Upper and lower probabilities

Upper and lower probabilities are representations of imprecise probability. Whereas probability theory uses a single number, the probability, to describe how likely an event is to occur, this method uses two numbers: the upper probability of the event and the lower probability of the event.

Because frequentist statistics disallows metaprobabilities, frequentists have had to propose new solutions. Cedric Smith and Arthur Dempster each developed a theory of upper and lower probabilities. Glenn Shafer developed Dempster's theory further, and it is now known as Dempster-Shafer theory (see also Choquet53). More precisely, in these authors one considers in a power set, $$P(S)\,\!$$, a mass function $$m : P(S)\rightarrow R$$ satisfying the conditions


 * $$m(\varnothing) = 0 \,\,\,\,\,\,\! ; \,\,\,\,\,\, \sum_{A \in P(X)} m(A) = 1. \,\!$$

In turn, a mass is associated with two non-additive continuous measures called belief and plausibility defined as follows:


 * $$\operatorname{bel}(A) = \sum_{B \mid B \subseteq A} m(B)\,\,\,\,;\,\,\,\,

\operatorname{pl}(A) = \sum_{B \mid B \cap A \ne \varnothing} m(B)$$

A different notion of upper and lower probabilities is obtained by the lower and upper envelopes obtained from a class C of probability distributions by setting
 * $$\operatorname{env_1}(A) = \inf_{p \in C} p(A)\,\,\,\,;\,\,\,\,

\operatorname{env_2}(A) = \sup_{p \in C} p(A)$$

The upper and lower probabilities are also related with probabilistic logic (see Gerla94).

Observe also that a necessity measure can be seen as a lower probability and a possibility measure can be seen as an upper probability.