Generalization ability of Extreme Learning Machine using different Sample Selection Methods

Saher Fatima, Rana Aamir Raza, M. Pasha, Asghar Ali
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Abstract

The recent explosion of data has triggered the need of data reduction for completing the effective data mining task in the process of knowledge discovery in databases (KDD). The process of instance selection (IS) plays a significant role for data reduction by eliminating the redundant, noisy, unreliable and irrelevant instances, which, in-turn reduces the computational resources, and helps to increase the capabilities and generalization abilities of the learning models. . This manuscript expounds the concept and functionalities of seven different instance selection techniques (i.e., ENN, AllKNN, MENN, ENNTh, Mul- tiEdit, NCNEdit, and RNG), and also evaluates their effectiveness by using single layer feed-forward neural network (SLFN), which is trained with extreme learning machine (ELM). Unlike traditional neural network, ELM randomly chooses the weights and biases of hidden layer nodes and analytically determines the weights of output layer node. The generalization ability of ELM is analyzed by using both original and reduced datasets. Experiment results depict that ELM provides better generalization with these IS methods.
极限学习机在不同样本选择方法下的泛化能力
近年来数据的爆炸式增长引发了对数据约简的需求,以便在数据库知识发现过程中完成有效的数据挖掘任务。实例选择(instance selection, IS)过程通过剔除冗余、噪声、不可靠和不相关的实例,在减少数据量方面起着重要的作用,从而减少了计算资源,提高了学习模型的能力和泛化能力。本文阐述了七种不同的实例选择技术(即ENN、AllKNN、MENN、enth、multi - tiEdit、NCNEdit和RNG)的概念和功能,并利用极限学习机(ELM)训练的单层前馈神经网络(SLFN)评估了它们的有效性。与传统神经网络不同,ELM随机选择隐层节点的权值和偏置,并解析确定输出层节点的权值。用原始数据集和简化后的数据集分析了ELM的泛化能力。实验结果表明,ELM与这些IS方法相比具有更好的泛化效果。
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