MCQs Permutations Combinations 14

Test your knowledge of permutations and combinations with this interactive quiz! The MCQs Permutations Combinations Quiz covers essential concepts like factorials, combinations, arrangements, and real-world applications. This quiz is perfect for students and enthusiasts looking to sharpen their probability and counting skills. Let us start with the MCQs Permutation Combinations Quiz now.

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Online MCQs Permutations Combinations with Answers

Online Quiz about Permutations and Combinations with Answers

1. ${}^nP_r$ =

 
 
 
 

2. In how many ways can be letters in the word UNIVERSITY be arranged randomly

 
 
 
 

3. ${}^nC_r$ =

 
 
 
 

4. How many terms are in the expansion of the $(q+p)^n$

 
 
 
 

5. How many combinations of size 4 can be formed from a set of 6 distinct objects?

 
 
 
 

6. An arrangement of objects without caring for the order is called

 
 
 
 

7. Seventeen teams can take part in the Football Championship of a country. In how many ways can the Gold, Silver, and Bronze medals be distributed among the teams?

 
 
 
 

8. $n!=$?

 
 
 
 

9. A homeowner doing some remodeling requires the services of both a plumbing contractor and an electrical contractor. If there are 15 plumbing contractors and 10 electrical contractors available in the area, in how many ways can the contractors be chosen?

 
 
 
 

10. How many permutations of size 3 can be constructed from the set (A, B, C, D, E)?

 
 
 
 

11. An arrangement of all or some of a set of objects in a definite order is called

 
 
 
 

12. Which of the following statements is true?

 
 
 
 

13. The $0!$ is

 
 
 
 

14. The number of 3-digit telephone area codes that can be made if repetitions are not allowed is

 
 
 
 

15. ${}^{10}C_5=$

 
 
 
 

16. An experiment consists of three stages. There are five ways to accomplish the first stage, four ways to accomplish the second stage, and three ways to accomplish the third stage. The total number of ways to accomplish the experiment is

 
 
 
 

17. In how many ways can a team of 6 players be chosen from 11 persons

 
 
 
 

18. ${}^5C_5$ is equal to

 
 
 
 

19. The difference between permutation and combination lies in the fact that

 
 
 
 

20. The number of ways to select 2 persons from 6, ignoring the order of selection, is

 
 
 
 

Question 1 of 20

Online MCQs Permutations Combinations

  • The number of ways to select 2 persons from 6, ignoring the order of selection, is
  • $n!=$?
  • An arrangement of all or some of a set of objects in a definite order is called
  • An arrangement of objects without caring for the order is called
  • ${}^nP_r$ =
  • ${}^nC_r$ =
  • In how many ways can a team of 6 players be chosen from 11 persons
  • How many terms are in the expansion of the $(q+p)^n$
  • ${}^{10}C_5=$
  • ${}^5C_5$ is equal to
  • The difference between permutation and combination lies in the fact that
  • Which of the following statements is true?
  • A homeowner doing some remodeling requires the services of both a plumbing contractor and an electrical contractor. If there are 15 plumbing contractors and 10 electrical contractors available in the area, in how many ways can the contractors be chosen?
  • How many permutations of size 3 can be constructed from the set (A, B, C, D, E)?
  • How many combinations of size 4 can be formed from a set of 6 distinct objects?
  • An experiment consists of three stages. There are five ways to accomplish the first stage, four ways to accomplish the second stage, and three ways to accomplish the third stage. The total number of ways to accomplish the experiment is
  • The $0!$ is
  • In how many ways can be letters in the word UNIVERSITY be arranged randomly
  • Seventeen teams can take part in the Football Championship of a country. In how many ways can the Gold, Silver, and Bronze medals be distributed among the teams?
  • The number of 3-digit telephone area codes that can be made if repetitions are not allowed is

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Econometrics Quiz and Answers 8

Test your econometrics knowledge with this comprehensive Econometrics Quiz and Answers MCQs Test! Perfect for statisticians and econometricians preparing for exams or job interviews. Covers measurement errors, multicollinearity, heteroscedasticity, dummy variables, VIF, and more. Check your understanding of key concepts in Econometrics today! Let us start with the Online Econometrics Quiz and Answers now.

Online Econometrics Quiz and Answers
Please go to Econometrics Quiz and Answers 8 to view the test

Online Econometrics Quiz and Answers

  • If measurement errors are present only in the dependent variable, then the parameter estimates remain
  • If we have a categorical variable with 4 categories, then how many dummy variables can be used in with intercept regression model
  • In a regression model with 3 explanatory variables, there will be ————- auxiliary regressions
  • When measurement errors are present in the explanatory variable(s), then parameter estimates become
  • Which one is NOT the rule of thumb?
  • The variance of regression slopes becomes infinite in the  case of
  • If the calculated value of VIF is equal to 1321, then it is an indication of
  • In case of multicollinearity, the confidence interval tends to be much ———–, leading to the acceptance of the zero null hypothesis
  • A high value of VIF indicates
  • In case of perfect multicollinearity, the $X’X$ is a ————-.
  • The presence of heteroscedasticity does not destroy the —————- of OLS estimators.
  • In case of homoscedasticity, we have
  • Robust standard errors are those that are corrected by
  • If the calculated value of the condition number is equal to 1, then it is an indication of
  • If the correlation coefficient between two explanatory variables approaches 1, then
  • If there is no overlap between regressors, then
  • Which of the actions does not make sense to take to struggle against multicollinearity?
  • Spearman’s rank correlation test can be applied for
  • The Park test can be applied for
  • If the calculated value of VIF is equal to 1, then it is an indication of

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Sampling Distribution of Differences

Understand the sampling distribution of differences between means—what it is, why it matters, and how to apply it in hypothesis testing (with examples). Perfect for students, data scientists, and analysts! Ever wondered how statisticians compare two groups (e.g., test scores, sales performance, or medical treatments)? The key lies in the sampling distribution of differences between means—a fundamental concept for hypothesis testing, confidence intervals, and A/B testing.

Sampling Distribution of Differences Between Means

The Sampling Distribution of Differences Between Means is the probability distribution of differences between two sample means (e.g., $Mean_A – Mean_B$) if you repeatedly sampled from two populations.

Let there are two populations of size $N_1$ and $N_2$ having means $\mu_1$ and $\mu_2$ with variances $\sigma_1^2$ and $\sigma_2^2$. We need to draw all possible samples of size $n_1$ from the first population and $n_2$ from the second population, with or without replacement.

Let $\overline{x}_1$ be the means/averages of samples of the first population and $\overline{x}_2$ be the means/averages of the samples of the second population. After this, we will determine all possible differences between means/averages denoted by
$$d =\overline{x}_1 – \overline{x}_2$$

We call the frequency distribution differences as frequency distribution, while the probability distribution of the differences is the sampling distribution of differences between means.

Notations for Sampling Distribution of Differences between Means

NotationShort Description
$\mu_1$Mean of the first population
$\mu_2$Mean of the second population
$\sigma_1^2$Variance of the first population
$\sigma_2^2$Variance of the second population
$\sigma_1$Standard deviation of the first population
$\sigma_2$Standard deviation of the second population
$\mu_{\overline{x}_1 – \overline{x}_2}$Mean of the sampling distribution of difference between means
$\sigma^2_{\overline{x}_1 – \overline{x}_2}$Variance of the sampling distribution of difference between means
$\sigma_{\overline{x}_1 – \overline{x}_2}$Standard deviation of the sampling distribution of difference between means

Some Formulas for Sampling with/without Replacement

Sr. No.Sampling with ReplacementSampling without Replacement
1.$\mu_{\overline{x}_1 -\overline{x}_2} = \mu_1-\mu_2$$\mu_{\overline{x}_1 -\overline{x}_2} = \mu_1-\mu_2$
2.$\sigma^2_{\overline{x}_1 -\overline{x}_2}=\frac{\sigma_1^2}{n_1} + \frac{\sigma_2^2}{n_2}$$\sigma^2_{\overline{x}_1 -\overline{x}_2}=\frac{\sigma_1^2}{n_1}\left(\frac{N-1-n_2}{N_1-1}\right) + \frac{\sigma_2^2}{n_2}\left(\frac{N_2-n_2}{N_2-1}\right)$
3.$\sigma_{\overline{x}_1 -\overline{x}_2}=\sqrt{\frac{\sigma_1^2}{n_1} + \frac{\sigma_2^2}{n_2}}$$\sigma_{\overline{x}_1 -\overline{x}_2}=\sqrt{\frac{\sigma_1^2}{n_1}\left(\frac{N-1-n_2}{N_1-1}\right) + \frac{\sigma_2^2}{n_2}\left(\frac{N_2-n_2}{N_2-1}\right)}$

Example

Let $\overline{x}$ represent the mean of a sample of size $n_1=2$ selected at random with replacement from a finite population consisting of values 5, 7, and 9. Similarly, let $\overline{x}_2$ represent the mean of a sample of size $n_2=2$ selected at random from another finite population consisting of values 4, 6, and 8. Form the sampling distribution of the random variable $\overline{x}_1 – \overline{x}_2$ and verify that

  • $\mu_{\overline{x}_1 – \overline{x}_2} = \mu_1 – \mu_2$
  • $\sigma^2_{\overline{x}_1 – \overline{x}_2} = \frac{\sigma_1^2}{n_1}+\frac{\sigma_2^2}{n_2}

Solution

Population IPopulation II
5, 7, 9
$N_1=3$
$n_1=2$
4, 6, 8
$N_2=3$
$n_2=2$
Possible samples with Replacement are $N_1^{n_1}=3^2 =9$Possible samples with Replacement are
$N_2^{n_2} = 3^2 = 9$
Sampling Distribution of Differences Between Means

All Possible Samples

All possible differences between samples means from both of the population is ($d=\overline{x}_1 – \overline{x}_2$).

$d=\overline{x}_1 =-\overline{x}_2$455666778
55-4= 100-1-1-1-2-2-3
6211000-1-1-2
6211000-1-1-2
732211100-1
732211100-1
732211100-1
8433222110
8433222110
9544333221

The Sampling Distribution of Differences Between Means

$d=\overline{x}_1 – \overline{x}_2$$f$$P(d)$$d\cdot P(d)$$d^2$$d^2 \cdot P(d)$
-311/81$-3 * 1/81 = -3/81$99/81
-244/81-8/81416/81
-11010/81-10/81110/81
01616/810/8100/81
11919/8119/81119/81
21616/8131/81464/81
31010/8130/81990/81
444/8116/811664/81
511/815/8125125/81
Total8181/81=1 297/81=3.67

\begin{align*}
\mu_{\overline{x}_1 – \overline{x}_2} &= E(d) = \Sigma(d\cdot P(d)) = \frac{81}{81}=1\\
\sigma^2_{\overline{x}_1 – \overline{x}_2} &= E(d^2) – [E(d)]^2\\
&=\Sigma d^2 P(d) – \left[\Sigma (d\cdot P(d))\right]^2\\
&= 3.67 – 1^2 = 2.67
\end{align*}

Sampling Distribution of differences between means, mean and variance of both populations

Verification

  • $\mu_{\overline{x}_1 – \overline{x}_2} = \mu_1 – \mu_2 \Rightarrow 7-6 = 1$
  • $\sigma_{\overline{x}_1 – \overline{x}_2}^2 = \frac{\sigma_1^2}{n_1} + \frac{\sigma_2^2}{n_2} = \frac{2.66}{2} + \frac{2.66}{2}\Rightarrow 2.66$

Sampling in R Language