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Fusing Swarm Intelligence and Self-Assembly for Optimizing Echo State Networks

机译:用于优化回声状态网络的融合群体智能和自我组装

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Optimizing a neural network's topology is a difficult problem for at least two reasons: the topology space is discrete, and the quality of any given topology must be assessed by assigning many different sets of weights to its connections. These two characteristics tend to cause very "rough." objective functions. Here we demonstrate how self-assembly (SA) and particle swarm optimization (PSO) can be integrated to provide a novel and effective means of concurrently optimizing a neural network's weights and topology. Combining SA and PSO addresses two key challenges. First, it creates a more integrated representation of neural network weights and topology so that we have just a single, continuous search domain that permits "smoother" objective functions. Second, it extends the traditional focus of self-assembly, from the growth of predefined target structures, to functional self-assembly, in which growth is driven by optimality criteria defined in terms of the performance of emerging structures on predefined computational problems. Our model incorporates a new way of viewing PSO that involves a population of growing, interacting networks, as opposed to particles. The effectiveness of our method for optimizing echo state network weights and topologies is demonstrated through its performance on a number of challenging benchmark problems.
机译:优化神经网络的拓扑结构是至少有两个原因的难题:拓扑空间是离散的,并且必须通过将许多不同的权重集分配给其连接来评估任何给定拓扑的质量。这两个特征往往会导致非常“粗糙”。客观功能。在这里,我们展示了自组装(SA)和粒子群优化(PSO)可以集成,以提供一种新颖的和有效手段,即同时优化神经网络的权重和拓扑。结合SA和PSO解决了两个关键挑战。首先,它创建了一种更集成的神经网络权重和拓扑的表示,因此我们只有一个允许“更平滑”的客观功能的单个连续搜索域。其次,它将传统的自组装的焦点从预定义目标结构的生长扩展到功能自组装,其中通过在新出现结构的性能上定义的最优性标准来驱动生长。我们的型号包含一种观看PSO的新方式,涉及涉及生长,交互网络的群体,而不是粒子。通过其在许多具有挑战性的基准问题上的性能来证明了我们优化回声状态网络权重和拓扑的方法的有效性。

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