Multidimensional examples of the Metropolis algorithm
Consider the problem of approximating a given probability distribution on the cube $[0,1]^n$ via the use of a square lattice discretization with mesh-size $1/N$ and the Metropolis algorithm. Here the dimension $n$ is fixed and we focus for the most part on the case $n=2$. In order to understand the...
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Zusammenfassung: | Consider the problem of approximating a given probability distribution on the
cube $[0,1]^n$ via the use of a square lattice discretization with mesh-size
$1/N$ and the Metropolis algorithm. Here the dimension $n$ is fixed and we
focus for the most part on the case $n=2$. In order to understand the speed of
convergence of such a procedure, one needs to control the spectral gap,
$\lambda$, of the associated finite Markov chain, and how it depends on the
parameter $N$. In this work, we study basic examples for which good
upper-bounds and lower-bounds on $\lambda$ can be obtained via appropriate
application of path techniques. |
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DOI: | 10.48550/arxiv.2201.13255 |