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Some adaptive Monte Carlo methods for Bayesian inference

✍ Scribed by Luke Tierney; Antonietta Mira


Publisher
John Wiley and Sons
Year
1999
Tongue
English
Weight
91 KB
Volume
18
Category
Article
ISSN
0277-6715

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✦ Synopsis


Monte Carlo methods, in particular Markov chain Monte Carlo methods, have become increasingly important as a tool for practical Bayesian inference in recent years. A wide range of algorithms is available, and choosing an algorithm that will work well on a speci"c problem is challenging. It is therefore important to explore the possibility of developing adaptive strategies that choose and adjust the algorithm to a particular context based on information obtained during sampling as well as information provided with the problem. This paper outlines some of the issues in developing adaptive methods and presents some preliminary results.


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Two-component multicanonical Monte Carlo
✍ Higo, Junichi; Nakajima, Nobuyuki; Shirai, Hiroki; Kidera, Akinori; Nakamura, Ha πŸ“‚ Article πŸ“… 1997 πŸ› John Wiley and Sons 🌐 English βš– 213 KB πŸ‘ 1 views

A multicanonical algorithm, which is one of the most powerful conformation-sampling methods to obtain the density of states described by a Ε½ . component i.e., the total potential energy , was extended to obtain the density of states described by two components. This method was tested on a simplified