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A Novel Plastic Neural Model with Dendritic Computation for Classification Problems

机译:一种新型塑料神经模型,具有分类问题的树突计算

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This paper proposes a novel plastic neural model (PNM) at the single neuron level and a specified learning algorithm to train it. The dendritic structure of PNM presents its diversity to fulfill each particular task. During the training process, PNM divides the Euclidean space of the training instances into several appropriate hypercubes, which have the same dimensional number. And then, each hypercube is transformed into a corresponding dendritic branch in PNM. A suitable dendritic structure of PNM has been proved to have powerful computational capabilities to solve the classification problems. Both theoretical analysis and empirical study of the proposed model are demonstrated in this paper. Five benchmark problems are employed to verify the effectiveness of PNM in our experiment. The results have verified that PNM can provide competitive classification performance compared with several widely-used classifiers.
机译:本文提出了一种新的塑料神经模型(PNM),在单一神经元等级和指定的学习算法训练它。 PNM的树突结构呈现其多样性以满足每个特定任务。在培训过程中,PNM将训练实例的欧几里德空间划分为几个适当的超机,其具有相同的尺寸数。然后,将每个HyperCube转化为PNM中的相应树突分支。已证明PNM的合适树突结构具有强大的计算能力来解决分类问题。本文证明了所提出的模型的理论分析和实证研究。使用五个基准问题来验证PNM在我们的实验中的有效性。结果已经验证了与几个广泛使用的分类器相比,PNM可以提供竞争性分类性能。

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