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引用次数: 0

摘要

粒子群优化基本上是一种随机算法,其中每个粒子都考虑到其自身历史及其邻近区域的噪声信息。虽然基本的信息论原理表明,噪声越少意味着确定性越大,但动量项同时是最不直接的信息,也是最确定的应用。这种二分法表明,通常对动量的自信处理是错误的,群体绩效可以从完全消除动量的更好的激励过程中受益。
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Under-informed momentum in PSO
Particle Swarm Optimization is fundamentally a stochastic algorithm, where each particle takes into account noisy information from its own history as well as that of its neighborhood. Though basic information-theoretic principles would suggest that less noise indicates greater certainty, the momentum term is simultaneously the least directly-informed and the most deterministically applied. This dichotomy suggests that the typically confident treatment of momentum is misplaced, and that swarm performance can benefit from better-motivated processes that obviate momentum entirely.
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