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EVOLUTIONARY extreme learning machine based on dynamic Adaboost ensemble

机译:基于动态Adaboost集成的EVOLUTIONARY极限学习机

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Boosting ensemble algorithm exhibits two fatal limitations: one is that it gives in advance the upper bound of weighted error on weak learning algorithm; the other one is that it is overdependent on data and weak learning machine, and it is too sensitive to data noising. Aimed at limitation of Boosting ensemble application in extreme learning machine, thispaper proposes a new algorithm: evolutionary extreme learning machine based on dynamic Adaboost ensemble , which regards the evolutionary extreme learning machine as weak learning machine, dynamic Adaboost ensemble algorithm is used to integrate the outputs of weak learning machines, and makes use of fuzzy activation function as activation function of evolutionary extreme learning machine because of low computational burden and easy implementation in hardware. Proposed algorithm has been successfully applied to problem of function approximation and classification application. Experimental results show that the algorithm increases the training speed greatly when dealing with large dataset and has better generalization performance compared to extreme learning machine, evolutionary extreme learning machine and Boosting ensemble extreme learning machine with quasi-Newton algorithms.
机译:Boosting集成算法存在两个致命的局限性:一是它预先给出了弱学习算法的加权误差的上限;另一个是它过于依赖数据和学习机弱,并且对数据噪声过于敏感。旨在限制Boosting集成在极端学习机中的应用,此 提出了一种新算法:基于动态Adaboost集成的进化极限学习机,以进化极端学习机为弱学习机,采用动态Adaboost集成算法对弱学习机的输出进行积分,并利用模糊激活函数。由于计算量小且易于在硬件中实现,因此它是进化型极限学习机的激活功能。所提出的算法已经成功地应用于函数逼近和分类应用的问题。实验结果表明,与采用拟牛顿算法的极限学习机,进化极限学习机和Boosting集成极限学习机相比,该算法在处理大数据集时训练速度大大提高,泛化性能更好。

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