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---
title: "Martingale"
sort_title: "Martingale"
date: 2021-10-31
categories:
- Mathematics
- Stochastic analysis
layout: "concept"
---
A **martingale** is a type of
[stochastic process](/know/concept/stochastic-process/)
with important and useful properties,
especially for stochastic calculus.
For a stochastic process $$\{ M_t : t \ge 0 \}$$
on a probability filtered space $$(\Omega, \mathcal{F}, \{ \mathcal{F}_t \}, P)$$,
then $$M_t$$ is a martingale if it satisfies all of the following:
1. $$M_t$$ is $$\mathcal{F}_t$$-adapted, meaning
the filtration $$\mathcal{F}_t$$ contains enough information
to reconstruct the current and all past values of $$M_t$$.
2. For all times $$t \ge 0$$, the expectation value $$\mathbf{E}(M_t)$$ is finite.
3. For all $$s, t$$ satisfying $$0 \le s \le t$$,
the [conditional expectation](/know/concept/conditional-expectation/)
$$\mathbf{E}(M_t | \mathcal{F}_s) = M_s$$,
meaning the increment $$M_t \!-\! M_s$$ is always expected
to be zero $$\mathbf{E}(M_t \!-\! M_s | \mathcal{F}_s) = 0$$.
The last condition is called the **martingale property**,
and basically means that a martingale is an unbiased random walk.
Accordingly, the [Wiener process](/know/concept/wiener-process/) $$B_t$$
(Brownian motion) is an example of a martingale,
since each of its increments $$B_t \!-\! B_s$$ has mean $$0$$ by definition.
Martingales are easily confused with
[Markov processes](/know/concept/markov-process/),
because stochastic processes will often be both,
e.g. the Wiener process.
However, these are distinct concepts:
the martingale property says nothing about history-dependence,
and the Markov property does not say *what* the future expectation should be.
Modifying property (3) leads to two common generalizations.
The stochastic process $$M_t$$ above is a **submartingale**
if the current value is a lower bound for the expectation:
3. For $$0 \le s \le t$$, the conditional expectation
$$\mathbf{E}(M_t | \mathcal{F}_s) \ge M_s$$.
Analogouly, $$M_t$$ is a **supermartingale**
if the current value is an upper bound instead:
3. For $$0 \le s \le t$$, the conditional expectation
$$\mathbf{E}(M_t | \mathcal{F}_s) \le M_s$$.
Clearly, submartingales and supermartingales are *biased* random walks,
since they will tend to increase and decrease with time, respectively.
## References
1. U.H. Thygesen,
*Lecture notes on diffusions and stochastic differential equations*,
2021, Polyteknisk Kompendie.
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