ZigZagIIDGaussian {RZigZag} | R Documentation |
ZigZagIIDGaussian
Description
Applies the Zig-Zag Sampler to a IID Gaussian distribution
Usage
ZigZagIIDGaussian(variance, dim = 1L, n_iter = -1L, finalTime = -1,
x0 = numeric(0), v0 = numeric(0))
Arguments
variance |
scalar indicating variance |
dim |
dimension |
n_iter |
Number of algorithm iterations; will result in the equivalent amount of skeleton points in Gaussian case because no rejections are needed. |
finalTime |
If provided and nonnegative, run the sampler until a trajectory of continuous time length finalTime is obtained (ignoring the value of |
x0 |
starting point (optional, if not specified taken to be the origin) |
v0 |
starting direction (optional, if not specified taken to be +1 in every component) |
Value
Returns a list with the following objects:
Times
: Vector of switching times
Positions
: Matrix whose columns are locations of switches. The number of columns is identical to the length of skeletonTimes
. Be aware that the skeleton points themselves are NOT samples from the target distribution.
Velocities
: Matrix whose columns are velocities just after switches. The number of columns is identical to the length of skeletonTimes
.
Examples
result <- ZigZagIIDGaussian(1, 2, 1000)
plot(result$Positions[2,], result$Positions[1,],type='l',asp=1)