Chapter 10: Problem 17
Show that standard Brownian motion is a Martingale.
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Chapter 10: Problem 17
Show that standard Brownian motion is a Martingale.
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Let \(\\{X(t), t \geqslant 0\\}\) be a Brownian motion with drift coefficient
\(\mu\) and variance parameter \(\sigma^{2}\). What is the conditional
distribution of \(X(t)\) given that \(X(s)=c\) when
(a) \(s
The current price of a stock is 100 . Suppose that the logarithm of the price
of the stock changes according to a Brownian motion with drift coefficient
\(\mu=2\) and variance parameter \(\sigma^{2}=1\). Give the Black-Scholes cost of
an option to buy the stock at time 10 for a cost of
(a) 100 per unit.
(b) 120 per unit.
(c) 80 per unit.
Assume that the continuously compounded interest rate is 5 percent. A
stochastic process \(\\{Y(t), t \geqslant 0\\}\) is said to be a Martingale
process if, for \(s
Let \(\\{X(t), t \geqslant 0\\}\) be a Brownian motion with drift coefficient
\(\mu\) and variance parameter \(\sigma^{2}\). What is the joint density function
of \(X(s)\) and \(X(t), s
Let \(\\{Z(t), t \geqslant 0\\}\) denote a Brownian bridge process. Show that if $$ Y(t)=(t+1) Z(t /(t+1)) $$ then \(\\{Y(t), t \geqslant 0\\}\) is a standard Brownian motion process.
Let \(\\{X(t), t \geqslant 0\\}\) be Brownian motion with drift coefficient \(\mu\) and variance parameter \(\sigma^{2}\). That is, $$ X(t)=\sigma B(t)+\mu t $$ Let \(\mu>0\), and for a positive constant \(x\) let $$ \begin{aligned} T &=\operatorname{Min}\\{t: X(t)=x\\} \\ &=\operatorname{Min}\left\\{t: B(t)=\frac{x-\mu t}{\sigma}\right\\} \end{aligned} $$ That is, \(T\) is the first time the process \(\\{X(t), t \geqslant 0\\}\) hits \(x\). Use the Martingale stopping theorem to show that $$ E[T]=x / \mu $$
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