: ρ ≤ 0.20, and is your null hypothesis., so:a.H₀: ρ ≤ 0.20H₁: ρ > 0.20α: 0,01The statistic to use is the Z approximation for the proportions. To assemble this statistic, the central limit theorem is applied, this theorem allows us, at a sufficiently large sample size (n≥30), to approximate the distribution of the sample proportion (^p) to normal:^p ≈ N(p; p(1-p)(1/n))The statistic formula is:Z=     ^p - p     ≈ N(0;1)    √p(1-p)(1/n)the sample proportion is ^p= 0.24b.Z=     0.24 - 0.2      = 1    √0.2*0.8(1/100)The rejection region of this hypothesis is one-tailed (positive) If you ever have trouble identifying the type of rejection region look at the direction of the alternative hypothesis, if it has the symbol < then is a one-tailed, to the left,  rejection region. If it has the symbol > then is a one-tailed, to the right, rejection region and if it has the ≠ symbol, it means the rejection region is "split" in two, i.e. two-tailed.The critical value is:[tex]Z_{1-\alpha } = Z_{0.99} = 2.33[/tex]If Z ≥ 2.33, then you reject the null hypothesis.If Z < 2.33, then you do not reject the null hypothesis.The decision is to not reject the null hypothesis.c.The p-value is defined as the probability corresponding to the calculated statistic if possible under the null hypothesis (i.e. the probability of obtaining a value as extreme as the value of the statistic under the null hypothesis). Symbolically:P(Z ≥ 1) = 1 - P(Z < 1) = 1 - 0.84134 = 0.15866You have to look at what is the probability of the calculated Z value, the direction of the p-value is always the same as the rejection region. In this case, is a one-tailed p-value (to the right)Using the p-value approach, the decision rule is always the same:If p-value ≤ α, then you reject the null hypothesis.If p-value > α, then you don't reject the null hypothesis.Since the p-value 0.15866 > 0.01, then you do not reject the null hypothesis.As expected, using the two methods you reached the same decision. If not then you have to check your maths.I hope it helped!