Faculty of Engineering, University of Toyama, Toyama-shi 930-8555, Japan.
Faculty of Electrical Engineering and Computer Science, Ningbo University, Ningbo, Zhejiang 315211, China.
Comput Intell Neurosci. 2023 Jan 23;2023:7037124. doi: 10.1155/2023/7037124. eCollection 2023.
Deep learning (DL) has achieved breakthrough successes in various tasks, owing to its layer-by-layer information processing and sufficient model complexity. However, DL suffers from the issues of both redundant model complexity and low interpretability, which are mainly because of its oversimplified basic McCulloch-Pitts neuron unit. A widely recognized biologically plausible dendritic neuron model (DNM) has demonstrated its effectiveness in alleviating the aforementioned issues, but it can only solve binary classification tasks, which significantly limits its applicability. In this study, a novel extended network based on the dendritic structure is innovatively proposed, thereby enabling it to solve multiple-class classification problems. Also, for the first time, an efficient error-back-propagation learning algorithm is derived. In the extensive experimental results, the effectiveness and superiority of the proposed method in comparison with other nine state-of-the-art classifiers on ten datasets are demonstrated, including a real-world quality of web service application. The experimental results suggest that the proposed learning algorithm is competent and reliable in terms of classification performance and stability and has a notable advantage in small-scale disequilibrium data. Additionally, aspects of network structure constrained by scale are examined.
深度学习(DL)由于其逐层的信息处理和充足的模型复杂性,在各种任务中取得了突破性的成功。然而,DL 存在模型复杂性冗余和可解释性低的问题,这主要是因为其过于简化的基本 McCulloch-Pitts 神经元单元。一种被广泛认可的具有生物学合理性的树突状神经元模型(DNM)已被证明在缓解上述问题方面非常有效,但它只能解决二进制分类任务,这极大地限制了它的适用性。在这项研究中,创新性地提出了一种基于树突结构的新型扩展网络,从而使其能够解决多类分类问题。此外,首次推导出了一种高效的误差反向传播学习算法。在广泛的实验结果中,与其他九种最先进的分类器在十个数据集上的对比结果表明,包括一个真实的 Web 服务应用程序的质量,该方法在分类性能和稳定性方面具有优越性和优势,在小规模不平衡数据方面具有显著优势。此外,还研究了网络结构在规模上的限制。