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A Study of Archiving Strategies in Multi-objective PSO for Molecular Docking

机译:多目标PSO分子对接的归档策略研究

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Molecular docking is a complex optimization problem aimed at predicting the position of a ligand molecule in the active site of a receptor with the lowest binding energy. This problem can be formulated as a bi-objective optimization problem by minimizing the binding energy and the Root Mean Square Deviation (RMSD) difference in the coordinates of ligands. In this context, the SMPSO multi-objective swarm-intelligence algorithm has shown a remarkable performance. SMPSO is characterized by having an external archive used to store the non-dominated solutions and also as the basis of the leader selection strategy. In this paper, we analyze several SMPSO variants based on different archiving strategies in the scope of a benchmark of molecular docking instances. Our study reveals that the SMPSOhv, which uses an hypervolume contribution based archive, shows the overall best performance.
机译:分子对接是一个复杂的优化问题,旨在预测配体分子在具有最低结合能的受体活性位点中的位置。通过最小化配体坐标中的结合能和均方根偏差(RMSD)差异,可以将此问题表述为双目标优化问题。在这种情况下,SMPSO多目标群智能算法表现出了卓越的性能。 SMPSO的特点是拥有一个用于存储非主导解决方案的外部存档,并且也是领导者选择策略的基础。在本文中,我们在分子对接实例的基准范围内,基于不同的归档策略分析了几种SMPSO变体。我们的研究表明,使用基于超量贡献的存档的SMPSOhv显示了总体最佳性能。

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