Chi-Square Distribution ($\chi^2$) Made Easy

The Chi-square distribution is a continuous probability distribution that is used in many hypothesis tests. The Chi-Square statistic always results in a positive value.

A Chi-Square variate (with $v$ degrees of freedom (df)) is the sum of $v$ independent, squared standard normal variates ($\sum\limits_{i=1}^v z_i^2$). It is denoted by $\chi^2_v$. The variance $s^2$ from a sample of normally distributed observations is distributed as $\chi^2$ with $v$ (the df) as a parameter referred to as df of the calculated variance. Symbolically,

$$\frac{v\cdot s^2}{\sigma^2} \sim \chi^2_v$$

Chi Square Distribution Table

The variance $s^2$ for $n$ observations from a $N(\mu, \sigma^2)$, the df is equal to $v=n-1$. The Chi-Square distribution is also used for the contingency (analysis of frequency) tables as an approximation to the distribution of complex statistics. All the families of Chi-Square distribution are specified by their degrees of freedom.

Chi-Square Family of Distributions

Chi-Square Distribution Case of the Gamma Distribution

The Chi-Square distribution is a particular case of the Gamma Distribution, the pdf is

$$P_{\chi^2}(x) = [2^{v/2}\Gamma(v/2)]^{-1} \chi^{(v-2)/2}e^{-x/2}, \quad x\ge 0$$

where $\Gamma(x)$ is the Gamma Distribution.

Normal Approximation to $\chi^2$

Method 1: The PDF and df of Chi-Square can be approximated by the normal distribution. For large $v$ df, the first two moments $z=\frac{(X-v)}{\sqrt{2v}}$, $X\sim \chi^2$.

Method 2: Fisher approximation (compensates the skewness of $X$)

$$\sqrt{2X} – \sqrt{2v-1} \sim N(0, 1)$$

Method 3: Approximation by Wilson and Hilferty is quite accurate. Defining $A=\frac{2}{9v}$, we have

$$\frac{\sqrt[3]{(X/v)}-1+A}{\sqrt{A}}\sim N(0, 1)$$

For the determination of percentage points

$$\chi^2_{v[P]}=v[z_P\sqrt{A}+1-A]^3$$

Generating Pseudo Random Variates

Following the schema allows the generation of random variates from $\chi^2_v$ distribution with $v>2$ df. It requires to generate serially random variates from the standard uniform $U(0,1)$ distribution.

Let $n=v$ degrees of freedom

\begin{align*}
C1 &= 1 + \sqrt{2/e} \approx 1.8577638850\\
C2 &= \sqrt{n/2}\\
C3 &= \frac{3n^2-2}{3n(n-2)}\\
C4 &= \frac{4}{n-2}\\
C5 &= n-2\\
\end{align*}

FAQs about Chi-Square Distribution

  1. What is the use of Chi-Square Probability Distribution?
  2. By which parameter is the family of $\chi^2$Distribution is specified?
  3. How Pseudo Random variates be used to generate a Chi-Square distribution?
  4. What is a normal approximation to Chi-Square?
  5. For $v>100$, the Chi-Square percentiles may be approximated by?

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Important Online MCQs Multivariate 2

The post is about the MCQs Multivariate Analysis test. It includes a Variance-Covariance matrix, Principal Component Analysis, Factor Analysis, Factor Loading, etc. Let us start with the Online MCQs Multivariate Quiz.

Online Multivariate Quiz

1. A multivariate statistic that allows you to investigate the relationship between two sets of variables is

 
 
 
 

2. In principal component analysis (PCA) the first component contains

 
 
 
 

3. In multivariate analysis Var-Cov matrix is

 
 
 
 

4. If $X \sim N (\mu, \Sigma)$ then $(X-\mu)’ \Sigma^{-1} (X-\mu)$ is distributed as

 
 
 
 

5. In multivariate analysis, $n(\overline{x} – \mu)’ S^{-1} (\overline{x} – \mu)$ is called

 
 
 
 

6. A multivariate statistic that allows you to analyze several dependent variables from an experimental design simultaneously is

 
 
 
 

7. Factor analysis pinpoints the clusters of correlations between variables and for each cluster

 
 
 
 

8. In multivariate analysis the distribution of $\overline{X}$ is

 
 
 
 

9. In principal component analysis, the components are

 
 
 
 

10. In PCA, when the variables are measured in different units then PC extracted on the basis of

 
 
 
 

11. A factor is a combination of variables

 
 
 
 

12. Ffactor loading is

 
 
 
 

13. In the relation $\Sigma = V^{1/2} \rho ^{1/2} V^{1/2}$, the $V^{1/2} is called

 
 
 
 

14. A factor loading of 0.80 means, generally speaking, that

 
 
 
 

15. ——- is used for causal analysis

 
 
 
 

16. An advantage of using an experimental multivariate design over separate univariate designs is that using the multivariate analysis – – – – – – -.

 
 
 
 

17. Correlational multivariate analysis includes

 
 
 
 

18. The goal of multiple regression is to

 
 
 
 

19. In multivariate analysis the distribution of the sample covariance matrix is

 
 
 
 

20. In factor analysis the reliable variance

 
 
 
 

Question 1 of 20

An application of different statistical methods applied to the economic data used to find empirical relationships between economic data is called Econometrics. In other words, Econometrics is “the quantitative analysis of actual economic phenomena based on the concurrent development of theory and observation, related by appropriate methods of inference”.

Online MCQs Multivariate

  • In multivariate analysis Var-Cov matrix is
  • In the relation $\Sigma = V^{1/2} \rho ^{1/2} V^{1/2}$, the $V^{1/2} is called
  • If $X \sim N (\mu, \Sigma)$ then $(X-\mu)’ \Sigma^{-1} (X-\mu)$ is distributed as
  • In multivariate analysis, $n(\overline{x} – \mu)’ S^{-1} (\overline{x} – \mu)$ is called
  • In multivariate analysis the distribution of $\overline{X}$ is
  • In multivariate analysis the distribution of the sample covariance matrix is
  • In factor analysis the reliable variance
  • In principal component analysis (PCA) the first component contains
  • In principal component analysis, the components are
  • In PCA, when the variables are measured in different units then PCs extracted on the basis of
  • The goal of multiple regression is to
  • A multivariate statistic that allows you to investigate the relationship between two sets of variables is
  • Correlational multivariate analysis includes
  • An advantage of using an experimental multivariate design over separate univariate designs is that using the multivariate analysis – – – – – – -.
  • A multivariate statistic that allows you to analyze several dependent variables from an experimental design simultaneously is
  • ——- is used for causal analysis
  • Factor loading is
  • A factor loading of 0.80 means, generally speaking, that
  • A factor is a combination of variables
  • Factor analysis pinpoints the clusters of correlations between variables and for each cluster
MCQs Multivariate itfeature.com
  • Partial Least Squares (PLS) Regression is an example of multivariate analysis (MVA).
  • Multivariate Multiple Regression is a method of modeling multiple dependent variables, with a single set of predictor variables.
  • Testing text and visual elements on a webpage together.
  • An example of multivariate data is Vital signs recorded for a newborn baby: This includes multiple variables such as heart rate, respiratory rate, blood pressure, and temperature.

Online MCQs Multivariate

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Best Econometrics Quiz (2023)

The post is about the Econometrics Quiz. Master core econometric concepts with this series of Econometrics MCQs covering autocorrelation, heteroscedasticity, multicollinearity, and OLS assumptions. Designed for students, researchers, and data analysts, each quiz includes detailed answers to reinforce learning and improve regression analysis skills. Perfect for exam prep, self-assessment, and econometrics proficiency. Click the link below to start with the desired Econometrics Quiz.

MCQs Econometrics Quizzes

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Econometrics Quiz with Answers

An application of different statistical methods to economic data used to find empirical relationships between economic data is called Econometrics. In other words, Econometrics is “the quantitative analysis of actual economic phenomena based on the concurrent development of theory and observation, related by appropriate methods of inference”.

Econometrics means “Economic Measurement”. Econometrics is the quantitative analysis of actual economic phenomena based on the concurrent development of theory and observation, related by appropriate methods of statistical inference.

Econometrics can also be defined as the empirical determination of economic laws. Econometrics can be classified as (i) Theoretical Econometrics and (ii) Applied Econometrics.

MCQs Econometrics Quiz

Econometric methods allow economists to estimate relationships between different economic variables, identify causal relationships, and make informed decisions based on evidence from real-world data. Econometrics is widely used in academia, government, and industry to address a variety of economic questions and inform policy-making.

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