Martingale Stopped Values: Uniform Integrability Proof

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Martingale Stopped Values: Uniform Integrability Proof

Hey guys! Today, we're diving deep into the fascinating world of martingales, specifically focusing on proving that the stopped values of a martingale are uniformly integrable. This is a crucial concept in stochastic processes, especially when dealing with convergence theorems and applications in areas like mathematical finance. So, buckle up, and let's get started!

Understanding Martingales and Uniform Integrability

Before we jump into the proof, let's make sure we're all on the same page regarding the key concepts. A martingale is, simply put, a stochastic process that, on average, stays the same over time. More formally, a stochastic process (Mt)t0(M_t)_{t \geq 0} is a martingale with respect to a filtration (Ft)t0(\mathcal{F}_t)_{t \geq 0} if:

  1. MtM_t is Ft\mathcal{F}_t-measurable for all tt.
  2. E[Mt]<E[|M_t|] < \infty for all tt.
  3. E[Mt+sFt]=MtE[M_{t+s} | \mathcal{F}_t] = M_t for all t,s0t, s \geq 0.

In simpler terms, the best prediction for the future value of the martingale, given all the information we have up to time tt, is just its current value at time tt.

Now, what about uniform integrability? A family of random variables (Xi)iI(X_i)_{i \in I} is said to be uniformly integrable if for every ϵ>0\epsilon > 0, there exists a K>0K > 0 such that:

supiIE[Xi1Xi>K]<ϵ\sup_{i \in I} E[|X_i| \cdot \mathbb{1}_{|X_i| > K}] < \epsilon

Intuitively, uniform integrability means that the tails of the distributions of the random variables in the family are uniformly small. This is a stronger condition than just having the random variables be bounded in L1L^1.

Why is uniform integrability important? Well, it plays a crucial role in ensuring that convergence in L1L^1 implies convergence of expectations. Specifically, if XnXX_n \to X in L1L^1 and the sequence (Xn)(X_n) is uniformly integrable, then E[Xn]E[X]E[X_n] \to E[X]. This is essential for many applications, especially when dealing with limits of stochastic processes.

The Stopped Values of a Martingale

Now, let's introduce the concept of a stopping time. A stopping time τ\tau with respect to a filtration (Ft)t0(\mathcal{F}_t)_{t \geq 0} is a random variable taking values in [0,][0, \infty] such that for every t0t \geq 0, the event τt{\tau \leq t} is in Ft\mathcal{F}_t. In other words, whether or not the stopping time has occurred by time tt is determined by the information available up to time tt.

The stopped value of a martingale MtM_t at a stopping time τ\tau is simply MτM_{\tau}. More formally, we define:

Mτ=Mτ(ω)(ω)M_{\tau} = M_{\tau(\omega)}(\omega)

where ω\omega represents a sample path. Stopped martingales are incredibly useful for analyzing the behavior of martingales at random times. They appear frequently in option pricing theory, sequential analysis, and other areas of stochastic modeling.

Proving Uniform Integrability of Stopped Values

Okay, let's get to the heart of the matter: proving that the stopped values of a martingale are uniformly integrable. Suppose (Mt)t0(M_t)_{t \geq 0} is a martingale and τ\tau is a stopping time. We want to show that the family of random variables (Mτ1τ<)(M_{\tau} \mathbb{1}_{\tau < \infty}) is uniformly integrable. We will assume that M0=0M_0 = 0 to simplify the calculations (otherwise consider MtM0M_t - M_0).

Here's the general idea of the proof:

  1. Relate the stopped value to the maximum of the martingale: Show that E[Mτ]2E[supt0Mt]E[|M_{\tau}|] \leq 2 E[\sup_{t \geq 0} |M_t|].
  2. Use Doob's maximal inequality: This inequality provides a bound on the expected value of the supremum of the martingale. Specifically, for any c>0c > 0, P(supt0Mt>c)E[M]cP(\sup_{t \geq 0} |M_t| > c) \leq \frac{E[|M_{\infty}|]}{c}, where MM_{\infty} is the limit of the martingale (assuming it converges).
  3. Apply the dominated convergence theorem: Show that as cc \to \infty, the tails of the distribution of Mτ|M_{\tau}| become uniformly small.

Now, let's dive into the details:

Let AFA \in \mathcal{F}_\infty. We have:

E[Mτ1A]=E[t=0Mt1τ=t1A]=t=0E[Mt1τ=t1A]=t=0E[E[MFt]1τ=t1A]=t=0E[M1τ=t1A]=E[M1A1τ<]E[M_{\tau} \mathbb{1}_A] = E[\sum_{t=0}^{\infty} M_t \mathbb{1}_{\tau = t} \mathbb{1}_A] = \sum_{t=0}^{\infty} E[M_t \mathbb{1}_{\tau = t} \mathbb{1}_A] = \sum_{t=0}^{\infty} E[E[M_{\infty} | \mathcal{F}_t] \mathbb{1}_{\tau = t} \mathbb{1}_A] = \sum_{t=0}^{\infty} E[M_{\infty} \mathbb{1}_{\tau = t} \mathbb{1}_A] = E[M_{\infty} \mathbb{1}_A \mathbb{1}_{\tau < \infty}]

Therefore, E[MτF]=M1τ<E[M_{\tau} | \mathcal{F}_\infty] = M_{\infty} \mathbb{1}_{\tau < \infty}. This implies that Mτ1τ<=E[MF]1τ<M_{\tau} \mathbb{1}_{\tau < \infty} = E[M_{\infty} | \mathcal{F}_\infty] \mathbb{1}_{\tau < \infty}, and thus E[Mτ]E[M]E[|M_{\tau}|] \leq E[|M_{\infty}|].

Now, let K>0K > 0. We have:

E[Mτ1Mτ>K]=E[E[MF]1E[MF]>K]E[E[MF]1E[MF]>K]=E[M1E[MF]>K]E[|M_{\tau}| \mathbb{1}_{|M_{\tau}| > K}] = E[|E[M_{\infty} | \mathcal{F}_\infty]| \mathbb{1}_{|E[M_{\infty} | \mathcal{F}_\infty]| > K}] \leq E[E[|M_{\infty}| | \mathcal{F}_\infty] \mathbb{1}_{|E[M_{\infty} | \mathcal{F}_\infty]| > K}] = E[|M_{\infty}| \mathbb{1}_{|E[M_{\infty} | \mathcal{F}_\infty]| > K}]

Since E[M]<E[|M_{\infty}|] < \infty, we know that MM_{\infty} is integrable. As KK \to \infty, E[M1M>K]0E[|M_{\infty}| \mathbb{1}_{|M_{\infty}| > K}] \to 0. Also, since E[MF]E[MF]|E[M_{\infty} | \mathcal{F}_\infty]| \leq E[|M_{\infty}| | \mathcal{F}_\infty], if E[MF]>K|E[M_{\infty} | \mathcal{F}_\infty]| > K, then M|M_{\infty}| must be large enough, so the expectation goes to zero.

By the dominated convergence theorem, as KK \to \infty, E[M1E[MF]>K]0E[|M_{\infty}| \mathbb{1}_{|E[M_{\infty} | \mathcal{F}_\infty]| > K}] \to 0. Therefore, for any ϵ>0\epsilon > 0, there exists a K>0K > 0 such that E[Mτ1Mτ>K]<ϵE[|M_{\tau}| \mathbb{1}_{|M_{\tau}| > K}] < \epsilon. This proves that the stopped values of the martingale are uniformly integrable.

An Alternative Proof

Here's another way to approach the proof, which relies on Doob's maximal inequality more explicitly.

Let Mt=sup0stMsM_t^* = \sup_{0 \leq s \leq t} |M_s|. By Doob's maximal inequality, for any c>0c > 0:

P(Mt>c)E[Mt]cP(M_t^* > c) \leq \frac{E[|M_t|]}{c}

Since MtM_t is a martingale, E[Mt]=E[M0]E[|M_t|] = E[|M_0|], which is constant. Let's assume M0=0M_0 = 0. Thus, E[Mt]=0E[|M_t|] = 0 and P(Mt>c)=0P(M_t^* > c) = 0 for all c>0c > 0.

Now, consider E[Mτ1Mτ>c]E[|M_{\tau}| \mathbb{1}_{|M_{\tau}| > c}]. We can write this as:

E[Mτ1Mτ>c]=E[Mτ1Mτ>c,τt]+E[Mτ1Mτ>c,τ>t]E[|M_{\tau}| \mathbb{1}_{|M_{\tau}| > c}] = E[|M_{\tau}| \mathbb{1}_{|M_{\tau}| > c, \tau \leq t}] + E[|M_{\tau}| \mathbb{1}_{|M_{\tau}| > c, \tau > t}]

For the first term:

E[Mτ1Mτ>c,τt]E[Mt1Mt>c]0E[|M_{\tau}| \mathbb{1}_{|M_{\tau}| > c, \tau \leq t}] \leq E[M_t^* \mathbb{1}_{M_t^* > c}] \to 0 as cc \to \infty because MtM_t^* is integrable due to Doob's LpL^p maximal inequality.

For the second term, we know that P(τ>t)0P(\tau > t) \to 0 as tt \to \infty. Therefore, E[Mτ1Mτ>c,τ>t]E[Mτ1τ>t]0E[|M_{\tau}| \mathbb{1}_{|M_{\tau}| > c, \tau > t}] \leq E[|M_{\tau}| \mathbb{1}_{\tau > t}] \to 0 as tt \to \infty.

Combining these results, we have:

limcsupτE[Mτ1Mτ>c]=0\lim_{c \to \infty} \sup_{\tau} E[|M_{\tau}| \mathbb{1}_{|M_{\tau}| > c}] = 0

This confirms that the stopped values of the martingale are uniformly integrable.

Why This Matters

Understanding that the stopped values of a martingale are uniformly integrable is not just an abstract theoretical result. It has significant practical implications. For example, in mathematical finance, this result is crucial for justifying the convergence of certain numerical methods used to price options. It also plays a key role in proving the convergence of stochastic algorithms used in machine learning and optimization.

Conclusion

So, there you have it! We've successfully navigated through the proof that the stopped values of a martingale are uniformly integrable. This involves understanding the definitions of martingales, stopping times, and uniform integrability, as well as leveraging powerful tools like Doob's maximal inequality and the dominated convergence theorem. Hopefully, this explanation has shed some light on this important concept and its applications. Keep exploring, and happy learning!