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Batch Self-Organizing Map Algorithm: A Theoretical Study of Self-Organization of a 1-D Network Under Quantization Effects

机译:批量自组织地图算法:量化效应下1-D网络自组织的理论研究

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In this paper, we examine necessary and sufficient conditions that ensure self-organization of the batch variant of the self-organizing map algorithm for 1-D networks and for quantized weights and inputs. Using Markov chain formalism, it is shown that the existing analysis for the original algorithm can be extended to also include the more general batch variant. Finally, simulations verify the theoretical results, relate the speed of weight ordering to the distribution of the inputs and show the existence of metastable states of the Markov chain.
机译:在本文中,我们研究了确保1-D网络的自组织地图算法的批量变体的必要和充分条件,以及用于量化权重和输入。使用马尔可夫链形式主义,结果表明,可以扩展原始算法的现有分析,也可以包括更通用的批量变体。最后,仿真验证了理论结果,将重量排序的速度与输入分布相关,并显示马尔可夫链的亚稳态的存在。

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