论文标题
具有自适应构造参数的正交随机配置网络用于数据分析
Orthogonal Stochastic Configuration Networks with Adaptive Construction Parameter for Data Analytics
论文作者
论文摘要
作为一个随机的学习者模型,SCN值得注意的是,随机权重和偏见是采用监督机制来确保通用近似和快速学习的。但是,随机性使SCN更有可能生成冗余且质量低的近似线性相关节点,从而导致非紧缩网络结构。鉴于机器学习的基本原理,即具有较少参数的模型可以改善概括。本文提出了称为OSCN的正交SCN,以通过结合革兰氏式正交技术来过滤网络结构降低的低质量隐藏节点。详细介绍了OSCN的通用近似特性和关键构造参数的自适应设置。此外,开发了增量更新方案以动态确定输出权重,从而提高了计算效率。最后,对两个数值示例以及几个现实世界回归和分类数据集的实验结果证实了所提出方法的有效性和可行性。
As a randomized learner model, SCNs are remarkable that the random weights and biases are assigned employing a supervisory mechanism to ensure universal approximation and fast learning. However, the randomness makes SCNs more likely to generate approximate linear correlative nodes that are redundant and low quality, thereby resulting in non-compact network structure. In the light of a fundamental principle in machine learning, that is, a model with fewer parameters holds improved generalization. This paper proposes orthogonal SCN, termed OSCN, to filtrate out the low-quality hidden nodes for network structure reduction by incorporating Gram-Schmidt orthogonalization technology. The universal approximation property of OSCN and an adaptive setting for the key construction parameters have been presented in details. In addition, an incremental updating scheme is developed to dynamically determine the output weights, contributing to improved computational efficiency. Finally, experimental results on two numerical examples and several real-world regression and classification datasets substantiate the effectiveness and feasibility of the proposed approach.