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A new sequential importance sampling method and its application to the two-dimensional hydrophobic-hydrophilic model

机译:一种新的顺序重要性抽样方法及其在二维疏水-亲水模型中的应用

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The sequential importance sampling method and its various modifications have been developed intensively and used effectively in diverse research areas ranging from polymer simulation to signal processing and statistical inference. We propose a new variant of the method, sequential importance sampling with pilot-exporation resampling (SISPER), and demonstrate its successful application in folding polypeptide chains described by a two-dimensional hydrophobic-hydrophilic (HP) lattice model. We show by numerical results that SISPER outperformed several existing approaches, e.g., a genetic algorithm, the pruned-enriched Rosenbluth method, and the evolutionary Monte Carlo, in finding the ground folding states of 2d square-lattice HP sequences. In a few difficult cases, the new method can find the ground states without using any prior structural information on the chain. We also discuss the potential applications of SISPER in more general problems.
机译:顺序重要性抽样方法及其各种改进已经得到了广泛的开发,并有效地用于从聚合物模拟到信号处理和统计推断的各种研究领域。我们提出了一种方法的新变体,即具有先导性重采样的连续重要性采样(SISPER),并证明了其在折叠由二维疏水-亲水(HP)晶格模型描述的多肽链中的成功应用。我们通过数值结果表明,SISPER在发现2d方格HP序列的底折叠状态方面胜过了几种现有方法,例如遗传算法,修剪浓缩的Rosenbluth方法和进化蒙特卡洛方法。在一些困难的情况下,新方法无需使用链上的任何先前结构信息即可找到基态。我们还将讨论SISPER在更一般性问题中的潜在应用。

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