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In
probability theory Probability theory is the branch of mathematics concerned with probability. Although there are several different probability interpretations, probability theory treats the concept in a rigorous mathematical manner by expressing it through a set ...
, an event is said to happen almost surely (sometimes abbreviated as a.s.) if it happens with probability 1 (or Lebesgue measure 1). In other words, the set of possible exceptions may be non-empty, but it has probability 0. The concept is analogous to the concept of "
almost everywhere In measure theory (a branch of mathematical analysis), a property holds almost everywhere if, in a technical sense, the set for which the property holds takes up nearly all possibilities. The notion of "almost everywhere" is a companion notion to ...
" in measure theory. In probability experiments on a finite
sample space In probability theory, the sample space (also called sample description space, possibility space, or outcome space) of an experiment or random trial is the set of all possible outcomes or results of that experiment. A sample space is usually den ...
, there is no difference between ''almost surely'' and ''surely'' (since having a probability of 1 often entails including all the
sample point In probability theory, an elementary event, also called an atomic event or sample point, is an event which contains only a single outcome in the sample space. Using set theory terminology, an elementary event is a singleton. Elementary events an ...
s). However, this distinction becomes important when the sample space is an
infinite set In set theory, an infinite set is a set that is not a finite set. Infinite sets may be countable or uncountable. Properties The set of natural numbers (whose existence is postulated by the axiom of infinity) is infinite. It is the only s ...
, because an infinite set can have non-empty subsets of probability 0. Some examples of the use of this concept include the strong and uniform versions of the law of large numbers, and the continuity of the paths of
Brownian motion Brownian motion, or pedesis (from grc, πήδησις "leaping"), is the random motion of particles suspended in a medium (a liquid or a gas). This pattern of motion typically consists of random fluctuations in a particle's position insi ...
. The terms almost certainly (a.c.) and almost always (a.a.) are also used. Almost never describes the opposite of ''almost surely'': an event that happens with probability zero happens ''almost never''.


Formal definition

Let (\Omega,\mathcal,P) be a
probability space In probability theory, a probability space or a probability triple (\Omega, \mathcal, P) is a mathematical construct that provides a formal model of a random process or "experiment". For example, one can define a probability space which models t ...
. An event E \in \mathcal happens ''almost surely'' if P(E)=1. Equivalently, E happens almost surely if the probability of E not occurring is
zero 0 (zero) is a number representing an empty quantity. In place-value notation such as the Hindu–Arabic numeral system, 0 also serves as a placeholder numerical digit, which works by multiplying digits to the left of 0 by the radix, usual ...
: P(E^C) = 0. More generally, any event E \subseteq \Omega (not necessarily in \mathcal) happens almost surely if E^C is contained in a null set: a subset N in \mathcal F such that The notion of almost sureness depends on the probability measure P. If it is necessary to emphasize this dependence, it is customary to say that the event E occurs ''P''-almost surely, or almost surely ''\left(\!P\right)''.


Illustrative examples

In general, an event can happen "almost surely", even if the probability space in question includes outcomes which do not belong to the event—as the following examples illustrate.


Throwing a dart

Imagine throwing a dart at a unit square (a square with an area of 1) so that the dart always hits an exact point in the square, in such a way that each point in the square is equally likely to be hit. Since the square has area 1, the probability that the dart will hit any particular subregion of the square is equal to the area of that subregion. For example, the probability that the dart will hit the right half of the square is 0.5, since the right half has area 0.5. Next, consider the event that the dart hits exactly a point in the diagonals of the unit square. Since the area of the diagonals of the square is 0, the probability that the dart will land exactly on a diagonal is 0. That is, the dart will ''almost never'' land on a diagonal (equivalently, it will ''almost surely'' not land on a diagonal), even though the set of points on the diagonals is not empty, and a point on a diagonal is no less possible than any other point.


Tossing a coin repeatedly

Consider the case where a (possibly biased) coin is tossed, corresponding to the probability space (\, 2^, P), where the event \ occurs if a head is flipped, and \ if a tail is flipped. For this particular coin, it is assumed that the probability of flipping a head is P(H) = p\in (0,1), from which it follows that the complement event, that of flipping a tail, has probability P(T) = 1 - p. Now, suppose an experiment were conducted where the coin is tossed repeatedly, with outcomes \omega_1,\omega_2,\ldots and the assumption that each flip's outcome is independent of all the others (i.e., they are
independent and identically distributed In probability theory and statistics, a collection of random variables is independent and identically distributed if each random variable has the same probability distribution as the others and all are mutually independent. This property is usual ...
; ''i.i.d''). Define the sequence of random variables on the coin toss space, (X_i)_ where X_i(\omega)=\omega_i. ''i.e.'' each X_i records the outcome of the ith flip. In this case, any infinite sequence of heads and tails is a possible outcome of the experiment. However, any particular infinite sequence of heads and tails has probability 0 of being the exact outcome of the (infinite) experiment. This is because the ''i.i.d.'' assumption implies that the probability of flipping all heads over n flips is simply P(X_i = H, \ i=1,2,\dots,n)=\left(P(X_1 = H)\right)^n = p^n. Letting n\rightarrow\infty yields 0, since p\in (0,1) by assumption. The result is the same no matter how much we bias the coin towards heads, so long as we constrain p to be strictly between 0 and 1. In fact, the same result even holds in non-standard analysis—where infinitesimal probabilities are not allowed. Moreover, the event "the sequence of tosses contains at least one T" will also happen almost surely (i.e., with probability 1). But if instead of an infinite number of flips, flipping stops after some finite time, say 1,000,000 flips, then the probability of getting an all-heads sequence, p^, would no longer be 0, while the probability of getting at least one tails, 1 - p^, would no longer be 1 (i.e., the event is no longer almost sure).


Asymptotically almost surely

In asymptotic analysis, a property is said to hold ''asymptotically almost surely'' (a.a.s.) if over a sequence of sets, the probability converges to 1. For instance, in number theory, a large number is asymptotically almost surely
composite Composite or compositing may refer to: Materials * Composite material, a material that is made from several different substances ** Metal matrix composite, composed of metal and other parts ** Cermet, a composite of ceramic and metallic materials ...
, by the prime number theorem; and in random graph theory, the statement "G(n,p_n) is
connected Connected may refer to: Film and television * ''Connected'' (2008 film), a Hong Kong remake of the American movie ''Cellular'' * '' Connected: An Autoblogography About Love, Death & Technology'', a 2011 documentary film * ''Connected'' (2015 TV ...
" (where G(n,p) denotes the graphs on n vertices with edge probability p) is true a.a.s. when, for some \varepsilon > 0 :p_n > \frac n.    In
number theory Number theory (or arithmetic or higher arithmetic in older usage) is a branch of pure mathematics devoted primarily to the study of the integers and integer-valued functions. German mathematician Carl Friedrich Gauss (1777–1855) said, "Mat ...
, this is referred to as " almost all", as in "almost all numbers are composite". Similarly, in graph theory, this is sometimes referred to as "almost surely".


See also

*
Almost In set theory, when dealing with sets of infinite size, the term almost or nearly is used to refer to all but a negligible amount of elements in the set. The notion of "negligible" depends on the context, and may mean "of measure zero" (in a me ...
*
Almost everywhere In measure theory (a branch of mathematical analysis), a property holds almost everywhere if, in a technical sense, the set for which the property holds takes up nearly all possibilities. The notion of "almost everywhere" is a companion notion to ...
, the corresponding concept in measure theory *
Convergence of random variables In probability theory, there exist several different notions of convergence of random variables. The convergence of sequences of random variables to some limit random variable is an important concept in probability theory, and its applications to ...
, for "almost sure convergence" *
Cromwell's rule Cromwell's rule, named by statistician Dennis Lindley, states that the use of prior probabilities of 1 ("the event will definitely occur") or 0 ("the event will definitely not occur") should be avoided, except when applied to statements that ar ...
, which says that probabilities should almost never be set as zero or one *
Degenerate distribution In mathematics, a degenerate distribution is, according to some, a probability distribution in a space with support only on a manifold of lower dimension, and according to others a distribution with support only at a single point. By the latter d ...
, for "almost surely constant" * Infinite monkey theorem, a theorem using the aforementioned terms * List of mathematical jargon


Notes


References

* *{{cite book , last=Williams , first=David , title=Probability with Martingales , date=1991 , series=Cambridge Mathematical Textbooks , publisher=Cambridge University Press , isbn=978-0521406055 Probability theory Mathematical terminology