Chapter 2: Probability - Auckland
• conditional probability, and what you can and can’t do with conditional expressions; ... • calculating probabilities for continuous and discrete random variables. 2.1 Sample spaces and events Definition: A sample space, Ω, is a set of possible outcomes of a random experiment. Definition: An event, A, is a subset of the sample space.
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