The standard probability axioms are the foundations of probability theory introduced by Russian mathematician Andrey Kolmogorov in 1933.[1] These axioms remain central and have direct contributions to mathematics, the physical sciences, and real-world probability cases.[2]
There are several other (equivalent) approaches to formalising probability. Bayesians will often motivate the Kolmogorov axioms by invoking Cox's theorem or the Dutch book arguments instead.[3][4]
The probability of an event is a non-negative real number:
where is the event space. It follows (when combined with the second axiom) that is always finite, in contrast with more general measure theory. Theories which assign negative probability relax the first axiom.
From the Kolmogorov axioms, one can deduce other useful rules for studying probabilities. The proofs[6][7][8] of these rules are a very insightful procedure that illustrates the power of the third axiom, and its interaction with the prior two axioms. Four of the immediate corollaries and their proofs are shown below:
In order to verify the monotonicity property, we set and , where and for . From the properties of the empty set (), it is easy to see that the sets are pairwise disjoint and . Hence, we obtain from the third axiom that
Since, by the first axiom, the left-hand side of this equation is a series of non-negative numbers, and since it converges to which is finite, we obtain both and .
This is called the addition law of probability, or the sum rule.
That is, the probability that an event in AorB will happen is the sum of the probability of an event in A and the probability of an event in B, minus the probability of an event that is in both AandB. The proof of this is as follows:
Firstly,
. (by Axiom 3)
So,
(by ).
Also,
and eliminating from both equations gives us the desired result.
Consider a single coin-toss, and assume that the coin will either land heads (H) or tails (T) (but not both). No assumption is made as to whether the coin is fair or as to whether or not any bias depends on how the coin is tossed.[9]
We may define:
Kolmogorov's axioms imply that:
The probability of neither heads nor tails, is 0.
The probability of either heads or tails, is 1.
The sum of the probability of heads and the probability of tails, is 1.
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^ abRoss, Sheldon M. (2014). A first course in probability (Ninth ed.). Upper Saddle River, New Jersey. pp. 27, 28. ISBN978-0-321-79477-2. OCLC827003384.{{cite book}}: CS1 maint: location missing publisher (link)
^Gerard, David (December 9, 2017). "Proofs from axioms"(PDF). Retrieved November 20, 2019.