一种基于共生生物搜索的改进正则化极限学习机

Boyang Zhang, Lingjie Sun, Haiwen Yuan, Jianxun Lv, Zhao Ma
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引用次数: 7

摘要

本文提出了一种基于正则化极限学习机和共生生物搜索(SOS)相结合的数据分类方法。为了简化描述,将新方法命名为Sos-RELM,该方法主要包含两个阶段。众所周知,与SVM、LS-SVM、BP等传统的分类路径相比,极限学习机在准确率和计算时间上都表现出了优异的能力。因此,在第一阶段,我们使用正则化极限学习机,目标是可以快速计算输出权重。共生生物搜索是一种新的元启发式算法,具有多种更新个体的操作,优于遗传算法、遗传算法和粒子群算法。根据这种高效的优化方法,在第二阶段,使用共生生物搜索对输入权重、隐藏偏差和正则化参数集进行优化。实验结果表明,Sos-RELM具有良好的综合性能。
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An improved regularized extreme learning machine based on symbiotic organisms search
In this paper, a novel data classification approach is proposed based on integration of regularized extreme learning machine and Symbiotic Organisms Search (SOS). In order to simplified the description, the new method is named as Sos-RELM, which mainly contains two phases. As is known, in compared with traditional classification paths, such as SVM, LS-SVM and BP, extreme learning machine expresses its excellent ability in term of accuracy and computing time. Hence, in the first phase, we utilize regularised extreme learning machine with the goal that the output weights can be rapidly calculated. Symbiotic Organisms Search is one of new metaheuristic algorithms with various operations to update the individuals, which outperform DE, GA, and PSO. According to this effective and efficient optimization approach, in the second phase, the set of input wights, hidden biases and regularization parameter are optimized using Symbiotic Organisms Search. And the experimental results indicates that Sos-RELM attain a good comprehensive performance.
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