- It is often important to allocate a numerical description to the outcome of a statistical experiment.
- These values are random quantities determined by the outcome of the experiment.
- Definition 3.1:
- We use a capital letter, say , to denote a random variable and its corresponding small letter , in this case, for one of its value.
- One and only one numerical value is assigned to each sample point .
- Example 3.1: Two balls are drawn in succession without replacement from an box containing 4 red balls and 3 black balls.
- The possible outcomes and the values y of the random variable Y, where Y is the number of red balls, are
Sample |
|
Space |
y |
RR |
2 |
RB |
1 |
BR |
1 |
BB |
0 |
Example: Number of defective (D) products when 3 products are tested.
Outcomes in |
: value |
Sample Space |
of |
DDD |
3 |
DDN |
2 |
DND |
2 |
DNN |
1 |
NDD |
2 |
NDN |
1 |
NND |
1 |
NNN |
0 |
- Example 3.3: Components from the production line are defective or not defective.
- Define the random variable by
- This random variable is categorical in nature.
- Example 3.5: A process will be evaluated by sampling items until a defective item is observed.
- Define by the number of consecutive items observed
Sample |
|
Space |
x |
D |
1 |
ND |
2 |
NND |
3 |
&vellip#vdots; |
&vellip#vdots; |
- According to the countability of the sample space which is measurable, it can be either discrete or continuous.
- Discrete random variable: If a random variable take on only a countable number of distinct values.
- If the set of possible outcomes is countable
- Often represent count data, such as the number of defectives, highway fatalities
- Continuous random variable: If a random variable can take on values on a continuous scale.
- often represent measured data, such as heights, weights, temperatures, distance or life periods
- Definition 3.2:
- Definition 3.3:
Cem Ozdogan
2012-02-15