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An Improved Double Hidden-Layer Variable Length Incremental Extreme Learning Machine Based on Particle Swarm Optimization

机译:基于粒子群优化的一种改进的双隐藏可变长度增量学习机

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Extreme learning machine (ELM) has been widely used in diverse domains. With the development of deep learning, integrating ELM with some deep learning method has become a new perspective method for extracting and classifications. However, it may require a large number of hidden nodes and lead to the ill-condition problem for its random generation. In this paper, an effective hybrid approach based on Variable-length Incremental ELM and Particle Swarm Optimization (PSO) algorithm (PSO-VIELM) is proposed which can be used to regulate weights and extract features. In the new method, we build two hidden layers to establish a structure which is compact with a better generalization performance. In the first hidden layer named extraction layer, we make the feature learning to the raw data, and make dynamic updates for hidden layer nodes, and use the fitting error as the fitness function to update the weights corresponding to the hidden nodes with the method of PSO. In the second hidden layer named classification layer, we make a classification for the processed data from extraction layer and use cross-entropy as the fitness function to update the weights in the net. In order to find the appropriate number of hidden layer nodes, all hidden nodes will no longer grow in the case of a rebound in the fitness function on the validation set. The result in some datasets shows that PSOVIELM has a better generalization performance than other constructive ELMs.
机译:极端学习机(ELM)已广泛应用于不同的域。随着深度学习的发展,将ELM与一些深入学习方法集成,已成为提取和分类的新的透视方法。然而,它可能需要大量的隐藏节点并导致其随机产生的不良状态。本文提出了一种基于可变长度增量ELM和粒子群优化(PSO)算法(PSO-VIELM)的有效混合方法,其可用于调节权重和提取特征。在新方法中,我们构建了两个隐藏层以建立一个具有更好的泛化性能的结构。在命名提取层的第一个隐藏层中,我们将特征学习到原始数据,并对隐藏的层节点进行动态更新,并使用拟合误差作为适合函数,以利用该方法更新与隐藏节点对应的权重PSO。在命名分类层的第二个隐藏层中,我们为来自提取层的处理数据进行分类,并使用跨熵作为适合函数来更新网络中的权重。为了找到适当数量的隐藏层节点,所有隐藏的节点都将在验证集上的健身功能中反弹的情况下不再增长。一些数据集的结果显示PSOVIELM具有比其他建设性elm更好的泛化性能。

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