Brownian Motion is the pattern for measuring the convergence of random walk through continuous timing. discrete random walk discrete random walk is a tool used to construct Brownian Motion. It is a random walk which only takes on two discrete values at any given time: \Delta and its additive inverse -\Delta. These two cases take place at probabilities \pi and 1-\pi. Therefore, the expected return over each time k is:
(that, at any given time, the expectation of return is either—with probability π—\Delta, or–with probability 1-π—-\Delta. This makes \epsilon_{k} independently and identically distributed. The price, then, is formed by:
and therefore the price follows a random walk. Such a discrete random walk can look like this: We can split this time from [0,T] into n pieces; making each segment with length h=\frac{T}{n}. Then, we can parcel out:
Descretized at integer intervals. At this current, discrete moments have expected value E[p_{n}(T)] = n(\pi -(1-\pi))\Delta and variance Var[p_{n}(T)]=4n\pi (1-\pi)\Delta^{2}. #why Now, if we want to have a continuous version of the descretized interval above, we will maintain the finiteness of p_{n}(T) but take n to \infty. To get a continuous random walk needed for Brownian Motion, we adjust \Delta, \pi, and 1-\pi such that the expected value and variance tends towards the normal (as we expect for a random walk); that is, we hope to see that:
To solve for these desired convergences into the normal, we have probabilities \pi, (1-\pi), \Delta such that:
where, h = \frac{1}{n}. So looking at the expression for \Delta, we can see that as n in increases, h =\frac{1}{n} decreases and therefore \Delta decreases. In fact, we can see that the change in all three variables track the change in the rate of \sqrt{h}; namely, they vary with O(h).
Of course:
So, finally, we have the conclusion that: as n (number of subdivision pieces of the time domain T) increases, \frac{1}{n} decreases, O\left(\sqrt{h}\right) decreases with the same proportion. Therefore, as \lim_{n \to \infty} in the continuous-time case, the probability of either positive or negative delta (\pi and -\pi trends towards each to \frac{1}{2}) by the same vein, as \lim_{n \to \infty}, \Delta \to 0 Therefore, this is a cool result: in a continuous-time case of a discrete random walk, the returns (NOT! just the expect value, but literal \Delta) trend towards +0 and -0 each with \frac{1}{2} probability. actual Brownian motion Given the final results above for the limits of discrete random walk, we can see that the price moment traced from the returns (i.e. p_{k} = p_{k-1}+\epsilon_{k}) have the properties of normality (p_{n}(T) \to \mathcal{N}(\mu T, \sigma^{2}T)) True Brownian Motion follows, therefore, three basic properties: B_{t} is normally distributed by a mean of 0, and variance of t For some s<t, B_{t}-B_{s} is normally distributed by a mean of 0, and variance of t-s Distributions B_{j} and B_{t}-B_{s} is independent Standard Brownian Motion Brownian motion that starts at B_0=0 is called Standard Brownian Motion quadratic variation The quadratic variation of a sequence of values is the expression that:
On any sequence of values x_0=0,\dots,x_{N}=1 (with defined bounds), the quadratic variation becomes bounded.