Martingale (probability theory)
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Martingale (probability theory)
A stopped Brownian motion as an example for a martingale
HistoryOriginally, martingale referred to a class of betting strategies that was popular in 18th century France.[1] The simplest of these strategies was designed for a game in which the gambler wins his stake if a coin comes up heads and loses it if the coin comes up tails. The strategy had the gambler double his bet after every loss, so that the first win would recover all previous losses plus win a profit equal to the original stake. Since as the gambler's wealth and available time jointly approach infinity his probability of eventually flipping heads approaches 1, the martingale betting strategy was seen as a sure thing by those who practiced it. Of course in reality the exponential growth of the bets would eventually bankrupt those foolish enough to use the martingale for a long time. The concept of martingale in probability theory was introduced by Paul Pierre Lévy, and much of the original development of the theory was done by Joseph Leo Doob. Part of the motivation for that work was to show the impossibility of successful betting strategies. DefinitionsA discrete-time martingale is a discrete-time stochastic process (i.e., a sequence of random variables) X1, X2, X3, ... that satisfies for all n
i.e., the conditional expected value of the next observation, given all the past observations, is equal to the last observation. Somewhat more generally, a sequence Y1, Y2, Y3, ... is said to be a martingale with respect to another sequence X1, X2, if for all n
Similarly, a continuous-time martingale with respect to the stochastic process Xt is a stochastic process Yt such that for all t
This expresses the property that the conditional expectation of an observation at time t, given all the observations up to time s , is equal to the observation at time s (of course, provided that s ? t). In full generality, a stochastic process Y : T × ? ? S is a martingale with respect to a filtration ?? and probability measure P if
It is important to note that the property of being a martingale involves both the filtration and the probability measure (with respect to which the expectations are taken). It is possible that Y could be a martingale with respect to one measure but not another one; the Girsanov theorem offers a way to find a measure with respect to which an It? process is a martingale. Examples of martingales
Martingales and stopping timesSee also: optional stopping theorem A stopping time with respect to a sequence of random variables X1, X2, X3, ... is a random variable ? with the property that for each t, the occurrence or non-occurrence of the event ? = t depends only on the values of X1, X2, X3, ..., Xt. The intuition behind the definition is that at any particular time t, you can look at the sequence so far and tell if it is time to stop. An example in real life might be the time at which a gambler leaves the gambling table, which might be a function of his previous winnings (for example, he might leave only when he goes broke), but he can't choose to go or stay based on the outcome of games that haven't been played yet. Some mathematicians defined the concept of stopping time by requiring only that the occurrence or non-occurrence of the event ? = t be probabilistically independent of Xt + 1, Xt + 2, ... but not that it be completely determined by the history of the process up to time t. That is a weaker condition than the one appearing in the paragraph above, but is strong enough to serve in some of the proofs in which stopping times are used. The optional stopping theorem (or optional sampling theorem) says that, under certain conditions, the expected value of a martingale at a stopping time is equal to its initial value. We can use it, for example, to prove the impossibility of successful betting strategies for a gambler with a finite lifetime and a house limit on bets. Submartingales and supermartingalesA (discrete-time) submartingale is a sequence X_1,X_2,X_3,... of integrable random variables satisfying
Analogously a (discrete-time) supermartingale satisfies
The more general definitions of both discrete-time and continuous-time martingales given earlier can be converted into the corresponding definitions of sub/supermartingales in the same way by replacing the equality for the conditional expectation by an inequality. Here is a mnemonic for remembering which is which: "Life is a supermartingale; as time advances, expectation decreases." Examples of submartingales and supermartingales
A more general definitionOne can define a martingale which is an uncountable family of random variables. Also, those random variables may take values in a more general space than just the real numbers. Let \scriptstyle \mathcal{I} be a directed set, \scriptstyle V be a real topological vector space, and \scriptstyle V^\star its topological dual (denote by \scriptstyle\left( \cdot, \cdot\right) this duality). Moreover, let \scriptstyle \left( \Omega, \mathbb{P}, \mathcal{F}, \mathcal{F}_i\right) be a filtered probability space, that is a probability space \scriptstyle \left( \Omega, \mathbb{P}, \mathcal{F}\right) equipped with a family of sigma-algebras \scriptstyle \{\mathcal{F}_i\}_{i \in \mathcal{I}} with the following property: for each \scriptstyle i, j \in \mathcal{I} with \scriptstyle i \leq j , one has \scriptstyle \mathcal{F}_i \subset \mathcal{F}_j \subset \mathcal{F} . A family of random variables \scriptstyle \{X_i\}_{i \in \mathcal{I}} :
is called a martingale if for each \scriptstyle u \in V^\star and \scriptstyle i, j \in \mathcal{I} with \scriptstyle i \leq j , the three following properties are satisfied:
If the directed set \scriptstyle \mathcal{I} is a real interval (or the whole real axis, or a semiaxis) then a martingale is called a continuous time martingale. If \scriptstyle \mathcal{I} is the set of natural numbers it is called a discrete time martingale. See also
Notes
References
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