Regularized Extreme Learning Machine 论文

2009引用 457
Machine Learning and ELMMicroRNA in disease regulationStochastic Gradient Optimization Techniques

详细信息

发表日期
2009-03-01
发表年份
2009

关键词

Machine Learning and ELMMicroRNA in disease regulationStochastic Gradient Optimization Techniques

摘要

Extreme learning machine proposed by Huang G-B has attracted many attentions for its extremely fast training speed and good generalization performance. But it still can be considered as empirical risk minimization theme and tends to generate over-fitting model. Additionally, since ELM doesn't considering heteroskedasticity in real applications, its performance will be affected seriously when outliers exist in the dataset. In order to address these drawbacks, we propose a novel algorithm called regularized extreme learning machine based on structural risk minimization principle and weighted least square. The generalization performance of the proposed algorithm was improved significantly in most cases without increasing training time.