Subject: Business Statistics
When the population (or potential outcomes) are discrete, discrete random variables are created.
Example: After three coin tosses, we have
S = {HHH, HHT, HTH, HTT, THH, THT, TTH, TTT}
If the number of heads observed were the variable of interest, x, then possible events would include:
{x =0}= {TTT}
{x =1}= {HTT, THT, TTH}
{x =2}= {HHT, HTH, THH}
{x =3}= {HHH}.
The key concern is determining the likelihood of each of these events. Despite the fact that the sample space contains both heads and tails, keep in mind that X catch integer values.
We may find it more useful to numerically express a certain quality or attribute of experiment results in cases where our interest is not in the experiment's results per se. For instance, if there are three births, our intention might be to determine the likelihood that there will be three boys. Think about the 8 equally likely sample points in the sample space.
GGG GGB GBG BGG
GBB BGB BBG BBB
Look at the 'number of males out of three births' variable. This number can have values of 0, 1, 2, or 3, and it is random—given to chance. It fluctuates between sample locations in the sample space.
A random variable is an uncertain quantity whose outcome depends on chance.
Any of the following may be a random variable:
A random variable has a probability law, which is a grammar that relates probabilities to the variable's various values.
The probability distribution of the random variable is sometimes referred to as the probability assignment. We use X to represent the random variable.
The expected value, sum, or integration of potential results from a random variable is known as a mathematical expectation. We also refer to it as the result of the likelihood of an event happening and the value associated with the event's actual observed occurrence.
The crucial characteristic of any random number is the anticipated outcome. E(x) stands for mathematical expectation, which is calculated using the formula below.
E(X)= Σ (x1p1, x2p2, …, xnpn)
Where,
X=random variable with the probability function f(x)
P=probability of occurrences
n = number of all possible values.
When event A does not occur, an indicator variable's mathematical expectation can be zero (0), and when event A does occur, the indicator variable's mathematical expectation can be one (1). (1).
Example:
Consider the following table:
Tickets |
1 |
2 |
3 |
4 |
5 |
No. of tickets |
10 |
20 |
40 |
20 |
10 |
Determine the likelihood that the withdrawal ticket contains the number 1, assuming that each and every ticket will only have one number.
Solution:
Let tickets = x
No of tickets = f
Now,
Tickets (x) |
No. of tickets (f) |
Probability P(x) |
Mathematical expectation(E(x)) |
1 |
10 |
0.1 |
0.1 |
2 |
20 |
0.2 |
0.4 |
3 |
40 |
0.4 |
1.2 |
4 |
20 |
0.2 |
0.8 |
5 |
10 |
0.1 |
0.5 |
Total |
∑f=100 |
∑p(x)=1 |
∑E(x)=30 |
Therefore, the mathematical expectation of getting 1 is,
E(x1)= ∑x1.P(x1)
=1*0.1
=0.1
References
Chaudary, A.K. (2061).Business statistics. kathmandu:Bhundipuran Prakshan
Dhakal Bashanta (2014).Business Statistics,Buddha academic publisher
Sthapit, Azaya Bikram(2006),Business Statistics,Asmita publication
© 2021 Saralmind. All Rights Reserved.