中文

Introduction To Monte Carlo Algorithms

统计力学 2008-02-03 v2

摘要

In these lectures, given in '96 summer schools in Beg-Rohu (France) and Budapest, I discuss the fundamental principles of thermodynamic and dynamic Monte Carlo methods in a simple light-weight fashion. The keywords are MARKOV CHAINS, SAMPLING, DETAILED BALANCE, A PRIORI PROBABILITIES, REJECTIONS, ERGODICITY, "FASTER THAN THE CLOCK ALGORITHMS". The emphasis is on ORIENTATION, which is difficult to obtain (all the mathematics being simple). A firm sense of orientation helps to avoid getting lost, especially if you want to leave safe trodden-out paths established by common usage. Even though I remain quite basic (and, I hope, readable), I make every effort to drive home the essential messages, which are easily explained: the crystal-clearness of detail balance, the main problem with Markov chains, the great algorithmic freedom, both in thermodynamic and dynamic Monte Carlo, and the fundamental differences between the two problems.

关键词

引用

@article{arxiv.cond-mat/9612186,
  title  = {Introduction To Monte Carlo Algorithms},
  author = {Werner Krauth},
  journal= {arXiv preprint arXiv:cond-mat/9612186},
  year   = {2008}
}

备注

43 pages, many figures, 5 original drawings by the author, Latex