Answer:
The probability that a student earns a grade of A is 1/7.
Step-by-step explanation:
Let E be an event and S be the sample space. The probability of E, denoted by P(E) could be computed as:
P(E) = n(E) / n(S)
As the total number of students = n(S) = 35
Students getting the grade A = n(E) = 5
So, the probability that a student earns a grade of A:
P(E) = n(E) / n(S)
= 5/35
= 1/7
Hence, the probability that a student earns a grade of A is 1/7.
Keywords: probability, sample space, event
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Answer:
.14
Step-by-step explanation:
Cheating: For a statistics project a community college student at Diablo Valley College (DVC) decides to investigate cheating in two popular majors at DVC: business and nursing. She selects a random sample of nursing and business courses and convinces the professors to distribute a short anonymous survey in their classes. The question about cheating is one of many other questions about college life. When the student summarizes the data, she finds that 42 of the 50 business students and 38 of the 70 nursing students admitted to cheating in their courses. True or false? The counts suggest that the normal model is a good fit for the sampling distribution of sample differences. (a) a·False o b.True
Answer:
The answer is False
Step-by-step explanation:
The count does no suggest that the normal model is a good fit for sampling the distribution because the questions used for the test and survey is the one of many other question about cheating which implies that if other questions about college life are being used as the survey, the response would probably be that more of the student would not have admitted to cheating. This concept therefore disobeys the normal distribution model which is a bell shaped model and therefore assumes that at an average, the number of students that admitted to cheating in the major courses should be equal.
An automotive manufacturer wants to know the proportion of new car buyers who prefer foreign cars over domestic. Step 2 of 2 : Suppose a sample of 1418 new car buyers is drawn. Of those sampled, 354 preferred foreign over domestic cars. Using the data, construct the 99% confidence interval for the population proportion of new car buyers who prefer foreign cars over domestic cars. Round your answers to three decimal places.
Final answer:
The 99% confidence interval for the population proportion of new car buyers who prefer foreign cars over domestic cars, based on a sample of 1418 buyers where 354 prefer foreign cars, is between 0.2205 and 0.2787.
Explanation:
To construct a 99% confidence interval for the population proportion of new car buyers who prefer foreign cars over domestic cars, we use the sample proportion and the Z-distribution since the sample size is large. Given that in a sample of 1418 new car buyers, 354 preferred foreign cars, we calculate the sample proportion (p-hat) as follows:
p-hat = 354 / 1418 ≈ 0.2496
The formula for a confidence interval is p-hat ± Z*(sqrt((p-hat*(1-p-hat))/n)), where Z* is the Z-score corresponding to the confidence level, and n is the sample size. For a 99% confidence interval, Z* is approximately 2.576.
Using the formula, the standard error (SE) for the proportion is calculated as:
SE = sqrt((0.2496*(1-0.2496))/1418) ≈ 0.0113
The margin of error (ME) is:
ME = Z* * SE ≈ 2.576 * 0.0113 ≈ 0.0291
Now, we can construct the 99% confidence interval:
99% CI = p-hat ± ME = 0.2496 ± 0.0291 = (0.2205, 0.2787)
Therefore, we are 99% confident that the true proportion of new car buyers who prefer foreign cars over domestic cars is between 0.2205 and 0.2787.
A set of 7,500 scores on a test are distributed normally, with a mean of 23 and a standard deviation of 4. To the nearest integer value, how many scores are there between 21 and 25?
Answer:
Step-by-step explanation:
Answer: The number of scores between 21 and 25 is 2872
Step-by-step explanation:
Since the test scores are normally distributed, we would apply the formula for normal distribution which is expressed as
z = (x - u)/s
Where
x = test scores
u = mean test score
s = standard deviation
From the information given,
u = 23
s = 4
We want to find the probability test scores between 21 points and 25. It is expressed as
P(21 lesser than or equal to x lesser than or equal to 25)
For x = 21,
z = (21 - 23)/4 = - 0.5
Looking at the normal distribution table, the probability corresponding to the z score is 0.30854
For x = 25,
z = (25 - 23)/4 = 0.5
Looking at the normal distribution table, the probability corresponding to the z score is 0.69146
P(21 lesser than or equal to x lesser than or equal to 25)
= 0.69146 - 0.30854 = 0.38292
The number of scores between 21 and 25 would be
0.38292 × 7500 = 2872
According to the Normal model ?N(0.054?,0.015?) describing mutual fund returns in the 1st quarter of? 2013, determine what percentage of this group of funds you would expect to have the following returns. Complete parts? (a) through? (d) below. ?
a) Over? 6.8%? ?b) Between? 0% and? 7.6%? ?c) More than? 1%? ?d) Less than? 0%?
A) The expected percentage of returns that are over 6.8% is ______%
b) The expected percentage of returns that are between 0& and 7.6% is ____%
C) The expected percentage of returns that are more than 1% is ____%
D) The expected percentage of returns that are less than 0% is ____%
Type an intenger or a decimal rounded to one decimal place as needed.
Answer:
Step-by-step explanation:
Given that X, the mutual fund returns in the 1st quarter of 2013, is
N(0.054, 0.015)
a) P(X>6.8%) = [tex]1-0.8246\\=0.1754[/tex]
b) [tex]P(0<X<0.076)\\\\\\=0.9288-0.0002\\=0.9286[/tex]
c) [tex]P(X>0.01)\\=1-0.0017\\=0.9983[/tex]
d) [tex]P(X<0) = 0.0002[/tex]
A) The expected percentage of returns that are over 6.8% is _17.5_____%
b) The expected percentage of returns that are between 0& and 7.6% is __92.9__%
C) The expected percentage of returns that are more than 1% is _99.8___%
D) The expected percentage of returns that are less than 0% is _0.02___%
The heights of students in a class are normally distributed with mean 55 inches and standard deviation 5 inches. Use the Empirical Rule to determine the interval and contains the middle 68% of the heights.
a) [40,70]
b)[45,70]
c)[50,60]
d)[45,65]
e)[47,63]
d)none of the above
Answer: c)[50,60]
Step-by-step explanation:
The Empirical rule says that , About 68% of the population lies with the one standard deviation from the mean (For normally distribution).
We are given that , The heights of students in a class are normally distributed with mean 55 inches and standard deviation 5 inches.
Then by Empirical rule, about 68% of the heights of students lies between one standard deviation from mean.
i.e. about 68% of the heights of students lies between [tex]\text{Mean}\pm\text{Standard deviation}[/tex]
i.e. about 68% of the heights of students lies between [tex]55\pm5[/tex]
Here, [tex]55\pm5=(55-5, 55+5)=(50,60)[/tex]
i.e. The required interval that contains the middle 68% of the heights. = [50,60]
Hence, the correct answer is c) (50,60)
Final answer
The interval containing the middle 68 of a typically distributed class height is one standard divagation from the mean, which is( 50, 60) elevation for the given mean of 55 elevation and standard divagation of 5 elevation.
Explanation
The Empirical Rule countries that for a typically distributed set of data, roughly 68 of data values will fall within one standard divagation of the mean, 95 within two standard diversions, and99.7 within three standard diversions. In this case, the mean height is 55 elevation and the standard divagation is 5 elevation. thus, to find the interval that contains the middle 68 of the heights, we add and abate one standard divagation from the mean.
55 elevation 5 elevation = 60 elevation( Mean height plus one standard divagation)
55 elevation- 5 elevation = 50 elevation( Mean height minus one standard divagation)
This means the interval that contains the middle 68 of the heights is( 50, 60) elevation. Hence, the correct answer is option( c).
Find a particular solution to y′′+25y=−40sin(5t). y″+25y=−40sin(5t).
The particular solution to the differential equation is:
[tex]y_p(t)= 16/25tcos(5t) - 8/5tsin(5t)[/tex]
Here, we have,
To find a particular solution to the given differential equation
y′′+25y=−40sin(5t),
we'll assume a particular solution of the form:
[tex]y_p(t)=Asin(5t)+Bcos(5t)[/tex]
where A and B are constants to be determined.
Now, let's find the first and second derivatives of [tex]y_p(t)[/tex] :
[tex]y_p'(t)=5Acos(5t)-5Bsin(5t)\\y_p''(t)=-25Asin(5t)-25Bcos(5t)[/tex]
Now, substitute these derivatives back into the original differential equation:
y′′+25y=(−25Asin(5t)−25Bcos(5t))+25(Asin(5t)+Bcos(5t))
Now, equate the coefficient of sin(5t) and cos(5t) on both sides of the equation:
For sin(5t):
−25A+25A=0⟹0=0
For cos(5t):
−25B+25B=−40⟹0=−40
The above equations show that there is no solution for A and B that satisfy the original equation.
This means that our initial assumption for the particular solution is not appropriate for this case.
To find a particular solution that works, we'll make another assumption. Since the right-hand side of the differential equation is −40sin(5t), we'll try a particular solution in the form:
[tex]y_p(t)=Atcos(5t)+Btsin(5t)[/tex]
where A and B are constants to be determined.
Now, let's find the first and second derivatives of this new
[tex]y_p'(t)=Acos(5t)-5Atsin(5t)+Bsin(5t)+5Btcos(5t)[/tex]
[tex]y_p''(t)=-10Asin(5t)-25Atcos(5t)+25Btsin(5t)-10Bcos(5t)[/tex]
Now, substitute these derivatives back into the original differential equation:
[tex]y''+25y=(-10Asin(5t)-25Atcos(5t)+25Btsin(5t -10Bcos(5t))+25(Atcos(5t)+Btsin(5t))[/tex]
Now, equate the coefficient of sin(5t) and cos(5t) on both sides of the equation:
For sin(5t):
25Bt=−40⟹B=− 8/5
For cos(5t):
−25At−10B=0
⟹A= 16/25
So, the particular solution to the differential equation is:
[tex]y_p(t)= 16/25tcos(5t) - 8/5tsin(5t)[/tex]
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To find a particular solution to the differential equation y″+25y=−40sin(5t), assume a particular solution in the form y(t) = Asin(5t) + Bcos(5t) and solve for the coefficients A and B.
Explanation:To find a particular solution to the given differential equation y″+25y=−40sin(5t), we can assume a particular solution in the form of y(t) = Asin(5t) + Bcos(5t). Differentiating this equation twice and substituting it back into the original differential equation, we can solve for the coefficients A and B. In this case, the particular solution is y(t) = -8sin(5t) - 0.64cos(5t).
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In the question below determine whether the binary relation is: (1) reflexive, (2) symmetric, (3) antisymmetric, (4) transitive.
a) the relation r on the set of all people where aRb means that a is younger than b.
Answer:
The relation is antisymmetric and transitive
Step-by-step explanation:
Let a,b,c be elements of the set of all people.
1) Let a be a person who is 20 years old. aRa means that this person is younger than themselves, which it's false because 20<20 is false. Then R is not reflexive.
2) Let a be a person who is 20 years old and b a person who is 30 years old. Then a is younger than b, that is, aRb.
However, it is not true that b is younger than a, as 30<20 is false, therefore bRa is false and R is not symmetric.
3) Suppose that aRb, so that a is younger than b. Then, b is not younger than a. If n denotes the age of a and m denotes the age of b, we have that n<m which implies that m<n is false. Then bRa is false, thus R is antisymmetric.
4) Suppose that aRb and bRc. Let n,m,p denote the ages of a,b,c respectively. Then n<m and m<p (a is younger than b and b is younger than c), and by transitivity of the ordering of numbers, n<p, that is, a is younger than c. Thus aRc, and R is transitive.
Conduct the appropriate hypothesis test and compute the test statistic. A company that produces fishing line undergoes random testing to see if their fishing line holds up to the advertised specifications. Currently they are producing 30-pound test line and 20 randomly selected pieces are selected to test the strength. The 20 pieces broke with an average force of 29.1 pounds and a sample standard deviation of 2 pounds. Assuming that the strength of the fishing line is normally distributed, perform the appropriate hypothesis test at a 0.05 significance level in order to determine whether there is sufficient sample evidence to conclude the fishing line breaks with an average force of less than 30 pounds.
a. No, because the test statistic is -2.01.
b. No, because the test statistic is -2.52
c. Yes, because the test statistic is -2.52
d. Cannot be determined Yes, because the test statistic is -2.01
Answer:
Option D) Yes, because the test statistic is -2.01
Step-by-step explanation:
We are given the following in the question:
Population mean, μ = 30 pound
Sample mean, [tex]\bar{x}[/tex] = 29.1 pounds
Sample size, n = 20
Alpha, α = 0.05
Sample standard deviation, s = 2 pounds
First, we design the null and the alternate hypothesis
[tex]H_{0}: \mu = 30\text{ pounds}\\H_A: \mu < 30\text{ pounds}[/tex]
We use one-tailed(left) t test to perform this hypothesis.
Formula:
[tex]t_{stat} = \displaystyle\frac{\bar{x} - \mu}{\frac{\sigma}{\sqrt{n}} }[/tex]
Putting all the values, we have
[tex]t_{stat} = \displaystyle\frac{29.1 - 30}{\frac{2}{\sqrt{20}} } = -2.012[/tex]
Now,
[tex]t_{critical} \text{ at 0.05 level of significance, 19 degree of freedom } = -1.729[/tex]
Since,
[tex]t_{stat} < t_{critical}[/tex]
We fail to accept the null hypothesis and reject it. We accept the alternate hypothesis. Thus, there were enough evidence to conclude that the fishing line breaks with an average force of less than 30 pounds.
Option D) Yes, because the test statistic is -2.01
A student uses pens whose lifetime is an exponential random variable with mean 1 week. Use the central limit theorem to determine the minimum number of pens he should buy at the beginning of a 15-week semester, so that with probability .99 he does not run out of pens during the semester.
Answer:
Student needs pens= n = 27.04
Rounding off with upper floor function ⇒ n =28
Rounding off with lower floor function ⇒ n =27
Step-by-step explanation:
Given that lifetime of each pen is a exponential random variable with mean 1 week.
Let [tex]S_{n}[/tex] be total sum of lifetime of n pens.
So mean of [tex]S_{n}[/tex] = μ = n.1
Standard deviation of [tex]S_{n}[/tex] =[tex]\sigma=\sqrt{n}[/tex]
Probability that he doesnot run out of pens= 0.99
Considering Sn be sum of n lifetimes, using central limit theorem
[tex]\frac{S_{n}-n}{\sqrt{n}}\approx N(0,1)\\\\P(S_{n}>15)=[P(\frac{S_{n}-n}{\sqrt{n}})>\frac{15-n}{\sqrt{n}}]\\ 1-\phi(\frac{15-n}{\sqrt{n}})=\phi(-(\frac{15-n}{\sqrt{n}}))=0.99\\[/tex]
From table of standard normal distribution
[tex]\frac{15-n}{\sqrt{n}}=-2.3263\\15-n=-2.3263\sqrt{n}\\n-2.3263-15\sqrt{n}[/tex]
Solving the quadratic Equation in variable x we get
n=27.04
Which of the following is a required condition for a discrete probability function?
a. ∑f(x) = 0 for all values of x
b. f(x) 1 for all values of x
c. f(x) < 0 for all values of x
d. ∑f(x) = 1 for all values of x
The required condition for a discrete probability function is that the sum of the probabilities for all possible outcomes, represented by '∑f(x)', must equal 1.
Explanation:The correct answer to this question is d. ∑f(x) = 1 for all values of x. This is a required condition for a discrete probability function. In probability theory, a probability mass function (PMF), also known as a discrete probability function, provides the probabilities of discrete random variables. The function gives the probability that a discrete random variable is exactly equal to some value. The terms 'probability distribution function' and 'probability function' have also been used to denote the same concept.
As a basic rule, the sum of the probabilities for all possible outcomes (x-values) in a discrete probability function should equal 1. This is because these probabilities together represent the entire possible outcome set for your discrete random variable, which accounts for all possibilities and hence should total to 100% or, in decimal form, 1.
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Final answer:
The correct condition for a discrete probability function is that the sum of all the probabilities must equal 1, which is represented as Σf(x) = 1 for all values of x. The correct option is d.
Explanation:
The required condition for a discrete probability function is that the sum of all probabilities must equal 1, which is known as the normalization condition. This implies that when we list all possible outcomes or events that a random variable can take, the sum of their probabilities must be 1. This condition is represented as Σf(x) = 1 for all values of x. Therefore, the correct option is d. Σf(x) = 1 for all values of x.
Lucy Baker is analyzing demographic characteristics of two television programs, American Idol (population 1) and 60 Minutes (population 2). Previous studies indicate no difference in the ages of the two audiences. (The mean age of each audience is the same.) Lucy plans to test this hypothesis using a random sample of 100 from each audience. Her alternate hypothesis is ____________.
Answer:
Alternative hypothesis:[tex]\mu_1 -\mu_2 \neq 0[/tex]
Or in the alternative way would be:
Alternative hypothesis:[tex]\mu_1 \neq \mu_2 [/tex]
Step-by-step explanation:
A hypothesis is defined as "a speculation or theory based on insufficient evidence that lends itself to further testing and experimentation. With further testing, a hypothesis can usually be proven true or false".
The null hypothesis is defined as "a hypothesis that says there is no statistical significance between the two variables in the hypothesis. It is the hypothesis that the researcher is trying to disprove".
The alternative hypothesis is "just the inverse, or opposite, of the null hypothesis. It is the hypothesis that researcher is trying to prove".
On this case the claim that they want to test is: "The means for the two groups (American Idol and 60 Minutes) is the same". So we want to check if we have significant differences between the two means, so this needs to be on the alternative hypothesis and on the null hypothesis we need to have the complement of the alternative hypothesis.
Null hypothesis:[tex]\mu_1 -\mu_2 = 0[/tex]
This null hypothesis can be expressed like this:
Null hypothesis:[tex]\mu_1 = \mu_2 [/tex]
Alternative hypothesis:[tex]\mu_1 -\mu_2 \neq 0[/tex]
Or in the alternative way would be:
Alternative hypothesis:[tex]\mu_1 \neq \mu_2 [/tex]
Final answer:
Lucy Baker's alternate hypothesis for her demographic analysis of American Idol and 60 Minutes would suggest a difference in the mean ages of the two audiences, represented as either (Ha: µ₁ ≠ µ₂), (Ha: µ₁ < µ₂), or (Ha: µ₁ > µ₂), depending on the direction of the difference she anticipates.
Explanation:
Lucy Baker's hypothesis test within her demographic analysis involves comparing the mean ages of audiences of two television programs: American Idol and 60 Minutes. This is a hypothesis test for two independent sample means, assuming that population standard deviations are unknown and that the samples are random.
Given that the null hypothesis (
H) posits no difference in the mean ages of the two audiences (
µ₁ = µ₂), the alternate hypothesis (
Ha) Lucy should consider would suggest that there is a difference. Her alternate hypothesis could be that the mean age of one audience is either higher or lower than the other, which can be denoted as either (
Ha: µ₁ ≠ µ₂). However, if she has a specific direction in mind (e.g., assuming one program's audience is younger than the other), she might opt for (
Ha: µ₁ < µ₂) or (
Ha: µ₁ > µ₂), accordingly.
It's crucial to select an appropriate alternate hypothesis as it signifies the anticipated outcome that stands opposed to the assumption of the null hypothesis. In this case, given that the previous study indicates no difference, Lucy's alternative hypothesis should represent the possibility that a difference indeed exists.
It is reasonable to model the number of winter storms in a season as with a Poisson random variable. Suppose that in a good year the average number of storms is 4, and that in a bad year the average is 5. If the probability that next year will be a good year is 0.6 and the probability that it will be bad is 0.4, find the expected value and variance in the number of storms that will occur.
Answer:
E(A)= E[E(A|B)]= 4*0.6 +5*0.4 =4.4
Var(A)= E[Var(A|B)] +Var[E(X|Y)]]=4.4+19.6=24
Step-by-step explanation:
Previous concepts
The Poisson process is useful when we want to analyze the probability of ocurrence of an event in a time specified. The probability distribution for a random variable X following the Poisson distribution is given by:
[tex]P(X=x) =\lambda^x \frac{e^{-\lambda}}{x!}[/tex]
For this distribution the expected value is the same parameter [tex]\lambda[/tex]
[tex]E(X)=\mu =\lambda[/tex]
Other equations useful:
Let X and Y random variables
E(X) =E[E(X|Y)] (conditional expectation)
Var(X)=E[Var(X|Y)]+Var[E(X|Y)] (Total variance)
Solution to the problem
Let A the random variable that represent the number of winter storms next year
B a binary variable, B=1 if the next year is a good year and B=0 in the other case. Then we have this:
E(A|B=1) = 4 and E(A|B=0)=5
We can use the propoerties of conditional expectation like this:
E(A)= E[E(A|B)]= E(A|B=1)P(B=1) +E(A|B=0)P(B=0)
E(A)= E[E(A|B)]= 4*0.6 +5*0.4 =4.4
And we can use also the properties for conditional variance we have the following values:
Var(A|B=1)=4 Var(A|B=0)=5, by the propertis of the Poisson distribution
And then the conditional variance is givne by:
[tex]Var[E(A|B)]= E(A|B=1)^2 P(B=1) +E(A|B=0)^2 P(B=0)[/tex]
And if we replace we got:
[tex]Var[E(A|B)]= 4^2 *0.6 +5^2 *0.4 =19.6[/tex]
And we have also that the expected value for the conditional variance is given by:
E[Var(A|B)]= 4*0.6 +5*0.4 =4.4
And then finally the variance for the random variable A is given by:
Var(A)= E[Var(A|B)] +Var[E(X|Y)]]=4.4+19.6=24
The expected value and variance in the number of storms are 4.4 and 4.4 respectively.
To calculate the expected number of winter storms, we can use the probability of a good or bad year along with their respective average storms. The expected value is then given by:
E(X) = (0.6 * 4) + (0.4 * 5) = 2.4 + 2 = 4.4 storms.
For the variance, since the variance of a Poisson distribution is equal to its mean, we have:
Variance in a good year = 4
Variance in a bad year = 5
The overall variance is a weighted average:
V(X) = (0.6 * 4) + (0.4 * 5) = 2.4 + 2 = 4.4
We are interested in determining whether the variances of the sales at two music stores (A and B) are equal. A sample of 25 days of sales at store A has a sample standard deviation of 30, while a sample of 16 days of sales from store B has a sample standard deviation of 20. At 95% confidence, the null hypothesis _____.
a. should be rejected
b. should be revised
c. should not be rejected
d. None of these answers are correct.
Answer:
C.
Step-by-step explanation:
Hypothesis testing procedure:
Hypothesis:
The null hypothesis will be the variances of sales of two musical stores are equal and the alternative hypothesis will be the variances of sales of two musical stores are not equal
Level of significance: alpha=0.05
Test statistic: F=variance A/variance B=(30)^2/(20)^2=900/400=2.25
P-value: p=0.107
As the alternative hypothesis mentioned that the variances are not equal this leads to two tailed test. so the p-value is calculated using excel function 2*F.DIST.RT(2.25,24,15).
Conclusion:
The p-value seems to exceed the alpha=0.05 and this depicts that the null hypothesis should not be rejected.
At 95% confidence, the null hypothesis should not be rejected. The correct answer is option c. should not be rejected.
Step 1
To test whether the variances of the sales at music stores A and B are equal, we perform an F-test. The null hypothesis [tex](\(H_0\))[/tex] states that the variances are equal, while the alternative hypothesis [tex](\(H_a\))[/tex] states that they are not equal.
The F-statistic is calculated as the ratio of the larger sample variance to the smaller sample variance:
[tex]\[ F = \frac{s_1^2}{s_2^2} \][/tex]
Where [tex]\( s_1^2 \)[/tex] is the variance of store A and [tex]\( s_2^2 \)[/tex] is the variance of store B.
Step 2
In this case, the F-statistic is [tex]\( \frac{30^2}{20^2} = \frac{900}{400} = 2.25 \)[/tex].
Using a significance level of 0.05 and degrees of freedom (df) as [tex]\( n_1 - 1 \)[/tex] and [tex]\( n_2 - 1 \)[/tex], we compare this value to the critical F-value from the F-distribution table.
Since the calculated F-statistic of 2.25 is less than the critical F-value, we fail to reject the null hypothesis.
Therefore, at 95% confidence, the correct answer is c. should not be rejected.
A person leaves her camp at 7:00 a.m. to hike back to her car. The distance from the car in kilometers y after x hours of hiking can be modeled by the linear function y = − 3 x + 18 . What does the x -intercept of the function mean.
Answer:
The x axis in the function represents, the number of hours after 7:00 A.M. , the person reaches her car. The person reaches the car at 1:00 P.M.
Step-by-step explanation:
The x axis denotes the no. of hours and and the y axis denotes the distance from the car.
X Intercept is a point where the line intersects the X axis, we can easily notice the fact that at that point, y=0 ie. The person has reached his/her respective car.
The line intersects x at 6.
Therefore, a total of 6 hours are taken from the beginning of the hike.
Thus, the person reaches the car at 1:00 P.M.
Answer:
The person will take 6 hours to get back to her car.
Step-by-step explanation:
Among all monthly bills from a certain credit card company, the mean amount billed was $465 and the standard deviation was $300. In addition, for 15% of the bills, the amount billed was greater than $1000. A sample of 900 bills is drawn. What is the probability that the average amount billed on the sample bills is greater than $500? (Round the final answer to four decimal places.)
Answer:
0.02% probability that the average amount billed on the sample bills is greater than $500.
Step-by-step explanation:
The Central Limit Theorem estabilishes that, for a random variable X, with mean [tex]\mu[/tex] and standard deviation [tex]\sigma[/tex], a large sample size can be approximated to a normal distribution with mean [tex]\mu[/tex] and standard deviation [tex]\frac{\sigma}{\sqrt{n}}[/tex].
Normal probability distribution
Problems of normally distributed samples can be solved using the z-score formula.
In a set with mean [tex]\mu[/tex] and standard deviation [tex]\sigma[/tex], the zscore of a measure X is given by:
[tex]Z = \frac{X - \mu}{\sigma}[/tex]
The Z-score measures how many standard deviations the measure is from the mean. After finding the Z-score, we look at the z-score table and find the p-value associated with this z-score. This p-value is the probability that the value of the measure is smaller than X, that is, the percentile of X. Subtracting 1 by the pvalue, we get the probability that the value of the measure is greater than X.
In this problem, we have that:
[tex]\mu = 465, \sigma = 300, n = 900, s = \frac{300}{\sqrt{900}} = 10[/tex].
What is the probability that the average amount billed on the sample bills is greater than $500?
This probability is 1 subtracted by the pvalue of Z when [tex]X = 500[/tex]. So
[tex]Z = \frac{X - \mu}{s}[/tex]
[tex]Z = \frac{500 - 465}{10}[/tex]
[tex]Z = 3.5[/tex]
[tex]Z = 3.5[/tex] has a pvalue of 0.9998.
So there is a 1-0.9998 = 0.0002 = 0.02% probability that the average amount billed on the sample bills is greater than $500.
The probability that the average amount billed in a sample of 900 bills is greater than $500 is approximately 0.0002.
Given the mean amount billed is $465
standard deviation of $300,
sample size of 900,
the probability that the average amount billed exceeds $500.
First, we need to calculate the standard error of the mean (SEM):
[tex]SEM = \(\frac{\sigma}{\sqrt{n}}\)[/tex]
Substituting the given values:
[tex]SEM = \frac{300}{\sqrt{900}} = \frac{300}{30} = 10[/tex]
Now, we can use the Z-score formula to find the probability.
The Z-score is calculated as follows:
[tex]Z = \frac{X - \mu}{SEM}[/tex]
(X = 500),
mu = 465
SEM=10
[tex]Z = \frac{500 - 465}{10} = 3.5[/tex]
Using Z-tables or a standard normal distribution calculator, we can find the probability corresponding to a Z-score of 3.5:
P(Z > 3.5) ≈ 0.0002
Therefore, the probability that the average amount billed in a sample of 900 bills is greater than $500 is approximately 0.0002 (rounded to four decimal places).
Because of her past convictions for mail fraud and forgery, Jody has a 30% chance each year of having her tax returns audited. What is the probability that she will escape detection for at least three years? Assume that she exaggerates, distorts, misrepresents, lies, and cheats every year. Larsen, Richard J.; Marx, Morris L.. An Introduction to Mathematical Statistics and Its Applications (Page 259). Pearson Education. Kindle Edition.
Answer:
The probability that she will escape detection for at least three years is P=0.343.
Step-by-step explanation:
If Jody has a 30% chance each year of having her tax returns audited, she also has 70% chance each year of escaping detection.
The probability of this happening 3 years in a row is:
[tex]P_n=q^n=0.7^3=0.343[/tex]
Answer:
108
Step-by-step explanation:
a study done by researchers at a university concluded that 70% of all student athletes in this country have been subjected to some form of hazing. The study is based on responses from 1200 athletes. What are the margin of error and 95% confidence interval for the study?
Answer:The margin of error is 0.01323 and 95% confidence interval is (0.674,0.73).
Step-by-step explanation:
Since we have given that
p = 0.70
n = 1200
We need to find the margin of error;
Margin of error would be
[tex]\sqrt{\dfrac{p(1-p)}{n}}\\\\=\sqrt{\dfrac{0.7\times 0.3}{1200}}\\\\=0.01323[/tex]
At 95% confidence level, α = 1.96
so, 95% confidence interval would be
[tex]p\pm z\times 0.01323\\\\=0.7\pm 1.96\times 0.01323\\\\=0.7\pm 0.02593\\\\=(0.7-0.02593,0.7+0.02593)\\\\=(0.674,0.73)[/tex]
Hence, the margin of error is 0.01323 and 95% confidence interval is (0.674,0.73).
Let's say that one of the items the university measured in the study was reaction time. That is a typical measurement that is taken when judging concussions as well as looki the beginning of the study they recorded a baseline average reaction time for the group of 41 football players at .239 seconds. At the end of their study they retested the players and the average reaction time was 233 with a standard deviation of .021. Use this data to create a 95% confidence interval for μ and explain if the reaction time at the conclusion of the study showed a significant decrease in reaction time or not.
Answer:
The 95% confidence interval is given by: (0.226, 0.240)
On this case we can't conclude that we have a significant reduction on the reaction time since the upper bounf of the interval is higher than the value of 0.239.
Step-by-step explanation:
1) Previous concepts
A confidence interval is "a range of values that’s likely to include a population value with a certain degree of confidence. It is often expressed a % whereby a population means lies between an upper and lower interval".
The margin of error is the range of values below and above the sample statistic in a confidence interval.
Normal distribution, is a "probability distribution that is symmetric about the mean, showing that data near the mean are more frequent in occurrence than data far from the mean".
[tex]\bar X =0.233[/tex] represent the sample mean for the sample
[tex]\mu[/tex] population mean (variable of interest)
s=0.021 represent the sample standard deviation
n=41 represent the sample size
2) Calculate the confidence interval
Since the sample size is large enough n>30 but we don't know the population deviation. The confidence interval for the mean is given by the following formula:
[tex]\bar X \pm t_{\alpha/2}\frac{s}{\sqrt{n}}[/tex] (1)
First we need to calculate the degrees of freedom given by:
[tex]df=n-1=41-1=40[/tex]
Since the Confidence is 0.95 or 95%, the value of [tex]\alpha=0.05[/tex] and [tex]\alpha/2 =0.025[/tex], and we can use excel, a calculator or a table to find the critical value. The excel command would be: "=-T.INV(0.025,40)".And we see that [tex]t_{\alpha/2}=2.02[/tex]
Now we have everything in order to replace into formula (1):
[tex]0.233-2.02\frac{0.021}{\sqrt{41}}=0.226[/tex]
[tex]0.233+2.02\frac{0.021}{\sqrt{41}}=0.240[/tex]
The 95% confidence interval is given by: (0.226, 0.240)
On this case we can't conclude that we have a significant reduction on the reaction time since the upper bounf of the interval is higher than the value of 0.239.
In the textile industry, a manufacturer is interested in the number of blemishes or flaws occurring in each 100 feet of material.
The probability distribution that has the greatest chance of applying to this situation is the:
a. Normal distribution.
b. Binomial distribution.
c. Poisson distribution.
d. Uniform distribution.
Answer:
The probability that can be applied to the given situation is Poisson distribution
Step-by-step explanation:
The probability that can be applied to the given situation is Poisson distribution because this distribution applied when the duration of occurrence of an event is known. In the given question laws have occurred every 100 feet therefore we have the number of events that have occurred. Moreover, Poisson distribution predicts the probability of events in fixed time interval
The probability distribution that has the greatest chance of applying to the number of blemishes or flaws occurring in each 100 feet of material in the textile industry is the Poisson distribution.
The probability distribution that has the greatest chance of applying to this situation is the Poisson distribution.
The Poisson distribution is commonly used to model the number of events that occur in a fixed interval of time or space. In this case, the manufacturer is interested in the number of blemishes or flaws occurring in each 100 feet of material, which can be seen as events occurring in a fixed space.
The Poisson distribution is appropriate when the events occur randomly and independently, and the average rate of occurrence is known. It allows for both discrete and continuous distributions.
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A family paid 12 percent of its annual after tax income on food last year. This amount was equal to 10 percent of its annual before tax income last year. Which of the following is closest to the percent of the family's annual before-tax income that was paid for tares last year? a. 8% b. 12% c. 17% d. 20%e. 25%
Answer:
Option c. 17%
Step-by-step explanation:
Data provided in the question:
Amount paid on food last year = 12% of Annual after tax income
Amount paid on food for the current year = 10% of Annual before tax income
Now,
Let the after tax income be 'x'
and tax be 'y'
Therefore,
Income before tax = x + y
Amount paid on food = 12% of x
According to the question
12% of x = 10% of (x + y)
or
0.12x = 0.10 (x + y)
or
1.2x - x = y
0.2x = y
or
x = 5y
Thus,
percent of the family's annual before-tax income that was paid for tares last year
= [Tax ÷ Income before tax] × 100%
= [ y ÷ ( x + y )] × 100%
= [ y ÷ ( 5y + y )] × 100%
or
= 0.167 × 100% ≈ 17%
Hence,
Option c. 17%
Assume that a simple random sample has been selected from a normally distributed population and test the given claim. Identify the null and alternative hypotheses, test statistic, P-value, critical value(s). and state the final conclusion that addresses the original claim. A safety administration conducted crash tests of child booster seats for cars. Listed below are results from those tests, with the measurements given in hie (standard head injury condition units). The safety requirement is that the hic measurement should be less than 1000 hic. Use a 0.05 significance level to test the claim that the sample is from a population with a mean less than 1000 hic. Do the results suggest that all of the child booster seats meet the specified requirement? 697 759 1266 621 569 432
What are the hypotheses
Identify the test statistic
Identify the P-value.
The critical value(s) is(are)
State the final conclusion that addressses the original claim
What do the results suggest about the child booster seats eeting the specific requirement?
Answer:
There is sufficient evidence to conclude that child booster seats meet the specific requirement.
Step-by-step explanation:
Sample: 697, 759, 1266, 621, 569, 432
Formula:
[tex]\text{Standard Deviation} = \sqrt{\displaystyle\frac{\sum (x_i -\bar{x})^2}{n-1}}[/tex]
where [tex]x_i[/tex] are data points, [tex]\bar{x}[/tex] is the mean and n is the number of observations.
[tex]Mean = \displaystyle\frac{\text{Sum of all observations}}{\text{Total number of observation}}[/tex]
[tex]Mean =\displaystyle\frac{4344}{6} = 724[/tex]
Sum of squares of differences = 415616
[tex]S.D = \sqrt{\frac{415616}{5}} = 288.31[/tex]
We are given the following in the question:
Population mean, μ = 1000 hic
Sample mean, [tex]\bar{x}[/tex] = 724
Sample size, n = 16
Alpha, α = 0.05
Sample standard deviation, s = 288.31
First, we design the null and the alternate hypothesis
[tex]H_{0}: \mu = 1000\text{ hic}\\H_A: \mu < 1000\text{ hic}[/tex]
We use one-tailed(left) t test to perform this hypothesis.
Formula:
[tex]t_{stat} = \displaystyle\frac{\bar{x} - \mu}{\frac{\sigma}{\sqrt{n}} }[/tex]
Putting all the values, we have
[tex]t_{stat} = \displaystyle\frac{724 - 1000}{\frac{288.31}{\sqrt{6}} } = -2.344[/tex]
Now, [tex]t_{critical} \text{ at 0.05 level of significance, 5 degree of freedom } = -2.015[/tex]
Calculation the p-value from table,
P-value = 0.033
Since,
Since, the p value is lower than the significance level, we fail to accept the null hypothesis and reject it. We accept the alternate hypothesis.
We conclude that the measurement is less than 1000 hic.
Thus, there is sufficient evidence to conclude that child booster seats meet the specific requirement.
What requirements are necessary for a normal probability distribution to be a standard normal probability distribution?Choose the correct answer below.A.The mean and standard deviation have the values of mu equals 1and sigma equals 1.B.The mean and standard deviation have the values of mu equals 0and sigma equals 1.C.The mean and standard deviation have the values of mu equals 0and sigma equals 0.D.The mean and standard deviation have the values of mu equals 1and sigma equals 0.
The requirements necessary for a normal probability distribution to be a standard normal probability distribution is that The mean and standard deviation have the values of mu equals 1and sigma equals 1. Hence the correct answer is A.
What is Normal Probability Distribution?A probability distribution is one whose mean data points are symmetric. That is, most values from such a distribution cluster around the mean.
Another name for Normal Probability Distribution is Gaussian Distribution.
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Final answer:
A standard normal probability distribution requires a mean of 0 and a standard deviation of 1. The correct answer is B, which reflects these necessary conditions for standardization, allowing for the comparison of z-scores across different distributions.
Explanation:
To transform a normal probability distribution into a standard normal probability distribution, certain requirements must be met. Specifically, the distribution must have a mean (mu) of 0 and a standard deviation (sigma) of 1. Among the given options, the correct answer is B, where the mean and standard deviation have the values of mu equals 0 and sigma equals 1.
This standardization process allows any normal distribution to be compared on a common scale, and it is fundamental for calculating z-scores, which indicate how many standard deviations an element is from the mean.For example, if we have a normally distributed variable 'x' from a distribution with any mean µ and standard deviation o, the standardized value or z-score is calculated as follows:z = (x - µ) / o
Suppose that a marketing research firm wants to conduct a survey to estimate the meanμof the distribution of the amount spent on entertainment by each adult who visits a certain popularresort. The firm would like to estimate the mean of this distribution to within $60 with 95% confidence.From data regarding past operations at the resort, it has been estimated that the standard deviation ofthe entertainment expenditures is no more than $400. How large does the firm’s sample size need to be?
Answer:
The firm's sample size must be of at least 171 adults.
Step-by-step explanation:
We have that to find our [tex]\alpha[/tex] level, that is the subtraction of 1 by the confidence interval divided by 2. So:
[tex]\alpha = \frac{1-0.95}{2} = 0.025[/tex]
Now, we have to find z in the Ztable as such z has a pvalue of [tex]1-\alpha[/tex].
So it is z with a pvalue of [tex]1-0.025 = 0.975[/tex], so [tex]z = 1.96[/tex]
Now, find the margin of error M as such
[tex]M = z*\frac{\sigma}{\sqrt{n}}[/tex]
In which [tex]\sigma[/tex] is the standard deviation of the population and n is the length of the sample.
In this problem, we have that:
[tex]M = 60, \sigma = 400[/tex]. So
[tex]M = z*\frac{\sigma}{\sqrt{n}}[/tex]
[tex]60 = 1.96*\frac{400}{\sqrt{n}}[/tex]
[tex]60\sqrt{n} = 784[/tex]
[tex]\sqrt{n} = 13.07[/tex]
[tex]n = 170.7[/tex]
The firm's sample size must be of at least 171 adults.
Quantitative noninvasive techniques are needed for routinely assessing symptoms of peripheral neuropathies, such as carpal tunnel syndrome (CTS). An article reported on a test that involved sensing a tiny gap in an otherwise smooth surface by probing with a finger; this functionally resembles many work-related tactile activities, such as detecting scratches or surface defects. When finger probing was not allowed, the sample average gap detection threshold for m = 7 normal subjects was 1.83 mm, and the sample standard deviation was 0.54; for n = 10 CTS subjects, the sample mean and sample standard deviation were 2.35 and 0.88, respectively. Does this data suggest that the true average gap detection threshold for CTS subjects exceeds that for normal subjects? State and test the relevant hypotheses using a significance level of 0.01. (Use μ1 for normal subjects and μ2 for CTS subjects.)
Answer:
[tex]t=\frac{2.35-1.83}{\sqrt{\frac{0.88^2}{10}+\frac{0.54^2}{7}}}}=1.507[/tex]
[tex]p_v =P(t_{(15)}>1.507)=0.076[/tex]
If we compare the p value and the significance level given [tex]\alpha=0.01[/tex] we see that [tex]p_v>\alpha[/tex] so we can conclude that we have enough evidence to FAIL to reject the null hypothesis, and the group CTS, NOT have a significant higher mean compared to the Normal group at 1% of significance.
Step-by-step explanation:
1) Data given and notation
[tex]\bar X_{CTS}=2.35[/tex] represent the mean for the sample CTS
[tex]\bar X_{N}=1.83[/tex] represent the mean for the sample Normal
[tex]s_{CTS}=0.88[/tex] represent the sample standard deviation for the sample of CTS
[tex]s_{N}=0.54[/tex] represent the sample standard deviation for the sample of Normal
[tex]n_{CTS}=10[/tex] sample size selected for the CTS
[tex]n_{N}=7[/tex] sample size selected for the Normal
[tex]\alpha=0.01[/tex] represent the significance level for the hypothesis test.
t would represent the statistic (variable of interest)
[tex]p_v[/tex] represent the p value for the test (variable of interest)
State the null and alternative hypotheses.
We need to conduct a hypothesis in order to check if the mean for the group CTS is higher than the mean for the Normal, the system of hypothesis would be:
Null hypothesis:[tex]\mu_{CTS} \leq \mu_{N}[/tex]
Alternative hypothesis:[tex]\mu_{CTS} > \mu_{N}[/tex]
If we analyze the size for the samples both are less than 30 so for this case is better apply a t test to compare means, and the statistic is given by:
[tex]t=\frac{\bar X_{CTS}-\bar X_{N}}{\sqrt{\frac{s^2_{CTS}}{n_{CTS}}+\frac{s^2_{N}}{n_{N}}}}[/tex] (1)
t-test: "Is used to compare group means. Is one of the most common tests and is used to determine whether the means of two groups are equal to each other".
Calculate the statistic
We can replace in formula (1) the info given like this:
[tex]t=\frac{2.35-1.83}{\sqrt{\frac{0.88^2}{10}+\frac{0.54^2}{7}}}}=1.507[/tex]
P-value
The first step is calculate the degrees of freedom, on this case:
[tex]df=n_{CTS}+n_{N}-2=10+7-2=15[/tex]
Since is a one side right tailed test the p value would be:
[tex]p_v =P(t_{(15)}>1.507)=0.076[/tex]
We can use the following excel code to calculate the p value in Excel:"=1-T.DIST(1.507,15,TRUE)"
Conclusion
If we compare the p value and the significance level given [tex]\alpha=0.01[/tex] we see that [tex]p_v>\alpha[/tex] so we can conclude that we have enough evidence to FAIL to reject the null hypothesis, and the group CTS, NOT have a significant higher mean compared to the Normal group at 1% of significance.
The reported unemployment is 5.5% of the population. What measurement scale is used to measure unemployment? Select one: a. Nominal b. Ordinal c. Interval or ratio d. Descriptive
Answer:
c. Interval or ratio
Step-by-step explanation:
There exists the following measurement scales:
Nominal: A variable is linked to a number. For example, Buffalo Bills players, 27 is Tre'Davious White, 49 Tremanine Edmunds, and then on...
Ordinal: Ranks the intensity of something. For example, grading some pain on a 1 to 10 scale.
Interval or ratio: Represents quantity and has an equality of units. One example is the rates of unemployment.
Descriptive: Tries to attribute qualities to quantitative data. For example, rates of unemployment being classified as very low, low, medium, and then on...
So the correct answer is:
c. Interval or ratio
The unemployment rate is measured using an interval or ratio scale, represented as a percentage. Various methods and measures are considered for accurate calculation, though it has limitations in fully capturing unemployment's societal impact.
Explanation:The reported unemployment rate of 5.5% of the population uses an interval or ratio scale for measurement. This type of scale is used because the unemployment rate is a percentage that represents a proportion of the population. The measurement of unemployment involves a ratio of two quantities: the number of unemployed individuals and the total labor force. Different methods such as Labor Force Sample Surveys, Official Estimates, Social Insurance Statistics, and Employment Office Statistics are used to calculate this figure. Moreover, the U.S. Bureau of Labor Statistics employs six different measures (U1 - U6) to capture various aspects of unemployment. While the rate is informative, there are shortcomings in how it represents the real impact on society, as it does not account for underemployment or those who have stopped looking for work. Understanding these statistics is crucial as unemployment has significant economic and social consequences, such as increasing inequality and potentially leading to civil unrest.
Insert five numbers between 1/27 and 27 to form a geometric sequence. there are 2 answers
Final answer:
Two valid sequences that insert five numbers between 1/27 and 27 to form a geometric sequence are 1/27, 1/9, 1/3, 1, 3, 9, 27 using a common ratio of 3, and 1/27, -1/9, 1/3, -1, 3, -9, 27 using a common ratio of -3.
Explanation:
To insert five numbers between 1/27 and 27 to form a geometric sequence, we first identify that in a geometric sequence, each term after the first is found by multiplying the previous one by a constant called the common ratio (r). We are effectively looking for seven terms in total (including the given 1/27 and 27) which form this sequence.
The formula for the nth term of a geometric sequence is a_n = a_1 × r^(n-1), where a_n is the nth term of the sequence, a_1 is the first term, and n is the term number.
Since we are given the first term (1/27) and the 7th term (27), we can use these to find the common ratio (r), through the equation 27 = (1/27) × r^(7-1), or simplifying, 27 = (1/27) × r^6. Solving for r, we get r = 3 (considering the positive root for practical purposes in a school context).
Thus, the sequence is: 1/27, 1/9, 1/3, 1, 3, 9, 27. However, since it is mentioned there are two answers, another valid sequence can be determined by using the negative root, r = -3. Therefore, another valid sequence is: 1/27, -1/9, 1/3, -1, 3, -9, 27. These two sequences incorporate the geometric sequence properties correctly.
Consider the function f left parenthesis x right parenthesis equals 4 x squared minus 3 x minus 1f(x)=4x2−3x−1 and complete parts (a) through (c).(a) Find f left parenthesis a plus h right parenthesis f(a+h);(b) Find StartFraction f left parenthesis a plus h right parenthesis minus f left parenthesis a right parenthesis Over h EndFraction f(a+h)−f(a) h;(c) Find the instantaneous rate of change of f when aequals=77.
To find f(a+h), substitute a+h into the function f(x). To find the difference quotient, subtract f(a) from f(a+h) and divide by h. To find the instantaneous rate of change of f when a = 77, substitute a = 77 into f(a).
Explanation:To find f(a+h), we substitute a+h into the function f(x).
f(a+h) = 4(a+h)^2 - 3(a+h) - 1
Expanding and simplifying:
f(a+h) = 4(a^2 + 2ah + h^2) - 3a - 3h - 1
f(a+h) = 4a^2 + 8ah + 4h^2 - 3a - 3h - 1
To find f(a), we substitute a into the function f(x).
f(a) = 4a^2 - 3a - 1
To find the difference quotient, we subtract f(a) from f(a+h) and divide by h:
(f(a+h) - f(a))/h = [(4a^2 + 8ah + 4h^2 - 3a - 3h - 1) - (4a^2 - 3a - 1)]/h
Expanding and simplifying:
(f(a+h) - f(a))/h = (8ah + 4h^2 - 3h)/h
(f(a+h) - f(a))/h = 8a + 4h - 3
To find the instantaneous rate of change of f when a = 77, we substitute a = 77 into f(a) and simplify:
f(77) = 4(77)^2 - 3(77) - 1
f(77) = 4(5929) - 231 - 1
f(77) = 23716 - 231 - 1
f(77) = 23484
A new housing development offers homes with a mortgage of $222,000 for 25 years at an annual interest of 8%. Find the monthly mortgage payment.
Using the same formula from your other question:
A = P x (r/12(1+r)^t)/ (1+r/12)^t -1)
A = 222000 x (0.08/12(1+0.08/12)^300 / (1+0.08/12)^300 - 1)
A = $1,713.43 per month
Use the general slicing method to find the volume of the following solids. The solid whose base is the region bounded by the curves y=x² and y=2−x², and whose cross sections through the solid perpendicular to the x-axis are squares
Answer:
The volume is [tex]V=\frac{64}{15}[/tex]
Step-by-step explanation:
The General Slicing Method is given by
Suppose a solid object extends from x = a to x = b and the cross section of the solid perpendicular to the x-axis has an area given by a function A that is integrable on [a, b]. The volume of the solid is
[tex]V=\int\limits^b_a {A(x)} \, dx[/tex]
Because a typical cross section perpendicular to the x-axis is a square disk (according with the graph below), the area of a cross section is
The key observation is that the width is the distance between the upper bounding curve [tex]y = 2 - x^2[/tex] and the lower bounding curve [tex]y = x^2[/tex]
The width of each square is given by
[tex]w=(2-x^2)-x^2=2-2x^2[/tex]
This means that the area of the square cross section at the point x is
[tex]A(x)=(2-2x^2)^2[/tex]
The intersection points of the two bounding curves satisfy [tex]2 - x^2=x^2[/tex], which has solutions x = ±1.
[tex]2-x^2=x^2\\-2x^2=-2\\\frac{-2x^2}{-2}=\frac{-2}{-2}\\x^2=1\\\\x=\sqrt{1},\:x=-\sqrt{1}[/tex]
Therefore, the cross sections lie between x = -1 and x = 1. Integrating the cross-sectional areas, the volume of the solid is
[tex]V=\int\limits^{1}_{-1} {(2-2x^2)^2} \, dx\\\\V=\int _{-1}^14-8x^2+4x^4dx\\\\V=\int _{-1}^14dx-\int _{-1}^18x^2dx+\int _{-1}^14x^4dx\\\\V=\left[4x\right]^1_{-1}-8\left[\frac{x^3}{3}\right]^1_{-1}+4\left[\frac{x^5}{5}\right]^1_{-1}\\\\V=8-\frac{16}{3}+\frac{8}{5}\\\\V=\frac{64}{15}[/tex]
You're conducting a significance test for H0 : p = .35, Ha : p < .35. In a sample of size 40, you identify a count of 11 successes. The computed z-score and P-value are:
a. –1.06 and .1446b. –1 and .3174c. –1 and .1587d. 1 and .3174e. 1 and .8413
Answer: c. –1 and .1587
Step-by-step explanation:
As per given , we have
Null hypothesis : [tex]H_0 : p= 0.35[/tex]
Alternative hypothesis : [tex]H_1 : p< 0.35[/tex]
Since Alternative hypothesis is left-tailed ,so the test must be a left tailed test .
Z -Test statistic for proportion = [tex]z=\dfrac{\hat{p}-p}{\sqrt{\dfrac{p(1-p)}{n}}}[/tex]
, where p= population proportion
[tex]\hat{p}[/tex] = sample proportions
n= Sample size.
Let x be the number of successes.
For n= 40 and x= 11
[tex]\hat{p}=\dfrac{x}{n}=\dfrac{11}{40}=0.275[/tex]
Then , [tex]z=\dfrac{0.275-0.35}{\sqrt{\dfrac{0.35(1-0.35)}{40}}}[/tex]
[tex]z=\dfrac{-0.075}{\sqrt{0.0056875}}[/tex]
[tex]z=\dfrac{-0.075}{0.075415515645}[/tex]
[tex]z=-0.99449031619\approx-1[/tex]
By using z-table ,
P-value for left-tailed test = P(z<-1)= 1-P(z<1) [∵ P(Z<-z)= 1-P(Z<z) ]
= 1-0.8413
=0.1587
Hence, the -score and P-value are –1 and 0.1587 .
So the correct option is c. –1 and .1587