Presentation is loading. Please wait.

Presentation is loading. Please wait.

Review of Probability Concepts ECON 4550 Econometrics Memorial University of Newfoundland Adapted from Vera Tabakova’s notes SECOND.

Similar presentations


Presentation on theme: "Review of Probability Concepts ECON 4550 Econometrics Memorial University of Newfoundland Adapted from Vera Tabakova’s notes SECOND."— Presentation transcript:

1 Review of Probability Concepts ECON 4550 Econometrics Memorial University of Newfoundland Adapted from Vera Tabakova’s notes SECOND

2  B.4.1Mean, median and mode  For a discrete random variable the expected value is: Where f is the discrete PDF of x

3  For a continuous random variable the expected value is: The mean has a flaw as a measure of the center of a probability distribution in that it can be pulled by extreme values.

4  For a continuous distribution the median of X is the value m such that  In symmetric distributions, like the familiar “bell-shaped curve” of the normal distribution, the mean and median are equal.  The mode is the value of X at which the pdf is highest.

5 Where g is any function of x, in particular;

6

7  The variance of a discrete or continuous random variable X is the expected value of The variance

8  The variance of a random variable is important in characterizing the scale of measurement, and the spread of the probability distribution.  Algebraically, letting E(X) = μ,

9  The variance of a constant is?

10 Figure B.3 Distributions with different variances

11

12

13

14

15 Figure B.4 Correlated data

16  If X and Y are independent random variables then the covariance and correlation between them are zero. The converse of this relationship is not true. Covariance and correlation coefficient

17  The correlation coefficient is a measure of linear correlation between the variables  Its values range from -1 (perfect negative correlation) and 1 (perfect positive correlation) Covariance and correlation coefficient

18  If a and b are constants then:

19 So: Why is that? (and of course the same happens for the case of var(X-Y))

20  If X and Y are independent then:

21 Otherwise this expression would have to include all the doubling of each of the (non-zero) pairwise covariances between variables as summands as well

22

23  B.5.1The Normal Distribution  If X is a normally distributed random variable with mean μ and variance σ 2, it can be symbolized as

24 Figure B.5a Normal Probability Density Functions with Means μ and Variance 1

25 Figure B.5b Normal Probability Density Functions with Mean 0 and Variance σ 2

26  A standard normal random variable is one that has a normal probability density function with mean 0 and variance 1.  The cdf for the standardized normal variable Z is

27

28  A weighted sum of normal random variables has a normal distribution.

29

30 Figure B.6 The chi-square distribution

31  A “t” random variable (no upper case) is formed by dividing a standard normal random variable by the square root of an independent chi-square random variable,, that has been divided by its degrees of freedom m.

32 Figure B.7 The standard normal and t (3) probability density functions

33  An F random variable is formed by the ratio of two independent chi- square random variables that have been divided by their degrees of freedom.

34 Figure B.8 The probability density function of an F random variable

35 Slide B-35 Principles of Econometrics, 3rd Edition  binary variable  binomial random variable  cdf  chi-square distribution  conditional pdf  conditional probability  continuous random variable  correlation  covariance  cumulative distribution function  degrees of freedom  discrete random variable  expected value  experiment  F-distribution  joint probability density function  marginal distribution  mean  median  mode  normal distribution  pdf  probability  probability density function  random variable  standard deviation  standard normal distribution  statistical independence  variance


Download ppt "Review of Probability Concepts ECON 4550 Econometrics Memorial University of Newfoundland Adapted from Vera Tabakova’s notes SECOND."

Similar presentations


Ads by Google