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Using A Genetic Algorithm To Investigate Efficient Connectivity In Associative Memories

机译:使用遗传算法调查关联内存中的有效连接

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We investigate sparse networks of threshold units, trained with the perceptron learning rule to act as associative memories. The units have position and are placed in a ring so that the wiring cost is a meaningful measure. A genetic algorithm is used to evolve networks that have efficient wiring, but also good functionality. It is shown that this is possible, and that the connection strategy used by the networks appears to maintain some connectivity at all distances, but with the probability of a connection decreasing rapidly with distance.
机译:我们研究阈值单元的稀疏网络,这些网络通过感知器学习规则进行训练,以充当关联记忆。单元具有位置并放置在环形中,因此布线成本是一项有意义的措施。遗传算法用于发展具有有效布线但又具有良好功能的网络。结果表明,这是可行的,并且网络使用的连接策略似乎可以在所有距离上保持一定的连通性,但是连接的可能性会随着距离的增加而迅速下降。

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