Sample Space
In the context of probability theory, the sample space is a fundamental concept that refers to the set of all possible outcomes of a random experiment or event
In the context of probability theory, the sample space is a fundamental concept that refers to the set of all possible outcomes of a random experiment or event. It is denoted by the symbol “S”.
Let’s consider an example to understand the concept better. Suppose we are rolling a fair six-sided die. The sample space in this case would be {1, 2, 3, 4, 5, 6}. These are all the possible outcomes we can get when rolling the die.
The sample space can have different forms depending on the experiment or event being considered. It can be finite, like in the die rolling example, or infinite for certain situations. For instance, if we were to measure the height of all students in a school, the sample space would be an infinite set since there is no upper limit to height.
The sample space is crucial in probability theory as it forms the basis for determining probabilities. In order to calculate probabilities, we need to know all the possible outcomes in the sample space, and then assign probabilities to each outcome.
It’s important to note that the sample space should be exhaustive, meaning that it should include all possible outcomes, and mutually exclusive, meaning that no two outcomes can occur simultaneously. These two properties ensure that all outcomes are accounted for and do not overlap, resulting in a complete and accurate description of the experiment or event.
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