The leapfrog integrator is routinely used within the Hamiltonian Monte Carlo method and its variants. We give strong numerical evidence that alternative, easy to implement algorithms yield fewer rejections with a given computational effort. When the dimensionality of the target distribution is high, the number of accepted proposals may be multiplied by a factor of three or more. This increase in the number of accepted proposals is not achieved by impairing any positive features of the sampling. We also establish new non-asymptotic and asymptotic results on the monotonic relationship between the expected acceptance rate and the expected energy error. These results further validate the derivation of one of the integrators we consider and are of independent interest.
翻译:在汉密尔顿蒙特卡洛法及其变体中,经常使用跳蛙集成器。我们提供了强有力的数字证据,证明易于执行算法的替代方法在特定的计算努力中产生较少的拒绝。当目标分布的维度很高时,接受的提案数量可能会乘以三个或三个以上。通过损害取样的任何积极特征,无法实现所接受提案数量的增加。我们还在预期接受率和预期能源错误之间的单一关系上建立了新的非被动和无药可治的结果。这些结果进一步证实了我们所考虑的某个集成器的产出,并且具有独立的兴趣。