Probability axioms
The probability <math>P</math> of some event <math>E</math> (denoted <math>P(E)</math>) is defined with respect to a "universe" or sample space <math>S</math> of all possible elementary events in such a way that <math>P</math> must satisfy the Kolmogorov axioms.
Alternatively, a probability can be interpreted as a measure on a sigma-algebra of subsets of the sample space, those subsets being the events, such that the measure of the whole set equals 1. This property is important, since it gives rise to the natural concept of conditional probability. Every set <math>A</math> with non-zero probability defines another probability on the space:
In the case that the sample space is finite or countably infinite, a probability function can also be defined by its values on the elementary events <math>\{e_1\}, \{e_2\}, ...</math> where <math>S = {e_1, e_2, ...}</math>
Kolmogorov axioms
First axiomFor any set <math>E</math>:
Second axiom
Third axiomAny sequence of mutually disjoint events <math>E_1, E_2, ...</math> satisfies
These axioms are known as the Kolmogorov axioms, after Andrey Kolmogorov who developed them.
Lemmas in probabilityFrom these axioms one can deduce other useful rules for calculating probabilities. For example:
That is, the probability that A or B will happen is the sum of the probabilities that A will happen and that B will happen, minus the probability that A and B will happen.
That is, the probability that any event will not happen is 1 minus the probability that it will. Using conditional probability as defined above, it also follows immediately that:
That is, the probability that A and B will happen is the probability that A will happen, times the probability that B will happen given that A happened. It then follows that A and B are independent if and only if
See alsofrequency probability -- personal probability -- eclectic probability -- statistical regularity
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