Dependent input neuron selection in contradiction resolution

R. Kamimura
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引用次数: 2

Abstract

In this paper, we propose a new type of information theoretic method called “dependent input neuron selection” in the framework of contradiction resolution. In contradiction resolution, a neuron fires without considering other neurons (self-evaluation), and at the same time the neuron's firing rate is determined by other neurons (outer-evaluation). If there exists contradiction between self and outer-evaluation, the contradiction should be reduced as much as possible. Roughly speaking, outer-evaluation corresponds to cooperation between neurons in the self-organizing maps. Thus, contradiction resolution can be applied to the production of self-organizing maps. In this contradiction resolution, we introduce dependent input neuron selection. The importance of neurons is determined by the degree of matching between neurons. A limited number of best-matching input neurons participate in processing input patterns. We applied the method to the CO2 production. Experimental results showed that prediction performance was much improved by choosing the appropriate number of input neurons. In addition, better prediction performance was accompanied by reasonably small quantization and topographic errors. The results suggest a possibility of contradiction resolution to produce networks with higher prediction performance and better topological properties.
矛盾解决中的依赖输入神经元选择
在矛盾解决的框架下,我们提出了一种新的信息论方法——“依赖输入神经元选择”。在矛盾解决中,一个神经元的放电不考虑其他神经元(自我评价),同时该神经元的放电速率由其他神经元决定(外部评价)。如果自我评价与外部评价之间存在矛盾,则应尽量减少这种矛盾。粗略地说,外部评价对应于自组织映射中神经元之间的合作。因此,矛盾解决可以应用于自组织映射的生成。在这种矛盾解决中,我们引入了依赖输入神经元选择。神经元的重要性由神经元之间的匹配程度决定。有限数量的最佳匹配输入神经元参与处理输入模式。我们将该方法应用于二氧化碳的生产。实验结果表明,通过选择合适的输入神经元数量,可以大大提高预测性能。此外,较好的预测效果伴随着较小的量化和地形误差。结果表明,矛盾解决可以产生具有更高预测性能和更好拓扑特性的网络。
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