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math105-s22:s:mchlxo:start [2022/03/17 03:05] mchlxo [Homework] |
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| ===== Additional Notes ===== | ===== Additional Notes ===== | ||
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| $$\int_{a}^{b}f(x)dx = L(f)=U(f)$$ | $$\int_{a}^{b}f(x)dx = L(f)=U(f)$$ | ||
| From this definition, we notice that the notion of Riemann integral heavily depends on the interval on which it is defined. This could generate concerns over the flexibility of the Riemann integral that Lebesgue integral can handle more elegantly. For example, when both types of integrals are generalized to higher dimensions, the notion of an interval in Riemann integral is more difficult to define since we can have " | From this definition, we notice that the notion of Riemann integral heavily depends on the interval on which it is defined. This could generate concerns over the flexibility of the Riemann integral that Lebesgue integral can handle more elegantly. For example, when both types of integrals are generalized to higher dimensions, the notion of an interval in Riemann integral is more difficult to define since we can have " | ||
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| + | ===== Final Essay: Measure on Brownian Motion ===== | ||
| + | We start with definition of Brownian motion. | ||
| + | ==== Definition (Brownian Motion) ==== | ||
| + | Let $\omega : [0, \infty) \rightarrow \mathbb{R}^{n}$ be a path. Given $t_1 < t_2$ and $\omega(t_1) = x_1$, the probability density for $\omega(t_2)$ is\\ | ||
| + | $$p(t_2-t_1, | ||
| + | In addition, for any $t_1\leq t \leq t_2$, $\omega(t)$ does not depend on the trajectory of the path before $t_1$. | ||
| + | The definition of Brownian motion provides a probability integral that motivates the construction of the measure on the space of Brownian motion paths. Namely, give $0\leq t_1 \leq t_2 \leq \cdot \cdot \cdot \leq t_k$ and Borel sets $E_j \subset \mathbb{R}^{n}$, | ||
| + | $$Pr[\omega(t_1) \in E_1, \omega(t_2) \in E_2, \cdot \cdot \cdot, | ||
| + | One last thing before we construct the measure is we have to define the space of Brownian motion paths. We characterize the path by its location at positive rational time t, and the space of all paths is | ||
| + | $$\mathcal{P} = \prod_{t \in \mathbb{Q}^{+}} \dot{\mathbb{R}}^{n}$$ | ||
| + | where $\dot{\mathbb{R}}^{n} = \mathbb{R}^{n} \cup \{ \infty \}$ is the one-point compactification of $\mathbb{R}^{n}$. Hausdorff' | ||
| + | |||
| + | ==== Theorem 1 ==== | ||
| + | If $X$ is a compact metric space and $\alpha$ is a positive linear functional on $C(X)$, then there exists a unique finite, positive Borel measure $\mu$ such that | ||
| + | $$\alpha(f) = \int f d\mu$$ | ||
| + | for all $f \in C(X)$ | ||
| + | |||
| + | **proof:** see Taylor (2006) Theorem 13.5\\ | ||
| + | To use this theorem, we construct a positive linear functional $E: C(\mathcal{P}) \rightarrow \mathbb{R}$. We first define $E$ on the subspace $C^{\#}$ with only continuous functions that depend on only finitely many of the factors in $\mathcal{P}$, | ||
| + | $$\phi (\omega) = F(\omega(t_1), | ||
| + | where $F$ is continuous on $\mathcal{P}$ and $t_j \in \mathbb{Q}^{+}$. Then we let | ||
| + | $$E(\phi) = \int \cdot \cdot \cdot \int p(t_1, x_1) p(t_2 - t_1, x_2 - x_1) \cdot \cdot \cdot p(t_k - t_{k-1}m x_k - x_{k-1}) F(x_1, ..., x_k) dx_k \cdot \cdot \cdot dx_1$$ | ||
| + | To check this functional is well-defined, | ||
| + | ==== Proposition 1 ==== | ||
| + | For $t \neq s$, $\int p(t, x-y)p(s, | ||
| + | **proof:** see Sternberg (2014) slides 10 and 11\\ | ||
| + | Proposition 1 showed that if $F$ does not depend on a given set of $x_i$, we obtain the same functional $E(\phi)$. In addition, we have $E(1) = 1$, so by the Stone-Weierstrass Theorem, $C^{\#}$ is dense in $C(\mathcal{P})$ (see Taylor 2006 Theorem A.23). Furthermore, | ||
| + | ==== Theorem 2 (Wiener Measure) ==== | ||
| + | There exists a unique Borel measure (called the Wiener Measure) $\mu$ on $\mathcal{P}$ such that | ||
| + | $$ E(\phi) = \int_{\mathcal{P}} \phi(\omega) d \mu(\omega)$$ | ||
| + | for each $\phi(\omega)$ with a continuous $F$ on $\mathcal{P}$ | ||
| + | |||
| + | ==== References ==== | ||
| + | Sternberg, Shlomo Z. 2014. “Wiener Measure.” Harvard Math 201a, November 11.\\ | ||
| + | \\ | ||
| + | Taylor, Michael E. 2006. Measure Theory and Integration. Graduate Studies in Mathematics, | ||
| + | \\ | ||
| + | Wright, David G. 1994. “Tychonoff’s Theorem.” Proceedings of the American Mathematical Society 120 (3): 985–87. https:// | ||
| + | |||
| ===== Resources ===== | ===== Resources ===== | ||
| A {{ : | A {{ : | ||