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Suppose we have the $(W_t)$ Brownian Motion and the filtration $F=(\mathcal{F}_t)$, where $\mathcal{F}_t:=\sigma(W_s;s\le t)$. I know that for any $n\in \mathbb{N}$ and $0\le t_0 the increments $W_{t_i}-W_{t_{i-1}}$ are independent by definition. Now let $t\ge 0$ and $h>0$. In my lecture notes is a proof which I do not understand. We want to show that $W_{t+h}-W_t$ is independent of $F$.

They say: By the independence of $W_{t_i}-W_{t_{i-1}}$, $W_{t+h}-W_t$ is independent of the family of all increments $W_l-W_m$ with $m\le l\le t$, since it gives the independence for each finite subfamily.

I guess the last sentence means, that I can split $l-m$ into a finite "partition", like this: $l=t_0. However, how we see then independence of $W_l-W_m$.?

It would be appreciated if someone could explain in a more detailed way, how we get this independence. Thanks in advance.

hulik

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    What is your definition of brownian motion? This should fall out immediately from most definitions (e.g. the ones provided in Kartzsas and Shreve's Brownian Motion and Stochastic calculus).2014-08-04

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So, as far as I understand you have that if $0\leq t_0 you know that $W_{t_k}-W_{t_{k-1}},k=\overline{1,n}$ are independent random variables (this I will denote by A). And now you are to prove that if $W_t-W_s$ is independent from $\mathcal F_s$(this I will denote by B). First, I will prove that B follows from A. Let $0. We know that $W_t-W_s$ is independent from $W_{t_k}-W_{t_{k-1}},k=\overline{1,n}$ (in the next I will denote this fact as $W_t-W_s\bigsqcup W_{t_k}-W_{t_{k-1}}$). By definition it means that $W_t-W_s\bigsqcup \sigma \{W_{t_k}-W_{t_{k-1}},k=\overline{1,n}\}=\sigma\{W_{t_k},k=\overline{1,n}\}$. Hence $W_t-W_s \bigsqcup\, \bigcup\limits_{0\leq q_1<\ldots. The set on the left is $\pi$-class (stable under finite intersection), hence (it is well known theorem about independence of sigma-algebras generated by independent $\pi$-classes are themselves independent) $W_t-W_s\bigsqcup \sigma \{ \bigcup\limits_{0\leq q_1<\ldots. The last fact, you can prove yourself. If you want to prove that B entails A, try to use characteristic functions. And the criteria of independence which uses c.f.. Note, that the fact you want to prove is true for much bigger class of stochastic processes. The reference here could be any normal lectures on Levy processes, for instance, ``Lectures on Levy processes'' by R.Schilling. Unfortunately, I could not find it by googling. If you want, I can send you the .pdf.