Normalisation (probability): Difference between revisions
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In mathematical probability | In [[mathematics|mathematical]] [[probability]] [[equation]]s, which are used in nearly all branches of [[science]], a '''normalization''' constant (or function) is often used to ensure that the sum of all probabilities totals one, or | ||
<math> \sum{P_\mathrm{i}} = 1 </math> | <math> \sum{P_\mathrm{i}} = 1 </math> | ||
Probability distributions can be divided into two main groups | Probability distributions can be divided into two main groups: discrete probability distributions and continuous probability distributions. | ||
==Discrete Probabilty Distributions== | |||
Discrete probability distributions are used throughout gaming theory. Consider the simple example of rolling a pair of six-sided dice. Summing up the total roll of the dice yields the following possibilities: | |||
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== | ==Continuous probability distributions== | ||
In most scientific equations, probability functions are continuous functions, and the probability coefficients are sometimes functions rather than constants. | In most scientific equations, probability functions are continuous functions, and the probability coefficients are sometimes functions rather than constants. |
Revision as of 23:28, 13 October 2007
In mathematical probability equations, which are used in nearly all branches of science, a normalization constant (or function) is often used to ensure that the sum of all probabilities totals one, or
Probability distributions can be divided into two main groups: discrete probability distributions and continuous probability distributions.
Discrete Probabilty Distributions
Discrete probability distributions are used throughout gaming theory. Consider the simple example of rolling a pair of six-sided dice. Summing up the total roll of the dice yields the following possibilities:
Total (i) | Possible outcomes (Dice1,Dice2) | occurances (ni) |
---|---|---|
2 | (1,1) | 1 |
3 | (1,2), (2,1) | 2 |
4 | (1,3), (3,1), (2,2) | 3 |
5 | (1,4), (4,1), (2,3), (3,2) | 4 |
6 | (1,5), (5,1), (2,4), (4,2), (3,3) | 5 |
7 | (1,6), (6,1), (2,5), (5,2), (3,4), (4,3) | 6 |
8 | (2,6), (6,2), (5,3), (3,5), (4,4) | 5 |
9 | (3,6), (6,3), (4,5), (5,4) | 4 |
10 | (4,6), (6,4), (5,5) | 3 |
11 | (5,6), (6,5) | 2 |
12 | (6,6) | 1 |
Since the probability of any particular outcome is proportional to the number of ways it can occur
where is a coefficient of probability for outcome i. Assuming the dice are symmetrical we assume all values of are equal and their sum equals 1.
Solving for N yields 1/36, the number of possible outcomes, so that the probability of total = i occuring are
, and the sum of all probabilities is one
Continuous probability distributions
In most scientific equations, probability functions are continuous functions, and the probability coefficients are sometimes functions rather than constants.